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Policy
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/pv/cpvq5akoxii6zri2lssiqurrqsl5nuea43ylpa6xzb433ugqbchi.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.tanh] # Source node to ATen node mapping: # x => tanh # Graph fragment: # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_1,), kwargs = {}) triton_poi_fused_tanh_0 = async_compile.triton('triton_poi_fused_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xd/cxdjvzoxd5vuv6ivxm3ihuyhdgsotdoxlfco6mu5a57up3daqb76.py # Topologically Sorted Source Nodes: [action_std], Original ATen: [aten.exp] # Source node to ATen node mapping: # action_std => exp # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%expand,), kwargs = {}) triton_poi_fused_exp_1 = async_compile.triton('triton_poi_fused_exp_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_exp_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_exp_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl_math.exp(tmp0) tl.store(out_ptr0 + (x2), tmp1, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8 = args args.clear() assert_size_stride(primals_1, (64, 4), (4, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (64, 64), (64, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (4, 64), (64, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (1, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 64), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 64), (1024, 256, 64, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_tanh_0.run(buf1, primals_2, 4096, grid=grid(4096), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 64), (64, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 64), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 64), (1024, 256, 64, 1), 0); del buf2 # reuse # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.tanh] triton_poi_fused_tanh_0.run(buf3, primals_5, 4096, grid=grid(4096), stream=stream0) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [action_mean], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 64), (64, 1), 0), reinterpret_tensor(primals_6, (64, 4), (1, 64), 0), alpha=1, beta=1, out=buf4) del primals_7 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [action_std], Original ATen: [aten.exp] triton_poi_fused_exp_1.run(primals_8, buf5, 256, grid=grid(256), stream=stream0) return (reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_8, (4, 4, 4, 4), (0, 0, 0, 1), 0), buf5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf1, buf3, buf5, primals_6, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 64), (64, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 64), (64, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Policy(nn.Module): def __init__(self, num_inputs, num_outputs): super(Policy, self).__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 64) self.action_mean = nn.Linear(64, num_outputs) self.action_mean.weight.data.mul_(0.1) self.action_mean.bias.data.mul_(0.0) self.action_log_std = nn.Parameter(torch.zeros(1, num_outputs)) def forward(self, x): x = torch.tanh(self.affine1(x)) x = torch.tanh(self.affine2(x)) action_mean = self.action_mean(x) action_log_std = self.action_log_std.expand_as(action_mean) action_std = torch.exp(action_log_std) return action_mean, action_log_std, action_std def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_inputs': 4, 'num_outputs': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, None) @triton.jit def triton_poi_fused_exp_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp1 = tl_math.exp(tmp0) tl.store(out_ptr0 + x2, tmp1, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8) = args args.clear() assert_size_stride(primals_1, (64, 4), (4, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (64, 64), (64, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (4, 64), (64, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (1, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 64), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 64), (1024, 256, 64, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_tanh_0[grid(4096)](buf1, primals_2, 4096, XBLOCK= 128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 64), (64, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 64), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 64), (1024, 256, 64, 1), 0) del buf2 triton_poi_fused_tanh_0[grid(4096)](buf3, primals_5, 4096, XBLOCK= 128, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 64), (64, 1), 0), reinterpret_tensor(primals_6, (64, 4), (1, 64), 0), alpha=1, beta=1, out=buf4) del primals_7 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_exp_1[grid(256)](primals_8, buf5, 256, XBLOCK=128, num_warps=4, num_stages=1) return reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_8, (4, 4, 4, 4), (0, 0, 0, 1), 0 ), buf5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf1, buf3, buf5, primals_6, primals_4 class PolicyNew(nn.Module): def __init__(self, num_inputs, num_outputs): super(PolicyNew, self).__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 64) self.action_mean = nn.Linear(64, num_outputs) self.action_mean.weight.data.mul_(0.1) self.action_mean.bias.data.mul_(0.0) self.action_log_std = nn.Parameter(torch.zeros(1, num_outputs)) def forward(self, input_0): primals_8 = self.action_log_std primals_1 = self.affine1.weight primals_2 = self.affine1.bias primals_4 = self.affine2.weight primals_5 = self.affine2.bias primals_6 = self.action_mean.weight primals_7 = self.action_mean.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8]) return output[0], output[1], output[2]
Akella17/Deep-Bayesian-Quadrature-Policy-Optimization
Policy
false
7,644
[ "MIT" ]
16
e98fd68046486c002c33cf019db2ce66da18615b
https://github.com/Akella17/Deep-Bayesian-Quadrature-Policy-Optimization/tree/e98fd68046486c002c33cf019db2ce66da18615b
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, num_inputs, num_outputs): super().__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 64) self.action_mean = nn.Linear(64, num_outputs) self.action_mean.weight.data.mul_(0.1) self.action_mean.bias.data.mul_(0.0) self.action_log_std = nn.Parameter(torch.zeros(1, num_outputs)) def forward(self, x): x = torch.tanh(self.affine1(x)) x = torch.tanh(self.affine2(x)) action_mean = self.action_mean(x) action_log_std = self.action_log_std.expand_as(action_mean) action_std = torch.exp(action_log_std) return action_mean, action_log_std, action_std def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
HSigmoid
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/in/cinpnfhrionin5gpquwoph6guoa32baao7labi6wulqruki5b6sc.py # Topologically Sorted Source Nodes: [add, relu6, out], Original ATen: [aten.add, aten.hardtanh, aten.div] # Source node to ATen node mapping: # add => add # out => div # relu6 => clamp_max, clamp_min # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%clamp_max, 6), kwargs = {}) triton_poi_fused_add_div_hardtanh_0 = async_compile.triton('triton_poi_fused_add_div_hardtanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_hardtanh_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_hardtanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = 0.16666666666666666 tmp8 = tmp6 * tmp7 tl.store(out_ptr0 + (x0), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, relu6, out], Original ATen: [aten.add, aten.hardtanh, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_hardtanh_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data.distributed class HSigmoid(nn.Module): def __init__(self, inplace=True): super(HSigmoid, self).__init__() self.inplace = inplace def forward(self, x): out = F.relu6(x + 3, inplace=self.inplace) / 6 return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data.distributed assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_hardtanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = 0.16666666666666666 tmp8 = tmp6 * tmp7 tl.store(out_ptr0 + x0, tmp8, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_hardtanh_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class HSigmoidNew(nn.Module): def __init__(self, inplace=True): super(HSigmoidNew, self).__init__() self.inplace = inplace def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AberHu/ImageNet-training
HSigmoid
false
7,645
[ "MIT" ]
12
7201eb140176f4d7ec1ed0ff5c27deba2dfb60c2
https://github.com/AberHu/ImageNet-training/tree/7201eb140176f4d7ec1ed0ff5c27deba2dfb60c2
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data.distributed class Model(nn.Module): def __init__(self, inplace=True): super().__init__() self.inplace = inplace def forward(self, x): out = F.relu6(x + 3, inplace=self.inplace) / 6 return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Scale
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/vr/cvrswc7sghptzlhz7ewvsjbd7v2xnbaz46y44nuebjysb3adwjz2.py # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %primals_1), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 return (buf0, primals_2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((), (), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Scale(nn.Module): def __init__(self, scale=1.0): super(Scale, self).__init__() self.scale = nn.Parameter(torch.tensor(scale, dtype=torch.float)) def forward(self, x): return x * self.scale def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 return buf0, primals_2 class ScaleNew(nn.Module): def __init__(self, scale=1.0): super(ScaleNew, self).__init__() self.scale = nn.Parameter(torch.tensor(scale, dtype=torch.float)) def forward(self, input_0): primals_1 = self.scale primals_2 = input_0 output = call([primals_1, primals_2]) return output[0]
AllenPeng0209/SaccadeNet
Scale
false
7,646
[ "Apache-2.0" ]
30
0fce4266cbffc9a2c5f70335efa636da849ce70c
https://github.com/AllenPeng0209/SaccadeNet/tree/0fce4266cbffc9a2c5f70335efa636da849ce70c
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, scale=1.0): super().__init__() self.scale = nn.Parameter(torch.tensor(scale, dtype=torch.float)) def forward(self, x): return x * self.scale def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Abs
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/fb/cfb3z4xf7ylz3vg37cctytpse5pcsfuo5s7wjo4jsafzcmfs5ouw.py # Topologically Sorted Source Nodes: [abs_], Original ATen: [aten.abs] # Source node to ATen node mapping: # abs_ => abs_1 # Graph fragment: # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%arg0_1,), kwargs = {}) # %copy_ : [num_users=1] = call_function[target=torch.ops.aten.copy_.default](args = (%arg0_1, %abs_1), kwargs = {}) triton_poi_fused_abs_0 = async_compile.triton('triton_poi_fused_abs_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_abs_0', 'mutated_arg_names': ['in_ptr0', 'out_ptr1'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_abs_0(in_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl_math.abs(tmp0) tl.store(out_ptr1 + (x0), tmp1, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [abs_], Original ATen: [aten.abs] stream0 = get_raw_stream(0) triton_poi_fused_abs_0.run(arg0_1, arg0_1, 256, grid=grid(256), stream=stream0) return (arg0_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class Abs(ModuleWrapper): def __init__(self): super(Abs, self).__init__() def forward(self, x): return x.abs_() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride @triton.jit def triton_poi_fused_abs_0(in_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl_math.abs(tmp0) tl.store(out_ptr1 + x0, tmp1, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) get_raw_stream(0) triton_poi_fused_abs_0[grid(256)](arg0_1, arg0_1, 256, XBLOCK=128, num_warps=4, num_stages=1) return arg0_1, class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class AbsNew(ModuleWrapper): def __init__(self): super(AbsNew, self).__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlliedToasters/elko_den
Abs
false
7,647
[ "Apache-2.0" ]
38
4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
https://github.com/AlliedToasters/elko_den/tree/4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
import torch import torch.nn as nn class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super().__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class Model(ModuleWrapper): def __init__(self): super().__init__() def forward(self, x): return x.abs_() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GHMC
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/dl/cdlyk5xlew5u6kflrdfuy2ltsiein3sy5bqpnremr4w6ihwn7qo7.py # Topologically Sorted Source Nodes: [valid, float_3, sum_1], Original ATen: [aten.gt, aten._to_copy, aten.sum] # Source node to ATen node mapping: # float_3 => convert_element_type # sum_1 => sum_1 # valid => gt # Graph fragment: # %gt : [num_users=2] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg2_1, 0), kwargs = {}) # %convert_element_type : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt, torch.float32), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type,), kwargs = {}) triton_per_fused__to_copy_gt_sum_0 = async_compile.triton('triton_per_fused__to_copy_gt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i1', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__to_copy_gt_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__to_copy_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tl.store(out_ptr0 + (tl.broadcast_to(r0, [RBLOCK])), tmp2, None) tl.store(out_ptr1 + (tl.full([1], 0, tl.int32)), tmp6, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/fe/cfempj53y7iushsw74t2d3prcg7vrrpc7tvbfgpocvs37fuwsi4l.py # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] # Source node to ATen node mapping: # weights => full_default # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) triton_poi_fused_zeros_like_1 = async_compile.triton('triton_poi_fused_zeros_like_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_zeros_like_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_zeros_like_1(out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + (x0), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/jx/cjxzbgns6sl3h62z2gtnem5gx537rjs3st577el57zgawktnazfb.py # Topologically Sorted Source Nodes: [sigmoid, sub, g], Original ATen: [aten.sigmoid, aten.sub, aten.abs] # Source node to ATen node mapping: # g => abs_1 # sigmoid => sigmoid # sub => sub # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%arg0_1,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sigmoid, %arg1_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) triton_poi_fused_abs_sigmoid_sub_2 = async_compile.triton('triton_poi_fused_abs_sigmoid_sub_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_abs_sigmoid_sub_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_abs_sigmoid_sub_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp2 = tl.load(in_ptr1 + (x0), xmask) tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 - tmp2 tmp4 = tl_math.abs(tmp3) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [valid, float_3, sum_1], Original ATen: [aten.gt, aten._to_copy, aten.sum] stream0 = get_raw_stream(0) triton_per_fused__to_copy_gt_sum_0.run(arg2_1, buf0, buf1, 1, 256, grid=grid(1), stream=stream0) del arg2_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] triton_poi_fused_zeros_like_1.run(buf2, 256, grid=grid(256), stream=stream0) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sigmoid, sub, g], Original ATen: [aten.sigmoid, aten.sub, aten.abs] triton_poi_fused_abs_sigmoid_sub_2.run(arg0_1, arg1_1, buf3, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf1, arg1_1, buf2, buf3, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 bin_label_weights = label_weights.view(-1, 1).expand(label_weights.size (0), label_channels) return bin_labels, bin_label_weights class GHMC(nn.Module): """GHM Classification Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector". https://arxiv.org/abs/1811.05181 Args: bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. use_sigmoid (bool): Can only be true for BCE based loss now. loss_weight (float): The weight of the total GHM-C loss. """ def __init__(self, bins=10, momentum=0, use_sigmoid=True, loss_weight=1.0): super(GHMC, self).__init__() self.bins = bins self.momentum = momentum self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] += 1e-06 if momentum > 0: self.acc_sum = torch.zeros(bins) self.use_sigmoid = use_sigmoid if not self.use_sigmoid: raise NotImplementedError self.loss_weight = loss_weight def forward(self, pred, target, label_weight, *args, **kwargs): """Calculate the GHM-C loss. Args: pred (float tensor of size [batch_num, class_num]): The direct prediction of classification fc layer. target (float tensor of size [batch_num, class_num]): Binary class target for each sample. label_weight (float tensor of size [batch_num, class_num]): the value is 1 if the sample is valid and 0 if ignored. Returns: The gradient harmonized loss. """ if pred.dim() != target.dim(): target, label_weight = _expand_binary_labels(target, label_weight, pred.size(-1)) target, label_weight = target.float(), label_weight.float() edges = self.edges mmt = self.momentum weights = torch.zeros_like(pred) g = torch.abs(pred.sigmoid().detach() - target) valid = label_weight > 0 tot = max(valid.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin n += 1 if n > 0: weights = weights / n loss = F.binary_cross_entropy_with_logits(pred, target, weights, reduction='sum') / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused__to_copy_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tl.store(out_ptr0 + tl.broadcast_to(r0, [RBLOCK]), tmp2, None) tl.store(out_ptr1 + tl.full([1], 0, tl.int32), tmp6, None) @triton.jit def triton_poi_fused_zeros_like_1(out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + x0, tmp0, xmask) @triton.jit def triton_poi_fused_abs_sigmoid_sub_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp2 = tl.load(in_ptr1 + x0, xmask) tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 - tmp2 tmp4 = tl_math.abs(tmp3) tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) buf1 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused__to_copy_gt_sum_0[grid(1)](arg2_1, buf0, buf1, 1, 256, num_warps=2, num_stages=1) del arg2_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_zeros_like_1[grid(256)](buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_abs_sigmoid_sub_2[grid(256)](arg0_1, arg1_1, buf3, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf1, arg1_1, buf2, buf3, buf0 def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 bin_label_weights = label_weights.view(-1, 1).expand(label_weights.size (0), label_channels) return bin_labels, bin_label_weights class GHMCNew(nn.Module): """GHM Classification Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector". https://arxiv.org/abs/1811.05181 Args: bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. use_sigmoid (bool): Can only be true for BCE based loss now. loss_weight (float): The weight of the total GHM-C loss. """ def __init__(self, bins=10, momentum=0, use_sigmoid=True, loss_weight=1.0): super(GHMCNew, self).__init__() self.bins = bins self.momentum = momentum self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] += 1e-06 if momentum > 0: self.acc_sum = torch.zeros(bins) self.use_sigmoid = use_sigmoid if not self.use_sigmoid: raise NotImplementedError self.loss_weight = loss_weight def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AllenPeng0209/SaccadeNet
GHMC
false
7,648
[ "Apache-2.0" ]
30
0fce4266cbffc9a2c5f70335efa636da849ce70c
https://github.com/AllenPeng0209/SaccadeNet/tree/0fce4266cbffc9a2c5f70335efa636da849ce70c
import torch import torch.nn as nn import torch.nn.functional as F def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 bin_label_weights = label_weights.view(-1, 1).expand(label_weights.size (0), label_channels) return bin_labels, bin_label_weights class Model(nn.Module): """GHM Classification Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector". https://arxiv.org/abs/1811.05181 Args: bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. use_sigmoid (bool): Can only be true for BCE based loss now. loss_weight (float): The weight of the total GHM-C loss. """ def __init__(self, bins=10, momentum=0, use_sigmoid=True, loss_weight=1.0): super().__init__() self.bins = bins self.momentum = momentum self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] += 1e-06 if momentum > 0: self.acc_sum = torch.zeros(bins) self.use_sigmoid = use_sigmoid if not self.use_sigmoid: raise NotImplementedError self.loss_weight = loss_weight def forward(self, pred, target, label_weight, *args, **kwargs): """Calculate the GHM-C loss. Args: pred (float tensor of size [batch_num, class_num]): The direct prediction of classification fc layer. target (float tensor of size [batch_num, class_num]): Binary class target for each sample. label_weight (float tensor of size [batch_num, class_num]): the value is 1 if the sample is valid and 0 if ignored. Returns: The gradient harmonized loss. """ if pred.dim() != target.dim(): target, label_weight = _expand_binary_labels(target, label_weight, pred.size(-1)) target, label_weight = target.float(), label_weight.float() edges = self.edges mmt = self.momentum weights = torch.zeros_like(pred) g = torch.abs(pred.sigmoid().detach() - target) valid = label_weight > 0 tot = max(valid.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin n += 1 if n > 0: weights = weights / n loss = F.binary_cross_entropy_with_logits(pred, target, weights, reduction='sum') / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return []
ConvWS2d
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ql/cqlbm6dhwz4x3rm4obwdsb5du532wxmffa4fvmcbmcszaetrazn3.py # Topologically Sorted Source Nodes: [mean, std, sub, add, weight], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div] # Source node to ATen node mapping: # add => add # mean => mean # std => sqrt, var # sub => sub # weight => div # Graph fragment: # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.dim](args = (%view, [1], True), kwargs = {}) # %var : [num_users=1] = call_function[target=torch.ops.aten.var.correction](args = (%view, [1]), kwargs = {correction: 1.0, keepdim: True}) # %sqrt : [num_users=2] = call_function[target=torch.ops.aten.sqrt.default](args = (%var,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_1, %view_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_2, 1e-05), kwargs = {}) # %div : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %add), kwargs = {}) triton_per_fused_add_div_mean_std_sub_0 = async_compile.triton('triton_per_fused_add_div_mean_std_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_mean_std_sub_0', 'mutated_arg_names': ['in_out_ptr0', 'in_out_ptr1'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_mean_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = tmp0 - tmp20 tmp25 = 1e-05 tmp26 = tmp23 + tmp25 tmp27 = tmp24 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + (x0), tmp23, xmask) tl.store(out_ptr0 + (r1 + (64*x0)), tmp27, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/vb/cvbno3dccglzmlbisnwicoai3aocrgweun3buh6avsdqdjjhjczh.py # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] # Source node to ATen node mapping: # conv2d => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %div, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf3 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 1), (1, 1), 0); del buf0 # reuse buf5 = reinterpret_tensor(buf3, (4, 1), (1, 1), 0); del buf3 # reuse buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean, std, sub, add, weight], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div] stream0 = get_raw_stream(0) triton_per_fused_add_div_mean_std_sub_0.run(buf1, buf5, primals_1, buf6, 4, 64, grid=grid(4), stream=stream0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf7 = extern_kernels.convolution(primals_3, buf6, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 4, 1, 1), (4, 1, 1, 1)) buf8 = buf7; del buf7 # reuse # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf8, primals_2, 16, grid=grid(16), stream=stream0) del primals_2 return (buf8, primals_1, primals_3, buf1, buf5, buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def conv_ws_2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1, eps=1e-05): c_in = weight.size(0) weight_flat = weight.view(c_in, -1) mean = weight_flat.mean(dim=1, keepdim=True).view(c_in, 1, 1, 1) std = weight_flat.std(dim=1, keepdim=True).view(c_in, 1, 1, 1) weight = (weight - mean) / (std + eps) return F.conv2d(input, weight, bias, stride, padding, dilation, groups) class ConvWS2d(nn.Conv2d): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, eps=1e-05): super(ConvWS2d, self).__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias) self.eps = eps def forward(self, x): return conv_ws_2d(x, self.weight, self.bias, self.stride, self. padding, self.dilation, self.groups, self.eps) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4, 'kernel_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_add_div_mean_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = tmp0 - tmp20 tmp25 = 1e-05 tmp26 = tmp23 + tmp25 tmp27 = tmp24 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + x0, tmp23, xmask) tl.store(out_ptr0 + (r1 + 64 * x0), tmp27, xmask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf3 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 1), (1, 1), 0) del buf0 buf5 = reinterpret_tensor(buf3, (4, 1), (1, 1), 0) del buf3 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_per_fused_add_div_mean_std_sub_0[grid(4)](buf1, buf5, primals_1, buf6, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) buf7 = extern_kernels.convolution(primals_3, buf6, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 4, 1, 1), (4, 1, 1, 1)) buf8 = buf7 del buf7 triton_poi_fused_convolution_1[grid(16)](buf8, primals_2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_2 return buf8, primals_1, primals_3, buf1, buf5, buf6 def conv_ws_2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1, eps=1e-05): c_in = weight.size(0) weight_flat = weight.view(c_in, -1) mean = weight_flat.mean(dim=1, keepdim=True).view(c_in, 1, 1, 1) std = weight_flat.std(dim=1, keepdim=True).view(c_in, 1, 1, 1) weight = (weight - mean) / (std + eps) return F.conv2d(input, weight, bias, stride, padding, dilation, groups) class ConvWS2dNew(nn.Conv2d): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, eps=1e-05): super(ConvWS2dNew, self).__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias) self.eps = eps def forward(self, input_0): primals_1 = self.weight primals_2 = self.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AllenPeng0209/SaccadeNet
ConvWS2d
false
7,649
[ "Apache-2.0" ]
30
0fce4266cbffc9a2c5f70335efa636da849ce70c
https://github.com/AllenPeng0209/SaccadeNet/tree/0fce4266cbffc9a2c5f70335efa636da849ce70c
import torch import torch.nn as nn import torch.nn.functional as F def conv_ws_2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1, eps=1e-05): c_in = weight.size(0) weight_flat = weight.view(c_in, -1) mean = weight_flat.mean(dim=1, keepdim=True).view(c_in, 1, 1, 1) std = weight_flat.std(dim=1, keepdim=True).view(c_in, 1, 1, 1) weight = (weight - mean) / (std + eps) return F.conv2d(input, weight, bias, stride, padding, dilation, groups) class Model(nn.Conv2d): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, eps=1e-05): super().__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias) self.eps = eps def forward(self, x): return conv_ws_2d(x, self.weight, self.bias, self.stride, self. padding, self.dilation, self.groups, self.eps) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4]
Attention
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/c5/cc5hodm36vyyy6mtrsd3kh6yp3wh2yz4b7xlcd53hs3fb3erko24.py # Topologically Sorted Source Nodes: [score_1], Original ATen: [aten._softmax] # Source node to ATen node mapping: # score_1 => exp # Graph fragment: # %mul_tensor : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%bmm_2, 1), kwargs = {}) # %amax_default : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor, [-1], True), kwargs = {}) # %sub_tensor : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor, %amax_default), kwargs = {}) # %div_tensor : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor, 2.0), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp3 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.5 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + (x2), tmp17, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/yh/cyhf6bhaqimi2pucos5fnrpvhrt4vuaetbxnooyr5pvgjt7s6fgo.py # Topologically Sorted Source Nodes: [score_1], Original ATen: [aten._softmax] # Source node to ATen node mapping: # score_1 => div_1, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [-1], True), kwargs = {}) # %div_1 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) triton_poi_fused__softmax_1 = async_compile.triton('triton_poi_fused__softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (1, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (1, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 16, 4), (64, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [bmm], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(primals_2, (1, 16, 4), (64, 4, 1), 0), primals_3, out=buf0) del primals_3 buf1 = empty_strided_cuda((1, 16, 4), (64, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [bmm_1], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(primals_1, (1, 16, 4), (64, 4, 1), 0), primals_4, out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [qkt], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0), reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0), out=buf2) buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [score_1], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(buf2, buf3, 64, grid=grid(64), stream=stream0) buf4 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [score_1], Original ATen: [aten._softmax] triton_poi_fused__softmax_1.run(buf3, buf4, 64, grid=grid(64), stream=stream0) buf5 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [output], Original ATen: [aten.bmm] extern_kernels.bmm(buf4, reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), out=buf5) return (buf5, reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0), buf4, reinterpret_tensor(buf1, (4, 4, 4), (16, 1, 4), 0), reinterpret_tensor(primals_1, (1, 4, 16), (64, 1, 4), 0), reinterpret_tensor(primals_2, (1, 4, 16), (64, 1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((1, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn import torch.nn.functional as F class Attention(nn.Module): def __init__(self, embed_dim, hidden_dim=None, n_head=1, score_function ='scaled_dot_product'): super(Attention, self).__init__() if hidden_dim is None: hidden_dim = embed_dim self.embed_dim = embed_dim self.hidden_dim = hidden_dim self.n_head = n_head self.score_function = score_function self.w_kx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) self.w_qx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) if score_function == 'mlp': self.weight = nn.Parameter(torch.Tensor(hidden_dim * 2, 1)) elif self.score_function == 'bi_linear': self.weight = nn.Parameter(torch.Tensor(hidden_dim, hidden_dim)) elif self.score_function == 'mlp_sum': self.weight = nn.Parameter(torch.Tensor(hidden_dim, 1)) self.b1 = nn.Parameter(torch.Tensor(hidden_dim)) else: self.register_parameter('weight', None) """ TRY JONATAN WAY score = W_1 tanh ( W_m m_i + W_a + b ) (1) (dx1) (dxd) (d) (dxd) (d) """ def forward(self, k, q): if len(q.shape) == 2: q = torch.unsqueeze(q, dim=1) if len(k.shape) == 2: k = torch.unsqueeze(k, dim=1) mb_size = k.shape[0] k_len = k.shape[1] q_len = q.shape[1] kx = k.repeat(self.n_head, 1, 1).view(self.n_head, -1, self.embed_dim) qx = q.repeat(self.n_head, 1, 1).view(self.n_head, -1, self.embed_dim) kx = torch.bmm(kx, self.w_kx).view(-1, k_len, self.hidden_dim) qx = torch.bmm(qx, self.w_qx).view(-1, q_len, self.hidden_dim) if self.score_function == 'scaled_dot_product': kt = kx.permute(0, 2, 1) qkt = torch.bmm(qx, kt) score = torch.div(qkt, math.sqrt(self.hidden_dim)) elif self.score_function == 'mlp': kxx = torch.unsqueeze(kx, dim=1).expand(-1, q_len, -1, -1) qxx = torch.unsqueeze(qx, dim=2).expand(-1, -1, k_len, -1) kq = torch.cat((kxx, qxx), dim=-1) score = F.tanh(torch.matmul(kq, self.weight).squeeze(dim=-1)) elif self.score_function == 'bi_linear': qw = torch.matmul(q, self.weight) kt = k.permute(0, 2, 1) score = torch.bmm(qw, kt) elif self.score_function == 'mlp_sum': kxx = torch.unsqueeze(kx, dim=1).expand(-1, q_len, -1, -1) qxx = torch.unsqueeze(qx, dim=2).expand(-1, -1, k_len, -1) kq = kxx + qxx + self.b1 score = torch.matmul(F.tanh(kq), self.weight).squeeze(dim=-1) else: raise RuntimeError('invalid score_function') score = F.softmax(score, dim=-1) output = torch.bmm(score, kx) output = torch.cat(torch.split(output, mb_size, dim=0), dim=-1) return output def get_inputs(): return [torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'embed_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp3 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.5 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + x2, tmp17, xmask) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (1, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (1, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 16, 4), (64, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(primals_2, (1, 16, 4), (64, 4, 1), 0), primals_3, out=buf0) del primals_3 buf1 = empty_strided_cuda((1, 16, 4), (64, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(primals_1, (1, 16, 4), (64, 4, 1), 0), primals_4, out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0), reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0), out=buf2) buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(64)](buf2, buf3, 64, XBLOCK=64, num_warps=1, num_stages=1) buf4 = buf2 del buf2 triton_poi_fused__softmax_1[grid(64)](buf3, buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) buf5 = buf3 del buf3 extern_kernels.bmm(buf4, reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), out=buf5) return buf5, reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0 ), buf4, reinterpret_tensor(buf1, (4, 4, 4), (16, 1, 4), 0 ), reinterpret_tensor(primals_1, (1, 4, 16), (64, 1, 4), 0 ), reinterpret_tensor(primals_2, (1, 4, 16), (64, 1, 4), 0) class AttentionNew(nn.Module): def __init__(self, embed_dim, hidden_dim=None, n_head=1, score_function ='scaled_dot_product'): super(AttentionNew, self).__init__() if hidden_dim is None: hidden_dim = embed_dim self.embed_dim = embed_dim self.hidden_dim = hidden_dim self.n_head = n_head self.score_function = score_function self.w_kx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) self.w_qx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) if score_function == 'mlp': self.weight = nn.Parameter(torch.Tensor(hidden_dim * 2, 1)) elif self.score_function == 'bi_linear': self.weight = nn.Parameter(torch.Tensor(hidden_dim, hidden_dim)) elif self.score_function == 'mlp_sum': self.weight = nn.Parameter(torch.Tensor(hidden_dim, 1)) self.b1 = nn.Parameter(torch.Tensor(hidden_dim)) else: self.register_parameter('weight', None) """ TRY JONATAN WAY score = W_1 tanh ( W_m m_i + W_a + b ) (1) (dx1) (dxd) (d) (dxd) (d) """ def forward(self, input_0, input_1): primals_3 = self.w_kx primals_4 = self.w_qx primals_1 = input_0 primals_2 = input_1 output = call([primals_1, primals_2, primals_3, primals_4]) return output[0]
AlbertoPaz/ABSA-PyTorch
Attention
false
7,650
[ "MIT" ]
20
070a4b6f20cde0e2021c72b84c534659d749f36e
https://github.com/AlbertoPaz/ABSA-PyTorch/tree/070a4b6f20cde0e2021c72b84c534659d749f36e
import math import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): def __init__(self, embed_dim, hidden_dim=None, n_head=1, score_function ='scaled_dot_product'): super().__init__() if hidden_dim is None: hidden_dim = embed_dim self.embed_dim = embed_dim self.hidden_dim = hidden_dim self.n_head = n_head self.score_function = score_function self.w_kx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) self.w_qx = nn.Parameter(torch.FloatTensor(n_head, embed_dim, hidden_dim)) if score_function == 'mlp': self.weight = nn.Parameter(torch.Tensor(hidden_dim * 2, 1)) elif self.score_function == 'bi_linear': self.weight = nn.Parameter(torch.Tensor(hidden_dim, hidden_dim)) elif self.score_function == 'mlp_sum': self.weight = nn.Parameter(torch.Tensor(hidden_dim, 1)) self.b1 = nn.Parameter(torch.Tensor(hidden_dim)) else: self.register_parameter('weight', None) """ TRY JONATAN WAY score = W_1 tanh ( W_m m_i + W_a + b ) (1) (dx1) (dxd) (d) (dxd) (d) """ def forward(self, k, q): if len(q.shape) == 2: q = torch.unsqueeze(q, dim=1) if len(k.shape) == 2: k = torch.unsqueeze(k, dim=1) mb_size = k.shape[0] k_len = k.shape[1] q_len = q.shape[1] kx = k.repeat(self.n_head, 1, 1).view(self.n_head, -1, self.embed_dim) qx = q.repeat(self.n_head, 1, 1).view(self.n_head, -1, self.embed_dim) kx = torch.bmm(kx, self.w_kx).view(-1, k_len, self.hidden_dim) qx = torch.bmm(qx, self.w_qx).view(-1, q_len, self.hidden_dim) if self.score_function == 'scaled_dot_product': kt = kx.permute(0, 2, 1) qkt = torch.bmm(qx, kt) score = torch.div(qkt, math.sqrt(self.hidden_dim)) elif self.score_function == 'mlp': kxx = torch.unsqueeze(kx, dim=1).expand(-1, q_len, -1, -1) qxx = torch.unsqueeze(qx, dim=2).expand(-1, -1, k_len, -1) kq = torch.cat((kxx, qxx), dim=-1) score = F.tanh(torch.matmul(kq, self.weight).squeeze(dim=-1)) elif self.score_function == 'bi_linear': qw = torch.matmul(q, self.weight) kt = k.permute(0, 2, 1) score = torch.bmm(qw, kt) elif self.score_function == 'mlp_sum': kxx = torch.unsqueeze(kx, dim=1).expand(-1, q_len, -1, -1) qxx = torch.unsqueeze(qx, dim=2).expand(-1, -1, k_len, -1) kq = kxx + qxx + self.b1 score = torch.matmul(F.tanh(kq), self.weight).squeeze(dim=-1) else: raise RuntimeError('invalid score_function') score = F.softmax(score, dim=-1) output = torch.bmm(score, kx) output = torch.cat(torch.split(output, mb_size, dim=0), dim=-1) return output def get_inputs(): return [torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [4]
SmoothL1Loss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/y2/cy2kyw6nvxnpk42drczfgvzr6mi4sv4worqdnnuo5wic2q7bjptf.py # Topologically Sorted Source Nodes: [sub, diff, lt, mul, mul_1, truediv, sub_1, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.div, aten.where, aten.mean] # Source node to ATen node mapping: # diff => abs_1 # loss => where # loss_1 => mean # loss_bbox => mul_2 # lt => lt # mul => mul # mul_1 => mul_1 # sub => sub # sub_1 => sub_1 # truediv => div # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=4] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %lt : [num_users=1] = call_function[target=torch.ops.aten.lt.Scalar](args = (%abs_1, 1.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %abs_1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_1, 1.0), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%lt, %div, %sub_1), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%where,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_abs_div_lt_mean_mul_sub_where_0 = async_compile.triton('triton_per_fused_abs_div_lt_mean_mul_sub_where_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_div_lt_mean_mul_sub_where_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_div_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = tmp7 * tmp3 tmp9 = tmp8 * tmp4 tmp10 = tmp3 - tmp6 tmp11 = tl.where(tmp5, tmp9, tmp10) tmp12 = tl.broadcast_to(tmp11, [RBLOCK]) tmp14 = triton_helpers.promote_to_tensor(tl.sum(tmp12, 0)) tmp15 = 256.0 tmp16 = tmp14 / tmp15 tmp17 = tmp16 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp17, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [sub, diff, lt, mul, mul_1, truediv, sub_1, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.div, aten.where, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_abs_div_lt_mean_mul_sub_where_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def smooth_l1_loss(pred, target, beta=1.0): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) loss = torch.where(diff < beta, 0.5 * diff * diff / beta, diff - 0.5 * beta ) return loss class SmoothL1Loss(nn.Module): def __init__(self, beta=1.0, reduction='mean', loss_weight=1.0): super(SmoothL1Loss, self).__init__() self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None, **kwargs): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * smooth_l1_loss(pred, target, weight, beta=self.beta, reduction=reduction, avg_factor=avg_factor, ** kwargs) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_div_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = tmp7 * tmp3 tmp9 = tmp8 * tmp4 tmp10 = tmp3 - tmp6 tmp11 = tl.where(tmp5, tmp9, tmp10) tmp12 = tl.broadcast_to(tmp11, [RBLOCK]) tmp14 = triton_helpers.promote_to_tensor(tl.sum(tmp12, 0)) tmp15 = 256.0 tmp16 = tmp14 / tmp15 tmp17 = tmp16 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp17, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_abs_div_lt_mean_mul_sub_where_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def smooth_l1_loss(pred, target, beta=1.0): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) loss = torch.where(diff < beta, 0.5 * diff * diff / beta, diff - 0.5 * beta ) return loss class SmoothL1LossNew(nn.Module): def __init__(self, beta=1.0, reduction='mean', loss_weight=1.0): super(SmoothL1LossNew, self).__init__() self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AllenPeng0209/SaccadeNet
SmoothL1Loss
false
7,651
[ "Apache-2.0" ]
30
0fce4266cbffc9a2c5f70335efa636da849ce70c
https://github.com/AllenPeng0209/SaccadeNet/tree/0fce4266cbffc9a2c5f70335efa636da849ce70c
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def smooth_l1_loss(pred, target, beta=1.0): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) loss = torch.where(diff < beta, 0.5 * diff * diff / beta, diff - 0.5 * beta ) return loss class Model(nn.Module): def __init__(self, beta=1.0, reduction='mean', loss_weight=1.0): super().__init__() self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None, **kwargs): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * smooth_l1_loss(pred, target, weight, beta=self.beta, reduction=reduction, avg_factor=avg_factor, ** kwargs) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
KL_loss_softmax
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/jk/cjkygsz7qcyhxtoqo2c7yb2wrlyp76ysntoh6beuhhge5px2rhvs.py # Topologically Sorted Source Nodes: [KL_loss, img_prob, loss], Original ATen: [aten.xlogy, aten.log, aten.mul, aten.sub, aten.sum] # Source node to ATen node mapping: # KL_loss => eq, full_default, full_default_1, isnan, log_1, mul, mul_1, sub, where, where_1 # img_prob => log # loss => sum_1 # Graph fragment: # %isnan : [num_users=1] = call_function[target=torch.ops.aten.isnan.default](args = (%arg1_1,), kwargs = {}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], nan), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Scalar](args = (%arg1_1, 0), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%arg1_1,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, %log_1), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%eq, %full_default, %mul_1), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%isnan, %full_default_1, %where), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%arg0_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, %log), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %mul), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%sub,), kwargs = {}) triton_per_fused_log_mul_sub_sum_xlogy_0 = async_compile.triton('triton_per_fused_log_mul_sub_sum_xlogy_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_log_mul_sub_sum_xlogy_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_log_mul_sub_sum_xlogy_0(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp9 = tl.load(in_ptr1 + (r0), None) tmp1 = libdevice.isnan(tmp0).to(tl.int1) tmp2 = 0.0 tmp3 = tmp0 == tmp2 tmp4 = tl_math.log(tmp0) tmp5 = tmp0 * tmp4 tmp6 = tl.where(tmp3, tmp2, tmp5) tmp7 = float("nan") tmp8 = tl.where(tmp1, tmp7, tmp6) tmp10 = tl_math.log(tmp9) tmp11 = tmp0 * tmp10 tmp12 = tmp8 - tmp11 tmp13 = tl.broadcast_to(tmp12, [RBLOCK]) tmp15 = triton_helpers.promote_to_tensor(tl.sum(tmp13, 0)) tl.store(out_ptr0 + (tl.full([1], 0, tl.int32)), tmp15, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [KL_loss, img_prob, loss], Original ATen: [aten.xlogy, aten.log, aten.mul, aten.sub, aten.sum] stream0 = get_raw_stream(0) triton_per_fused_log_mul_sub_sum_xlogy_0.run(arg1_1, arg0_1, buf0, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.init class KL_loss_softmax(nn.Module): """ Compute KL_divergence between all prediction score (already sum=1, omit softmax function) """ def __init__(self): super(KL_loss_softmax, self).__init__() self.KL_loss = nn.KLDivLoss(reduce=False) def forward(self, im, s): img_prob = torch.log(im) s_prob = s KL_loss = self.KL_loss(img_prob, s_prob) loss = KL_loss.sum() return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn import torch.nn.init assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_log_mul_sub_sum_xlogy_0(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp9 = tl.load(in_ptr1 + r0, None) tmp1 = libdevice.isnan(tmp0).to(tl.int1) tmp2 = 0.0 tmp3 = tmp0 == tmp2 tmp4 = tl_math.log(tmp0) tmp5 = tmp0 * tmp4 tmp6 = tl.where(tmp3, tmp2, tmp5) tmp7 = float('nan') tmp8 = tl.where(tmp1, tmp7, tmp6) tmp10 = tl_math.log(tmp9) tmp11 = tmp0 * tmp10 tmp12 = tmp8 - tmp11 tmp13 = tl.broadcast_to(tmp12, [RBLOCK]) tmp15 = triton_helpers.promote_to_tensor(tl.sum(tmp13, 0)) tl.store(out_ptr0 + tl.full([1], 0, tl.int32), tmp15, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused_log_mul_sub_sum_xlogy_0[grid(1)](arg1_1, arg0_1, buf0, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf0, class KL_loss_softmaxNew(nn.Module): """ Compute KL_divergence between all prediction score (already sum=1, omit softmax function) """ def __init__(self): super(KL_loss_softmaxNew, self).__init__() self.KL_loss = nn.KLDivLoss(reduce=False) def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AndresPMD/semantic_adaptive_margin
KL_loss_softmax
false
7,652
[ "Apache-2.0" ]
12
1e8bf2f1836498c48df030cb0a967b72b52e8460
https://github.com/AndresPMD/semantic_adaptive_margin/tree/1e8bf2f1836498c48df030cb0a967b72b52e8460
import torch import torch.nn as nn import torch.nn.init class Model(nn.Module): """ Compute KL_divergence between all prediction score (already sum=1, omit softmax function) """ def __init__(self): super().__init__() self.KL_loss = nn.KLDivLoss(reduce=False) def forward(self, im, s): img_prob = torch.log(im) s_prob = s KL_loss = self.KL_loss(img_prob, s_prob) loss = KL_loss.sum() return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Centered_Grad
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/cx/ccxv2gddx3aj3sz6nkndhqvo3cxhrcahhkhcpxra2clpmdiwddhw.py # Topologically Sorted Source Nodes: [diff_x_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # diff_x_1 => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%mul, %slice_20, %mul_1], 3), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16384 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = (xindex // 64) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 1, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (1 + (64*x1)), tmp4, eviction_policy='evict_last', other=0.0) tmp6 = tl.load(in_ptr0 + (64*x1), tmp4, eviction_policy='evict_last', other=0.0) tmp7 = tmp5 - tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tmp13 = tl.full([1], 63, tl.int64) tmp14 = tmp0 < tmp13 tmp15 = tmp12 & tmp14 tmp16 = tl.load(in_ptr1 + (1 + (64*x1) + ((-1) + x0)), tmp15, eviction_policy='evict_last', other=0.0) tmp17 = tmp0 >= tmp13 tmp18 = tl.full([1], 64, tl.int64) tmp19 = tmp0 < tmp18 tmp20 = tl.load(in_ptr0 + (63 + (64*x1)), tmp17, eviction_policy='evict_last', other=0.0) tmp21 = tl.load(in_ptr0 + (62 + (64*x1)), tmp17, eviction_policy='evict_last', other=0.0) tmp22 = tmp20 - tmp21 tmp23 = tmp22 * tmp8 tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp17, tmp23, tmp24) tmp26 = tl.where(tmp15, tmp16, tmp25) tmp27 = tl.where(tmp4, tmp11, tmp26) tl.store(out_ptr0 + (x2), tmp27, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/je/cjeo7qorxupmmefggd6adcalocz2e73k5vsn5b22yzaqjmvjorqf.py # Topologically Sorted Source Nodes: [diff_y_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # diff_y_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%mul_2, %slice_39, %mul_3], 2), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16384 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 64) % 64 x0 = xindex % 64 x2 = (xindex // 4096) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 1, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (64 + x0 + (4096*x2)), tmp4, eviction_policy='evict_last', other=0.0) tmp6 = tl.load(in_ptr0 + (x0 + (4096*x2)), tmp4, eviction_policy='evict_last', other=0.0) tmp7 = tmp5 - tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tmp13 = tl.full([1], 63, tl.int64) tmp14 = tmp0 < tmp13 tmp15 = tmp12 & tmp14 tmp16 = tl.load(in_ptr1 + (64 + x0 + (64*((-1) + x1)) + (4096*x2)), tmp15, other=0.0) tmp17 = tmp0 >= tmp13 tmp18 = tl.full([1], 64, tl.int64) tmp19 = tmp0 < tmp18 tmp20 = tl.load(in_ptr0 + (4032 + x0 + (4096*x2)), tmp17, eviction_policy='evict_last', other=0.0) tmp21 = tl.load(in_ptr0 + (3968 + x0 + (4096*x2)), tmp17, eviction_policy='evict_last', other=0.0) tmp22 = tmp20 - tmp21 tmp23 = tmp22 * tmp8 tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp17, tmp23, tmp24) tmp26 = tl.where(tmp15, tmp16, tmp25) tmp27 = tl.where(tmp4, tmp11, tmp26) tl.store(out_ptr0 + (x3), tmp27, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_2, (1, 1, 1, 3), (3, 3, 3, 1)) assert_size_stride(primals_3, (1, 1, 3, 1), (3, 3, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [diff_x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 64, 64), (4096, 4096, 64, 1)) # Topologically Sorted Source Nodes: [diff_y], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(primals_1, primals_3, stride=(1, 1), padding=(1, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf2 = empty_strided_cuda((4, 1, 64, 64), (4096, 4096, 64, 1), torch.float32) # Topologically Sorted Source Nodes: [diff_x_1], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, buf0, buf2, 16384, grid=grid(16384), stream=stream0) buf3 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [diff_y_1], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(primals_1, buf1, buf3, 16384, grid=grid(16384), stream=stream0) del buf1 return (buf2, buf3, primals_1, primals_2, primals_3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 1, 64, 64), (4096, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 1, 1, 3), (3, 3, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, 1, 3, 1), (3, 3, 1, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Centered_Grad(nn.Module): def __init__(self): super(Centered_Grad, self).__init__() self.x_ker_init = torch.tensor([[[[-0.5, 0, 0.5]]]], dtype=torch. float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-0.5], [0], [0.5]]]], dtype= torch.float, requires_grad=True) self.center_conv_x = nn.Conv2d(1, 1, (1, 3), padding=(0, 1), bias=False ) self.center_conv_x.weight.data = self.x_ker_init self.center_conv_y = nn.Conv2d(1, 1, (3, 1), padding=(1, 0), bias=False ) self.center_conv_y.weight.data = self.y_ker_init def forward(self, x): assert len(x.shape) == 4 diff_x = self.center_conv_x(x) diff_y = self.center_conv_y(x) first_col = 0.5 * (x[:, :, :, 1:2] - x[:, :, :, 0:1]) last_col = 0.5 * (x[:, :, :, -1:] - x[:, :, :, -2:-1]) diff_x_valid = diff_x[:, :, :, 1:-1] diff_x = torch.cat((first_col, diff_x_valid, last_col), 3) first_row = 0.5 * (x[:, :, 1:2, :] - x[:, :, 0:1, :]) last_row = 0.5 * (x[:, :, -1:, :] - x[:, :, -2:-1, :]) diff_y_valid = diff_y[:, :, 1:-1, :] diff_y = torch.cat((first_row, diff_y_valid, last_row), 2) return diff_x, diff_y def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = xindex // 64 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 1, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (1 + 64 * x1), tmp4, eviction_policy= 'evict_last', other=0.0) tmp6 = tl.load(in_ptr0 + 64 * x1, tmp4, eviction_policy='evict_last', other=0.0) tmp7 = tmp5 - tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tmp13 = tl.full([1], 63, tl.int64) tmp14 = tmp0 < tmp13 tmp15 = tmp12 & tmp14 tmp16 = tl.load(in_ptr1 + (1 + 64 * x1 + (-1 + x0)), tmp15, eviction_policy='evict_last', other=0.0) tmp17 = tmp0 >= tmp13 tl.full([1], 64, tl.int64) tmp20 = tl.load(in_ptr0 + (63 + 64 * x1), tmp17, eviction_policy= 'evict_last', other=0.0) tmp21 = tl.load(in_ptr0 + (62 + 64 * x1), tmp17, eviction_policy= 'evict_last', other=0.0) tmp22 = tmp20 - tmp21 tmp23 = tmp22 * tmp8 tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp17, tmp23, tmp24) tmp26 = tl.where(tmp15, tmp16, tmp25) tmp27 = tl.where(tmp4, tmp11, tmp26) tl.store(out_ptr0 + x2, tmp27, None) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 64 % 64 x0 = xindex % 64 x2 = xindex // 4096 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 1, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (64 + x0 + 4096 * x2), tmp4, eviction_policy= 'evict_last', other=0.0) tmp6 = tl.load(in_ptr0 + (x0 + 4096 * x2), tmp4, eviction_policy= 'evict_last', other=0.0) tmp7 = tmp5 - tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tmp13 = tl.full([1], 63, tl.int64) tmp14 = tmp0 < tmp13 tmp15 = tmp12 & tmp14 tmp16 = tl.load(in_ptr1 + (64 + x0 + 64 * (-1 + x1) + 4096 * x2), tmp15, other=0.0) tmp17 = tmp0 >= tmp13 tl.full([1], 64, tl.int64) tmp20 = tl.load(in_ptr0 + (4032 + x0 + 4096 * x2), tmp17, eviction_policy='evict_last', other=0.0) tmp21 = tl.load(in_ptr0 + (3968 + x0 + 4096 * x2), tmp17, eviction_policy='evict_last', other=0.0) tmp22 = tmp20 - tmp21 tmp23 = tmp22 * tmp8 tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp17, tmp23, tmp24) tmp26 = tl.where(tmp15, tmp16, tmp25) tmp27 = tl.where(tmp4, tmp11, tmp26) tl.store(out_ptr0 + x3, tmp27, None) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_2, (1, 1, 1, 3), (3, 3, 3, 1)) assert_size_stride(primals_3, (1, 1, 3, 1), (3, 3, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf1 = extern_kernels.convolution(primals_1, primals_3, stride=(1, 1), padding=(1, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf2 = empty_strided_cuda((4, 1, 64, 64), (4096, 4096, 64, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(16384)](primals_1, buf0, buf2, 16384, XBLOCK=128, num_warps=4, num_stages=1) buf3 = buf0 del buf0 triton_poi_fused_cat_1[grid(16384)](primals_1, buf1, buf3, 16384, XBLOCK=256, num_warps=4, num_stages=1) del buf1 return buf2, buf3, primals_1, primals_2, primals_3 class Centered_GradNew(nn.Module): def __init__(self): super(Centered_GradNew, self).__init__() self.x_ker_init = torch.tensor([[[[-0.5, 0, 0.5]]]], dtype=torch. float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-0.5], [0], [0.5]]]], dtype= torch.float, requires_grad=True) self.center_conv_x = nn.Conv2d(1, 1, (1, 3), padding=(0, 1), bias=False ) self.center_conv_x.weight.data = self.x_ker_init self.center_conv_y = nn.Conv2d(1, 1, (3, 1), padding=(1, 0), bias=False ) self.center_conv_y.weight.data = self.y_ker_init def forward(self, input_0): primals_2 = self.center_conv_x.weight primals_3 = self.center_conv_y.weight primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0], output[1]
AmazingAng/pytorch-tvnet
Centered_Grad
false
7,653
[ "MIT" ]
12
e880d3ce15f55e5d9a11b423cfd1e0461de4fedb
https://github.com/AmazingAng/pytorch-tvnet/tree/e880d3ce15f55e5d9a11b423cfd1e0461de4fedb
import torch import torch.nn as nn class Model(nn.Module): def __init__(self): super().__init__() self.x_ker_init = torch.tensor([[[[-0.5, 0, 0.5]]]], dtype=torch. float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-0.5], [0], [0.5]]]], dtype= torch.float, requires_grad=True) self.center_conv_x = nn.Conv2d(1, 1, (1, 3), padding=(0, 1), bias=False ) self.center_conv_x.weight.data = self.x_ker_init self.center_conv_y = nn.Conv2d(1, 1, (3, 1), padding=(1, 0), bias=False ) self.center_conv_y.weight.data = self.y_ker_init def forward(self, x): assert len(x.shape) == 4 diff_x = self.center_conv_x(x) diff_y = self.center_conv_y(x) first_col = 0.5 * (x[:, :, :, 1:2] - x[:, :, :, 0:1]) last_col = 0.5 * (x[:, :, :, -1:] - x[:, :, :, -2:-1]) diff_x_valid = diff_x[:, :, :, 1:-1] diff_x = torch.cat((first_col, diff_x_valid, last_col), 3) first_row = 0.5 * (x[:, :, 1:2, :] - x[:, :, 0:1, :]) last_row = 0.5 * (x[:, :, -1:, :] - x[:, :, -2:-1, :]) diff_y_valid = diff_y[:, :, 1:-1, :] diff_y = torch.cat((first_row, diff_y_valid, last_row), 2) return diff_x, diff_y def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return []
ShuffleBlock
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/vr/cvrmrmbci4c2hnpwq4c37fibr2gjdhuxvy5znuzrgwceytc6vcrd.py # Topologically Sorted Source Nodes: [reshape], Original ATen: [aten.clone] # Source node to ATen node mapping: # reshape => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_0 = async_compile.triton('triton_poi_fused_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) % 2 x2 = (xindex // 32) % 2 x3 = (xindex // 64) x4 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x2) + (32*x1) + (64*x3)), xmask) tl.store(out_ptr0 + (x4), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2, 2, 4, 4), (64, 32, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [reshape], Original ATen: [aten.clone] stream0 = get_raw_stream(0) triton_poi_fused_clone_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class ShuffleBlock(nn.Module): def __init__(self, groups=2): super(ShuffleBlock, self).__init__() self.groups = groups def forward(self, x): """Channel shuffle: [N,C,H,W] -> [N,g,C/g,H,W] -> [N,C/g,g,H,w] -> [N,C,H,W]""" N, C, H, W = x.size() g = self.groups return x.view(N, g, C // g, H, W).permute(0, 2, 1, 3, 4).reshape(N, C, H, W) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 % 2 x2 = xindex // 32 % 2 x3 = xindex // 64 x4 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x2 + 32 * x1 + 64 * x3), xmask) tl.store(out_ptr0 + x4, tmp0, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2, 2, 4, 4), (64, 32, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_clone_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0), class ShuffleBlockNew(nn.Module): def __init__(self, groups=2): super(ShuffleBlockNew, self).__init__() self.groups = groups def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
ShuffleBlock
false
7,654
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn class Model(nn.Module): def __init__(self, groups=2): super().__init__() self.groups = groups def forward(self, x): """Channel shuffle: [N,C,H,W] -> [N,g,C/g,H,W] -> [N,C/g,g,H,w] -> [N,C,H,W]""" N, C, H, W = x.size() g = self.groups return x.view(N, g, C // g, H, W).permute(0, 2, 1, 3, 4).reshape(N, C, H, W) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GLU
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/6x/c6x2iv3qqgtlotzklg2q6x2zg5xznndbqltg7hdhkvfuwxryeznf.py # Topologically Sorted Source Nodes: [sigmoid, mul], Original ATen: [aten.sigmoid, aten.mul] # Source node to ATen node mapping: # mul => mul # sigmoid => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_3,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, %sigmoid), kwargs = {}) triton_poi_fused_mul_sigmoid_0 = async_compile.triton('triton_poi_fused_mul_sigmoid_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sigmoid_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sigmoid_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask) tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sigmoid, mul], Original ATen: [aten.sigmoid, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_sigmoid_0.run(buf0, buf1, buf2, 256, grid=grid(256), stream=stream0) return (buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class GLU(nn.Module): def __init__(self, input_channel, output_channel): super(GLU, self).__init__() self.linear_left = nn.Linear(input_channel, output_channel) self.linear_right = nn.Linear(input_channel, output_channel) def forward(self, x): return torch.mul(self.linear_left(x), torch.sigmoid(self. linear_right(x))) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_channel': 4, 'output_channel': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_sigmoid_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask) tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_sigmoid_0[grid(256)](buf0, buf1, buf2, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, buf1 class GLUNew(nn.Module): def __init__(self, input_channel, output_channel): super(GLUNew, self).__init__() self.linear_left = nn.Linear(input_channel, output_channel) self.linear_right = nn.Linear(input_channel, output_channel) def forward(self, input_0): primals_1 = self.linear_left.weight primals_2 = self.linear_left.bias primals_4 = self.linear_right.weight primals_5 = self.linear_right.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Abdulmajid-Murad/deep_probabilistic_forecast
GLU
false
7,655
[ "MIT" ]
11
399846381af4bb789021c9f63f121dd69fa0125d
https://github.com/Abdulmajid-Murad/deep_probabilistic_forecast/tree/399846381af4bb789021c9f63f121dd69fa0125d
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, input_channel, output_channel): super().__init__() self.linear_left = nn.Linear(input_channel, output_channel) self.linear_right = nn.Linear(input_channel, output_channel) def forward(self, x): return torch.mul(self.linear_left(x), torch.sigmoid(self. linear_right(x))) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
ActFirstResBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ma/cmanupwddvzvon4q6bglvdqoeioxc535xxndoqm3cgysc5navcoe.py # Topologically Sorted Source Nodes: [x, pad], Original ATen: [aten.leaky_relu, aten.reflection_pad2d] # Source node to ATen node mapping: # pad => _unsafe_index, _unsafe_index_1 # x => gt, mul, where # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%primals_1, 0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, 0.2), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %primals_1, %mul), kwargs = {}) # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%where, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_1]), kwargs = {}) triton_poi_fused_leaky_relu_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_leaky_relu_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_leaky_relu_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_leaky_relu_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = (xindex // 6) % 6 x2 = (xindex // 36) x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = 0.2 tmp4 = tmp0 * tmp3 tmp5 = tl.where(tmp2, tmp0, tmp4) tl.store(out_ptr0 + (x3), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ih/cihlftpwgtk4yraihwptiu4hqxoe33dn6zddukybwzhuojnpp655.py # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.leaky_relu] # Source node to ATen node mapping: # x_1 => convolution # x_2 => gt_1 # Graph fragment: # %convolution : [num_users=3] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %gt_1 : [num_users=2] = call_function[target=torch.ops.aten.gt.Scalar](args = (%convolution, 0), kwargs = {}) triton_poi_fused_convolution_leaky_relu_1 = async_compile.triton('triton_poi_fused_convolution_leaky_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_leaky_relu_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_leaky_relu_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tl.store(out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/v5/cv5fuuvvitfgc3perrd4eqjcvd4dqtar2l6difavpwebyip2dajs.py # Topologically Sorted Source Nodes: [x_1, x_2, pad_1], Original ATen: [aten.convolution, aten.leaky_relu, aten.reflection_pad2d] # Source node to ATen node mapping: # pad_1 => _unsafe_index_2, _unsafe_index_3 # x_1 => convolution # x_2 => mul_1, where_1 # Graph fragment: # %convolution : [num_users=3] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convolution, 0.2), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt_1, %convolution, %mul_1), kwargs = {}) # %_unsafe_index_2 : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%where_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_3 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index_2, [None, None, None, %sub_1]), kwargs = {}) triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2 = async_compile.triton('triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*i1', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = (xindex // 6) % 6 x4 = (xindex // 36) x2 = (xindex // 36) % 4 x5 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x4)), xmask, eviction_policy='evict_last').to(tl.int1) tmp1 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x4)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr2 + (x2), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = 0.2 tmp5 = tmp3 * tmp4 tmp6 = tl.where(tmp0, tmp3, tmp5) tl.store(out_ptr0 + (x5), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/hw/chwapiiohzp4fn4zpe26ce3sbi6qpbafn7besvpgzzwhziaogy3t.py # Topologically Sorted Source Nodes: [x_3, out], Original ATen: [aten.convolution, aten.add] # Source node to ATen node mapping: # out => add # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_3, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_1, %convolution_1), kwargs = {}) triton_poi_fused_add_convolution_3 = async_compile.triton('triton_poi_fused_add_convolution_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_convolution_3', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_convolution_3(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_out_ptr0 + (x3), xmask) tmp2 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 + tmp3 tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [x, pad], Original ATen: [aten.leaky_relu, aten.reflection_pad2d] stream0 = get_raw_stream(0) triton_poi_fused_leaky_relu_reflection_pad2d_0.run(primals_1, buf0, 576, grid=grid(576), stream=stream0) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.leaky_relu] triton_poi_fused_convolution_leaky_relu_1.run(buf1, primals_3, buf2, 256, grid=grid(256), stream=stream0) buf3 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1, x_2, pad_1], Original ATen: [aten.convolution, aten.leaky_relu, aten.reflection_pad2d] triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2.run(buf2, buf1, primals_3, buf3, 576, grid=grid(576), stream=stream0) del buf1 del primals_3 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 4, 4), (64, 16, 4, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [x_3, out], Original ATen: [aten.convolution, aten.add] triton_poi_fused_add_convolution_3.run(buf5, primals_1, primals_5, 256, grid=grid(256), stream=stream0) del primals_1 del primals_5 return (buf5, primals_2, primals_4, buf0, buf2, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn.functional as F from torch import nn class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super(AdaptiveInstanceNorm2d, self).__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign AdaIN weight first' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class Conv2dBlock(nn.Module): def __init__(self, in_dim, out_dim, ks, st, padding=0, norm='none', activation='relu', pad_type='zero', use_bias=True, activation_first =False): super(Conv2dBlock, self).__init__() self.use_bias = use_bias self.activation_first = activation_first if pad_type == 'reflect': self.pad = nn.ReflectionPad2d(padding) elif pad_type == 'replicate': self.pad = nn.ReplicationPad2d(padding) elif pad_type == 'zero': self.pad = nn.ZeroPad2d(padding) else: assert 0, 'Unsupported padding type: {}'.format(pad_type) norm_dim = out_dim if norm == 'bn': self.norm = nn.BatchNorm2d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm2d(norm_dim) elif norm == 'adain': self.norm = AdaptiveInstanceNorm2d(norm_dim) elif norm == 'none': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=False) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=False) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) self.conv = nn.Conv2d(in_dim, out_dim, ks, st, bias=self.use_bias) def forward(self, x): if self.activation_first: if self.activation: x = self.activation(x) x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) else: x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) if self.activation: x = self.activation(x) return x class ActFirstResBlock(nn.Module): def __init__(self, fin, fout, fhid=None, activation='lrelu', norm='none'): super().__init__() self.learned_shortcut = fin != fout self.fin = fin self.fout = fout self.fhid = min(fin, fout) if fhid is None else fhid self.conv_0 = Conv2dBlock(self.fin, self.fhid, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) self.conv_1 = Conv2dBlock(self.fhid, self.fout, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) if self.learned_shortcut: self.conv_s = Conv2dBlock(self.fin, self.fout, 1, 1, activation ='none', use_bias=False) def forward(self, x): x_s = self.conv_s(x) if self.learned_shortcut else x dx = self.conv_0(x) dx = self.conv_1(dx) out = x_s + dx return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'fin': 4, 'fout': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn.functional as F from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_leaky_relu_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = xindex // 6 % 6 x2 = xindex // 36 x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = 0.2 tmp4 = tmp0 * tmp3 tmp5 = tl.where(tmp2, tmp0, tmp4) tl.store(out_ptr0 + x3, tmp5, xmask) @triton.jit def triton_poi_fused_convolution_leaky_relu_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tl.store(out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = xindex // 6 % 6 x4 = xindex // 36 x2 = xindex // 36 % 4 x5 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x4), xmask, eviction_policy='evict_last').to(tl.int1) tmp1 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x4), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr2 + x2, xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = 0.2 tmp5 = tmp3 * tmp4 tmp6 = tl.where(tmp0, tmp3, tmp5) tl.store(out_ptr0 + x5, tmp6, xmask) @triton.jit def triton_poi_fused_add_convolution_3(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_out_ptr0 + x3, xmask) tmp2 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 + tmp3 tl.store(in_out_ptr0 + x3, tmp4, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) get_raw_stream(0) triton_poi_fused_leaky_relu_reflection_pad2d_0[grid(576)](primals_1, buf0, 576, XBLOCK=128, num_warps=4, num_stages=1) buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_convolution_leaky_relu_1[grid(256)](buf1, primals_3, buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) buf3 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) triton_poi_fused_convolution_leaky_relu_reflection_pad2d_2[grid(576)]( buf2, buf1, primals_3, buf3, 576, XBLOCK=256, num_warps=4, num_stages=1) del buf1 del primals_3 buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 4, 4), (64, 16, 4, 1)) buf5 = buf4 del buf4 triton_poi_fused_add_convolution_3[grid(256)](buf5, primals_1, primals_5, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 del primals_5 return buf5, primals_2, primals_4, buf0, buf2, buf3 class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super(AdaptiveInstanceNorm2d, self).__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign AdaIN weight first' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class Conv2dBlock(nn.Module): def __init__(self, in_dim, out_dim, ks, st, padding=0, norm='none', activation='relu', pad_type='zero', use_bias=True, activation_first =False): super(Conv2dBlock, self).__init__() self.use_bias = use_bias self.activation_first = activation_first if pad_type == 'reflect': self.pad = nn.ReflectionPad2d(padding) elif pad_type == 'replicate': self.pad = nn.ReplicationPad2d(padding) elif pad_type == 'zero': self.pad = nn.ZeroPad2d(padding) else: assert 0, 'Unsupported padding type: {}'.format(pad_type) norm_dim = out_dim if norm == 'bn': self.norm = nn.BatchNorm2d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm2d(norm_dim) elif norm == 'adain': self.norm = AdaptiveInstanceNorm2d(norm_dim) elif norm == 'none': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=False) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=False) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) self.conv = nn.Conv2d(in_dim, out_dim, ks, st, bias=self.use_bias) def forward(self, x): if self.activation_first: if self.activation: x = self.activation(x) x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) else: x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) if self.activation: x = self.activation(x) return x class ActFirstResBlockNew(nn.Module): def __init__(self, fin, fout, fhid=None, activation='lrelu', norm='none'): super().__init__() self.learned_shortcut = fin != fout self.fin = fin self.fout = fout self.fhid = min(fin, fout) if fhid is None else fhid self.conv_0 = Conv2dBlock(self.fin, self.fhid, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) self.conv_1 = Conv2dBlock(self.fhid, self.fout, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) if self.learned_shortcut: self.conv_s = Conv2dBlock(self.fin, self.fout, 1, 1, activation ='none', use_bias=False) def forward(self, input_0): primals_2 = self.conv_0.conv.weight primals_3 = self.conv_0.conv.bias primals_4 = self.conv_1.conv.weight primals_5 = self.conv_1.conv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Alikfp/research-GANwriting
ActFirstResBlock
false
7,656
[ "MIT" ]
41
2190954218a733deac52c929f51bb85bca5d7216
https://github.com/Alikfp/research-GANwriting/tree/2190954218a733deac52c929f51bb85bca5d7216
import torch import torch.nn.functional as F from torch import nn class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super().__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign AdaIN weight first' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class Conv2dBlock(nn.Module): def __init__(self, in_dim, out_dim, ks, st, padding=0, norm='none', activation='relu', pad_type='zero', use_bias=True, activation_first =False): super().__init__() self.use_bias = use_bias self.activation_first = activation_first if pad_type == 'reflect': self.pad = nn.ReflectionPad2d(padding) elif pad_type == 'replicate': self.pad = nn.ReplicationPad2d(padding) elif pad_type == 'zero': self.pad = nn.ZeroPad2d(padding) else: assert 0, 'Unsupported padding type: {}'.format(pad_type) norm_dim = out_dim if norm == 'bn': self.norm = nn.BatchNorm2d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm2d(norm_dim) elif norm == 'adain': self.norm = AdaptiveInstanceNorm2d(norm_dim) elif norm == 'none': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=False) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=False) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) self.conv = nn.Conv2d(in_dim, out_dim, ks, st, bias=self.use_bias) def forward(self, x): if self.activation_first: if self.activation: x = self.activation(x) x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) else: x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) if self.activation: x = self.activation(x) return x class Model(nn.Module): def __init__(self, fin, fout, fhid=None, activation='lrelu', norm='none'): super().__init__() self.learned_shortcut = fin != fout self.fin = fin self.fout = fout self.fhid = min(fin, fout) if fhid is None else fhid self.conv_0 = Conv2dBlock(self.fin, self.fhid, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) self.conv_1 = Conv2dBlock(self.fhid, self.fout, 3, 1, padding=1, pad_type='reflect', norm=norm, activation=activation, activation_first=True) if self.learned_shortcut: self.conv_s = Conv2dBlock(self.fin, self.fout, 1, 1, activation ='none', use_bias=False) def forward(self, x): x_s = self.conv_s(x) if self.learned_shortcut else x dx = self.conv_0(x) dx = self.conv_1(dx) # ... truncated (>4000 chars) for memory efficiency
Multi_feature_fusing
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/al/cal34tu3pddv3yd2p5douq3hw7xx6ohnho5eciaqpsbz2la5tqlg.py # Topologically Sorted Source Nodes: [mul, mul_1, v_fused_emb, pow_1, sum_1, sqrt, norm], Original ATen: [aten.mul, aten.add, aten.pow, aten.sum, aten.sqrt] # Source node to ATen node mapping: # mul => mul # mul_1 => mul_1 # norm => add_1 # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # v_fused_emb => add # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 0.75), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, 0.25), kwargs = {}) # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [-1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-12), kwargs = {}) triton_poi_fused_add_mul_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_mul_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (4*x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (4*x0), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp17 = tl.load(in_ptr1 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp22 = tl.load(in_ptr0 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp24 = tl.load(in_ptr1 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp1 = 0.75 tmp2 = tmp0 * tmp1 tmp4 = 0.25 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp7 = tmp6 * tmp6 tmp9 = tmp8 * tmp1 tmp11 = tmp10 * tmp4 tmp12 = tmp9 + tmp11 tmp13 = tmp12 * tmp12 tmp14 = tmp7 + tmp13 tmp16 = tmp15 * tmp1 tmp18 = tmp17 * tmp4 tmp19 = tmp16 + tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp14 + tmp20 tmp23 = tmp22 * tmp1 tmp25 = tmp24 * tmp4 tmp26 = tmp23 + tmp25 tmp27 = tmp26 * tmp26 tmp28 = tmp21 + tmp27 tmp29 = libdevice.sqrt(tmp28) tmp30 = 1e-12 tmp31 = tmp29 + tmp30 tl.store(out_ptr0 + (x0), tmp31, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ri/cri2dlt42xosseu4ne3wlixshvdq2slgjk73bv3hhadousjrp4up.py # Topologically Sorted Source Nodes: [mul, mul_1, v_fused_emb, X], Original ATen: [aten.mul, aten.add, aten.div] # Source node to ATen node mapping: # X => div # mul => mul # mul_1 => mul_1 # v_fused_emb => add # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 0.75), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, 0.25), kwargs = {}) # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%add, %add_1), kwargs = {}) triton_poi_fused_add_div_mul_1 = async_compile.triton('triton_poi_fused_add_div_mul_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp3 = tl.load(in_ptr1 + (x2), xmask) tmp7 = tl.load(in_ptr2 + (x1), xmask, eviction_policy='evict_last') tmp1 = 0.75 tmp2 = tmp0 * tmp1 tmp4 = 0.25 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) # Topologically Sorted Source Nodes: [mul, mul_1, v_fused_emb, pow_1, sum_1, sqrt, norm], Original ATen: [aten.mul, aten.add, aten.pow, aten.sum, aten.sqrt] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_pow_sqrt_sum_0.run(arg0_1, arg1_1, buf0, 64, grid=grid(64), stream=stream0) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, mul_1, v_fused_emb, X], Original ATen: [aten.mul, aten.add, aten.div] triton_poi_fused_add_div_mul_1.run(arg0_1, arg1_1, buf0, buf1, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 buf2 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [mul_2, mul_3, t_fused_emb, pow_2, sum_2, sqrt_1, norm_1], Original ATen: [aten.mul, aten.add, aten.pow, aten.sum, aten.sqrt] triton_poi_fused_add_mul_pow_sqrt_sum_0.run(arg2_1, arg3_1, buf2, 64, grid=grid(64), stream=stream0) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul_2, mul_3, t_fused_emb, X_1], Original ATen: [aten.mul, aten.add, aten.div] triton_poi_fused_add_div_mul_1.run(arg2_1, arg3_1, buf2, buf3, 256, grid=grid(256), stream=stream0) del arg2_1 del arg3_1 del buf2 return (buf1, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn as nn import torch.nn.functional as F import torch.nn.init def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class Multi_feature_fusing(nn.Module): """ Emb the features from both modalities to the joint attribute label space. """ def __init__(self, embed_dim, fuse_type='weight_sum'): """ param image_dim: dim of visual feature param embed_dim: dim of embedding space """ super(Multi_feature_fusing, self).__init__() self.fuse_type = fuse_type self.embed_dim = embed_dim if fuse_type == 'concat': input_dim = int(2 * embed_dim) self.joint_emb_v = nn.Linear(input_dim, embed_dim) self.joint_emb_t = nn.Linear(input_dim, embed_dim) self.init_weights_concat() if fuse_type == 'adap_sum': self.joint_emb_v = nn.Linear(embed_dim, 1) self.joint_emb_t = nn.Linear(embed_dim, 1) self.init_weights_adap_sum() def init_weights_concat(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 2 * self.embed_dim) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def init_weights_adap_sum(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 1) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def forward(self, v_emb_instance, t_emb_instance, v_emb_concept, t_emb_concept): """ Forward propagation. :param v_emb_instance, t_emb_instance: instance-level visual or textual features, shape: (batch_size, emb_dim) :param v_emb_concept, t_emb_concept: consensus-level concept features, shape: (batch_size, emb_dim) :return: joint embbeding features for both modalities """ if self.fuse_type == 'multiple': v_fused_emb = v_emb_instance.mul(v_emb_concept) v_fused_emb = l2norm(v_fused_emb) t_fused_emb = t_emb_instance.mul(t_emb_concept) t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'concat': v_fused_emb = torch.cat([v_emb_instance, v_emb_concept], dim=1) v_fused_emb = self.joint_emb_instance_v(v_fused_emb) v_fused_emb = l2norm(v_fused_emb) t_fused_emb = torch.cat([t_emb_instance, t_emb_concept], dim=1) t_fused_emb = self.joint_emb_instance_v(t_fused_emb) t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'adap_sum': v_mean = (v_emb_instance + v_emb_concept) / 2 v_emb_instance_mat = self.joint_emb_instance_v(v_mean) alpha_v = F.sigmoid(v_emb_instance_mat) v_fused_emb = alpha_v * v_emb_instance + (1 - alpha_v ) * v_emb_concept v_fused_emb = l2norm(v_fused_emb) t_mean = (t_emb_instance + t_emb_concept) / 2 t_emb_instance_mat = self.joint_emb_instance_t(t_mean) alpha_t = F.sigmoid(t_emb_instance_mat) t_fused_emb = alpha_t * t_emb_instance + (1 - alpha_t ) * t_emb_concept t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'weight_sum': alpha = 0.75 v_fused_emb = alpha * v_emb_instance + (1 - alpha) * v_emb_concept v_fused_emb = l2norm(v_fused_emb) t_fused_emb = alpha * t_emb_instance + (1 - alpha) * t_emb_concept t_fused_emb = l2norm(t_fused_emb) return v_fused_emb, t_fused_emb def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'embed_dim': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import numpy as np import torch.nn as nn import torch.nn.init assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 4 * x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + 4 * x0, xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (1 + 4 * x0), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (1 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp15 = tl.load(in_ptr0 + (2 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp17 = tl.load(in_ptr1 + (2 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp22 = tl.load(in_ptr0 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp24 = tl.load(in_ptr1 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp1 = 0.75 tmp2 = tmp0 * tmp1 tmp4 = 0.25 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp7 = tmp6 * tmp6 tmp9 = tmp8 * tmp1 tmp11 = tmp10 * tmp4 tmp12 = tmp9 + tmp11 tmp13 = tmp12 * tmp12 tmp14 = tmp7 + tmp13 tmp16 = tmp15 * tmp1 tmp18 = tmp17 * tmp4 tmp19 = tmp16 + tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp14 + tmp20 tmp23 = tmp22 * tmp1 tmp25 = tmp24 * tmp4 tmp26 = tmp23 + tmp25 tmp27 = tmp26 * tmp26 tmp28 = tmp21 + tmp27 tmp29 = libdevice.sqrt(tmp28) tmp30 = 1e-12 tmp31 = tmp29 + tmp30 tl.store(out_ptr0 + x0, tmp31, xmask) @triton.jit def triton_poi_fused_add_div_mul_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp3 = tl.load(in_ptr1 + x2, xmask) tmp7 = tl.load(in_ptr2 + x1, xmask, eviction_policy='evict_last') tmp1 = 0.75 tmp2 = tmp0 * tmp1 tmp4 = 0.25 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) get_raw_stream(0) triton_poi_fused_add_mul_pow_sqrt_sum_0[grid(64)](arg0_1, arg1_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_div_mul_1[grid(256)](arg0_1, arg1_1, buf0, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 del arg1_1 buf2 = buf0 del buf0 triton_poi_fused_add_mul_pow_sqrt_sum_0[grid(64)](arg2_1, arg3_1, buf2, 64, XBLOCK=64, num_warps=1, num_stages=1) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_div_mul_1[grid(256)](arg2_1, arg3_1, buf2, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg2_1 del arg3_1 del buf2 return buf1, buf3 def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class Multi_feature_fusingNew(nn.Module): """ Emb the features from both modalities to the joint attribute label space. """ def __init__(self, embed_dim, fuse_type='weight_sum'): """ param image_dim: dim of visual feature param embed_dim: dim of embedding space """ super(Multi_feature_fusingNew, self).__init__() self.fuse_type = fuse_type self.embed_dim = embed_dim if fuse_type == 'concat': input_dim = int(2 * embed_dim) self.joint_emb_v = nn.Linear(input_dim, embed_dim) self.joint_emb_t = nn.Linear(input_dim, embed_dim) self.init_weights_concat() if fuse_type == 'adap_sum': self.joint_emb_v = nn.Linear(embed_dim, 1) self.joint_emb_t = nn.Linear(embed_dim, 1) self.init_weights_adap_sum() def init_weights_concat(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 2 * self.embed_dim) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def init_weights_adap_sum(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 1) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def forward(self, input_0, input_1, input_2, input_3): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 output = call([arg0_1, arg1_1, arg2_1, arg3_1]) return output[0], output[1]
AndresPMD/semantic_adaptive_margin
Multi_feature_fusing
false
7,657
[ "Apache-2.0" ]
12
1e8bf2f1836498c48df030cb0a967b72b52e8460
https://github.com/AndresPMD/semantic_adaptive_margin/tree/1e8bf2f1836498c48df030cb0a967b72b52e8460
import torch import numpy as np import torch.nn as nn import torch.nn.functional as F import torch.nn.init def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class Model(nn.Module): """ Emb the features from both modalities to the joint attribute label space. """ def __init__(self, embed_dim, fuse_type='weight_sum'): """ param image_dim: dim of visual feature param embed_dim: dim of embedding space """ super().__init__() self.fuse_type = fuse_type self.embed_dim = embed_dim if fuse_type == 'concat': input_dim = int(2 * embed_dim) self.joint_emb_v = nn.Linear(input_dim, embed_dim) self.joint_emb_t = nn.Linear(input_dim, embed_dim) self.init_weights_concat() if fuse_type == 'adap_sum': self.joint_emb_v = nn.Linear(embed_dim, 1) self.joint_emb_t = nn.Linear(embed_dim, 1) self.init_weights_adap_sum() def init_weights_concat(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 2 * self.embed_dim) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def init_weights_adap_sum(self): """Xavier initialization""" r = np.sqrt(6.0) / np.sqrt(self.embed_dim + 1) self.joint_emb_v.weight.data.uniform_(-r, r) self.joint_emb_v.bias.data.fill_(0) self.joint_emb_t.weight.data.uniform_(-r, r) self.joint_emb_t.bias.data.fill_(0) def forward(self, v_emb_instance, t_emb_instance, v_emb_concept, t_emb_concept): """ Forward propagation. :param v_emb_instance, t_emb_instance: instance-level visual or textual features, shape: (batch_size, emb_dim) :param v_emb_concept, t_emb_concept: consensus-level concept features, shape: (batch_size, emb_dim) :return: joint embbeding features for both modalities """ if self.fuse_type == 'multiple': v_fused_emb = v_emb_instance.mul(v_emb_concept) v_fused_emb = l2norm(v_fused_emb) t_fused_emb = t_emb_instance.mul(t_emb_concept) t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'concat': v_fused_emb = torch.cat([v_emb_instance, v_emb_concept], dim=1) v_fused_emb = self.joint_emb_instance_v(v_fused_emb) v_fused_emb = l2norm(v_fused_emb) t_fused_emb = torch.cat([t_emb_instance, t_emb_concept], dim=1) t_fused_emb = self.joint_emb_instance_v(t_fused_emb) t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'adap_sum': v_mean = (v_emb_instance + v_emb_concept) / 2 v_emb_instance_mat = self.joint_emb_instance_v(v_mean) alpha_v = F.sigmoid(v_emb_instance_mat) v_fused_emb = alpha_v * v_emb_instance + (1 - alpha_v ) * v_emb_concept v_fused_emb = l2norm(v_fused_emb) t_mean = (t_emb_instance + t_emb_concept) / 2 t_emb_instance_mat = self.joint_emb_instance_t(t_mean) alpha_t = F.sigmoid(t_emb_instance_mat) t_fused_emb = alpha_t * t_emb_instance + (1 - alpha_t ) * t_emb_concept t_fused_emb = l2norm(t_fused_emb) elif self.fuse_type == 'weight_sum': alpha = 0.75 v_fused_emb = alpha * v_emb_instance + (1 - alpha) * v_emb_concept v_fused_emb = l2norm(v_fused_emb) t_fused_emb = alpha * t_emb_instance + (1 - alpha) * t_emb_concept t_fused_emb = l2norm(t_fused_emb) return v_fused_emb, t_fused_emb def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([ # ... truncated (>4000 chars) for memory efficiency
Permute
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/yq/cyq3cbabk4kfn63jyjvlmap2oah7ssqrezz46s5wftnqo4hypqgp.py # Topologically Sorted Source Nodes: [getitem], Original ATen: [aten.index] # Source node to ATen node mapping: # getitem => index # Graph fragment: # %index : [num_users=1] = call_function[target=torch.ops.aten.index.Tensor](args = (%arg0_1, [None, %lift_fresh_copy]), kwargs = {}) triton_poi_fused_index_0 = async_compile.triton('triton_poi_fused_index_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_index_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 192 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 3 x0 = xindex % 16 x2 = (xindex // 48) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 1, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.full([1], 2, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.full([1], 0, tl.int64) tmp6 = tl.where(tmp4, tmp1, tmp5) tmp7 = tl.where(tmp2, tmp3, tmp6) tmp8 = tl.load(in_ptr0 + (x0 + (16*tmp7) + (64*x2)), xmask) tl.store(out_ptr0 + (x3), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 3, 4, 4), (48, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [getitem], Original ATen: [aten.index] stream0 = get_raw_stream(0) triton_poi_fused_index_0.run(arg0_1, buf0, 192, grid=grid(192), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class Permute(nn.Module): def __init__(self, permutation=[2, 1, 0]): super().__init__() self.permutation = permutation def forward(self, input): return input[:, self.permutation] def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 192 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 3 x0 = xindex % 16 x2 = xindex // 48 x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 1, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.full([1], 2, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.full([1], 0, tl.int64) tmp6 = tl.where(tmp4, tmp1, tmp5) tmp7 = tl.where(tmp2, tmp3, tmp6) tmp8 = tl.load(in_ptr0 + (x0 + 16 * tmp7 + 64 * x2), xmask) tl.store(out_ptr0 + x3, tmp8, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 3, 4, 4), (48, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_index_0[grid(192)](arg0_1, buf0, 192, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class PermuteNew(nn.Module): def __init__(self, permutation=[2, 1, 0]): super().__init__() self.permutation = permutation def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Alibaba-AAIG/Beyond-ImageNet-Attack
Permute
false
7,658
[ "MIT" ]
23
c14b4844b64a8035b8fe033a617c0567224a9fa4
https://github.com/Alibaba-AAIG/Beyond-ImageNet-Attack/tree/c14b4844b64a8035b8fe033a617c0567224a9fa4
import torch from torch import nn class Model(nn.Module): def __init__(self, permutation=[2, 1, 0]): super().__init__() self.permutation = permutation def forward(self, input): return input[:, self.permutation] def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
FactorTransfer
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ay/cayccqboy5fnnjivquesx5klzk76tjbyjwjakhojzecrfsmvjouo.py # Topologically Sorted Source Nodes: [normalize, normalize_1, sub], Original ATen: [aten.linalg_vector_norm, aten.div, aten.sub] # Source node to ATen node mapping: # normalize => div, pow_2, sum_1 # normalize_1 => div_1, pow_5, sum_2 # sub => sub # Graph fragment: # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%view, 2.0), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_2, [1], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%view, %expand), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%view_1, 2.0), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_5, [1], True), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%view_1, %expand_1), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div, %div_1), kwargs = {}) triton_per_fused_div_linalg_vector_norm_sub_0 = async_compile.triton('triton_per_fused_div_linalg_vector_norm_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 16], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_div_linalg_vector_norm_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 2, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_div_linalg_vector_norm_sub_0(in_ptr0, in_ptr1, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp2 = tl.load(in_ptr0 + (16 + r1 + (64*x0)), xmask, other=0.0) tmp5 = tl.load(in_ptr0 + (32 + r1 + (64*x0)), xmask, other=0.0) tmp8 = tl.load(in_ptr0 + (48 + r1 + (64*x0)), xmask, other=0.0) tmp18 = tl.load(in_ptr1 + (r1 + (64*x0)), xmask, other=0.0) tmp20 = tl.load(in_ptr1 + (16 + r1 + (64*x0)), xmask, other=0.0) tmp23 = tl.load(in_ptr1 + (32 + r1 + (64*x0)), xmask, other=0.0) tmp26 = tl.load(in_ptr1 + (48 + r1 + (64*x0)), xmask, other=0.0) tmp1 = tmp0 * tmp0 tmp3 = tmp2 * tmp2 tmp4 = tmp1 + tmp3 tmp6 = tmp5 * tmp5 tmp7 = tmp4 + tmp6 tmp9 = tmp8 * tmp8 tmp10 = tmp7 + tmp9 tmp11 = 4.0 tmp12 = tmp10 / tmp11 tmp13 = tmp12 * tmp12 tmp14 = tl.broadcast_to(tmp13, [XBLOCK, RBLOCK]) tmp16 = tl.where(xmask, tmp14, 0) tmp17 = tl.sum(tmp16, 1)[:, None] tmp19 = tmp18 * tmp18 tmp21 = tmp20 * tmp20 tmp22 = tmp19 + tmp21 tmp24 = tmp23 * tmp23 tmp25 = tmp22 + tmp24 tmp27 = tmp26 * tmp26 tmp28 = tmp25 + tmp27 tmp29 = tmp28 / tmp11 tmp30 = tmp29 * tmp29 tmp31 = tl.broadcast_to(tmp30, [XBLOCK, RBLOCK]) tmp33 = tl.where(xmask, tmp31, 0) tmp34 = tl.sum(tmp33, 1)[:, None] tmp35 = libdevice.sqrt(tmp17) tmp36 = 1e-12 tmp37 = triton_helpers.maximum(tmp35, tmp36) tmp38 = tmp12 / tmp37 tmp39 = libdevice.sqrt(tmp34) tmp40 = triton_helpers.maximum(tmp39, tmp36) tmp41 = tmp29 / tmp40 tmp42 = tmp38 - tmp41 tl.store(out_ptr2 + (r1 + (16*x0)), tmp42, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ot/cottwzpyjpjb7zmcpklt2kltvarz2wiredkezqx2zf6yxnmkfjln.py # Topologically Sorted Source Nodes: [abs_1, mean_2], Original ATen: [aten.abs, aten.mean] # Source node to ATen node mapping: # abs_1 => abs_1 # mean_2 => mean_2 # Graph fragment: # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %mean_2 : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%abs_1,), kwargs = {}) triton_per_fused_abs_mean_1 = async_compile.triton('triton_per_fused_abs_mean_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {2: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 3), equal_to_1=(2,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_mean_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_mean_1(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl_math.abs(tmp0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp4 = tl.sum(tmp2, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp6, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 16), (16, 1), torch.float32) # Topologically Sorted Source Nodes: [normalize, normalize_1, sub], Original ATen: [aten.linalg_vector_norm, aten.div, aten.sub] stream0 = get_raw_stream(0) triton_per_fused_div_linalg_vector_norm_sub_0.run(arg0_1, arg1_1, buf2, 4, 16, grid=grid(4), stream=stream0) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [abs_1, mean_2], Original ATen: [aten.abs, aten.mean] triton_per_fused_abs_mean_1.run(buf4, buf2, 1, 64, grid=grid(1), stream=stream0) del buf2 return (buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class FactorTransfer(nn.Module): """Paraphrasing Complex Network: Network Compression via Factor Transfer, NeurIPS 2018""" def __init__(self, p1=2, p2=1): super(FactorTransfer, self).__init__() self.p1 = p1 self.p2 = p2 def forward(self, f_s, f_t): return self.factor_loss(f_s, f_t) def factor_loss(self, f_s, f_t): s_H, t_H = f_s.shape[2], f_t.shape[2] if s_H > t_H: f_s = F.adaptive_avg_pool2d(f_s, (t_H, t_H)) elif s_H < t_H: f_t = F.adaptive_avg_pool2d(f_t, (s_H, s_H)) else: pass if self.p2 == 1: return (self.factor(f_s) - self.factor(f_t)).abs().mean() else: return (self.factor(f_s) - self.factor(f_t)).pow(self.p2).mean() def factor(self, f): return F.normalize(f.pow(self.p1).mean(1).view(f.size(0), -1)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_div_linalg_vector_norm_sub_0(in_ptr0, in_ptr1, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp2 = tl.load(in_ptr0 + (16 + r1 + 64 * x0), xmask, other=0.0) tmp5 = tl.load(in_ptr0 + (32 + r1 + 64 * x0), xmask, other=0.0) tmp8 = tl.load(in_ptr0 + (48 + r1 + 64 * x0), xmask, other=0.0) tmp18 = tl.load(in_ptr1 + (r1 + 64 * x0), xmask, other=0.0) tmp20 = tl.load(in_ptr1 + (16 + r1 + 64 * x0), xmask, other=0.0) tmp23 = tl.load(in_ptr1 + (32 + r1 + 64 * x0), xmask, other=0.0) tmp26 = tl.load(in_ptr1 + (48 + r1 + 64 * x0), xmask, other=0.0) tmp1 = tmp0 * tmp0 tmp3 = tmp2 * tmp2 tmp4 = tmp1 + tmp3 tmp6 = tmp5 * tmp5 tmp7 = tmp4 + tmp6 tmp9 = tmp8 * tmp8 tmp10 = tmp7 + tmp9 tmp11 = 4.0 tmp12 = tmp10 / tmp11 tmp13 = tmp12 * tmp12 tmp14 = tl.broadcast_to(tmp13, [XBLOCK, RBLOCK]) tmp16 = tl.where(xmask, tmp14, 0) tmp17 = tl.sum(tmp16, 1)[:, None] tmp19 = tmp18 * tmp18 tmp21 = tmp20 * tmp20 tmp22 = tmp19 + tmp21 tmp24 = tmp23 * tmp23 tmp25 = tmp22 + tmp24 tmp27 = tmp26 * tmp26 tmp28 = tmp25 + tmp27 tmp29 = tmp28 / tmp11 tmp30 = tmp29 * tmp29 tmp31 = tl.broadcast_to(tmp30, [XBLOCK, RBLOCK]) tmp33 = tl.where(xmask, tmp31, 0) tmp34 = tl.sum(tmp33, 1)[:, None] tmp35 = libdevice.sqrt(tmp17) tmp36 = 1e-12 tmp37 = triton_helpers.maximum(tmp35, tmp36) tmp38 = tmp12 / tmp37 tmp39 = libdevice.sqrt(tmp34) tmp40 = triton_helpers.maximum(tmp39, tmp36) tmp41 = tmp29 / tmp40 tmp42 = tmp38 - tmp41 tl.store(out_ptr2 + (r1 + 16 * x0), tmp42, xmask) @triton.jit def triton_per_fused_abs_mean_1(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl_math.abs(tmp0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp4 = tl.sum(tmp2, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp6, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 16), (16, 1), torch.float32) get_raw_stream(0) triton_per_fused_div_linalg_vector_norm_sub_0[grid(4)](arg0_1, arg1_1, buf2, 4, 16, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3 del buf3 triton_per_fused_abs_mean_1[grid(1)](buf4, buf2, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del buf2 return buf4, class FactorTransferNew(nn.Module): """Paraphrasing Complex Network: Network Compression via Factor Transfer, NeurIPS 2018""" def __init__(self, p1=2, p2=1): super(FactorTransferNew, self).__init__() self.p1 = p1 self.p2 = p2 def factor_loss(self, f_s, f_t): s_H, t_H = f_s.shape[2], f_t.shape[2] if s_H > t_H: f_s = F.adaptive_avg_pool2d(f_s, (t_H, t_H)) elif s_H < t_H: f_t = F.adaptive_avg_pool2d(f_t, (s_H, s_H)) else: pass if self.p2 == 1: return (self.factor(f_s) - self.factor(f_t)).abs().mean() else: return (self.factor(f_s) - self.factor(f_t)).pow(self.p2).mean() def factor(self, f): return F.normalize(f.pow(self.p1).mean(1).view(f.size(0), -1)) def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
FactorTransfer
false
7,659
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): """Paraphrasing Complex Network: Network Compression via Factor Transfer, NeurIPS 2018""" def __init__(self, p1=2, p2=1): super().__init__() self.p1 = p1 self.p2 = p2 def forward(self, f_s, f_t): return self.factor_loss(f_s, f_t) def factor_loss(self, f_s, f_t): s_H, t_H = f_s.shape[2], f_t.shape[2] if s_H > t_H: f_s = F.adaptive_avg_pool2d(f_s, (t_H, t_H)) elif s_H < t_H: f_t = F.adaptive_avg_pool2d(f_t, (s_H, s_H)) else: pass if self.p2 == 1: return (self.factor(f_s) - self.factor(f_t)).abs().mean() else: return (self.factor(f_s) - self.factor(f_t)).pow(self.p2).mean() def factor(self, f): return F.normalize(f.pow(self.p1).mean(1).view(f.size(0), -1)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GHMR
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/lm/clm6vke3oqtpngoervcg5h6lqqdn24enuvavfhwkxpu5y2mygm5k.py # Topologically Sorted Source Nodes: [sum_1, valid], Original ATen: [aten.sum, aten.gt] # Source node to ATen node mapping: # sum_1 => sum_1 # valid => gt # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%arg2_1,), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg2_1, 0), kwargs = {}) triton_per_fused_gt_sum_0 = async_compile.triton('triton_per_fused_gt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_gt_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.broadcast_to(tmp0, [RBLOCK]) tmp3 = triton_helpers.promote_to_tensor(tl.sum(tmp1, 0)) tmp4 = 0.0 tmp5 = tmp0 > tmp4 tl.store(out_ptr1 + (tl.broadcast_to(r0, [RBLOCK])), tmp5, None) tl.store(out_ptr0 + (tl.full([1], 0, tl.int32)), tmp3, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ly/clytv6gd63vz5eacm5k2i7iv42st2zsveu7so7pabsecq7pxcglo.py # Topologically Sorted Source Nodes: [diff, mul, add, sqrt, loss, mul_1, add_1, sqrt_1, truediv, abs_1], Original ATen: [aten.sub, aten.mul, aten.add, aten.sqrt, aten.div, aten.abs] # Source node to ATen node mapping: # abs_1 => abs_1 # add => add # add_1 => add_1 # diff => sub # loss => sub_1 # mul => mul # mul_1 => mul_1 # sqrt => sqrt # sqrt_1 => sqrt_1 # truediv => div # Graph fragment: # %sub : [num_users=3] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %sub), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 0.0004), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sqrt, 0.02), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %sub), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, 0.0004), kwargs = {}) # %sqrt_1 : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add_1,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %sqrt_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%div,), kwargs = {}) triton_poi_fused_abs_add_div_mul_sqrt_sub_1 = async_compile.triton('triton_poi_fused_abs_add_div_mul_sqrt_sub_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_abs_add_div_mul_sqrt_sub_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_abs_add_div_mul_sqrt_sub_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = 0.0004 tmp5 = tmp3 + tmp4 tmp6 = libdevice.sqrt(tmp5) tmp7 = 0.02 tmp8 = tmp6 - tmp7 tmp9 = tmp2 / tmp6 tmp10 = tl_math.abs(tmp9) tl.store(out_ptr0 + (x0), tmp8, xmask) tl.store(out_ptr1 + (x0), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/qk/cqkk6qjpp7wkkifanoacaaodq46jzysz32setq5j6xupwtnynyhi.py # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] # Source node to ATen node mapping: # weights => full_default # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) triton_poi_fused_zeros_like_2 = async_compile.triton('triton_poi_fused_zeros_like_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_zeros_like_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_zeros_like_2(out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + (x0), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [sum_1, valid], Original ATen: [aten.sum, aten.gt] stream0 = get_raw_stream(0) triton_per_fused_gt_sum_0.run(arg2_1, buf0, buf4, 1, 256, grid=grid(1), stream=stream0) del arg2_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [diff, mul, add, sqrt, loss, mul_1, add_1, sqrt_1, truediv, abs_1], Original ATen: [aten.sub, aten.mul, aten.add, aten.sqrt, aten.div, aten.abs] triton_poi_fused_abs_add_div_mul_sqrt_sub_1.run(arg0_1, arg1_1, buf1, buf2, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] triton_poi_fused_zeros_like_2.run(buf3, 256, grid=grid(256), stream=stream0) return (buf0, buf1, buf2, buf3, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class GHMR(nn.Module): """GHM Regression Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector" https://arxiv.org/abs/1811.05181 Args: mu (float): The parameter for the Authentic Smooth L1 loss. bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. loss_weight (float): The weight of the total GHM-R loss. """ def __init__(self, mu=0.02, bins=10, momentum=0, loss_weight=1.0): super(GHMR, self).__init__() self.mu = mu self.bins = bins self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] = 1000.0 self.momentum = momentum if momentum > 0: self.acc_sum = torch.zeros(bins) self.loss_weight = loss_weight def forward(self, pred, target, label_weight, avg_factor=None): """Calculate the GHM-R loss. Args: pred (float tensor of size [batch_num, 4 (* class_num)]): The prediction of box regression layer. Channel number can be 4 or 4 * class_num depending on whether it is class-agnostic. target (float tensor of size [batch_num, 4 (* class_num)]): The target regression values with the same size of pred. label_weight (float tensor of size [batch_num, 4 (* class_num)]): The weight of each sample, 0 if ignored. Returns: The gradient harmonized loss. """ mu = self.mu edges = self.edges mmt = self.momentum diff = pred - target loss = torch.sqrt(diff * diff + mu * mu) - mu g = torch.abs(diff / torch.sqrt(mu * mu + diff * diff)).detach() weights = torch.zeros_like(g) valid = label_weight > 0 tot = max(label_weight.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: n += 1 if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin if n > 0: weights /= n loss = loss * weights loss = loss.sum() / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.broadcast_to(tmp0, [RBLOCK]) tmp3 = triton_helpers.promote_to_tensor(tl.sum(tmp1, 0)) tmp4 = 0.0 tmp5 = tmp0 > tmp4 tl.store(out_ptr1 + tl.broadcast_to(r0, [RBLOCK]), tmp5, None) tl.store(out_ptr0 + tl.full([1], 0, tl.int32), tmp3, None) @triton.jit def triton_poi_fused_abs_add_div_mul_sqrt_sub_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = 0.0004 tmp5 = tmp3 + tmp4 tmp6 = libdevice.sqrt(tmp5) tmp7 = 0.02 tmp8 = tmp6 - tmp7 tmp9 = tmp2 / tmp6 tmp10 = tl_math.abs(tmp9) tl.store(out_ptr0 + x0, tmp8, xmask) tl.store(out_ptr1 + x0, tmp10, xmask) @triton.jit def triton_poi_fused_zeros_like_2(out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + x0, tmp0, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_per_fused_gt_sum_0[grid(1)](arg2_1, buf0, buf4, 1, 256, num_warps=2, num_stages=1) del arg2_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_abs_add_div_mul_sqrt_sub_1[grid(256)](arg0_1, arg1_1, buf1, buf2, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_zeros_like_2[grid(256)](buf3, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf0, buf1, buf2, buf3, buf4 class GHMRNew(nn.Module): """GHM Regression Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector" https://arxiv.org/abs/1811.05181 Args: mu (float): The parameter for the Authentic Smooth L1 loss. bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. loss_weight (float): The weight of the total GHM-R loss. """ def __init__(self, mu=0.02, bins=10, momentum=0, loss_weight=1.0): super(GHMRNew, self).__init__() self.mu = mu self.bins = bins self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] = 1000.0 self.momentum = momentum if momentum > 0: self.acc_sum = torch.zeros(bins) self.loss_weight = loss_weight def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AllenPeng0209/SaccadeNet
GHMR
false
7,660
[ "Apache-2.0" ]
30
0fce4266cbffc9a2c5f70335efa636da849ce70c
https://github.com/AllenPeng0209/SaccadeNet/tree/0fce4266cbffc9a2c5f70335efa636da849ce70c
import torch import torch.nn as nn class Model(nn.Module): """GHM Regression Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector" https://arxiv.org/abs/1811.05181 Args: mu (float): The parameter for the Authentic Smooth L1 loss. bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. loss_weight (float): The weight of the total GHM-R loss. """ def __init__(self, mu=0.02, bins=10, momentum=0, loss_weight=1.0): super().__init__() self.mu = mu self.bins = bins self.edges = torch.arange(bins + 1).float() / bins self.edges[-1] = 1000.0 self.momentum = momentum if momentum > 0: self.acc_sum = torch.zeros(bins) self.loss_weight = loss_weight def forward(self, pred, target, label_weight, avg_factor=None): """Calculate the GHM-R loss. Args: pred (float tensor of size [batch_num, 4 (* class_num)]): The prediction of box regression layer. Channel number can be 4 or 4 * class_num depending on whether it is class-agnostic. target (float tensor of size [batch_num, 4 (* class_num)]): The target regression values with the same size of pred. label_weight (float tensor of size [batch_num, 4 (* class_num)]): The weight of each sample, 0 if ignored. Returns: The gradient harmonized loss. """ mu = self.mu edges = self.edges mmt = self.momentum diff = pred - target loss = torch.sqrt(diff * diff + mu * mu) - mu g = torch.abs(diff / torch.sqrt(mu * mu + diff * diff)).detach() weights = torch.zeros_like(g) valid = label_weight > 0 tot = max(label_weight.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: n += 1 if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin if n > 0: weights /= n loss = loss * weights loss = loss.sum() / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return []
Forward_Grad
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/lc/clcz6su3ieedndcvucruacshqmnwkfpvhq36lchxjwinoruby6or.py # Topologically Sorted Source Nodes: [pad], Original ATen: [aten.constant_pad_nd] # Source node to ATen node mapping: # pad => constant_pad_nd # Graph fragment: # %constant_pad_nd : [num_users=2] = call_function[target=torch.ops.aten.constant_pad_nd.default](args = (%primals_1, [0, 1, 0, 0], 0.0), kwargs = {}) triton_poi_fused_constant_pad_nd_0 = async_compile.triton('triton_poi_fused_constant_pad_nd_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_constant_pad_nd_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_constant_pad_nd_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 80 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = (xindex // 5) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 4, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.load(in_ptr0 + (x0 + (4*x1)), tmp2 & xmask, other=0.0) tl.store(out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/5c/c5ctxd6oripki6d44w5jxpdopl34hh2qcvk44v2k4462w7l7ikkg.py # Topologically Sorted Source Nodes: [pad_1], Original ATen: [aten.constant_pad_nd] # Source node to ATen node mapping: # pad_1 => constant_pad_nd_1 # Graph fragment: # %constant_pad_nd_1 : [num_users=2] = call_function[target=torch.ops.aten.constant_pad_nd.default](args = (%primals_1, [0, 0, 0, 1], 0.0), kwargs = {}) triton_poi_fused_constant_pad_nd_1 = async_compile.triton('triton_poi_fused_constant_pad_nd_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_constant_pad_nd_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_constant_pad_nd_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 80 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 5 x2 = (xindex // 20) x3 = xindex % 20 x4 = xindex tmp0 = x1 tmp1 = tl.full([1], 4, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.load(in_ptr0 + (x3 + (16*x2)), tmp2 & xmask, other=0.0) tl.store(out_ptr0 + (x4), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2c/c2ctg3dslwa656ircovg33gdpvmm6egep4iaifa6h5fgd5y4fvvc.py # Topologically Sorted Source Nodes: [setitem], Original ATen: [aten.lift_fresh, aten.fill] # Source node to ATen node mapping: # setitem => copy, full_default # Graph fragment: # %full_default : [num_users=2] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %copy : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%select, %full_default), kwargs = {}) # %select_scatter_default : [num_users=1] = call_function[target=torch.ops.aten.select_scatter.default](args = (%convolution, %copy, 3, 3), kwargs = {}) triton_poi_fused_fill_lift_fresh_2 = async_compile.triton('triton_poi_fused_fill_lift_fresh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_fill_lift_fresh_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_fill_lift_fresh_2(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp3 = tl.load(in_out_ptr0 + (x2), xmask) tmp0 = x0 tmp1 = tl.full([1], 3, tl.int32) tmp2 = tmp0 == tmp1 tmp4 = 0.0 tmp5 = tl.where(tmp2, tmp4, tmp3) tl.store(in_out_ptr0 + (x2), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/su/csuiwmogyq4obylbzxzzeheqczv7hr636aujxyzailytjstqhq3q.py # Topologically Sorted Source Nodes: [setitem, setitem_1], Original ATen: [aten.lift_fresh, aten.fill] # Source node to ATen node mapping: # setitem => full_default # setitem_1 => copy_1 # Graph fragment: # %full_default : [num_users=2] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %copy_1 : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%select_3, %full_default), kwargs = {}) # %select_scatter_default_1 : [num_users=1] = call_function[target=torch.ops.aten.select_scatter.default](args = (%convolution_1, %copy_1, 2, 3), kwargs = {}) triton_poi_fused_fill_lift_fresh_3 = async_compile.triton('triton_poi_fused_fill_lift_fresh_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_fill_lift_fresh_3', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_fill_lift_fresh_3(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 4 x3 = xindex tmp3 = tl.load(in_out_ptr0 + (x3), xmask) tmp0 = x1 tmp1 = tl.full([1], 3, tl.int32) tmp2 = tmp0 == tmp1 tmp4 = 0.0 tmp5 = tl.where(tmp2, tmp4, tmp3) tl.store(in_out_ptr0 + (x3), tmp5, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 1, 4, 4), (16, 16, 4, 1)) assert_size_stride(primals_2, (1, 1, 1, 2), (2, 2, 2, 1)) assert_size_stride(primals_3, (1, 1, 2, 1), (2, 2, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 4, 5), (20, 20, 5, 1), torch.float32) # Topologically Sorted Source Nodes: [pad], Original ATen: [aten.constant_pad_nd] stream0 = get_raw_stream(0) triton_poi_fused_constant_pad_nd_0.run(primals_1, buf0, 80, grid=grid(80), stream=stream0) buf1 = empty_strided_cuda((4, 1, 5, 4), (20, 20, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pad_1], Original ATen: [aten.constant_pad_nd] triton_poi_fused_constant_pad_nd_1.run(primals_1, buf1, 80, grid=grid(80), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [diff_x], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 4, 4), (16, 16, 4, 1)) # Topologically Sorted Source Nodes: [diff_y], Original ATen: [aten.convolution] buf3 = extern_kernels.convolution(buf1, primals_3, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 1, 4, 4), (16, 16, 4, 1)) buf4 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [setitem], Original ATen: [aten.lift_fresh, aten.fill] triton_poi_fused_fill_lift_fresh_2.run(buf4, 64, grid=grid(64), stream=stream0) buf5 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [setitem, setitem_1], Original ATen: [aten.lift_fresh, aten.fill] triton_poi_fused_fill_lift_fresh_3.run(buf5, 64, grid=grid(64), stream=stream0) return (buf4, buf5, buf1, buf0, primals_2, primals_3, buf0, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 1, 4, 4), (16, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 1, 1, 2), (2, 2, 2, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, 1, 2, 1), (2, 2, 1, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class Forward_Grad(nn.Module): def __init__(self): super(Forward_Grad, self).__init__() self.x_ker_init = torch.tensor([[[[-1, 1]]]], dtype=torch.float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-1], [1]]]], dtype=torch.float, requires_grad=True) self.forward_conv_x = nn.Conv2d(1, 1, (1, 2), bias=False) self.forward_conv_x.weight.data = self.x_ker_init self.forward_conv_y = nn.Conv2d(1, 1, (2, 1), bias=False) self.forward_conv_y.weight.data = self.y_ker_init def forward(self, x): assert len(x.shape) == 4 x.padright = F.pad(x, (0, 1, 0, 0)) x.padbottom = F.pad(x, (0, 0, 0, 1)) diff_x = self.forward_conv_x(x.padright) diff_y = self.forward_conv_y(x.padbottom) diff_x[:, :, :, x.shape[3] - 1] = 0 diff_y[:, :, x.shape[2] - 1, :] = 0 return diff_x, diff_y def get_inputs(): return [torch.rand([4, 1, 4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_constant_pad_nd_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 80 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = xindex // 5 x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 4, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.load(in_ptr0 + (x0 + 4 * x1), tmp2 & xmask, other=0.0) tl.store(out_ptr0 + x2, tmp3, xmask) @triton.jit def triton_poi_fused_constant_pad_nd_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 80 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 5 x2 = xindex // 20 x3 = xindex % 20 x4 = xindex tmp0 = x1 tmp1 = tl.full([1], 4, tl.int64) tmp2 = tmp0 < tmp1 tmp3 = tl.load(in_ptr0 + (x3 + 16 * x2), tmp2 & xmask, other=0.0) tl.store(out_ptr0 + x4, tmp3, xmask) @triton.jit def triton_poi_fused_fill_lift_fresh_2(in_out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp3 = tl.load(in_out_ptr0 + x2, xmask) tmp0 = x0 tmp1 = tl.full([1], 3, tl.int32) tmp2 = tmp0 == tmp1 tmp4 = 0.0 tmp5 = tl.where(tmp2, tmp4, tmp3) tl.store(in_out_ptr0 + x2, tmp5, xmask) @triton.jit def triton_poi_fused_fill_lift_fresh_3(in_out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 4 x3 = xindex tmp3 = tl.load(in_out_ptr0 + x3, xmask) tmp0 = x1 tmp1 = tl.full([1], 3, tl.int32) tmp2 = tmp0 == tmp1 tmp4 = 0.0 tmp5 = tl.where(tmp2, tmp4, tmp3) tl.store(in_out_ptr0 + x3, tmp5, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 1, 4, 4), (16, 16, 4, 1)) assert_size_stride(primals_2, (1, 1, 1, 2), (2, 2, 2, 1)) assert_size_stride(primals_3, (1, 1, 2, 1), (2, 2, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 4, 5), (20, 20, 5, 1), torch.float32) get_raw_stream(0) triton_poi_fused_constant_pad_nd_0[grid(80)](primals_1, buf0, 80, XBLOCK=128, num_warps=4, num_stages=1) buf1 = empty_strided_cuda((4, 1, 5, 4), (20, 20, 4, 1), torch.float32) triton_poi_fused_constant_pad_nd_1[grid(80)](primals_1, buf1, 80, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf2 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 4, 4), (16, 16, 4, 1)) buf3 = extern_kernels.convolution(buf1, primals_3, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 1, 4, 4), (16, 16, 4, 1)) buf4 = buf2 del buf2 triton_poi_fused_fill_lift_fresh_2[grid(64)](buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) buf5 = buf3 del buf3 triton_poi_fused_fill_lift_fresh_3[grid(64)](buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) return buf4, buf5, buf1, buf0, primals_2, primals_3, buf0, buf1 class Forward_GradNew(nn.Module): def __init__(self): super(Forward_GradNew, self).__init__() self.x_ker_init = torch.tensor([[[[-1, 1]]]], dtype=torch.float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-1], [1]]]], dtype=torch.float, requires_grad=True) self.forward_conv_x = nn.Conv2d(1, 1, (1, 2), bias=False) self.forward_conv_x.weight.data = self.x_ker_init self.forward_conv_y = nn.Conv2d(1, 1, (2, 1), bias=False) self.forward_conv_y.weight.data = self.y_ker_init def forward(self, input_0): primals_2 = self.forward_conv_x.weight primals_3 = self.forward_conv_y.weight primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0], output[1]
AmazingAng/pytorch-tvnet
Forward_Grad
false
7,661
[ "MIT" ]
12
e880d3ce15f55e5d9a11b423cfd1e0461de4fedb
https://github.com/AmazingAng/pytorch-tvnet/tree/e880d3ce15f55e5d9a11b423cfd1e0461de4fedb
import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): def __init__(self): super().__init__() self.x_ker_init = torch.tensor([[[[-1, 1]]]], dtype=torch.float, requires_grad=True) self.y_ker_init = torch.tensor([[[[-1], [1]]]], dtype=torch.float, requires_grad=True) self.forward_conv_x = nn.Conv2d(1, 1, (1, 2), bias=False) self.forward_conv_x.weight.data = self.x_ker_init self.forward_conv_y = nn.Conv2d(1, 1, (2, 1), bias=False) self.forward_conv_y.weight.data = self.y_ker_init def forward(self, x): assert len(x.shape) == 4 x.padright = F.pad(x, (0, 1, 0, 0)) x.padbottom = F.pad(x, (0, 0, 0, 1)) diff_x = self.forward_conv_x(x.padright) diff_y = self.forward_conv_y(x.padbottom) diff_x[:, :, :, x.shape[3] - 1] = 0 diff_y[:, :, x.shape[2] - 1, :] = 0 return diff_x, diff_y def get_inputs(): return [torch.rand([4, 1, 4, 4])] def get_init_inputs(): return []
EncoderImagePrecomp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/cu/ccuyj6fzdaihmol2cp3htgt5bq57jvqk2vk23goswsm5fr6f4kej.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, X], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] # Source node to ATen node mapping: # X => div # norm => add # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%view_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [-1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-12), kwargs = {}) # %div : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%view_1, %add), kwargs = {}) triton_poi_fused_add_div_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + (x2), tmp15, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/gu/cgurtuvpkglyqeccgbnx22jcmczfmpu66jqg7c5j2qz7kja2uqks.py # Topologically Sorted Source Nodes: [features_mean], Original ATen: [aten.mean] # Source node to ATen node mapping: # features_mean => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%div, [1]), kwargs = {}) triton_poi_fused_mean_1 = async_compile.triton('triton_poi_fused_mean_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [features], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, X], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_pow_sqrt_sum_0.run(buf0, buf1, 256, grid=grid(256), stream=stream0) buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [features_mean], Original ATen: [aten.mean] triton_poi_fused_mean_1.run(buf1, buf2, 64, grid=grid(64), stream=stream0) return (buf1, buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np from collections import OrderedDict import torch.nn as nn import torch.nn.init def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class EncoderImagePrecomp(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super(EncoderImagePrecomp, self).__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = nn.Linear(img_dim, embed_size) self.init_weights() def init_weights(self): """Xavier initialization for the fully connected layer """ r = np.sqrt(6.0) / np.sqrt(self.fc.in_features + self.fc.out_features) self.fc.weight.data.uniform_(-r, r) self.fc.bias.data.fill_(0) def forward(self, images): """Extract image feature vectors.""" features = self.fc(images) if not self.no_imgnorm: features = l2norm(features, dim=-1) """features_mean: visual initial memory""" features_mean = torch.mean(features, 1) """choose whether to l2norm""" return features, features_mean def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImagePrecomp, self).load_state_dict(new_state) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'img_dim': 4, 'embed_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import numpy as np from collections import OrderedDict import torch.nn as nn import torch.nn.init assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + x2, tmp15, xmask) @triton.jit def triton_poi_fused_mean_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_pow_sqrt_sum_0[grid(256)](buf0, buf1, 256, XBLOCK=256, num_warps=4, num_stages=1) buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_mean_1[grid(64)](buf1, buf2, 64, XBLOCK=64, num_warps=1, num_stages=1) return buf1, buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0 def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class EncoderImagePrecompNew(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super(EncoderImagePrecompNew, self).__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = nn.Linear(img_dim, embed_size) self.init_weights() def init_weights(self): """Xavier initialization for the fully connected layer """ r = np.sqrt(6.0) / np.sqrt(self.fc.in_features + self.fc.out_features) self.fc.weight.data.uniform_(-r, r) self.fc.bias.data.fill_(0) def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImagePrecompNew, self).load_state_dict(new_state) def forward(self, input_0): primals_1 = self.fc.weight primals_2 = self.fc.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0], output[1]
AndresPMD/semantic_adaptive_margin
EncoderImagePrecomp
false
7,662
[ "Apache-2.0" ]
12
1e8bf2f1836498c48df030cb0a967b72b52e8460
https://github.com/AndresPMD/semantic_adaptive_margin/tree/1e8bf2f1836498c48df030cb0a967b72b52e8460
import torch import numpy as np from collections import OrderedDict import torch.nn as nn import torch.nn.init def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class Model(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super().__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = nn.Linear(img_dim, embed_size) self.init_weights() def init_weights(self): """Xavier initialization for the fully connected layer """ r = np.sqrt(6.0) / np.sqrt(self.fc.in_features + self.fc.out_features) self.fc.weight.data.uniform_(-r, r) self.fc.bias.data.fill_(0) def forward(self, images): """Extract image feature vectors.""" features = self.fc(images) if not self.no_imgnorm: features = l2norm(features, dim=-1) """features_mean: visual initial memory""" features_mean = torch.mean(features, 1) """choose whether to l2norm""" return features, features_mean def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImagePrecomp, self).load_state_dict(new_state) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
Normalize
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/lb/clbsy4tg5vy626xltvex3nvlz64bqgvmvspdm4ipee3ymrzipslk.py # Topologically Sorted Source Nodes: [pow_1, sum_1, norm, out], Original ATen: [aten.pow, aten.sum, aten.div] # Source node to ATen node mapping: # norm => pow_2 # out => div # pow_1 => pow_1 # sum_1 => sum_1 # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_1, 0.5), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg0_1, %pow_2), kwargs = {}) triton_poi_fused_div_pow_sum_0 = async_compile.triton('triton_poi_fused_div_pow_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_pow_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_pow_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = tmp0 / tmp12 tl.store(out_ptr0 + (x3), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, norm, out], Original ATen: [aten.pow, aten.sum, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_div_pow_sum_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class Normalize(nn.Module): """normalization layer""" def __init__(self, power=2): super(Normalize, self).__init__() self.power = power def forward(self, x): norm = x.pow(self.power).sum(1, keepdim=True).pow(1.0 / self.power) out = x.div(norm) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_div_pow_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = tmp0 / tmp12 tl.store(out_ptr0 + x3, tmp13, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_div_pow_sum_0[grid(256)](arg0_1, buf0, 256, XBLOCK =128, num_warps=4, num_stages=1) del arg0_1 return buf0, class NormalizeNew(nn.Module): """normalization layer""" def __init__(self, power=2): super(NormalizeNew, self).__init__() self.power = power def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
Normalize
false
7,663
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn class Model(nn.Module): """normalization layer""" def __init__(self, power=2): super().__init__() self.power = power def forward(self, x): norm = x.pow(self.power).sum(1, keepdim=True).pow(1.0 / self.power) out = x.div(norm) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
LinearBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/26/c26frex7fsnndigtuz2xkviinkrhthk5yu5ua3aiwvztg644rq33.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.view, aten.threshold_backward] # Source node to ATen node mapping: # out_1 => relu, view_3 # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %view_3 : [num_users=1] = call_function[target=torch.ops.aten.reshape.default](args = (%view_2, [4, 4, 4, 4]), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%view_8, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_view_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_view_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*i1', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_view_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_view_0(in_out_ptr0, in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x4), tmp4, xmask) tl.store(out_ptr1 + (x4), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.view, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_view_0.run(buf1, primals_2, buf2, buf3, 256, grid=grid(256), stream=stream0) del buf1 del primals_2 return (buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNorm, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super(SpectralNorm, self).__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + '_u', u) self.module.register_parameter(self.name + '_v', v) self.module.register_parameter(self.name + '_bar', w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args) class LinearBlock(nn.Module): def __init__(self, input_dim, output_dim, norm='none', activation='relu'): super(LinearBlock, self).__init__() use_bias = True if norm == 'sn': self.fc = SpectralNorm(nn.Linear(input_dim, output_dim, bias= use_bias)) else: self.fc = nn.Linear(input_dim, output_dim, bias=use_bias) norm_dim = output_dim if norm == 'bn': self.norm = nn.BatchNorm1d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm1d(norm_dim) elif norm == 'ln': self.norm = LayerNorm(norm_dim) elif norm == 'none' or norm == 'sn': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=True) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=True) elif activation == 'prelu': self.activation = nn.PReLU() elif activation == 'selu': self.activation = nn.SELU(inplace=True) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) def forward(self, x): out = self.fc(x) if self.norm: out = self.norm(out) if self.activation: out = self.activation(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_dim': 4, 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_view_0(in_out_ptr0, in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + x4, tmp4, xmask) tl.store(out_ptr1 + x4, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_view_0[grid(256)](buf1, primals_2, buf2, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf1 del primals_2 return buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf3 def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNorm, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super(SpectralNorm, self).__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + '_u', u) self.module.register_parameter(self.name + '_v', v) self.module.register_parameter(self.name + '_bar', w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args) class LinearBlockNew(nn.Module): def __init__(self, input_dim, output_dim, norm='none', activation='relu'): super(LinearBlockNew, self).__init__() use_bias = True if norm == 'sn': self.fc = SpectralNorm(nn.Linear(input_dim, output_dim, bias= use_bias)) else: self.fc = nn.Linear(input_dim, output_dim, bias=use_bias) norm_dim = output_dim if norm == 'bn': self.norm = nn.BatchNorm1d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm1d(norm_dim) elif norm == 'ln': self.norm = LayerNorm(norm_dim) elif norm == 'none' or norm == 'sn': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=True) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=True) elif activation == 'prelu': self.activation = nn.PReLU() elif activation == 'selu': self.activation = nn.SELU(inplace=True) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) def forward(self, input_0): primals_1 = self.fc.weight primals_2 = self.fc.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AllenPu/mbdg
LinearBlock
false
7,664
[ "MIT" ]
27
243f53a57dcf4bfb6e717c0c9f64a839cff8d548
https://github.com/AllenPu/mbdg/tree/243f53a57dcf4bfb6e717c0c9f64a839cff8d548
import torch import torch.nn as nn import torch.utils.data def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super().__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super().__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + '_u', u) self.module.register_parameter(self.name + '_v', v) self.module.register_parameter(self.name + '_bar', w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args) class Model(nn.Module): def __init__(self, input_dim, output_dim, norm='none', activation='relu'): super().__init__() use_bias = True if norm == 'sn': self.fc = SpectralNorm(nn.Linear(input_dim, output_dim, bias= use_bias)) else: self.fc = nn.Linear(input_dim, output_dim, bias=use_bias) norm_dim = output_dim if norm == 'bn': self.norm = nn.BatchNorm1d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm1d(norm_dim) elif norm == 'ln': self.norm = LayerNorm(norm_dim) elif norm == 'none' or norm == 'sn': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'rel # ... truncated (>4000 chars) for memory efficiency
FeatureExtractor
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/pv/cpvq5akoxii6zri2lssiqurrqsl5nuea43ylpa6xzb433ugqbchi.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.tanh] # Source node to ATen node mapping: # x => tanh # Graph fragment: # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_1,), kwargs = {}) triton_poi_fused_tanh_0 = async_compile.triton('triton_poi_fused_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/3w/c3wvlgz6htfcxjim7etmgmgv2uyxtdleu4khaoa2mxczq3ozmrej.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.tanh] # Source node to ATen node mapping: # x_1 => tanh_1 # Graph fragment: # %tanh_1 : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_3,), kwargs = {}) triton_poi_fused_tanh_1 = async_compile.triton('triton_poi_fused_tanh_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 3072 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 48 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/pc/cpczk7mqbztp7xqhb7n65tzs4adjyx5qengzojsqqqszzcbqsswx.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.tanh] # Source node to ATen node mapping: # x_2 => tanh_2 # Graph fragment: # %tanh_2 : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%view_5,), kwargs = {}) triton_poi_fused_tanh_2 = async_compile.triton('triton_poi_fused_tanh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (64, 4), (4, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (48, 64), (64, 1)) assert_size_stride(primals_5, (48, ), (1, )) assert_size_stride(primals_6, (4, 48), (48, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 64), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 64), (1024, 256, 64, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_tanh_0.run(buf1, primals_2, 4096, grid=grid(4096), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 48), (48, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 48), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 48), (768, 192, 48, 1), 0); del buf2 # reuse # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.tanh] triton_poi_fused_tanh_1.run(buf3, primals_5, 3072, grid=grid(3072), stream=stream0) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf3, (64, 48), (48, 1), 0), reinterpret_tensor(primals_6, (48, 4), (1, 48), 0), out=buf4) buf5 = reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf4 # reuse # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.tanh] triton_poi_fused_tanh_2.run(buf5, primals_7, 256, grid=grid(256), stream=stream0) del primals_7 return (buf5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf1, buf3, buf5, primals_6, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((48, 64), (64, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((48, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 48), (48, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class FeatureExtractor(nn.Module): def __init__(self, num_inputs, num_outputs): super(FeatureExtractor, self).__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 48) self.affine3 = nn.Linear(48, num_outputs) def forward(self, x): x = torch.tanh(self.affine1(x)) x = torch.tanh(self.affine2(x)) x = torch.tanh(self.affine3(x)) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_inputs': 4, 'num_outputs': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, None) @triton.jit def triton_poi_fused_tanh_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 3072 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 48 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) @triton.jit def triton_poi_fused_tanh_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (64, 4), (4, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (48, 64), (64, 1)) assert_size_stride(primals_5, (48,), (1,)) assert_size_stride(primals_6, (4, 48), (48, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 64), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 64), (1024, 256, 64, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_tanh_0[grid(4096)](buf1, primals_2, 4096, XBLOCK= 128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 48), (48, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 48), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 48), (768, 192, 48, 1), 0) del buf2 triton_poi_fused_tanh_1[grid(3072)](buf3, primals_5, 3072, XBLOCK= 128, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf3, (64, 48), (48, 1), 0), reinterpret_tensor(primals_6, (48, 4), (1, 48), 0), out=buf4) buf5 = reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf4 triton_poi_fused_tanh_2[grid(256)](buf5, primals_7, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 return buf5, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf1, buf3, buf5, primals_6, primals_4 class FeatureExtractorNew(nn.Module): def __init__(self, num_inputs, num_outputs): super(FeatureExtractorNew, self).__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 48) self.affine3 = nn.Linear(48, num_outputs) def forward(self, input_0): primals_1 = self.affine1.weight primals_2 = self.affine1.bias primals_4 = self.affine2.weight primals_5 = self.affine2.bias primals_6 = self.affine3.weight primals_7 = self.affine3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
Akella17/Deep-Bayesian-Quadrature-Policy-Optimization
FeatureExtractor
false
7,665
[ "MIT" ]
16
e98fd68046486c002c33cf019db2ce66da18615b
https://github.com/Akella17/Deep-Bayesian-Quadrature-Policy-Optimization/tree/e98fd68046486c002c33cf019db2ce66da18615b
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, num_inputs, num_outputs): super().__init__() self.affine1 = nn.Linear(num_inputs, 64) self.affine2 = nn.Linear(64, 48) self.affine3 = nn.Linear(48, num_outputs) def forward(self, x): x = torch.tanh(self.affine1(x)) x = torch.tanh(self.affine2(x)) x = torch.tanh(self.affine3(x)) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
mlp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/w3/cw34dntgtx3ccuhammqf5cjpufyr6yed5vcs5ollrxjsu4exr7tx.py # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu] # Source node to ATen node mapping: # relu => relu # Graph fragment: # %add_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default_1, %primals_3), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor_1,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 8192 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 2048 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (2048, 4), (4, 1)) assert_size_stride(primals_3, (2048, ), (1, )) assert_size_stride(primals_4, (2048, 2048), (2048, 1)) assert_size_stride(primals_5, (2048, ), (1, )) assert_size_stride(primals_6, (4, 2048), (2048, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2048), (2048, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(primals_1, reinterpret_tensor(primals_2, (4, 2048), (1, 4), 0), out=buf0) del primals_2 buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(buf1, primals_3, 8192, grid=grid(8192), stream=stream0) del primals_3 buf2 = empty_strided_cuda((4, 2048), (2048, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf1, reinterpret_tensor(primals_4, (2048, 2048), (1, 2048), 0), out=buf2) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [relu_1], Original ATen: [aten.relu] triton_poi_fused_relu_0.run(buf3, primals_5, 8192, grid=grid(8192), stream=stream0) del primals_5 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, buf3, reinterpret_tensor(primals_6, (2048, 4), (1, 2048), 0), alpha=1, beta=1, out=buf4) del primals_7 return (buf4, primals_1, buf1, buf3, primals_6, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((2048, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((2048, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((2048, 2048), (2048, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((2048, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 2048), (2048, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class mlp(nn.Module): def __init__(self, seq_len): super(mlp, self).__init__() self.lin1 = nn.Linear(seq_len, 2048) self.lin2 = nn.Linear(2048, 2048) self.lin3 = nn.Linear(2048, seq_len) self.relu = nn.ReLU() def forward(self, input_): input_ = input_.reshape(input_.size(0), -1) out = self.lin1(input_) out = self.lin2(self.relu(out)) out = self.lin3(self.relu(out)) return out.view(input_.size(0), -1) def get_inputs(): return [torch.rand([4, 4])] def get_init_inputs(): return [[], {'seq_len': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 2048 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (2048, 4), (4, 1)) assert_size_stride(primals_3, (2048,), (1,)) assert_size_stride(primals_4, (2048, 2048), (2048, 1)) assert_size_stride(primals_5, (2048,), (1,)) assert_size_stride(primals_6, (4, 2048), (2048, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2048), (2048, 1), torch.float32) extern_kernels.mm(primals_1, reinterpret_tensor(primals_2, (4, 2048 ), (1, 4), 0), out=buf0) del primals_2 buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_relu_0[grid(8192)](buf1, primals_3, 8192, XBLOCK= 128, num_warps=4, num_stages=1) del primals_3 buf2 = empty_strided_cuda((4, 2048), (2048, 1), torch.float32) extern_kernels.mm(buf1, reinterpret_tensor(primals_4, (2048, 2048), (1, 2048), 0), out=buf2) buf3 = buf2 del buf2 triton_poi_fused_relu_0[grid(8192)](buf3, primals_5, 8192, XBLOCK= 128, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, buf3, reinterpret_tensor(primals_6, (2048, 4), (1, 2048), 0), alpha=1, beta=1, out=buf4) del primals_7 return buf4, primals_1, buf1, buf3, primals_6, primals_4 class mlpNew(nn.Module): def __init__(self, seq_len): super(mlpNew, self).__init__() self.lin1 = nn.Linear(seq_len, 2048) self.lin2 = nn.Linear(2048, 2048) self.lin3 = nn.Linear(2048, seq_len) self.relu = nn.ReLU() def forward(self, input_0): primals_2 = self.lin1.weight primals_3 = self.lin1.bias primals_4 = self.lin2.weight primals_5 = self.lin2.bias primals_6 = self.lin3.weight primals_7 = self.lin3.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AliRoyat/MACS_IQA
mlp
false
7,666
[ "Apache-2.0" ]
16
d37ac72170dc0271065a7c54273b70ed52aee4b8
https://github.com/AliRoyat/MACS_IQA/tree/d37ac72170dc0271065a7c54273b70ed52aee4b8
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, seq_len): super().__init__() self.lin1 = nn.Linear(seq_len, 2048) self.lin2 = nn.Linear(2048, 2048) self.lin3 = nn.Linear(2048, seq_len) self.relu = nn.ReLU() def forward(self, input_): input_ = input_.reshape(input_.size(0), -1) out = self.lin1(input_) out = self.lin2(self.relu(out)) out = self.lin3(self.relu(out)) return out.view(input_.size(0), -1) def get_inputs(): return [torch.rand([4, 4])] def get_init_inputs(): return [4]
Normalize_one
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/mx/cmx5eapmh3p3oz2hdrfgkjhim76yypxgx4syvbz2l2rmhxgnaipl.py # Topologically Sorted Source Nodes: [sub, x_1], Original ATen: [aten.sub, aten.div] # Source node to ATen node mapping: # sub => sub # x_1 => div # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, 4), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, 4), kwargs = {}) triton_poi_fused_div_sub_0 = async_compile.triton('triton_poi_fused_div_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 4.0 tmp2 = tmp0 - tmp1 tmp3 = 0.25 tmp4 = tmp2 * tmp3 tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, x_1], Original ATen: [aten.sub, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_div_sub_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class Normalize_one(nn.Module): def __init__(self, mean, std): super(Normalize_one, self).__init__() self.mean = mean self.std = std def forward(self, input): x = input.clone() x = (x - self.mean) / self.std return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'mean': 4, 'std': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_div_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 4.0 tmp2 = tmp0 - tmp1 tmp3 = 0.25 tmp4 = tmp2 * tmp3 tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_div_sub_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class Normalize_oneNew(nn.Module): def __init__(self, mean, std): super(Normalize_oneNew, self).__init__() self.mean = mean self.std = std def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Alibaba-AAIG/Beyond-ImageNet-Attack
Normalize_one
false
7,667
[ "MIT" ]
23
c14b4844b64a8035b8fe033a617c0567224a9fa4
https://github.com/Alibaba-AAIG/Beyond-ImageNet-Attack/tree/c14b4844b64a8035b8fe033a617c0567224a9fa4
import torch from torch import nn class Model(nn.Module): def __init__(self, mean, std): super().__init__() self.mean = mean self.std = std def forward(self, input): x = input.clone() x = (x - self.mean) / self.std return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
FPNHead
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/fz/cfzj5bubecclqwixnyw4mgb2x6p65oossc6qcu54ffkv7e56hx4a.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(in_out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/i5/ci54ctptlcvw5pu5hbgzqmuidvim6hqgm2zdhbgpoe3lwndxwjjl.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x_1 => relu_1 # Graph fragment: # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_1,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_1, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i1', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = 0.0 tmp4 = tmp2 <= tmp3 tl.store(in_out_ptr0 + (x0), tmp2, xmask) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4, 3, 3), (36, 9, 3, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_2, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(buf1, 256, grid=grid(256), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4, 4), (64, 16, 4, 1)) buf3 = buf2; del buf2 # reuse buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf3, buf4, 256, grid=grid(256), stream=stream0) return (buf3, primals_1, primals_2, primals_3, buf1, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class FPNHead(nn.Module): """"this is the FPNHead class common to all backbones""" def __init__(self, num_in, num_mid, num_out): super(FPNHead, self).__init__() self.block0 = nn.Conv2d(num_in, num_mid, kernel_size=3, padding=1, bias=False) self.block1 = nn.Conv2d(num_mid, num_out, kernel_size=3, padding=1, bias=False) def forward(self, x): x = nn.functional.relu(self.block0(x), inplace=True) x = nn.functional.relu(self.block1(x), inplace=True) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_in': 4, 'num_mid': 4, 'num_out': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_relu_0(in_out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(in_out_ptr0 + x0, tmp2, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = 0.0 tmp4 = tmp2 <= tmp3 tl.store(in_out_ptr0 + x0, tmp2, xmask) tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4, 3, 3), (36, 9, 3, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_2, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_relu_0[grid(256)](buf1, 256, XBLOCK=128, num_warps =4, num_stages=1) buf2 = extern_kernels.convolution(buf1, primals_3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4, 4), (64, 16, 4, 1)) buf3 = buf2 del buf2 buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(256)](buf3, buf4, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf3, primals_1, primals_2, primals_3, buf1, buf4 class FPNHeadNew(nn.Module): """"this is the FPNHead class common to all backbones""" def __init__(self, num_in, num_mid, num_out): super(FPNHeadNew, self).__init__() self.block0 = nn.Conv2d(num_in, num_mid, kernel_size=3, padding=1, bias=False) self.block1 = nn.Conv2d(num_mid, num_out, kernel_size=3, padding=1, bias=False) def forward(self, input_0): primals_1 = self.block0.weight primals_3 = self.block1.weight primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AmaldevHari/Ghost-DeblurGAN
FPNHead
false
7,668
[ "MIT" ]
16
e725e5dad6a5fa5865d317e6644d96d0e800eae6
https://github.com/AmaldevHari/Ghost-DeblurGAN/tree/e725e5dad6a5fa5865d317e6644d96d0e800eae6
import torch import torch.nn as nn class Model(nn.Module): """"this is the FPNHead class common to all backbones""" def __init__(self, num_in, num_mid, num_out): super().__init__() self.block0 = nn.Conv2d(num_in, num_mid, kernel_size=3, padding=1, bias=False) self.block1 = nn.Conv2d(num_mid, num_out, kernel_size=3, padding=1, bias=False) def forward(self, x): x = nn.functional.relu(self.block0(x), inplace=True) x = nn.functional.relu(self.block1(x), inplace=True) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4]
LayerNorm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/tq/ctqlhivo3mo6eig4tnbu2s2tyo4r76vmhmtnuan7sou6pqgmtpjc.py # Topologically Sorted Source Nodes: [mean, std, sub, add, x, mul, x_1], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div, aten.mul] # Source node to ATen node mapping: # add => add # mean => mean # mul => mul # std => var # sub => sub # x => div # x_1 => add_1 # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%view, [1]), kwargs = {}) # %var : [num_users=1] = call_function[target=torch.ops.aten.var.correction](args = (%view, [1]), kwargs = {correction: 1.0}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_1, %view_1), kwargs = {}) # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_3, 1e-05), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %add), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div, %view_4), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %view_5), kwargs = {}) triton_per_fused_add_div_mean_mul_std_sub_0 = async_compile.triton('triton_per_fused_add_div_mean_mul_std_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 7), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_mean_mul_std_sub_0', 'mutated_arg_names': ['in_out_ptr0', 'in_out_ptr1'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 4, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_mean_mul_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex r3 = (rindex // 16) tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp28 = tl.load(in_ptr1 + (r3), None, eviction_policy='evict_last') tmp30 = tl.load(in_ptr2 + (r3), None, eviction_policy='evict_last') tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = 1e-05 tmp25 = tmp23 + tmp24 tmp26 = tmp0 - tmp20 tmp27 = tmp26 / tmp25 tmp29 = tmp27 * tmp28 tmp31 = tmp29 + tmp30 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + (x0), tmp25, xmask) tl.store(out_ptr0 + (r1 + (64*x0)), tmp31, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, ), (1, ), torch.float32) buf3 = empty_strided_cuda((4, ), (1, ), torch.float32) buf1 = buf0; del buf0 # reuse buf5 = reinterpret_tensor(buf3, (4, 1, 1, 1), (1, 1, 1, 1), 0); del buf3 # reuse buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean, std, sub, add, x, mul, x_1], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_add_div_mean_mul_std_sub_0.run(buf1, buf5, primals_1, primals_2, primals_3, buf6, 4, 64, grid=grid(4), stream=stream0) del primals_2 del primals_3 return (buf6, primals_1, reinterpret_tensor(buf1, (4, 1, 1, 1), (1, 1, 1, 1), 0), buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNorm, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_features': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_add_div_mean_mul_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex r3 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp28 = tl.load(in_ptr1 + r3, None, eviction_policy='evict_last') tmp30 = tl.load(in_ptr2 + r3, None, eviction_policy='evict_last') tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = 1e-05 tmp25 = tmp23 + tmp24 tmp26 = tmp0 - tmp20 tmp27 = tmp26 / tmp25 tmp29 = tmp27 * tmp28 tmp31 = tmp29 + tmp30 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + x0, tmp25, xmask) tl.store(out_ptr0 + (r1 + 64 * x0), tmp31, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4,), (1,), torch.float32) buf3 = empty_strided_cuda((4,), (1,), torch.float32) buf1 = buf0 del buf0 buf5 = reinterpret_tensor(buf3, (4, 1, 1, 1), (1, 1, 1, 1), 0) del buf3 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_per_fused_add_div_mean_mul_std_sub_0[grid(4)](buf1, buf5, primals_1, primals_2, primals_3, buf6, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) del primals_2 del primals_3 return buf6, primals_1, reinterpret_tensor(buf1, (4, 1, 1, 1), (1, 1, 1, 1), 0), buf5 class LayerNormNew(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNormNew, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, input_0): primals_2 = self.gamma primals_3 = self.beta primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AllenPu/mbdg
LayerNorm
false
7,669
[ "MIT" ]
27
243f53a57dcf4bfb6e717c0c9f64a839cff8d548
https://github.com/AllenPu/mbdg/tree/243f53a57dcf4bfb6e717c0c9f64a839cff8d548
import torch import torch.nn as nn import torch.utils.data class Model(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super().__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
HintLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/hb/chbuqo44mkocnty27xhvlmic5gkpah5b7rxbltikn2d546nux332.py # Topologically Sorted Source Nodes: [loss], Original ATen: [aten.mse_loss] # Source node to ATen node mapping: # loss => mean, pow_1, sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg0_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%pow_1,), kwargs = {}) triton_per_fused_mse_loss_0 = async_compile.triton('triton_per_fused_mse_loss_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mse_loss_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mse_loss_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp8, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [loss], Original ATen: [aten.mse_loss] stream0 = get_raw_stream(0) triton_per_fused_mse_loss_0.run(buf1, arg1_1, arg0_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class HintLoss(nn.Module): """Fitnets: hints for thin deep nets, ICLR 2015""" def __init__(self): super(HintLoss, self).__init__() self.crit = nn.MSELoss() def forward(self, f_s, f_t): loss = self.crit(f_s, f_t) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_mse_loss_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp8, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_mse_loss_0[grid(1)](buf1, arg1_1, arg0_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, class HintLossNew(nn.Module): """Fitnets: hints for thin deep nets, ICLR 2015""" def __init__(self): super(HintLossNew, self).__init__() self.crit = nn.MSELoss() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
HintLoss
false
7,670
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn class Model(nn.Module): """Fitnets: hints for thin deep nets, ICLR 2015""" def __init__(self): super().__init__() self.crit = nn.MSELoss() def forward(self, f_s, f_t): loss = self.crit(f_s, f_t) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
DeContraster
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/pr/cprdwckh6wv3mf73sm2vduzu3utvvkcokun3tsrzgznyaeafsbhj.py # Topologically Sorted Source Nodes: [mean, sub, diff], Original ATen: [aten.mean, aten.sub, aten.clamp] # Source node to ATen node mapping: # diff => clamp_max, clamp_min # mean => mean # sub => sub # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%arg0_1, [1, 2, 3]), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%unsqueeze_2, %arg0_1), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sub, -4), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 4), kwargs = {}) triton_per_fused_clamp_mean_sub_0 = async_compile.triton('triton_per_fused_clamp_mean_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_clamp_mean_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_clamp_mean_sub_0(in_ptr0, out_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tmp7 = tmp6 - tmp0 tmp8 = -4.0 tmp9 = triton_helpers.maximum(tmp7, tmp8) tmp10 = 4.0 tmp11 = triton_helpers.minimum(tmp9, tmp10) tl.store(out_ptr1 + (r1 + (64*x0)), tmp11, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean, sub, diff], Original ATen: [aten.mean, aten.sub, aten.clamp] stream0 = get_raw_stream(0) triton_per_fused_clamp_mean_sub_0.run(arg0_1, buf1, 4, 64, grid=grid(4), stream=stream0) del arg0_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class DeContraster(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): diff = torch.clamp(x.mean(dim=(1, 2, 3))[:, None, None, None] - x, -self.eps, self.eps) return diff def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'eps': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_clamp_mean_sub_0(in_ptr0, out_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tmp7 = tmp6 - tmp0 tmp8 = -4.0 tmp9 = triton_helpers.maximum(tmp7, tmp8) tmp10 = 4.0 tmp11 = triton_helpers.minimum(tmp9, tmp10) tl.store(out_ptr1 + (r1 + 64 * x0), tmp11, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_per_fused_clamp_mean_sub_0[grid(4)](arg0_1, buf1, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 return buf1, class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class DeContrasterNew(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
DeContraster
false
7,671
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Model(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): diff = torch.clamp(x.mean(dim=(1, 2, 3))[:, None, None, None] - x, -self.eps, self.eps) return diff def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
BinaryLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/j4/cj4j2cxxnrxlcyjluqaw5ionbyhtaqrxvzhdp3fnlpanipgxx4pn.py # Topologically Sorted Source Nodes: [logaddexp, neg], Original ATen: [aten.logaddexp, aten.neg] # Source node to ATen node mapping: # logaddexp => add, eq_1, exp, full_default, ge, log1p, logical_and, sub, where, where_1, where_2 # neg => neg # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], False), kwargs = {dtype: torch.bool, layout: torch.strided, device: cuda:0, pin_memory: False}) # %neg : [num_users=4] = call_function[target=torch.ops.aten.neg.default](args = (%arg0_1,), kwargs = {}) # %eq_1 : [num_users=1] = call_function[target=torch.ops.aten.eq.Tensor](args = (%expand, %neg), kwargs = {}) # %logical_and : [num_users=1] = call_function[target=torch.ops.aten.logical_and.default](args = (%full_default, %eq_1), kwargs = {}) # %ge : [num_users=2] = call_function[target=torch.ops.aten.ge.Tensor](args = (%expand, %neg), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%ge, %neg, %expand), kwargs = {}) # %where : [num_users=2] = call_function[target=torch.ops.aten.where.self](args = (%ge, %expand, %neg), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %where), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%where, %log1p), kwargs = {}) # %where_2 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%logical_and, %expand, %add), kwargs = {}) triton_poi_fused_logaddexp_neg_0 = async_compile.triton('triton_poi_fused_logaddexp_neg_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_logaddexp_neg_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_logaddexp_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = -tmp0 tmp2 = 1.0 tmp3 = tmp2 == tmp1 tmp4 = tl.full([1], False, tl.int1) tmp5 = tmp4 & tmp3 tmp6 = tmp2 >= tmp1 tmp7 = tl.where(tmp6, tmp2, tmp1) tmp8 = tl.where(tmp6, tmp1, tmp2) tmp9 = tmp8 - tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = libdevice.log1p(tmp10) tmp12 = tmp7 + tmp11 tmp13 = tl.where(tmp5, tmp2, tmp12) tl.store(out_ptr0 + (x0), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [logaddexp, neg], Original ATen: [aten.logaddexp, aten.neg] stream0 = get_raw_stream(0) triton_poi_fused_logaddexp_neg_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class BinaryLoss(nn.Module): def __init__(self): super().__init__() def forward(self, output): return torch.logaddexp(torch.tensor([1.0], device=output.device), - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_logaddexp_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = -tmp0 tmp2 = 1.0 tmp3 = tmp2 == tmp1 tmp4 = tl.full([1], False, tl.int1) tmp5 = tmp4 & tmp3 tmp6 = tmp2 >= tmp1 tmp7 = tl.where(tmp6, tmp2, tmp1) tmp8 = tl.where(tmp6, tmp1, tmp2) tmp9 = tmp8 - tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = libdevice.log1p(tmp10) tmp12 = tmp7 + tmp11 tmp13 = tl.where(tmp5, tmp2, tmp12) tl.store(out_ptr0 + x0, tmp13, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_logaddexp_neg_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class BinaryLossNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
BinaryLoss
false
7,672
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() def forward(self, output): return torch.logaddexp(torch.tensor([1.0], device=output.device), - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
EncoderImageWeightNormPrecomp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ry/cryl4mlcbqnhycqy2ocfprfhifkeb6c7ygxkpoyn4aojx77wfb5q.py # Topologically Sorted Source Nodes: [_weight_norm], Original ATen: [aten.norm, aten.div, aten.mul] # Source node to ATen node mapping: # _weight_norm => div, mul, pow_1, pow_2, sum_1 # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%primals_2, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, None), kwargs = {}) # %pow_2 : [num_users=2] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_1, 0.5), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%primals_1, %pow_2), kwargs = {}) # %mul : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %div), kwargs = {}) triton_per_fused_div_mul_norm_0 = async_compile.triton('triton_per_fused_div_mul_norm_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {4: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=(4,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_div_mul_norm_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_div_mul_norm_0(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp6 = tl.load(in_ptr1 + (0)) tmp7 = tl.broadcast_to(tmp6, [XBLOCK, RBLOCK]) tmp1 = tmp0 * tmp0 tmp2 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp4 = tl.sum(tmp2, 1)[:, None] tmp5 = libdevice.sqrt(tmp4) tmp8 = tmp7 / tmp5 tmp9 = tmp0 * tmp8 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp5, None) tl.store(out_ptr0 + (tl.broadcast_to(r0, [XBLOCK, RBLOCK])), tmp9, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2o/c2omueljp7sx2llqrcjro2zswumtfmvnzob2hbh4rlya3onazm4z.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, X], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] # Source node to ATen node mapping: # X => div_1 # norm => add # pow_1 => pow_3 # sqrt => sqrt # sum_1 => sum_2 # Graph fragment: # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%view_1, 2), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_3, [-1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_2,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-12), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%view_1, %add), kwargs = {}) triton_poi_fused_add_div_pow_sqrt_sum_1 = async_compile.triton('triton_poi_fused_add_div_pow_sqrt_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_pow_sqrt_sum_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + (x2), tmp15, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [_weight_norm], Original ATen: [aten.norm, aten.div, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_div_mul_norm_0.run(buf1, primals_2, primals_1, buf2, 1, 16, grid=grid(1), stream=stream0) buf3 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [features], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(primals_4, (64, 4), (4, 1), 0), reinterpret_tensor(buf2, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_3 buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, X], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] triton_poi_fused_add_div_pow_sqrt_sum_1.run(buf3, buf4, 256, grid=grid(256), stream=stream0) return (buf4, buf2, primals_1, primals_2, buf1, reinterpret_tensor(primals_4, (64, 4), (4, 1), 0), buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((), (), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from collections import OrderedDict import torch.nn as nn import torch.nn.init from torch.nn.utils.weight_norm import weight_norm def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class EncoderImageWeightNormPrecomp(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super(EncoderImageWeightNormPrecomp, self).__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = weight_norm(nn.Linear(img_dim, embed_size), dim=None) def forward(self, images): """Extract image feature vectors.""" features = self.fc(images) if not self.no_imgnorm: features = l2norm(features, dim=-1) return features def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImageWeightNormPrecomp, self).load_state_dict(new_state) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'img_dim': 4, 'embed_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice from collections import OrderedDict import torch.nn as nn import torch.nn.init from torch.nn.utils.weight_norm import weight_norm assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_div_mul_norm_0(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp6 = tl.load(in_ptr1 + 0) tmp7 = tl.broadcast_to(tmp6, [XBLOCK, RBLOCK]) tmp1 = tmp0 * tmp0 tmp2 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp4 = tl.sum(tmp2, 1)[:, None] tmp5 = libdevice.sqrt(tmp4) tmp8 = tmp7 / tmp5 tmp9 = tmp0 * tmp8 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp5, None) tl.store(out_ptr0 + tl.broadcast_to(r0, [XBLOCK, RBLOCK]), tmp9, None) @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + x2, tmp15, xmask) def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) get_raw_stream(0) triton_per_fused_div_mul_norm_0[grid(1)](buf1, primals_2, primals_1, buf2, 1, 16, XBLOCK=1, num_warps=2, num_stages=1) buf3 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(primals_4, (64, 4), (4, 1), 0), reinterpret_tensor(buf2, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_3 buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_div_pow_sqrt_sum_1[grid(256)](buf3, buf4, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf4, buf2, primals_1, primals_2, buf1, reinterpret_tensor(primals_4 , (64, 4), (4, 1), 0), buf3 def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class EncoderImageWeightNormPrecompNew(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super(EncoderImageWeightNormPrecompNew, self).__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = weight_norm(nn.Linear(img_dim, embed_size), dim=None) def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImageWeightNormPrecompNew, self).load_state_dict(new_state ) def forward(self, input_0): primals_3 = self.fc.bias primals_1 = self.fc.weight_g primals_2 = self.fc.weight_v primals_4 = input_0 output = call([primals_1, primals_2, primals_3, primals_4]) return output[0]
AndresPMD/semantic_adaptive_margin
EncoderImageWeightNormPrecomp
false
7,673
[ "Apache-2.0" ]
12
1e8bf2f1836498c48df030cb0a967b72b52e8460
https://github.com/AndresPMD/semantic_adaptive_margin/tree/1e8bf2f1836498c48df030cb0a967b72b52e8460
import torch from collections import OrderedDict import torch.nn as nn import torch.nn.init from torch.nn.utils.weight_norm import weight_norm def l2norm(X, dim=-1, eps=1e-12): """L2-normalize columns of X """ norm = torch.pow(X, 2).sum(dim=dim, keepdim=True).sqrt() + eps X = torch.div(X, norm) return X class Model(nn.Module): def __init__(self, img_dim, embed_size, no_imgnorm=False): super().__init__() self.embed_size = embed_size self.no_imgnorm = no_imgnorm self.fc = weight_norm(nn.Linear(img_dim, embed_size), dim=None) def forward(self, images): """Extract image feature vectors.""" features = self.fc(images) if not self.no_imgnorm: features = l2norm(features, dim=-1) return features def load_state_dict(self, state_dict): """Copies parameters. overwritting the default one to accept state_dict from Full model """ own_state = self.state_dict() new_state = OrderedDict() for name, param in state_dict.items(): if name in own_state: new_state[name] = param super(EncoderImageWeightNormPrecomp, self).load_state_dict(new_state) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
PKT
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/aj/cajwqerbwnrjp33h2d34os6xzwjyo743jcuwjeomij4qgso5waj2.py # Topologically Sorted Source Nodes: [pow_2, sum_2, target_net_norm, add_1, target_net, setitem_1], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.lift_fresh, aten.index_put] # Source node to ATen node mapping: # add_1 => add_1 # pow_2 => pow_2 # setitem_1 => full_default_1, index_put_1 # sum_2 => sum_2 # target_net => div_1 # target_net_norm => sqrt_1 # Graph fragment: # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg1_1, 2), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_2, [1], True), kwargs = {}) # %sqrt_1 : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_2,), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt_1, 1e-07), kwargs = {}) # %div_1 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg1_1, %add_1), kwargs = {}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cpu, pin_memory: False}) # %index_put_1 : [num_users=2] = call_function[target=torch.ops.aten.index_put_.default](args = (%div_1, [%ne_1], %full_default_1), kwargs = {}) triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-07 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tmp16 = tmp15 != tmp15 tmp17 = 0.0 tmp18 = tl.where(tmp16, tmp17, tmp15) tl.store(in_out_ptr0 + (x2), tmp18, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/yp/cypny6wkfceccntkh6qwuv67avxnbsdnwxl24vq4xrtdehbwxt63.py # Topologically Sorted Source Nodes: [add_3, target_similarity_1, sum_4, target_similarity_2, add_4, add_2, model_similarity_1, sum_3, model_similarity_2, add_5, truediv_6, log, mul, loss], Original ATen: [aten.add, aten.div, aten.sum, aten.log, aten.mul, aten.mean] # Source node to ATen node mapping: # add_2 => add_2 # add_3 => add_3 # add_4 => add_4 # add_5 => add_5 # log => log # loss => mean # model_similarity_1 => div_2 # model_similarity_2 => div_4 # mul => mul # sum_3 => sum_3 # sum_4 => sum_4 # target_similarity_1 => div_3 # target_similarity_2 => div_5 # truediv_6 => div_6 # Graph fragment: # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_1, 1.0), kwargs = {}) # %div_3 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_3, 2.0), kwargs = {}) # %sum_4 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%div_3, [1], True), kwargs = {}) # %div_5 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%div_3, %sum_4), kwargs = {}) # %add_4 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%div_5, 1e-07), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm, 1.0), kwargs = {}) # %div_2 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_2, 2.0), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%div_2, [1], True), kwargs = {}) # %div_4 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%div_2, %sum_3), kwargs = {}) # %add_5 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%div_4, 1e-07), kwargs = {}) # %div_6 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_4, %add_5), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%div_6,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_5, %log), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%mul,), kwargs = {}) triton_per_fused_add_div_log_mean_mul_sum_1 = async_compile.triton('triton_per_fused_add_div_log_mean_mul_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 16], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_log_mean_mul_sum_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 10, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_log_mean_mul_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex r1 = (rindex // 4) tmp0 = tl.load(in_ptr0 + (r2), None) tmp5 = tl.load(in_ptr0 + (4*r1), None, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (1 + (4*r1)), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (2 + (4*r1)), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (3 + (4*r1)), None, eviction_policy='evict_last') tmp23 = tl.load(in_ptr1 + (r2), None) tmp26 = tl.load(in_ptr1 + (4*r1), None, eviction_policy='evict_last') tmp29 = tl.load(in_ptr1 + (1 + (4*r1)), None, eviction_policy='evict_last') tmp33 = tl.load(in_ptr1 + (2 + (4*r1)), None, eviction_policy='evict_last') tmp37 = tl.load(in_ptr1 + (3 + (4*r1)), None, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 + tmp1 tmp3 = 0.5 tmp4 = tmp2 * tmp3 tmp6 = tmp5 + tmp1 tmp7 = tmp6 * tmp3 tmp9 = tmp8 + tmp1 tmp10 = tmp9 * tmp3 tmp11 = tmp7 + tmp10 tmp13 = tmp12 + tmp1 tmp14 = tmp13 * tmp3 tmp15 = tmp11 + tmp14 tmp17 = tmp16 + tmp1 tmp18 = tmp17 * tmp3 tmp19 = tmp15 + tmp18 tmp20 = tmp4 / tmp19 tmp21 = 1e-07 tmp22 = tmp20 + tmp21 tmp24 = tmp23 + tmp1 tmp25 = tmp24 * tmp3 tmp27 = tmp26 + tmp1 tmp28 = tmp27 * tmp3 tmp30 = tmp29 + tmp1 tmp31 = tmp30 * tmp3 tmp32 = tmp28 + tmp31 tmp34 = tmp33 + tmp1 tmp35 = tmp34 * tmp3 tmp36 = tmp32 + tmp35 tmp38 = tmp37 + tmp1 tmp39 = tmp38 * tmp3 tmp40 = tmp36 + tmp39 tmp41 = tmp25 / tmp40 tmp42 = tmp41 + tmp21 tmp43 = tmp22 / tmp42 tmp44 = tl_math.log(tmp43) tmp45 = tmp20 * tmp44 tmp46 = tl.broadcast_to(tmp45, [XBLOCK, RBLOCK]) tmp48 = tl.sum(tmp46, 1)[:, None] tmp49 = 16.0 tmp50 = tmp48 / tmp49 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp50, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4), (4, 1)) assert_size_stride(arg1_1, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [pow_2, sum_2, target_net_norm, add_1, target_net, setitem_1], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.lift_fresh, aten.index_put] stream0 = get_raw_stream(0) triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0.run(buf1, arg1_1, 16, grid=grid(16), stream=stream0) del arg1_1 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [target_similarity], Original ATen: [aten.mm] extern_kernels.mm(buf1, reinterpret_tensor(buf1, (4, 4), (1, 4), 0), out=buf2) buf4 = buf1; del buf1 # reuse buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [pow_1, sum_1, output_net_norm, add, output_net, setitem], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.lift_fresh, aten.index_put] triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0.run(buf5, arg0_1, 16, grid=grid(16), stream=stream0) del arg0_1 buf6 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [model_similarity], Original ATen: [aten.mm] extern_kernels.mm(buf5, reinterpret_tensor(buf5, (4, 4), (1, 4), 0), out=buf6) del buf5 buf7 = empty_strided_cuda((), (), torch.float32) buf8 = buf7; del buf7 # reuse # Topologically Sorted Source Nodes: [add_3, target_similarity_1, sum_4, target_similarity_2, add_4, add_2, model_similarity_1, sum_3, model_similarity_2, add_5, truediv_6, log, mul, loss], Original ATen: [aten.add, aten.div, aten.sum, aten.log, aten.mul, aten.mean] triton_per_fused_add_div_log_mean_mul_sum_1.run(buf8, buf2, buf6, 1, 16, grid=grid(1), stream=stream0) del buf2 del buf6 return (buf8, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class PKT(nn.Module): """Probabilistic Knowledge Transfer for deep representation learning Code from author: https://github.com/passalis/probabilistic_kt""" def __init__(self): super(PKT, self).__init__() def forward(self, f_s, f_t): return self.cosine_similarity_loss(f_s, f_t) @staticmethod def cosine_similarity_loss(output_net, target_net, eps=1e-07): output_net_norm = torch.sqrt(torch.sum(output_net ** 2, dim=1, keepdim=True)) output_net = output_net / (output_net_norm + eps) output_net[output_net != output_net] = 0 target_net_norm = torch.sqrt(torch.sum(target_net ** 2, dim=1, keepdim=True)) target_net = target_net / (target_net_norm + eps) target_net[target_net != target_net] = 0 model_similarity = torch.mm(output_net, output_net.transpose(0, 1)) target_similarity = torch.mm(target_net, target_net.transpose(0, 1)) model_similarity = (model_similarity + 1.0) / 2.0 target_similarity = (target_similarity + 1.0) / 2.0 model_similarity = model_similarity / torch.sum(model_similarity, dim=1, keepdim=True) target_similarity = target_similarity / torch.sum(target_similarity, dim=1, keepdim=True) loss = torch.mean(target_similarity * torch.log((target_similarity + eps) / (model_similarity + eps))) return loss def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-07 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tmp16 = tmp15 != tmp15 tmp17 = 0.0 tmp18 = tl.where(tmp16, tmp17, tmp15) tl.store(in_out_ptr0 + x2, tmp18, xmask) @triton.jit def triton_per_fused_add_div_log_mean_mul_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex r1 = rindex // 4 tmp0 = tl.load(in_ptr0 + r2, None) tmp5 = tl.load(in_ptr0 + 4 * r1, None, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (1 + 4 * r1), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (2 + 4 * r1), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (3 + 4 * r1), None, eviction_policy='evict_last') tmp23 = tl.load(in_ptr1 + r2, None) tmp26 = tl.load(in_ptr1 + 4 * r1, None, eviction_policy='evict_last') tmp29 = tl.load(in_ptr1 + (1 + 4 * r1), None, eviction_policy='evict_last') tmp33 = tl.load(in_ptr1 + (2 + 4 * r1), None, eviction_policy='evict_last') tmp37 = tl.load(in_ptr1 + (3 + 4 * r1), None, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 + tmp1 tmp3 = 0.5 tmp4 = tmp2 * tmp3 tmp6 = tmp5 + tmp1 tmp7 = tmp6 * tmp3 tmp9 = tmp8 + tmp1 tmp10 = tmp9 * tmp3 tmp11 = tmp7 + tmp10 tmp13 = tmp12 + tmp1 tmp14 = tmp13 * tmp3 tmp15 = tmp11 + tmp14 tmp17 = tmp16 + tmp1 tmp18 = tmp17 * tmp3 tmp19 = tmp15 + tmp18 tmp20 = tmp4 / tmp19 tmp21 = 1e-07 tmp22 = tmp20 + tmp21 tmp24 = tmp23 + tmp1 tmp25 = tmp24 * tmp3 tmp27 = tmp26 + tmp1 tmp28 = tmp27 * tmp3 tmp30 = tmp29 + tmp1 tmp31 = tmp30 * tmp3 tmp32 = tmp28 + tmp31 tmp34 = tmp33 + tmp1 tmp35 = tmp34 * tmp3 tmp36 = tmp32 + tmp35 tmp38 = tmp37 + tmp1 tmp39 = tmp38 * tmp3 tmp40 = tmp36 + tmp39 tmp41 = tmp25 / tmp40 tmp42 = tmp41 + tmp21 tmp43 = tmp22 / tmp42 tmp44 = tl_math.log(tmp43) tmp45 = tmp20 * tmp44 tmp46 = tl.broadcast_to(tmp45, [XBLOCK, RBLOCK]) tmp48 = tl.sum(tmp46, 1)[:, None] tmp49 = 16.0 tmp50 = tmp48 / tmp49 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp50, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4), (4, 1)) assert_size_stride(arg1_1, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0[grid(16)]( buf1, arg1_1, 16, XBLOCK=16, num_warps=1, num_stages=1) del arg1_1 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf1, reinterpret_tensor(buf1, (4, 4), (1, 4), 0), out=buf2) buf4 = buf1 del buf1 buf5 = buf4 del buf4 triton_poi_fused_add_div_index_put_lift_fresh_pow_sqrt_sum_0[grid(16)]( buf5, arg0_1, 16, XBLOCK=16, num_warps=1, num_stages=1) del arg0_1 buf6 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf5, reinterpret_tensor(buf5, (4, 4), (1, 4), 0), out=buf6) del buf5 buf7 = empty_strided_cuda((), (), torch.float32) buf8 = buf7 del buf7 triton_per_fused_add_div_log_mean_mul_sum_1[grid(1)](buf8, buf2, buf6, 1, 16, XBLOCK=1, num_warps=2, num_stages=1) del buf2 del buf6 return buf8, class PKTNew(nn.Module): """Probabilistic Knowledge Transfer for deep representation learning Code from author: https://github.com/passalis/probabilistic_kt""" def __init__(self): super(PKTNew, self).__init__() @staticmethod def cosine_similarity_loss(output_net, target_net, eps=1e-07): output_net_norm = torch.sqrt(torch.sum(output_net ** 2, dim=1, keepdim=True)) output_net = output_net / (output_net_norm + eps) output_net[output_net != output_net] = 0 target_net_norm = torch.sqrt(torch.sum(target_net ** 2, dim=1, keepdim=True)) target_net = target_net / (target_net_norm + eps) target_net[target_net != target_net] = 0 model_similarity = torch.mm(output_net, output_net.transpose(0, 1)) target_similarity = torch.mm(target_net, target_net.transpose(0, 1)) model_similarity = (model_similarity + 1.0) / 2.0 target_similarity = (target_similarity + 1.0) / 2.0 model_similarity = model_similarity / torch.sum(model_similarity, dim=1, keepdim=True) target_similarity = target_similarity / torch.sum(target_similarity, dim=1, keepdim=True) loss = torch.mean(target_similarity * torch.log((target_similarity + eps) / (model_similarity + eps))) return loss def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
PKT
false
7,674
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn class Model(nn.Module): """Probabilistic Knowledge Transfer for deep representation learning Code from author: https://github.com/passalis/probabilistic_kt""" def __init__(self): super().__init__() def forward(self, f_s, f_t): return self.cosine_similarity_loss(f_s, f_t) @staticmethod def cosine_similarity_loss(output_net, target_net, eps=1e-07): output_net_norm = torch.sqrt(torch.sum(output_net ** 2, dim=1, keepdim=True)) output_net = output_net / (output_net_norm + eps) output_net[output_net != output_net] = 0 target_net_norm = torch.sqrt(torch.sum(target_net ** 2, dim=1, keepdim=True)) target_net = target_net / (target_net_norm + eps) target_net[target_net != target_net] = 0 model_similarity = torch.mm(output_net, output_net.transpose(0, 1)) target_similarity = torch.mm(target_net, target_net.transpose(0, 1)) model_similarity = (model_similarity + 1.0) / 2.0 target_similarity = (target_similarity + 1.0) / 2.0 model_similarity = model_similarity / torch.sum(model_similarity, dim=1, keepdim=True) target_similarity = target_similarity / torch.sum(target_similarity, dim=1, keepdim=True) loss = torch.mean(target_similarity * torch.log((target_similarity + eps) / (model_similarity + eps))) return loss def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return []
LinearVarianceUnif
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/gs/cgsqgjnmy4hj6eju4pucufr2acx62xuqilkbh6fhsit5dwkbg5os.py # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, 0.0), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.0 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/nd/cndmfvh7lrojuqo776y2t4r3iwqonobmuxwcqkx2pam6myjioeyl.py # Topologically Sorted Source Nodes: [output_1], Original ATen: [aten.add] # Source node to ATen node mapping: # output_1 => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %primals_3), kwargs = {}) triton_poi_fused_add_1 = async_compile.triton('triton_poi_fused_add_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (1, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_1, buf0, 16, grid=grid(16), stream=stream0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [output], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(primals_2, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), out=buf1) del buf0 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [output_1], Original ATen: [aten.add] triton_poi_fused_add_1.run(buf2, primals_3, 256, grid=grid(256), stream=stream0) del primals_3 return (buf2, reinterpret_tensor(primals_2, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn import torch.nn.functional as F from torch.autograd import Variable from torch.nn import Parameter class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class LinearVarianceUnif(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super(LinearVarianceUnif, self).__init__() self.in_features = in_features self.out_features = out_features self.W = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.W.size(1)) self.W.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def forward(self, x): if self.training: eps = Variable(self.W.data.new(self.W.size()).uniform_() - 0.5) else: eps = 0.0 output = F.linear(x, self.W * eps) if self.bias is not None: output = output + self.bias return output def __repr__(self): return self.__class__.__name__ + '(' + 'in_features=' + str(self. in_features) + ', out_features=' + str(self.out_features ) + ', bias=' + str(self.bias is not None) + ')' def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4, 'out_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import math import torch.nn as nn from torch.nn import Parameter assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.0 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) @triton.jit def triton_poi_fused_add_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (1, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(16)](primals_1, buf0, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_2, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), out=buf1) del buf0 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf1 triton_poi_fused_add_1[grid(256)](buf2, primals_3, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_3 return buf2, reinterpret_tensor(primals_2, (64, 4), (4, 1), 0) class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class LinearVarianceUnifNew(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super(LinearVarianceUnifNew, self).__init__() self.in_features = in_features self.out_features = out_features self.W = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.W.size(1)) self.W.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def __repr__(self): return self.__class__.__name__ + '(' + 'in_features=' + str(self. in_features) + ', out_features=' + str(self.out_features ) + ', bias=' + str(self.bias is not None) + ')' def forward(self, input_0): primals_1 = self.W primals_3 = self.bias primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AlliedToasters/elko_den
LinearVarianceUnif
false
7,675
[ "Apache-2.0" ]
38
4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
https://github.com/AlliedToasters/elko_den/tree/4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
import math import torch import torch.nn as nn import torch.nn.functional as F from torch.autograd import Variable from torch.nn import Parameter class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super().__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class Model(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super().__init__() self.in_features = in_features self.out_features = out_features self.W = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.W.size(1)) self.W.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def forward(self, x): if self.training: eps = Variable(self.W.data.new(self.W.size()).uniform_() - 0.5) else: eps = 0.0 output = F.linear(x, self.W * eps) if self.bias is not None: output = output + self.bias return output def __repr__(self): return self.__class__.__name__ + '(' + 'in_features=' + str(self. in_features) + ', out_features=' + str(self.out_features ) + ', bias=' + str(self.bias is not None) + ')' def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
KDE
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/rr/crrcbjnuh4wzjziv2eaw5urg5jps25nrpdndrq4k3okeksp7en3x.py # Topologically Sorted Source Nodes: [inputs_embed, targets_embed, loss_kde], Original ATen: [aten.div, aten.mse_loss] # Source node to ATen node mapping: # inputs_embed => div # loss_kde => pow_5, sub, sum_3 # targets_embed => div_1 # Graph fragment: # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg0_1, %expand), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg1_1, %expand_1), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div, %div_1), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%pow_5,), kwargs = {}) triton_per_fused_div_mse_loss_0 = async_compile.triton('triton_per_fused_div_mse_loss_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_div_mse_loss_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 10, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_div_mse_loss_0(in_ptr0, in_ptr1, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = (rindex // 64) tmp0 = tl.load(in_ptr0 + (r3), None) tmp1 = tl.load(in_ptr0 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (r3), None) tmp17 = tl.load(in_ptr1 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp19 = tl.load(in_ptr1 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp22 = tl.load(in_ptr1 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp25 = tl.load(in_ptr1 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tmp18 = tmp17 * tmp17 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = libdevice.sqrt(tmp27) tmp29 = triton_helpers.maximum(tmp28, tmp13) tmp30 = tmp16 / tmp29 tmp31 = tmp15 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tl.store(out_ptr1 + (tl.full([1], 0, tl.int32)), tmp35, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [inputs_embed, targets_embed, loss_kde], Original ATen: [aten.div, aten.mse_loss] stream0 = get_raw_stream(0) triton_per_fused_div_mse_loss_0.run(arg0_1, arg1_1, buf1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class KDE(nn.Module): """KD on embeddings - KDE""" def __init__(self): super(KDE, self).__init__() def forward(self, embedding_s, embedding_t): inputs_embed = F.normalize(embedding_s, p=2.0, dim=1) targets_embed = F.normalize(embedding_t, p=2.0, dim=1) loss_kde = nn.MSELoss(reduction='sum')(inputs_embed, targets_embed) return loss_kde def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_div_mse_loss_0(in_ptr0, in_ptr1, out_ptr1, xnumel, rnumel ): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = rindex // 64 tmp0 = tl.load(in_ptr0 + r3, None) tmp1 = tl.load(in_ptr0 + (r0 + 64 * r2), None, eviction_policy='evict_last' ) tmp3 = tl.load(in_ptr0 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp16 = tl.load(in_ptr1 + r3, None) tmp17 = tl.load(in_ptr1 + (r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp19 = tl.load(in_ptr1 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp22 = tl.load(in_ptr1 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp25 = tl.load(in_ptr1 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tmp18 = tmp17 * tmp17 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = libdevice.sqrt(tmp27) tmp29 = triton_helpers.maximum(tmp28, tmp13) tmp30 = tmp16 / tmp29 tmp31 = tmp15 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tl.store(out_ptr1 + tl.full([1], 0, tl.int32), tmp35, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused_div_mse_loss_0[grid(1)](arg0_1, arg1_1, buf1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, class KDENew(nn.Module): """KD on embeddings - KDE""" def __init__(self): super(KDENew, self).__init__() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
KDE
false
7,676
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): """KD on embeddings - KDE""" def __init__(self): super().__init__() def forward(self, embedding_s, embedding_t): inputs_embed = F.normalize(embedding_s, p=2.0, dim=1) targets_embed = F.normalize(embedding_t, p=2.0, dim=1) loss_kde = nn.MSELoss(reduction='sum')(inputs_embed, targets_embed) return loss_kde def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
MNIST_CNN
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/2k/c2k35gu2djrvtntpcn2hqnbf6zyo2ejfxozv3uzh3xmke7vx3axx.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_0 = async_compile.triton('triton_poi_fused_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 256 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 4 y1 = (yindex // 4) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask & ymask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (4*x2) + (36*y1)), tmp0, xmask & ymask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/62/c62myuf63oepurbxeoz2olrr5dwoipydpve4ekfnunp6gerrikor.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 4 y1 = (yindex // 4) tmp0 = tl.load(in_ptr0 + (x2 + (16*y3)), xmask & ymask) tl.store(out_ptr0 + (y0 + (4*x2) + (64*y1)), tmp0, xmask & ymask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xs/cxsarnw2wm2gid2judloczqftyialh3etpmvbejw7tuglcm5m2ir.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_2 = async_compile.triton('triton_poi_fused_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 8192 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = (yindex // 64) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (64*x2) + (576*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/fh/cfhbha4jjott434uisf5mi7hyc6aabnyin37w2nsewlcpyvjmf25.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_3 = async_compile.triton('triton_poi_fused_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_3(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16384 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (1152*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/6y/c6yjh7vbtwyuq3645gkddz7uw3unzme4vsfwbnh5dfle2gxwn7lw.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x => convolution # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_4 = async_compile.triton('triton_poi_fused_convolution_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/n2/cn2v27l7twqeyi6vvy4drguwmmdceoi7rq7fesinkiz5a7belgp7.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.native_group_norm] # Source node to ATen node mapping: # x_2 => add, rsqrt, var_mean # Graph fragment: # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%view, [2, 3]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) triton_per_fused_native_group_norm_5 = async_compile.triton('triton_per_fused_native_group_norm_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[32, 128], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_native_group_norm_5', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_native_group_norm_5(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 32 rnumel = 128 RBLOCK: tl.constexpr = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex % 8 r3 = (rindex // 8) x0 = xindex % 8 x1 = (xindex // 8) x4 = xindex tmp0 = tl.load(in_ptr0 + (r2 + (8*x0) + (64*r3) + (1024*x1)), xmask, other=0.0) tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 128, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 128.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.store(out_ptr2 + (x4), tmp23, xmask) tl.store(out_ptr0 + (x4), tmp12, xmask) tl.store(out_ptr1 + (x4), tmp18, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/zq/czqkwjapl7jjimpta2jdwwmttzhxnsqolekh3zqc2epawirft2if.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.native_group_norm] # Source node to ATen node mapping: # x_2 => add_1, mul_1 # Graph fragment: # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, %unsqueeze_5), kwargs = {}) # %add_1 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %unsqueeze_2), kwargs = {}) triton_poi_fused_native_group_norm_6 = async_compile.triton('triton_poi_fused_native_group_norm_6', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_native_group_norm_6', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_native_group_norm_6(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x0 = xindex % 64 x2 = (xindex // 1024) tmp0 = tl.load(in_ptr0 + (x3), None) tmp3 = tl.load(in_ptr1 + ((8*x2) + (x0 // 8)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + ((8*x2) + (x0 // 8)), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr3 + (x0), None, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + (x0), None, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 128.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tl.store(out_ptr0 + (x3), tmp15, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/hw/chwvhahay7rbxzskysmuvjp5hdy3ooiel5xbfczrmqniev25mp5s.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%add_1, %primals_6, %primals_7, [2, 2], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_7 = async_compile.triton('triton_poi_fused_convolution_7', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_7', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2048 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ft/cfthplspmkpfi5jgfkzz2egicyaxfe4pl22aeeyuuocohsew3qdd.py # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.native_group_norm] # Source node to ATen node mapping: # x_5 => add_2, rsqrt_1, var_mean_1 # Graph fragment: # %var_mean_1 : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%view_2, [2, 3]), kwargs = {correction: 0, keepdim: True}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem_2, 1e-05), kwargs = {}) # %rsqrt_1 : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add_2,), kwargs = {}) triton_per_fused_native_group_norm_8 = async_compile.triton('triton_per_fused_native_group_norm_8', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[32, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_native_group_norm_8', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_native_group_norm_8(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 32 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex % 16 r3 = (rindex // 16) x0 = xindex % 8 x1 = (xindex // 8) x4 = xindex tmp0 = tl.load(in_ptr0 + (r2 + (16*x0) + (128*r3) + (512*x1)), xmask, other=0.0) tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.store(out_ptr2 + (x4), tmp23, xmask) tl.store(out_ptr0 + (x4), tmp12, xmask) tl.store(out_ptr1 + (x4), tmp18, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/po/cpoag2hjvwrmc4xxm4krbqskizau5a5inc7fcuti6mx7rwgr4mnd.py # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.native_group_norm] # Source node to ATen node mapping: # x_5 => add_3, mul_3 # Graph fragment: # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %unsqueeze_11), kwargs = {}) # %add_3 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_3, %unsqueeze_8), kwargs = {}) triton_poi_fused_native_group_norm_9 = async_compile.triton('triton_poi_fused_native_group_norm_9', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_native_group_norm_9', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_native_group_norm_9(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2048 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x0 = xindex % 128 x2 = (xindex // 512) tmp0 = tl.load(in_ptr0 + (x3), None) tmp3 = tl.load(in_ptr1 + ((8*x2) + (x0 // 16)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + ((8*x2) + (x0 // 16)), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr3 + (x0), None, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + (x0), None, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 64.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tl.store(out_ptr0 + (x3), tmp15, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/kh/ckhzhzynfuvh5dpihpdvkoniymafdra7osdrikp5cgn4hpnb7zpq.py # Topologically Sorted Source Nodes: [x_11, x_12], Original ATen: [aten.native_group_norm, aten.mean] # Source node to ATen node mapping: # x_11 => add_7, mul_7 # x_12 => mean # Graph fragment: # %mul_7 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_7, %unsqueeze_23), kwargs = {}) # %add_7 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_7, %unsqueeze_20), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%add_7, [-1, -2], True), kwargs = {}) triton_poi_fused_mean_native_group_norm_10 = async_compile.triton('triton_poi_fused_mean_native_group_norm_10', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_native_group_norm_10', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_native_group_norm_10(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 128 x1 = (xindex // 128) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (512*x1)), xmask) tmp3 = tl.load(in_ptr1 + ((x2 // 16)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + ((x2 // 16)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (128 + x0 + (512*x1)), xmask) tmp23 = tl.load(in_ptr0 + (256 + x0 + (512*x1)), xmask) tmp30 = tl.load(in_ptr0 + (384 + x0 + (512*x1)), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 64.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tmp17 = triton_helpers.maximum(tmp1, tmp16) tmp18 = tmp17 - tmp3 tmp19 = tmp18 * tmp10 tmp20 = tmp19 * tmp12 tmp21 = tmp20 + tmp14 tmp22 = tmp15 + tmp21 tmp24 = triton_helpers.maximum(tmp1, tmp23) tmp25 = tmp24 - tmp3 tmp26 = tmp25 * tmp10 tmp27 = tmp26 * tmp12 tmp28 = tmp27 + tmp14 tmp29 = tmp22 + tmp28 tmp31 = triton_helpers.maximum(tmp1, tmp30) tmp32 = tmp31 - tmp3 tmp33 = tmp32 * tmp10 tmp34 = tmp33 * tmp12 tmp35 = tmp34 + tmp14 tmp36 = tmp29 + tmp35 tmp37 = 4.0 tmp38 = tmp36 / tmp37 tl.store(out_ptr0 + (x2), tmp38, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17 = args args.clear() assert_size_stride(primals_1, (64, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (64, ), (1, )) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128, ), (1, )) assert_size_stride(primals_8, (128, ), (1, )) assert_size_stride(primals_9, (128, ), (1, )) assert_size_stride(primals_10, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (128, ), (1, )) assert_size_stride(primals_12, (128, ), (1, )) assert_size_stride(primals_13, (128, ), (1, )) assert_size_stride(primals_14, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_15, (128, ), (1, )) assert_size_stride(primals_16, (128, ), (1, )) assert_size_stride(primals_17, (128, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4, 3, 3), (36, 1, 12, 4), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] stream0 = get_raw_stream(0) triton_poi_fused_0.run(primals_1, buf0, 256, 9, grid=grid(256, 9), stream=stream0) del primals_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 1, 16, 4), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(primals_3, buf1, 16, 16, grid=grid(16, 16), stream=stream0) del primals_3 buf2 = empty_strided_cuda((128, 64, 3, 3), (576, 1, 192, 64), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_2.run(primals_6, buf2, 8192, 9, grid=grid(8192, 9), stream=stream0) del primals_6 buf3 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_3.run(primals_10, buf3, 16384, 9, grid=grid(16384, 9), stream=stream0) del primals_10 buf4 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_3.run(primals_14, buf4, 16384, 9, grid=grid(16384, 9), stream=stream0) del primals_14 # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf5 = extern_kernels.convolution(buf1, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf5, (4, 64, 4, 4), (1024, 1, 256, 64)) buf6 = buf5; del buf5 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] triton_poi_fused_convolution_4.run(buf6, primals_2, 4096, grid=grid(4096), stream=stream0) del primals_2 buf7 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf8 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf11 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.native_group_norm] triton_per_fused_native_group_norm_5.run(buf6, buf7, buf8, buf11, 32, 128, grid=grid(32), stream=stream0) buf10 = empty_strided_cuda((4, 64, 4, 4), (1024, 1, 256, 64), torch.float32) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.native_group_norm] triton_poi_fused_native_group_norm_6.run(buf6, buf7, buf8, primals_4, primals_5, buf10, 4096, grid=grid(4096), stream=stream0) del primals_5 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf12 = extern_kernels.convolution(buf10, buf2, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 128, 2, 2), (512, 1, 256, 128)) buf13 = buf12; del buf12 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] triton_poi_fused_convolution_7.run(buf13, primals_7, 2048, grid=grid(2048), stream=stream0) del primals_7 buf14 = buf8; del buf8 # reuse buf15 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf18 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.native_group_norm] triton_per_fused_native_group_norm_8.run(buf13, buf14, buf15, buf18, 32, 64, grid=grid(32), stream=stream0) buf17 = empty_strided_cuda((4, 128, 2, 2), (512, 1, 256, 128), torch.float32) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.native_group_norm] triton_poi_fused_native_group_norm_9.run(buf13, buf14, buf15, primals_8, primals_9, buf17, 2048, grid=grid(2048), stream=stream0) del primals_9 # Topologically Sorted Source Nodes: [x_6], Original ATen: [aten.convolution] buf19 = extern_kernels.convolution(buf17, buf3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf19, (4, 128, 2, 2), (512, 1, 256, 128)) buf20 = buf19; del buf19 # reuse # Topologically Sorted Source Nodes: [x_6], Original ATen: [aten.convolution] triton_poi_fused_convolution_7.run(buf20, primals_11, 2048, grid=grid(2048), stream=stream0) del primals_11 buf21 = buf15; del buf15 # reuse buf22 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf25 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.native_group_norm] triton_per_fused_native_group_norm_8.run(buf20, buf21, buf22, buf25, 32, 64, grid=grid(32), stream=stream0) buf24 = empty_strided_cuda((4, 128, 2, 2), (512, 1, 256, 128), torch.float32) # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.native_group_norm] triton_poi_fused_native_group_norm_9.run(buf20, buf21, buf22, primals_12, primals_13, buf24, 2048, grid=grid(2048), stream=stream0) del primals_13 # Topologically Sorted Source Nodes: [x_9], Original ATen: [aten.convolution] buf26 = extern_kernels.convolution(buf24, buf4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 128, 2, 2), (512, 1, 256, 128)) buf27 = buf26; del buf26 # reuse # Topologically Sorted Source Nodes: [x_9], Original ATen: [aten.convolution] triton_poi_fused_convolution_7.run(buf27, primals_15, 2048, grid=grid(2048), stream=stream0) del primals_15 buf28 = buf22; del buf22 # reuse buf29 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf31 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) # Topologically Sorted Source Nodes: [x_11], Original ATen: [aten.native_group_norm] triton_per_fused_native_group_norm_8.run(buf27, buf28, buf29, buf31, 32, 64, grid=grid(32), stream=stream0) buf32 = empty_strided_cuda((4, 128, 1, 1), (128, 1, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x_11, x_12], Original ATen: [aten.native_group_norm, aten.mean] triton_poi_fused_mean_native_group_norm_10.run(buf27, buf28, buf29, primals_16, primals_17, buf32, 512, grid=grid(512), stream=stream0) del buf29 del primals_17 return (reinterpret_tensor(buf32, (4, 128), (128, 1), 0), buf0, buf1, primals_4, buf2, primals_8, buf3, primals_12, buf4, primals_16, buf6, buf10, reinterpret_tensor(buf7, (4, 8), (8, 1), 0), reinterpret_tensor(buf11, (4, 8), (8, 1), 0), buf13, buf17, reinterpret_tensor(buf14, (4, 8), (8, 1), 0), reinterpret_tensor(buf18, (4, 8), (8, 1), 0), buf20, buf24, reinterpret_tensor(buf21, (4, 8), (8, 1), 0), reinterpret_tensor(buf25, (4, 8), (8, 1), 0), buf27, reinterpret_tensor(buf28, (4, 8), (8, 1), 0), reinterpret_tensor(buf31, (4, 8), (8, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((128, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_14 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_15 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_16 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_17 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data class MNIST_CNN(nn.Module): """ Hand-tuned architecture for MNIST. Weirdness I've noticed so far with this architecture: - adding a linear layer after the mean-pool in features hurts RotatedMNIST-100 generalization severely. """ n_outputs = 128 def __init__(self, input_shape): super(MNIST_CNN, self).__init__() self.conv1 = nn.Conv2d(input_shape[0], 64, 3, 1, padding=1) self.conv2 = nn.Conv2d(64, 128, 3, stride=2, padding=1) self.conv3 = nn.Conv2d(128, 128, 3, 1, padding=1) self.conv4 = nn.Conv2d(128, 128, 3, 1, padding=1) self.bn0 = nn.GroupNorm(8, 64) self.bn1 = nn.GroupNorm(8, 128) self.bn2 = nn.GroupNorm(8, 128) self.bn3 = nn.GroupNorm(8, 128) self.avgpool = nn.AdaptiveAvgPool2d((1, 1)) def forward(self, x): x = self.conv1(x) x = F.relu(x) x = self.bn0(x) x = self.conv2(x) x = F.relu(x) x = self.bn1(x) x = self.conv3(x) x = F.relu(x) x = self.bn2(x) x = self.conv4(x) x = F.relu(x) x = self.bn3(x) x = self.avgpool(x) x = x.view(len(x), -1) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_shape': [4, 4]}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 256 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 4 y1 = yindex // 4 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask & ymask, eviction_policy= 'evict_last') tl.store(out_ptr0 + (y0 + 4 * x2 + 36 * y1), tmp0, xmask & ymask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 4 y1 = yindex // 4 tmp0 = tl.load(in_ptr0 + (x2 + 16 * y3), xmask & ymask) tl.store(out_ptr0 + (y0 + 4 * x2 + 64 * y1), tmp0, xmask & ymask) @triton.jit def triton_poi_fused_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = yindex // 64 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 64 * x2 + 576 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_3(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 128 * x2 + 1152 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_convolution_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, None) @triton.jit def triton_per_fused_native_group_norm_5(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 32 RBLOCK: tl.constexpr = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex % 8 r3 = rindex // 8 x0 = xindex % 8 x1 = xindex // 8 x4 = xindex tmp0 = tl.load(in_ptr0 + (r2 + 8 * x0 + 64 * r3 + 1024 * x1), xmask, other=0.0) tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 128, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 128.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.store(out_ptr2 + x4, tmp23, xmask) tl.store(out_ptr0 + x4, tmp12, xmask) tl.store(out_ptr1 + x4, tmp18, xmask) @triton.jit def triton_poi_fused_native_group_norm_6(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x0 = xindex % 64 x2 = xindex // 1024 tmp0 = tl.load(in_ptr0 + x3, None) tmp3 = tl.load(in_ptr1 + (8 * x2 + x0 // 8), None, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr2 + (8 * x2 + x0 // 8), None, eviction_policy= 'evict_last') tmp12 = tl.load(in_ptr3 + x0, None, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + x0, None, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 128.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tl.store(out_ptr0 + x3, tmp15, None) @triton.jit def triton_poi_fused_convolution_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, None) @triton.jit def triton_per_fused_native_group_norm_8(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 32 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex % 16 r3 = rindex // 16 x0 = xindex % 8 x1 = xindex // 8 x4 = xindex tmp0 = tl.load(in_ptr0 + (r2 + 16 * x0 + 128 * r3 + 512 * x1), xmask, other=0.0) tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.store(out_ptr2 + x4, tmp23, xmask) tl.store(out_ptr0 + x4, tmp12, xmask) tl.store(out_ptr1 + x4, tmp18, xmask) @triton.jit def triton_poi_fused_native_group_norm_9(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x0 = xindex % 128 x2 = xindex // 512 tmp0 = tl.load(in_ptr0 + x3, None) tmp3 = tl.load(in_ptr1 + (8 * x2 + x0 // 16), None, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr2 + (8 * x2 + x0 // 16), None, eviction_policy= 'evict_last') tmp12 = tl.load(in_ptr3 + x0, None, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + x0, None, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 64.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tl.store(out_ptr0 + x3, tmp15, None) @triton.jit def triton_poi_fused_mean_native_group_norm_10(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 128 x1 = xindex // 128 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 512 * x1), xmask) tmp3 = tl.load(in_ptr1 + x2 // 16, xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + x2 // 16, xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (128 + x0 + 512 * x1), xmask) tmp23 = tl.load(in_ptr0 + (256 + x0 + 512 * x1), xmask) tmp30 = tl.load(in_ptr0 + (384 + x0 + 512 * x1), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = 64.0 tmp7 = tmp5 / tmp6 tmp8 = 1e-05 tmp9 = tmp7 + tmp8 tmp10 = libdevice.rsqrt(tmp9) tmp11 = tmp4 * tmp10 tmp13 = tmp11 * tmp12 tmp15 = tmp13 + tmp14 tmp17 = triton_helpers.maximum(tmp1, tmp16) tmp18 = tmp17 - tmp3 tmp19 = tmp18 * tmp10 tmp20 = tmp19 * tmp12 tmp21 = tmp20 + tmp14 tmp22 = tmp15 + tmp21 tmp24 = triton_helpers.maximum(tmp1, tmp23) tmp25 = tmp24 - tmp3 tmp26 = tmp25 * tmp10 tmp27 = tmp26 * tmp12 tmp28 = tmp27 + tmp14 tmp29 = tmp22 + tmp28 tmp31 = triton_helpers.maximum(tmp1, tmp30) tmp32 = tmp31 - tmp3 tmp33 = tmp32 * tmp10 tmp34 = tmp33 * tmp12 tmp35 = tmp34 + tmp14 tmp36 = tmp29 + tmp35 tmp37 = 4.0 tmp38 = tmp36 / tmp37 tl.store(out_ptr0 + x2, tmp38, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17) = args args.clear() assert_size_stride(primals_1, (64, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (64,), (1,)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128,), (1,)) assert_size_stride(primals_8, (128,), (1,)) assert_size_stride(primals_9, (128,), (1,)) assert_size_stride(primals_10, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (128,), (1,)) assert_size_stride(primals_12, (128,), (1,)) assert_size_stride(primals_13, (128,), (1,)) assert_size_stride(primals_14, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_15, (128,), (1,)) assert_size_stride(primals_16, (128,), (1,)) assert_size_stride(primals_17, (128,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4, 3, 3), (36, 1, 12, 4), torch.float32) get_raw_stream(0) triton_poi_fused_0[grid(256, 9)](primals_1, buf0, 256, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 1, 16, 4), torch.float32) triton_poi_fused_1[grid(16, 16)](primals_3, buf1, 16, 16, XBLOCK=16, YBLOCK=16, num_warps=4, num_stages=1) del primals_3 buf2 = empty_strided_cuda((128, 64, 3, 3), (576, 1, 192, 64), torch .float32) triton_poi_fused_2[grid(8192, 9)](primals_6, buf2, 8192, 9, XBLOCK= 16, YBLOCK=64, num_warps=4, num_stages=1) del primals_6 buf3 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) triton_poi_fused_3[grid(16384, 9)](primals_10, buf3, 16384, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_10 buf4 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) triton_poi_fused_3[grid(16384, 9)](primals_14, buf4, 16384, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_14 buf5 = extern_kernels.convolution(buf1, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf5, (4, 64, 4, 4), (1024, 1, 256, 64)) buf6 = buf5 del buf5 triton_poi_fused_convolution_4[grid(4096)](buf6, primals_2, 4096, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf7 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf8 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf11 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) triton_per_fused_native_group_norm_5[grid(32)](buf6, buf7, buf8, buf11, 32, 128, XBLOCK=8, num_warps=8, num_stages=1) buf10 = empty_strided_cuda((4, 64, 4, 4), (1024, 1, 256, 64), torch .float32) triton_poi_fused_native_group_norm_6[grid(4096)](buf6, buf7, buf8, primals_4, primals_5, buf10, 4096, XBLOCK=128, num_warps=4, num_stages=1) del primals_5 buf12 = extern_kernels.convolution(buf10, buf2, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 128, 2, 2), (512, 1, 256, 128)) buf13 = buf12 del buf12 triton_poi_fused_convolution_7[grid(2048)](buf13, primals_7, 2048, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 buf14 = buf8 del buf8 buf15 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf18 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) triton_per_fused_native_group_norm_8[grid(32)](buf13, buf14, buf15, buf18, 32, 64, XBLOCK=8, num_warps=4, num_stages=1) buf17 = empty_strided_cuda((4, 128, 2, 2), (512, 1, 256, 128), torch.float32) triton_poi_fused_native_group_norm_9[grid(2048)](buf13, buf14, buf15, primals_8, primals_9, buf17, 2048, XBLOCK=256, num_warps =4, num_stages=1) del primals_9 buf19 = extern_kernels.convolution(buf17, buf3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf19, (4, 128, 2, 2), (512, 1, 256, 128)) buf20 = buf19 del buf19 triton_poi_fused_convolution_7[grid(2048)](buf20, primals_11, 2048, XBLOCK=128, num_warps=4, num_stages=1) del primals_11 buf21 = buf15 del buf15 buf22 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf25 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) triton_per_fused_native_group_norm_8[grid(32)](buf20, buf21, buf22, buf25, 32, 64, XBLOCK=8, num_warps=4, num_stages=1) buf24 = empty_strided_cuda((4, 128, 2, 2), (512, 1, 256, 128), torch.float32) triton_poi_fused_native_group_norm_9[grid(2048)](buf20, buf21, buf22, primals_12, primals_13, buf24, 2048, XBLOCK=256, num_warps=4, num_stages=1) del primals_13 buf26 = extern_kernels.convolution(buf24, buf4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 128, 2, 2), (512, 1, 256, 128)) buf27 = buf26 del buf26 triton_poi_fused_convolution_7[grid(2048)](buf27, primals_15, 2048, XBLOCK=128, num_warps=4, num_stages=1) del primals_15 buf28 = buf22 del buf22 buf29 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) buf31 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 32, 32), torch.float32) triton_per_fused_native_group_norm_8[grid(32)](buf27, buf28, buf29, buf31, 32, 64, XBLOCK=8, num_warps=4, num_stages=1) buf32 = empty_strided_cuda((4, 128, 1, 1), (128, 1, 1, 1), torch. float32) triton_poi_fused_mean_native_group_norm_10[grid(512)](buf27, buf28, buf29, primals_16, primals_17, buf32, 512, XBLOCK=256, num_warps=4, num_stages=1) del buf29 del primals_17 return (reinterpret_tensor(buf32, (4, 128), (128, 1), 0), buf0, buf1, primals_4, buf2, primals_8, buf3, primals_12, buf4, primals_16, buf6, buf10, reinterpret_tensor(buf7, (4, 8), (8, 1), 0), reinterpret_tensor(buf11, (4, 8), (8, 1), 0), buf13, buf17, reinterpret_tensor(buf14, (4, 8), (8, 1), 0), reinterpret_tensor( buf18, (4, 8), (8, 1), 0), buf20, buf24, reinterpret_tensor(buf21, (4, 8), (8, 1), 0), reinterpret_tensor(buf25, (4, 8), (8, 1), 0), buf27, reinterpret_tensor(buf28, (4, 8), (8, 1), 0), reinterpret_tensor(buf31, (4, 8), (8, 1), 0)) class MNIST_CNNNew(nn.Module): """ Hand-tuned architecture for MNIST. Weirdness I've noticed so far with this architecture: - adding a linear layer after the mean-pool in features hurts RotatedMNIST-100 generalization severely. """ n_outputs = 128 def __init__(self, input_shape): super(MNIST_CNNNew, self).__init__() self.conv1 = nn.Conv2d(input_shape[0], 64, 3, 1, padding=1) self.conv2 = nn.Conv2d(64, 128, 3, stride=2, padding=1) self.conv3 = nn.Conv2d(128, 128, 3, 1, padding=1) self.conv4 = nn.Conv2d(128, 128, 3, 1, padding=1) self.bn0 = nn.GroupNorm(8, 64) self.bn1 = nn.GroupNorm(8, 128) self.bn2 = nn.GroupNorm(8, 128) self.bn3 = nn.GroupNorm(8, 128) self.avgpool = nn.AdaptiveAvgPool2d((1, 1)) def forward(self, input_0): primals_1 = self.conv1.weight primals_2 = self.conv1.bias primals_6 = self.conv2.weight primals_7 = self.conv2.bias primals_10 = self.conv3.weight primals_8 = self.conv3.bias primals_14 = self.conv4.weight primals_9 = self.conv4.bias primals_4 = self.bn0.weight primals_5 = self.bn0.bias primals_11 = self.bn1.weight primals_12 = self.bn1.bias primals_13 = self.bn2.weight primals_15 = self.bn2.bias primals_16 = self.bn3.weight primals_17 = self.bn3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17]) return output[0]
AllenPu/mbdg
MNIST_CNN
false
7,677
[ "MIT" ]
27
243f53a57dcf4bfb6e717c0c9f64a839cff8d548
https://github.com/AllenPu/mbdg/tree/243f53a57dcf4bfb6e717c0c9f64a839cff8d548
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data class Model(nn.Module): """ Hand-tuned architecture for MNIST. Weirdness I've noticed so far with this architecture: - adding a linear layer after the mean-pool in features hurts RotatedMNIST-100 generalization severely. """ n_outputs = 128 def __init__(self, input_shape): super().__init__() self.conv1 = nn.Conv2d(input_shape[0], 64, 3, 1, padding=1) self.conv2 = nn.Conv2d(64, 128, 3, stride=2, padding=1) self.conv3 = nn.Conv2d(128, 128, 3, 1, padding=1) self.conv4 = nn.Conv2d(128, 128, 3, 1, padding=1) self.bn0 = nn.GroupNorm(8, 64) self.bn1 = nn.GroupNorm(8, 128) self.bn2 = nn.GroupNorm(8, 128) self.bn3 = nn.GroupNorm(8, 128) self.avgpool = nn.AdaptiveAvgPool2d((1, 1)) def forward(self, x): x = self.conv1(x) x = F.relu(x) x = self.bn0(x) x = self.conv2(x) x = F.relu(x) x = self.bn1(x) x = self.conv3(x) x = F.relu(x) x = self.bn2(x) x = self.conv4(x) x = F.relu(x) x = self.bn3(x) x = self.avgpool(x) x = x.view(len(x), -1) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
LinearVariance
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/zv/czv2jtocopq7cn2pgz3566lhdhxcf7majyta5mac3dezbzit4ao6.py # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %primals_2), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tmp0 * tmp0 tl.store(out_ptr0 + (x0), tmp1, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/zw/czw64xknm57ws2bynxh6gu4zq3rvl2b75el34bhy2v6xvz677qvy.py # Topologically Sorted Source Nodes: [mul_1], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul_1 => mul_1 # Graph fragment: # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_3, %primals_3), kwargs = {}) triton_poi_fused_mul_1 = async_compile.triton('triton_poi_fused_mul_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tmp0 * tmp0 tl.store(out_ptr0 + (x0), tmp1, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/5n/c5ngusgd4d2e3azuqaow2drhe2kyzcbis65lxuxvcysn47vp3z5b.py # Topologically Sorted Source Nodes: [add, lrt_std, mul_2, add_1], Original ATen: [aten.add, aten.sqrt, aten.mul] # Source node to ATen node mapping: # add => add # add_1 => add_1 # lrt_std => sqrt # mul_2 => mul_2 # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, 1e-16), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sqrt, 0.0), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_1, %mul_2), kwargs = {}) triton_poi_fused_add_mul_sqrt_2 = async_compile.triton('triton_poi_fused_add_mul_sqrt_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_sqrt_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_sqrt_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x2), xmask) tmp2 = 1e-16 tmp3 = tmp1 + tmp2 tmp4 = libdevice.sqrt(tmp3) tmp5 = 0.0 tmp6 = tmp4 * tmp5 tmp7 = tmp0 + tmp6 tl.store(out_ptr0 + (x2), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (1, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_2, buf0, 256, grid=grid(256), stream=stream0) del primals_2 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul_1], Original ATen: [aten.mul] triton_poi_fused_mul_1.run(primals_3, buf1, 16, grid=grid(16), stream=stream0) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (4, 4), (1, 4), 0), out=buf2) del buf1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, lrt_std, mul_2, add_1], Original ATen: [aten.add, aten.sqrt, aten.mul] triton_poi_fused_add_mul_sqrt_2.run(primals_1, buf2, buf3, 256, grid=grid(256), stream=stream0) del primals_1 return (buf3, primals_3, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn import torch.nn.functional as F from torch.autograd import Variable from torch.nn import Parameter class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class LinearVariance(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super(LinearVariance, self).__init__() self.in_features = in_features self.out_features = out_features self.sigma = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.sigma.size(1)) self.sigma.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def forward(self, x): lrt_mean = self.bias lrt_std = torch.sqrt_(1e-16 + F.linear(x * x, self.sigma * self.sigma)) if self.training: eps = Variable(lrt_std.data.new(lrt_std.size()).normal_()) else: eps = 0.0 return lrt_mean + eps * lrt_std def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4, 'out_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import math import torch.nn as nn from torch.nn import Parameter assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tmp0 * tmp0 tl.store(out_ptr0 + x0, tmp1, xmask) @triton.jit def triton_poi_fused_mul_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tmp0 * tmp0 tl.store(out_ptr0 + x0, tmp1, xmask) @triton.jit def triton_poi_fused_add_mul_sqrt_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x2, xmask) tmp2 = 1e-16 tmp3 = tmp1 + tmp2 tmp4 = libdevice.sqrt(tmp3) tmp5 = 0.0 tmp6 = tmp4 * tmp5 tmp7 = tmp0 + tmp6 tl.store(out_ptr0 + x2, tmp7, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (1, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(256)](primals_2, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) triton_poi_fused_mul_1[grid(16)](primals_3, buf1, 16, XBLOCK=16, num_warps=1, num_stages=1) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (4, 4), (1, 4), 0), out=buf2) del buf1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_mul_sqrt_2[grid(256)](primals_1, buf2, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 return buf3, primals_3, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf2 class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super(ModuleWrapper, self).__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class LinearVarianceNew(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super(LinearVarianceNew, self).__init__() self.in_features = in_features self.out_features = out_features self.sigma = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.sigma.size(1)) self.sigma.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def forward(self, input_0): primals_3 = self.sigma primals_1 = self.bias primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AlliedToasters/elko_den
LinearVariance
false
7,678
[ "Apache-2.0" ]
38
4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
https://github.com/AlliedToasters/elko_den/tree/4e69f7f5c0dc7ffad54c7e190a2b75aba2eab7d2
import math import torch import torch.nn as nn import torch.nn.functional as F from torch.autograd import Variable from torch.nn import Parameter class ModuleWrapper(nn.Module): """Wrapper for nn.Module with support for arbitrary flags and a universal forward pass""" def __init__(self): super().__init__() def set_flag(self, flag_name, value): setattr(self, flag_name, value) for m in self.children(): if hasattr(m, 'set_flag'): m.set_flag(flag_name, value) def forward(self, x): for module in self.children(): x = module(x) return x class Model(ModuleWrapper): def __init__(self, in_features, out_features, bias=True): super().__init__() self.in_features = in_features self.out_features = out_features self.sigma = Parameter(torch.Tensor(out_features, in_features)) if bias: self.bias = Parameter(torch.Tensor(1, out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.sigma.size(1)) self.sigma.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.zero_() def forward(self, x): lrt_mean = self.bias lrt_std = torch.sqrt_(1e-16 + F.linear(x * x, self.sigma * self.sigma)) if self.training: eps = Variable(lrt_std.data.new(lrt_std.size()).normal_()) else: eps = 0.0 return lrt_mean + eps * lrt_std def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
DistillKL
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/n7/cn7we7togo35ouvrhrbnvn2aajw35y3b2luwnik3fez2ulvmsdeq.py # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] # Source node to ATen node mapping: # p_t => exp_1 # Graph fragment: # %mul_tensor : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, 1), kwargs = {}) # %amax_default : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor, [1], True), kwargs = {}) # %sub_tensor : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor, %amax_default), kwargs = {}) # %div_tensor : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor, 4), kwargs = {}) # %exp_1 : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp3 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/cz/cczsklj2ifcf4srpukaggn7ow5rwycvcqopo7gytt72m4xivnomp.py # Topologically Sorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: # Graph fragment: # %mul_tensor_1 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 1), kwargs = {}) # %amax_default_1 : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor_1, [1], True), kwargs = {}) # %sub_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor_1, %amax_default_1), kwargs = {}) # %div_tensor_1 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor_1, 4), kwargs = {}) triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp3 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + (x3), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/hy/chylpig7m2g3kwbfm2ve2whsadrxilrpzlu5sd4o6cfxdcnsqh5t.py # Topologically Sorted Source Nodes: [p_t, kl_div, p_s, mul, loss], Original ATen: [aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.div] # Source node to ATen node mapping: # kl_div => eq, full_default, full_default_1, isnan, log_1, mul, mul_1, sub_3, sum_3, where, where_1 # loss => div_3 # mul => mul_2 # p_s => exp, log, sub_1, sum_1 # p_t => div_2, sum_2 # Graph fragment: # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %div_2 : [num_users=5] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp_1, %sum_2), kwargs = {}) # %isnan : [num_users=1] = call_function[target=torch.ops.aten.isnan.default](args = (%div_2,), kwargs = {}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], nan), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Scalar](args = (%div_2, 0), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%div_2,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_2, %log_1), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%eq, %full_default, %mul_1), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%isnan, %full_default_1, %where), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor_1,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div_tensor_1, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_2, %sub_1), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %mul), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%sub_3,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sum_3, 16), kwargs = {}) # %div_3 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_2, 4), kwargs = {}) triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2 = async_compile.triton('triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 10, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = (rindex // 64) tmp0 = tl.load(in_ptr0 + (r3), None) tmp1 = tl.load(in_ptr0 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp17 = tl.load(in_ptr1 + (r3), None) tmp18 = tl.load(in_ptr1 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp20 = tl.load(in_ptr1 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp23 = tl.load(in_ptr1 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp26 = tl.load(in_ptr1 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp9 = libdevice.isnan(tmp8).to(tl.int1) tmp10 = 0.0 tmp11 = tmp8 == tmp10 tmp12 = tl_math.log(tmp8) tmp13 = tmp8 * tmp12 tmp14 = tl.where(tmp11, tmp10, tmp13) tmp15 = float("nan") tmp16 = tl.where(tmp9, tmp15, tmp14) tmp19 = tl_math.exp(tmp18) tmp21 = tl_math.exp(tmp20) tmp22 = tmp19 + tmp21 tmp24 = tl_math.exp(tmp23) tmp25 = tmp22 + tmp24 tmp27 = tl_math.exp(tmp26) tmp28 = tmp25 + tmp27 tmp29 = tl_math.log(tmp28) tmp30 = tmp17 - tmp29 tmp31 = tmp8 * tmp30 tmp32 = tmp16 - tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp36 = 16.0 tmp37 = tmp35 * tmp36 tmp38 = 0.25 tmp39 = tmp37 * tmp38 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp39, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(arg1_1, buf0, 256, grid=grid(256), stream=stream0) del arg1_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(arg0_1, buf2, 256, grid=grid(256), stream=stream0) del arg0_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [p_t, kl_div, p_s, mul, loss], Original ATen: [aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.div] triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2.run(buf4, buf0, buf2, 1, 256, grid=grid(1), stream=stream0) del buf0 del buf2 return (buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class DistillKL(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self, T): super(DistillKL, self).__init__() self.T = T def forward(self, y_s, y_t): p_s = F.log_softmax(y_s / self.T, dim=1) p_t = F.softmax(y_t / self.T, dim=1) loss = F.kl_div(p_s, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'T': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp3 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + x3, tmp17, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp3 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + x3, tmp16, xmask) @triton.jit def triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = rindex // 64 tmp0 = tl.load(in_ptr0 + r3, None) tmp1 = tl.load(in_ptr0 + (r0 + 64 * r2), None, eviction_policy='evict_last' ) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp17 = tl.load(in_ptr1 + r3, None) tmp18 = tl.load(in_ptr1 + (r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp20 = tl.load(in_ptr1 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp23 = tl.load(in_ptr1 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp26 = tl.load(in_ptr1 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp9 = libdevice.isnan(tmp8).to(tl.int1) tmp10 = 0.0 tmp11 = tmp8 == tmp10 tmp12 = tl_math.log(tmp8) tmp13 = tmp8 * tmp12 tmp14 = tl.where(tmp11, tmp10, tmp13) tmp15 = float('nan') tmp16 = tl.where(tmp9, tmp15, tmp14) tmp19 = tl_math.exp(tmp18) tmp21 = tl_math.exp(tmp20) tmp22 = tmp19 + tmp21 tmp24 = tl_math.exp(tmp23) tmp25 = tmp22 + tmp24 tmp27 = tl_math.exp(tmp26) tmp28 = tmp25 + tmp27 tmp29 = tl_math.log(tmp28) tmp30 = tmp17 - tmp29 tmp31 = tmp8 * tmp30 tmp32 = tmp16 - tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp36 = 16.0 tmp37 = tmp35 * tmp36 tmp38 = 0.25 tmp39 = tmp37 * tmp38 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp39, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(256)](arg1_1, buf0, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg1_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_1[grid(256)](arg0_1, buf2, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3 del buf3 triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_2[grid(1) ](buf4, buf0, buf2, 1, 256, num_warps=2, num_stages=1) del buf0 del buf2 return buf4, class DistillKLNew(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self, T): super(DistillKLNew, self).__init__() self.T = T def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
DistillKL
false
7,679
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self, T): super().__init__() self.T = T def forward(self, y_s, y_t): p_s = F.log_softmax(y_s / self.T, dim=1) p_t = F.softmax(y_t / self.T, dim=1) loss = F.kl_div(p_s, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
Correlation
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/it/citispmafaez5yo7dacp5c3x7lk3veitwreyxn2udmk3tpixlasj.py # Topologically Sorted Source Nodes: [mul, sum_1, loss], Original ATen: [aten.mul, aten.sum, aten.mean] # Source node to ATen node mapping: # loss => mean # mul => mul # sum_1 => sum_1 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%slice_1, %slice_2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%sum_1,), kwargs = {}) triton_per_fused_mean_mul_sum_0 = async_compile.triton('triton_per_fused_mean_mul_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_mul_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 16, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_mul_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 48 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = rindex < rnumel r0 = rindex % 16 r1 = (rindex // 16) r2 = rindex tmp0 = tl.load(in_ptr0 + (r0 + (64*r1)), rmask, other=0.0) tmp1 = tl.load(in_ptr1 + (r0 + (64*r1)), rmask, other=0.0) tmp4 = tl.load(in_ptr0 + (64 + r0 + (64*r1)), rmask, other=0.0) tmp5 = tl.load(in_ptr1 + (64 + r0 + (64*r1)), rmask, other=0.0) tmp9 = tl.load(in_ptr0 + (16 + r0 + (64*r1)), rmask, other=0.0) tmp10 = tl.load(in_ptr1 + (16 + r0 + (64*r1)), rmask, other=0.0) tmp13 = tl.load(in_ptr0 + (80 + r0 + (64*r1)), rmask, other=0.0) tmp14 = tl.load(in_ptr1 + (80 + r0 + (64*r1)), rmask, other=0.0) tmp19 = tl.load(in_ptr0 + (32 + r0 + (64*r1)), rmask, other=0.0) tmp20 = tl.load(in_ptr1 + (32 + r0 + (64*r1)), rmask, other=0.0) tmp23 = tl.load(in_ptr0 + (96 + r0 + (64*r1)), rmask, other=0.0) tmp24 = tl.load(in_ptr1 + (96 + r0 + (64*r1)), rmask, other=0.0) tmp29 = tl.load(in_ptr0 + (48 + r0 + (64*r1)), rmask, other=0.0) tmp30 = tl.load(in_ptr1 + (48 + r0 + (64*r1)), rmask, other=0.0) tmp33 = tl.load(in_ptr0 + (112 + r0 + (64*r1)), rmask, other=0.0) tmp34 = tl.load(in_ptr1 + (112 + r0 + (64*r1)), rmask, other=0.0) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp6 = tmp4 - tmp5 tmp7 = tl_math.abs(tmp6) tmp8 = tmp3 * tmp7 tmp11 = tmp9 - tmp10 tmp12 = tl_math.abs(tmp11) tmp15 = tmp13 - tmp14 tmp16 = tl_math.abs(tmp15) tmp17 = tmp12 * tmp16 tmp18 = tmp8 + tmp17 tmp21 = tmp19 - tmp20 tmp22 = tl_math.abs(tmp21) tmp25 = tmp23 - tmp24 tmp26 = tl_math.abs(tmp25) tmp27 = tmp22 * tmp26 tmp28 = tmp18 + tmp27 tmp31 = tmp29 - tmp30 tmp32 = tl_math.abs(tmp31) tmp35 = tmp33 - tmp34 tmp36 = tl_math.abs(tmp35) tmp37 = tmp32 * tmp36 tmp38 = tmp28 + tmp37 tmp39 = tl.broadcast_to(tmp38, [XBLOCK, RBLOCK]) tmp41 = tl.where(rmask, tmp39, 0) tmp42 = tl.sum(tmp41, 1)[:, None] tmp43 = 48.0 tmp44 = tmp42 / tmp43 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp44, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [mul, sum_1, loss], Original ATen: [aten.mul, aten.sum, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_mean_mul_sum_0.run(buf2, arg0_1, arg1_1, 1, 48, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class Correlation(nn.Module): """Correlation Congruence for Knowledge Distillation, ICCV 2019. The authors nicely shared the code with me. I restructured their code to be compatible with my running framework. Credits go to the original author""" def __init__(self): super(Correlation, self).__init__() def forward(self, f_s, f_t): delta = torch.abs(f_s - f_t) loss = torch.mean((delta[:-1] * delta[1:]).sum(1)) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_mean_mul_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): rnumel = 48 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] rmask = rindex < rnumel r0 = rindex % 16 r1 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r0 + 64 * r1), rmask, other=0.0) tmp1 = tl.load(in_ptr1 + (r0 + 64 * r1), rmask, other=0.0) tmp4 = tl.load(in_ptr0 + (64 + r0 + 64 * r1), rmask, other=0.0) tmp5 = tl.load(in_ptr1 + (64 + r0 + 64 * r1), rmask, other=0.0) tmp9 = tl.load(in_ptr0 + (16 + r0 + 64 * r1), rmask, other=0.0) tmp10 = tl.load(in_ptr1 + (16 + r0 + 64 * r1), rmask, other=0.0) tmp13 = tl.load(in_ptr0 + (80 + r0 + 64 * r1), rmask, other=0.0) tmp14 = tl.load(in_ptr1 + (80 + r0 + 64 * r1), rmask, other=0.0) tmp19 = tl.load(in_ptr0 + (32 + r0 + 64 * r1), rmask, other=0.0) tmp20 = tl.load(in_ptr1 + (32 + r0 + 64 * r1), rmask, other=0.0) tmp23 = tl.load(in_ptr0 + (96 + r0 + 64 * r1), rmask, other=0.0) tmp24 = tl.load(in_ptr1 + (96 + r0 + 64 * r1), rmask, other=0.0) tmp29 = tl.load(in_ptr0 + (48 + r0 + 64 * r1), rmask, other=0.0) tmp30 = tl.load(in_ptr1 + (48 + r0 + 64 * r1), rmask, other=0.0) tmp33 = tl.load(in_ptr0 + (112 + r0 + 64 * r1), rmask, other=0.0) tmp34 = tl.load(in_ptr1 + (112 + r0 + 64 * r1), rmask, other=0.0) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp6 = tmp4 - tmp5 tmp7 = tl_math.abs(tmp6) tmp8 = tmp3 * tmp7 tmp11 = tmp9 - tmp10 tmp12 = tl_math.abs(tmp11) tmp15 = tmp13 - tmp14 tmp16 = tl_math.abs(tmp15) tmp17 = tmp12 * tmp16 tmp18 = tmp8 + tmp17 tmp21 = tmp19 - tmp20 tmp22 = tl_math.abs(tmp21) tmp25 = tmp23 - tmp24 tmp26 = tl_math.abs(tmp25) tmp27 = tmp22 * tmp26 tmp28 = tmp18 + tmp27 tmp31 = tmp29 - tmp30 tmp32 = tl_math.abs(tmp31) tmp35 = tmp33 - tmp34 tmp36 = tl_math.abs(tmp35) tmp37 = tmp32 * tmp36 tmp38 = tmp28 + tmp37 tmp39 = tl.broadcast_to(tmp38, [XBLOCK, RBLOCK]) tmp41 = tl.where(rmask, tmp39, 0) tmp42 = tl.sum(tmp41, 1)[:, None] tmp43 = 48.0 tmp44 = tmp42 / tmp43 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp44, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 get_raw_stream(0) triton_per_fused_mean_mul_sum_0[grid(1)](buf2, arg0_1, arg1_1, 1, 48, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf2, class CorrelationNew(nn.Module): """Correlation Congruence for Knowledge Distillation, ICCV 2019. The authors nicely shared the code with me. I restructured their code to be compatible with my running framework. Credits go to the original author""" def __init__(self): super(CorrelationNew, self).__init__() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
Correlation
false
7,680
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn class Model(nn.Module): """Correlation Congruence for Knowledge Distillation, ICCV 2019. The authors nicely shared the code with me. I restructured their code to be compatible with my running framework. Credits go to the original author""" def __init__(self): super().__init__() def forward(self, f_s, f_t): delta = torch.abs(f_s - f_t) loss = torch.mean((delta[:-1] * delta[1:]).sum(1)) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
HINet
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/6q/c6qlsta5ip5tfujcql5z3azfliauyzyc7np2ixqgfyfolowbdlu2.py # Topologically Sorted Source Nodes: [x_i_1, cat], Original ATen: [aten._native_batch_norm_legit, aten.cat, aten.native_batch_norm_backward] # Source node to ATen node mapping: # cat => cat # x_i_1 => add, rsqrt, var_mean # Graph fragment: # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%view, [0, 2, 3]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%view_1, %slice_6], 1), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%view, %unsqueeze_6), kwargs = {}) triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0 = async_compile.triton('triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[8, 16], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 7), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 4, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0(in_ptr0, in_ptr1, in_ptr2, out_ptr2, out_ptr3, out_ptr4, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 8 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex x2 = xindex % 2 x3 = (xindex // 2) tmp0 = tl.load(in_ptr0 + (r1 + (16*(x0 % 2)) + (64*(x0 // 2))), xmask, other=0.0) tmp17 = tl.load(in_ptr0 + (r1 + (16*x2) + (64*x3)), xmask, other=0.0) tmp25 = tl.load(in_ptr1 + (x2), xmask, eviction_policy='evict_last') tmp27 = tl.load(in_ptr2 + (x2), xmask, eviction_policy='evict_last') tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 16, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp18 = tmp17 - tmp10 tmp19 = 16.0 tmp20 = tmp16 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tmp24 = tmp18 * tmp23 tmp26 = tmp24 * tmp25 tmp28 = tmp26 + tmp27 tmp29 = tmp0 - tmp10 tl.store(out_ptr2 + (r1 + (16*x2) + (64*x3)), tmp28, xmask) tl.store(out_ptr3 + (r1 + (16*x0)), tmp29, xmask) tl.store(out_ptr4 + (x0), tmp23, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/iy/ciyhzyc3ywy4netbdeyt4yf6iyphrxljlsrfqr2gxtpdjcgbo36k.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%view_1, %slice_6], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 32 x1 = (xindex // 32) tmp0 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tl.store(out_ptr0 + (x0 + (64*x1)), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (2, ), (1, )) assert_size_stride(primals_3, (2, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf4 = reinterpret_tensor(buf6, (4, 2, 4, 4), (64, 16, 4, 1), 0) # alias buf7 = empty_strided_cuda((1, 8, 4, 4), (128, 16, 4, 1), torch.float32) buf3 = empty_strided_cuda((1, 8, 1, 1), (8, 1, 8, 8), torch.float32) # Topologically Sorted Source Nodes: [x_i_1, cat], Original ATen: [aten._native_batch_norm_legit, aten.cat, aten.native_batch_norm_backward] stream0 = get_raw_stream(0) triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0.run(primals_1, primals_2, primals_3, buf4, buf7, buf3, 8, 16, grid=grid(8), stream=stream0) del primals_2 del primals_3 buf5 = reinterpret_tensor(buf6, (4, 2, 4, 4), (64, 16, 4, 1), 32) # alias # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(primals_1, buf5, 128, grid=grid(128), stream=stream0) del primals_1 return (buf6, reinterpret_tensor(buf3, (8, ), (1, ), 0), buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((2, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((2, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class HINet(nn.Module): def __init__(self, in_ch): super(HINet, self).__init__() self.instance_norm = nn.InstanceNorm2d(in_ch - in_ch // 2, affine=True) def forward(self, x): channels = x.shape[1] channels_i = channels - channels // 2 x_i = x[:, :channels_i, :, :] x_r = x[:, channels_i:, :, :] x_i = self.instance_norm(x_i) return torch.cat([x_i, x_r], dim=1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_ch': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0( in_ptr0, in_ptr1, in_ptr2, out_ptr2, out_ptr3, out_ptr4, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 8 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex x2 = xindex % 2 x3 = xindex // 2 tmp0 = tl.load(in_ptr0 + (r1 + 16 * (x0 % 2) + 64 * (x0 // 2)), xmask, other=0.0) tmp17 = tl.load(in_ptr0 + (r1 + 16 * x2 + 64 * x3), xmask, other=0.0) tmp25 = tl.load(in_ptr1 + x2, xmask, eviction_policy='evict_last') tmp27 = tl.load(in_ptr2 + x2, xmask, eviction_policy='evict_last') tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 16, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp18 = tmp17 - tmp10 tmp19 = 16.0 tmp20 = tmp16 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tmp24 = tmp18 * tmp23 tmp26 = tmp24 * tmp25 tmp28 = tmp26 + tmp27 tmp29 = tmp0 - tmp10 tl.store(out_ptr2 + (r1 + 16 * x2 + 64 * x3), tmp28, xmask) tl.store(out_ptr3 + (r1 + 16 * x0), tmp29, xmask) tl.store(out_ptr4 + x0, tmp23, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 32 x1 = xindex // 32 tmp0 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tl.store(out_ptr0 + (x0 + 64 * x1), tmp0, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (2,), (1,)) assert_size_stride(primals_3, (2,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf4 = reinterpret_tensor(buf6, (4, 2, 4, 4), (64, 16, 4, 1), 0) buf7 = empty_strided_cuda((1, 8, 4, 4), (128, 16, 4, 1), torch.float32) buf3 = empty_strided_cuda((1, 8, 1, 1), (8, 1, 8, 8), torch.float32) get_raw_stream(0) triton_per_fused__native_batch_norm_legit_cat_native_batch_norm_backward_0[ grid(8)](primals_1, primals_2, primals_3, buf4, buf7, buf3, 8, 16, XBLOCK=1, num_warps=2, num_stages=1) del primals_2 del primals_3 buf5 = reinterpret_tensor(buf6, (4, 2, 4, 4), (64, 16, 4, 1), 32) triton_poi_fused_cat_1[grid(128)](primals_1, buf5, 128, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 return buf6, reinterpret_tensor(buf3, (8,), (1,), 0), buf7 class HINetNew(nn.Module): def __init__(self, in_ch): super(HINetNew, self).__init__() self.instance_norm = nn.InstanceNorm2d(in_ch - in_ch // 2, affine=True) def forward(self, input_0): primals_2 = self.instance_norm.weight primals_3 = self.instance_norm.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AmaldevHari/Ghost-DeblurGAN
HINet
false
7,681
[ "MIT" ]
16
e725e5dad6a5fa5865d317e6644d96d0e800eae6
https://github.com/AmaldevHari/Ghost-DeblurGAN/tree/e725e5dad6a5fa5865d317e6644d96d0e800eae6
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_ch): super().__init__() self.instance_norm = nn.InstanceNorm2d(in_ch - in_ch // 2, affine=True) def forward(self, x): channels = x.shape[1] channels_i = channels - channels // 2 x_i = x[:, :channels_i, :, :] x_r = x[:, channels_i:, :, :] x_i = self.instance_norm(x_i) return torch.cat([x_i, x_r], dim=1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
BinaryMarginLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/gm/cgmruq7bdtrlt2nedcrrgqoptodi63wexao6xgvhcaqfo5dqww3m.py # Topologically Sorted Source Nodes: [logaddexp, sub], Original ATen: [aten.logaddexp, aten.rsub] # Source node to ATen node mapping: # logaddexp => add, eq_1, exp, full_default, ge, log1p, logical_and, sub_1, where, where_1, where_2 # sub => sub # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], False), kwargs = {dtype: torch.bool, layout: torch.strided, device: cuda:0, pin_memory: False}) # %sub : [num_users=4] = call_function[target=torch.ops.aten.sub.Tensor](args = (0.5, %arg0_1), kwargs = {}) # %eq_1 : [num_users=1] = call_function[target=torch.ops.aten.eq.Tensor](args = (%expand, %sub), kwargs = {}) # %logical_and : [num_users=1] = call_function[target=torch.ops.aten.logical_and.default](args = (%full_default, %eq_1), kwargs = {}) # %ge : [num_users=2] = call_function[target=torch.ops.aten.ge.Tensor](args = (%expand, %sub), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%ge, %sub, %expand), kwargs = {}) # %where : [num_users=2] = call_function[target=torch.ops.aten.where.self](args = (%ge, %expand, %sub), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %where), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub_1,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%where, %log1p), kwargs = {}) # %where_2 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%logical_and, %expand, %add), kwargs = {}) triton_poi_fused_logaddexp_rsub_0 = async_compile.triton('triton_poi_fused_logaddexp_rsub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_logaddexp_rsub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_logaddexp_rsub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp1 - tmp0 tmp3 = 1.0 tmp4 = tmp3 == tmp2 tmp5 = tl.full([1], False, tl.int1) tmp6 = tmp5 & tmp4 tmp7 = tmp3 >= tmp2 tmp8 = tl.where(tmp7, tmp3, tmp2) tmp9 = tl.where(tmp7, tmp2, tmp3) tmp10 = tmp9 - tmp8 tmp11 = tl_math.exp(tmp10) tmp12 = libdevice.log1p(tmp11) tmp13 = tmp8 + tmp12 tmp14 = tl.where(tmp6, tmp3, tmp13) tl.store(out_ptr0 + (x0), tmp14, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [logaddexp, sub], Original ATen: [aten.logaddexp, aten.rsub] stream0 = get_raw_stream(0) triton_poi_fused_logaddexp_rsub_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class BinaryMarginLoss(nn.Module): def __init__(self, margin=0.5): super().__init__() self.margin = margin def forward(self, output): return torch.logaddexp(torch.tensor([1.0], device=output.device), self.margin - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_logaddexp_rsub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp1 - tmp0 tmp3 = 1.0 tmp4 = tmp3 == tmp2 tmp5 = tl.full([1], False, tl.int1) tmp6 = tmp5 & tmp4 tmp7 = tmp3 >= tmp2 tmp8 = tl.where(tmp7, tmp3, tmp2) tmp9 = tl.where(tmp7, tmp2, tmp3) tmp10 = tmp9 - tmp8 tmp11 = tl_math.exp(tmp10) tmp12 = libdevice.log1p(tmp11) tmp13 = tmp8 + tmp12 tmp14 = tl.where(tmp6, tmp3, tmp13) tl.store(out_ptr0 + x0, tmp14, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_logaddexp_rsub_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class BinaryMarginLossNew(nn.Module): def __init__(self, margin=0.5): super().__init__() self.margin = margin def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
BinaryMarginLoss
false
7,682
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self, margin=0.5): super().__init__() self.margin = margin def forward(self, output): return torch.logaddexp(torch.tensor([1.0], device=output.device), self.margin - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
KDTH
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/n7/cn7we7togo35ouvrhrbnvn2aajw35y3b2luwnik3fez2ulvmsdeq.py # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] # Source node to ATen node mapping: # p_t => exp # Graph fragment: # %mul_tensor_1 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, 1), kwargs = {}) # %amax_default_1 : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor_1, [1], True), kwargs = {}) # %sub_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor_1, %amax_default_1), kwargs = {}) # %div_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor_1, 4), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor_1,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp3 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/3w/c3w2fd4ytdzwqufezwcryyqxyisfo5imj2o4xgnidod5k6gjrmd2.py # Topologically Sorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: # Graph fragment: # %mul_tensor : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%select, 1), kwargs = {}) # %amax_default : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor, [1], True), kwargs = {}) # %sub_tensor : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor, %amax_default), kwargs = {}) # %div_tensor : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor, 4), kwargs = {}) triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (64 + x3), xmask) tmp3 = tl.load(in_ptr0 + (64 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (68 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (72 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (76 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + (x3), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/qt/cqt2csmz5oetxawjqrco63wpmbxw4eus4vccz7nnu3bmmrwip7pv.py # Topologically Sorted Source Nodes: [p_s_th], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # p_s_th => exp_1, log, sub_2, sum_2 # Graph fragment: # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_2,), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div_tensor, %log), kwargs = {}) triton_poi_fused__log_softmax_2 = async_compile.triton('triton_poi_fused__log_softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (4 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (8 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (12 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + (x3), tmp13, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/jk/cjkwgrvgyvcvbb7ktneespbqyxl4ttiakabr7fbllrhdpowygg6l.py # Topologically Sorted Source Nodes: [p_t, kl_div, p_s_th, mul, loss_th], Original ATen: [aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.div] # Source node to ATen node mapping: # kl_div => eq, full_default, full_default_1, isnan, log_1, mul, mul_1, sub_3, sum_3, where, where_1 # loss_th => div_3 # mul => mul_2 # p_s_th => exp_1, log, sub_2, sum_2 # p_t => div_1, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %div_1 : [num_users=5] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) # %isnan : [num_users=1] = call_function[target=torch.ops.aten.isnan.default](args = (%div_1,), kwargs = {}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], nan), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Scalar](args = (%div_1, 0), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%div_1,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_1, %log_1), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%eq, %full_default, %mul_1), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%isnan, %full_default_1, %where), kwargs = {}) # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_2,), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div_tensor, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_1, %sub_2), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %mul), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%sub_3,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sum_3, 16), kwargs = {}) # %div_3 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_2, 4), kwargs = {}) triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3 = async_compile.triton('triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 6, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r4 = rindex r0 = rindex % 16 r2 = (rindex // 64) r3 = rindex % 64 tmp0 = tl.load(in_ptr0 + (r4), None) tmp1 = tl.load(in_ptr0 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp17 = tl.load(in_ptr1 + (r3), None, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp9 = libdevice.isnan(tmp8).to(tl.int1) tmp10 = 0.0 tmp11 = tmp8 == tmp10 tmp12 = tl_math.log(tmp8) tmp13 = tmp8 * tmp12 tmp14 = tl.where(tmp11, tmp10, tmp13) tmp15 = float("nan") tmp16 = tl.where(tmp9, tmp15, tmp14) tmp18 = tmp8 * tmp17 tmp19 = tmp16 - tmp18 tmp20 = tl.broadcast_to(tmp19, [RBLOCK]) tmp22 = triton_helpers.promote_to_tensor(tl.sum(tmp20, 0)) tmp23 = 16.0 tmp24 = tmp22 * tmp23 tmp25 = 0.25 tmp26 = tmp24 * tmp25 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp26, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(arg1_1, buf0, 256, grid=grid(256), stream=stream0) del arg1_1 buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(arg0_1, buf2, 64, grid=grid(64), stream=stream0) del arg0_1 buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [p_s_th], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_2.run(buf2, buf3, 64, grid=grid(64), stream=stream0) del buf2 buf4 = empty_strided_cuda((), (), torch.float32) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [p_t, kl_div, p_s_th, mul, loss_th], Original ATen: [aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.div] triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3.run(buf5, buf0, buf3, 1, 256, grid=grid(1), stream=stream0) del buf0 del buf3 return (buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class KDTH(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super(KDTH, self).__init__() self.T = T def forward(self, y_s, y_t): y_s_th = y_s[1] y_s = y_s[0] p_t = F.softmax(y_t / self.T, dim=1) p_s_th = F.log_softmax(y_s_th / self.T, dim=1) loss_th = F.kl_div(p_s_th, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss_th def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp3 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + x3, tmp17, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_ptr0 + (64 + x3), xmask) tmp3 = tl.load(in_ptr0 + (64 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (68 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (72 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (76 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + x3, tmp16, xmask) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (4 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (8 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (12 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + x3, tmp13, xmask) @triton.jit def triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r4 = rindex r0 = rindex % 16 r2 = rindex // 64 r3 = rindex % 64 tmp0 = tl.load(in_ptr0 + r4, None) tmp1 = tl.load(in_ptr0 + (r0 + 64 * r2), None, eviction_policy='evict_last' ) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp17 = tl.load(in_ptr1 + r3, None, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp9 = libdevice.isnan(tmp8).to(tl.int1) tmp10 = 0.0 tmp11 = tmp8 == tmp10 tmp12 = tl_math.log(tmp8) tmp13 = tmp8 * tmp12 tmp14 = tl.where(tmp11, tmp10, tmp13) tmp15 = float('nan') tmp16 = tl.where(tmp9, tmp15, tmp14) tmp18 = tmp8 * tmp17 tmp19 = tmp16 - tmp18 tmp20 = tl.broadcast_to(tmp19, [RBLOCK]) tmp22 = triton_helpers.promote_to_tensor(tl.sum(tmp20, 0)) tmp23 = 16.0 tmp24 = tmp22 * tmp23 tmp25 = 0.25 tmp26 = tmp24 * tmp25 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp26, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(256)](arg1_1, buf0, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg1_1 buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_1[grid(64)](arg0_1, buf2, 64, XBLOCK=64, num_warps =1, num_stages=1) del arg0_1 buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__log_softmax_2[grid(64)](buf2, buf3, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf2 buf4 = empty_strided_cuda((), (), torch.float32) buf5 = buf4 del buf4 triton_per_fused__log_softmax__softmax_div_mul_sub_sum_xlogy_3[grid(1) ](buf5, buf0, buf3, 1, 256, num_warps=2, num_stages=1) del buf0 del buf3 return buf5, class KDTHNew(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super(KDTHNew, self).__init__() self.T = T def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
KDTH
false
7,683
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super().__init__() self.T = T def forward(self, y_s, y_t): y_s_th = y_s[1] y_s = y_s[0] p_t = F.softmax(y_t / self.T, dim=1) p_s_th = F.log_softmax(y_s_th / self.T, dim=1) loss_th = F.kl_div(p_s_th, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss_th def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Add_ParamI
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/lw/clwmhv3ard4vibrwx3znjaja7nsm4gxiuq5s4gjf3wv47kclvepv.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.add] # Source node to ATen node mapping: # out => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_2, %primals_1), kwargs = {}) triton_poi_fused_add_0 = async_compile.triton('triton_poi_fused_add_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (1, ), (1, )) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 del primals_2 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Add_ParamI(nn.Module): def __init__(self): super().__init__() self.bias = nn.Parameter(torch.zeros(1)) def forward(self, x): out = x + self.bias return out def ibp_forward(self, l, u): l_ = l + self.bias u_ = u + self.bias return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (1,), (1,)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 del primals_2 return buf0, class Add_ParamINew(nn.Module): def __init__(self): super().__init__() self.bias = nn.Parameter(torch.zeros(1)) def ibp_forward(self, l, u): l_ = l + self.bias u_ = u + self.bias return l_, u_ def forward(self, input_0): primals_1 = self.bias primals_2 = input_0 output = call([primals_1, primals_2]) return output[0]
AlexMeinke/Provable-OOD-Detection
Add_ParamI
false
7,684
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() self.bias = nn.Parameter(torch.zeros(1)) def forward(self, x): out = x + self.bias return out def ibp_forward(self, l, u): l_ = l + self.bias u_ = u + self.bias return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Contraster
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/sz/cszon3v43u2hmqzsm5lnto3k6o25jqsjnhsh3iodgbkqzvtdyptt.py # Topologically Sorted Source Nodes: [gt, float_1, le, float_2, mul, sub, clamp, s, sub_1], Original ATen: [aten.gt, aten._to_copy, aten.le, aten.mul, aten.sub, aten.clamp, aten.add] # Source node to ATen node mapping: # clamp => clamp_max, clamp_min # float_1 => convert_element_type # float_2 => convert_element_type_1 # gt => gt # le => le # mul => mul # s => add # sub => sub # sub_1 => sub_1 # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg0_1, -3), kwargs = {}) # %convert_element_type : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt, torch.float32), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%arg0_1, -3), kwargs = {}) # %convert_element_type_1 : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%le, torch.float32), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %convert_element_type_1), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul, 4), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sub, 0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%convert_element_type, %clamp_max), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add, %arg0_1), kwargs = {}) triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0 = async_compile.triton('triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = -3.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tmp0 <= tmp1 tmp5 = tmp4.to(tl.float32) tmp6 = tmp0 * tmp5 tmp7 = 4.0 tmp8 = tmp6 - tmp7 tmp9 = 0.0 tmp10 = triton_helpers.maximum(tmp8, tmp9) tmp11 = 1.0 tmp12 = triton_helpers.minimum(tmp10, tmp11) tmp13 = tmp3 + tmp12 tmp14 = tmp13 - tmp0 tl.store(out_ptr0 + (x0), tmp14, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [gt, float_1, le, float_2, mul, sub, clamp, s, sub_1], Original ATen: [aten.gt, aten._to_copy, aten.le, aten.mul, aten.sub, aten.clamp, aten.add] stream0 = get_raw_stream(0) triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Contraster(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): eps = self.eps s = (x > 1 - eps).float() + torch.clamp(x * (x <= 1 - eps).float() - eps, 0, 1) return s - x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'eps': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = -3.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tmp0 <= tmp1 tmp5 = tmp4.to(tl.float32) tmp6 = tmp0 * tmp5 tmp7 = 4.0 tmp8 = tmp6 - tmp7 tmp9 = 0.0 tmp10 = triton_helpers.maximum(tmp8, tmp9) tmp11 = 1.0 tmp12 = triton_helpers.minimum(tmp10, tmp11) tmp13 = tmp3 + tmp12 tmp14 = tmp13 - tmp0 tl.store(out_ptr0 + x0, tmp14, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__to_copy_add_clamp_gt_le_mul_sub_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class ContrasterNew(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
Contraster
false
7,685
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Model(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): eps = self.eps s = (x > 1 - eps).float() + torch.clamp(x * (x <= 1 - eps).float() - eps, 0, 1) return s - x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
MLP
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/k2/ck2vien265x4ohzqig3tghvpfymbidm3ddqrlxf7ugxdobrc5ine.py # Topologically Sorted Source Nodes: [mlp_input], Original ATen: [aten.cat] # Source node to ATen node mapping: # mlp_input => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2, %abs_1, %mul], -1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tmp11 & tmp13 tmp15 = tl.load(in_ptr0 + ((4*x1) + ((-8) + x0)), tmp14 & xmask, eviction_policy='evict_last', other=0.0) tmp16 = tl.load(in_ptr1 + ((4*x1) + ((-8) + x0)), tmp14 & xmask, eviction_policy='evict_last', other=0.0) tmp17 = tmp15 - tmp16 tmp18 = tl_math.abs(tmp17) tmp19 = tl.full(tmp18.shape, 0.0, tmp18.dtype) tmp20 = tl.where(tmp14, tmp18, tmp19) tmp21 = tmp0 >= tmp12 tmp22 = tl.full([1], 16, tl.int64) tmp23 = tmp0 < tmp22 tmp24 = tl.load(in_ptr0 + ((4*x1) + ((-12) + x0)), tmp21 & xmask, eviction_policy='evict_last', other=0.0) tmp25 = tl.load(in_ptr1 + ((4*x1) + ((-12) + x0)), tmp21 & xmask, eviction_policy='evict_last', other=0.0) tmp26 = tmp24 * tmp25 tmp27 = tl.full(tmp26.shape, 0.0, tmp26.dtype) tmp28 = tl.where(tmp21, tmp26, tmp27) tmp29 = tl.where(tmp14, tmp20, tmp28) tmp30 = tl.where(tmp9, tmp10, tmp29) tmp31 = tl.where(tmp4, tmp5, tmp30) tl.store(out_ptr0 + (x2), tmp31, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/sy/csyq3f2s27ausr5srhudvxwlyubeknzzno766mzdsi5o67nwnhkp.py # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # relu => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 8 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (8, 16), (16, 1)) assert_size_stride(primals_4, (8, ), (1, )) assert_size_stride(primals_5, (4, 8), (8, 1)) assert_size_stride(primals_6, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch.float32) # Topologically Sorted Source Nodes: [mlp_input], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, buf0, 1024, grid=grid(1024), stream=stream0) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf0, (64, 16), (16, 1), 0), reinterpret_tensor(primals_3, (16, 8), (1, 16), 0), out=buf1) del primals_3 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 8), (128, 32, 8, 1), 0); del buf1 # reuse buf4 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.bool) # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf2, primals_4, buf4, 512, grid=grid(512), stream=stream0) del primals_4 buf3 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_6, reinterpret_tensor(buf2, (64, 8), (8, 1), 0), reinterpret_tensor(primals_5, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf3) del primals_6 return (reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf0, (64, 16), (16, 1), 0), reinterpret_tensor(buf2, (64, 8), (8, 1), 0), primals_5, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((8, 16), (16, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((8, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class MLP(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, head_rep, tail_rep): """ :param head_rep: (?, hs) :param tail_rep: (?, hs) :param doc_rep: (1, hs) :return: logits (?, outdim) """ mlp_input = [head_rep, tail_rep, torch.abs(head_rep - tail_rep), head_rep * tail_rep] mlp_input = torch.cat(mlp_input, -1) h = self.drop(F.relu(self.linear1(mlp_input))) return self.linear2(h) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'indim': 4, 'hs': 4, 'outdim': 4, 'mlp_drop': 0.5}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tmp11 & tmp13 tmp15 = tl.load(in_ptr0 + (4 * x1 + (-8 + x0)), tmp14 & xmask, eviction_policy='evict_last', other=0.0) tmp16 = tl.load(in_ptr1 + (4 * x1 + (-8 + x0)), tmp14 & xmask, eviction_policy='evict_last', other=0.0) tmp17 = tmp15 - tmp16 tmp18 = tl_math.abs(tmp17) tmp19 = tl.full(tmp18.shape, 0.0, tmp18.dtype) tmp20 = tl.where(tmp14, tmp18, tmp19) tmp21 = tmp0 >= tmp12 tl.full([1], 16, tl.int64) tmp24 = tl.load(in_ptr0 + (4 * x1 + (-12 + x0)), tmp21 & xmask, eviction_policy='evict_last', other=0.0) tmp25 = tl.load(in_ptr1 + (4 * x1 + (-12 + x0)), tmp21 & xmask, eviction_policy='evict_last', other=0.0) tmp26 = tmp24 * tmp25 tmp27 = tl.full(tmp26.shape, 0.0, tmp26.dtype) tmp28 = tl.where(tmp21, tmp26, tmp27) tmp29 = tl.where(tmp14, tmp20, tmp28) tmp30 = tl.where(tmp9, tmp10, tmp29) tmp31 = tl.where(tmp4, tmp5, tmp30) tl.store(out_ptr0 + x2, tmp31, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 8 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (8, 16), (16, 1)) assert_size_stride(primals_4, (8,), (1,)) assert_size_stride(primals_5, (4, 8), (8, 1)) assert_size_stride(primals_6, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch. float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(1024)](primals_1, primals_2, buf0, 1024, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf0, (64, 16), (16, 1), 0), reinterpret_tensor(primals_3, (16, 8), (1, 16), 0), out=buf1) del primals_3 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 8), (128, 32, 8, 1), 0) del buf1 buf4 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(512)](buf2, primals_4, buf4, 512, XBLOCK=128, num_warps=4, num_stages=1) del primals_4 buf3 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_6, reinterpret_tensor(buf2, (64, 8), ( 8, 1), 0), reinterpret_tensor(primals_5, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf3) del primals_6 return reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf0, (64, 16), (16, 1), 0), reinterpret_tensor( buf2, (64, 8), (8, 1), 0), primals_5, buf4 class MLPNew(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, input_0, input_1): primals_3 = self.linear1.weight primals_4 = self.linear1.bias primals_5 = self.linear2.weight primals_6 = self.linear2.bias primals_1 = input_0 primals_2 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
AndrewZhe/Three-Sentences-Are-All-You-Need
MLP
false
7,686
[ "MIT" ]
21
afad6f9e700c9a95e03ef200718ebee8e18ca016
https://github.com/AndrewZhe/Three-Sentences-Are-All-You-Need/tree/afad6f9e700c9a95e03ef200718ebee8e18ca016
import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, head_rep, tail_rep): """ :param head_rep: (?, hs) :param tail_rep: (?, hs) :param doc_rep: (1, hs) :return: logits (?, outdim) """ mlp_input = [head_rep, tail_rep, torch.abs(head_rep - tail_rep), head_rep * tail_rep] mlp_input = torch.cat(mlp_input, -1) h = self.drop(F.relu(self.linear1(mlp_input))) return self.linear2(h) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4, 0.5]
Conv2dBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ho/cho72zpf3yxrxsxjoqgiu5dmii3lj4efdjr3rk7fhvnzcxosbxxn.py # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x => convolution # x_1 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_convolution_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_convolution_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.bool) # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0.run(buf1, primals_3, buf2, 16, grid=grid(16), stream=stream0) del primals_3 return (buf1, primals_1, primals_2, buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super(AdaptiveInstanceNorm2d, self).__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign weight and bias before calling AdaIN!' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNorm, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super(SpectralNorm, self).__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + '_u', u) self.module.register_parameter(self.name + '_v', v) self.module.register_parameter(self.name + '_bar', w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args) class Conv2dBlock(nn.Module): def __init__(self, input_dim, output_dim, kernel_size, stride, padding= 0, norm='none', activation='relu', pad_type='zero'): super(Conv2dBlock, self).__init__() self.use_bias = True if pad_type == 'reflect': self.pad = nn.ReflectionPad2d(padding) elif pad_type == 'replicate': self.pad = nn.ReplicationPad2d(padding) elif pad_type == 'zero': self.pad = nn.ZeroPad2d(padding) else: assert 0, 'Unsupported padding type: {}'.format(pad_type) norm_dim = output_dim if norm == 'bn': self.norm = nn.BatchNorm2d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm2d(norm_dim) elif norm == 'ln': self.norm = LayerNorm(norm_dim) elif norm == 'adain': self.norm = AdaptiveInstanceNorm2d(norm_dim) elif norm == 'none' or norm == 'sn': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=True) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=True) elif activation == 'prelu': self.activation = nn.PReLU() elif activation == 'selu': self.activation = nn.SELU(inplace=True) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) if norm == 'sn': self.conv = SpectralNorm(nn.Conv2d(input_dim, output_dim, kernel_size, stride, bias=self.use_bias)) else: self.conv = nn.Conv2d(input_dim, output_dim, kernel_size, stride, bias=self.use_bias) def forward(self, x): x = self.conv(self.pad(x)) if self.norm: x = self.norm(x) if self.activation: x = self.activation(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_dim': 4, 'output_dim': 4, 'kernel_size': 4, 'stride': 1}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.nn.functional as F import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.bool) get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0[grid(16)](buf1, primals_3, buf2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_3 return buf1, primals_1, primals_2, buf2 def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super(AdaptiveInstanceNorm2d, self).__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign weight and bias before calling AdaIN!' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super(LayerNorm, self).__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super(SpectralNorm, self).__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] self.module.register_parameter(self.name + '_u', u) self.module.register_parameter(self.name + '_v', v) self.module.register_parameter(self.name + '_bar', w_bar) def forward(self, *args): self._update_u_v() return self.module.forward(*args) class Conv2dBlockNew(nn.Module): def __init__(self, input_dim, output_dim, kernel_size, stride, padding= 0, norm='none', activation='relu', pad_type='zero'): super(Conv2dBlockNew, self).__init__() self.use_bias = True if pad_type == 'reflect': self.pad = nn.ReflectionPad2d(padding) elif pad_type == 'replicate': self.pad = nn.ReplicationPad2d(padding) elif pad_type == 'zero': self.pad = nn.ZeroPad2d(padding) else: assert 0, 'Unsupported padding type: {}'.format(pad_type) norm_dim = output_dim if norm == 'bn': self.norm = nn.BatchNorm2d(norm_dim) elif norm == 'in': self.norm = nn.InstanceNorm2d(norm_dim) elif norm == 'ln': self.norm = LayerNorm(norm_dim) elif norm == 'adain': self.norm = AdaptiveInstanceNorm2d(norm_dim) elif norm == 'none' or norm == 'sn': self.norm = None else: assert 0, 'Unsupported normalization: {}'.format(norm) if activation == 'relu': self.activation = nn.ReLU(inplace=True) elif activation == 'lrelu': self.activation = nn.LeakyReLU(0.2, inplace=True) elif activation == 'prelu': self.activation = nn.PReLU() elif activation == 'selu': self.activation = nn.SELU(inplace=True) elif activation == 'tanh': self.activation = nn.Tanh() elif activation == 'none': self.activation = None else: assert 0, 'Unsupported activation: {}'.format(activation) if norm == 'sn': self.conv = SpectralNorm(nn.Conv2d(input_dim, output_dim, kernel_size, stride, bias=self.use_bias)) else: self.conv = nn.Conv2d(input_dim, output_dim, kernel_size, stride, bias=self.use_bias) def forward(self, input_0): primals_1 = self.conv.weight primals_3 = self.conv.bias primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AllenPu/mbdg
Conv2dBlock
false
7,687
[ "MIT" ]
27
243f53a57dcf4bfb6e717c0c9f64a839cff8d548
https://github.com/AllenPu/mbdg/tree/243f53a57dcf4bfb6e717c0c9f64a839cff8d548
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data def l2normalize(v, eps=1e-12): return v / (v.norm() + eps) class AdaptiveInstanceNorm2d(nn.Module): def __init__(self, num_features, eps=1e-05, momentum=0.1): super().__init__() self.num_features = num_features self.eps = eps self.momentum = momentum self.weight = None self.bias = None self.register_buffer('running_mean', torch.zeros(num_features)) self.register_buffer('running_var', torch.ones(num_features)) def forward(self, x): assert self.weight is not None and self.bias is not None, 'Please assign weight and bias before calling AdaIN!' b, c = x.size(0), x.size(1) running_mean = self.running_mean.repeat(b) running_var = self.running_var.repeat(b) x_reshaped = x.contiguous().view(1, b * c, *x.size()[2:]) out = F.batch_norm(x_reshaped, running_mean, running_var, self. weight, self.bias, True, self.momentum, self.eps) return out.view(b, c, *x.size()[2:]) def __repr__(self): return self.__class__.__name__ + '(' + str(self.num_features) + ')' class LayerNorm(nn.Module): def __init__(self, num_features, eps=1e-05, affine=True): super().__init__() self.num_features = num_features self.affine = affine self.eps = eps if self.affine: self.gamma = nn.Parameter(torch.Tensor(num_features).uniform_()) self.beta = nn.Parameter(torch.zeros(num_features)) def forward(self, x): shape = [-1] + [1] * (x.dim() - 1) if x.size(0) == 1: mean = x.view(-1).mean().view(*shape) std = x.view(-1).std().view(*shape) else: mean = x.view(x.size(0), -1).mean(1).view(*shape) std = x.view(x.size(0), -1).std(1).view(*shape) x = (x - mean) / (std + self.eps) if self.affine: shape = [1, -1] + [1] * (x.dim() - 2) x = x * self.gamma.view(*shape) + self.beta.view(*shape) return x class SpectralNorm(nn.Module): """ Based on the paper "Spectral Normalization for Generative Adversarial Networks" by Takeru Miyato, Toshiki Kataoka, Masanori Koyama, Yuichi Yoshida and the Pytorch implementation https://github.com/christiancosgrove/pytorch-spectral-normalization-gan """ def __init__(self, module, name='weight', power_iterations=1): super().__init__() self.module = module self.name = name self.power_iterations = power_iterations if not self._made_params(): self._make_params() def _update_u_v(self): u = getattr(self.module, self.name + '_u') v = getattr(self.module, self.name + '_v') w = getattr(self.module, self.name + '_bar') height = w.data.shape[0] for _ in range(self.power_iterations): v.data = l2normalize(torch.mv(torch.t(w.view(height, -1).data), u.data)) u.data = l2normalize(torch.mv(w.view(height, -1).data, v.data)) sigma = u.dot(w.view(height, -1).mv(v)) setattr(self.module, self.name, w / sigma.expand_as(w)) def _made_params(self): try: getattr(self.module, self.name + '_u') getattr(self.module, self.name + '_v') getattr(self.module, self.name + '_bar') return True except AttributeError: return False def _make_params(self): w = getattr(self.module, self.name) height = w.data.shape[0] width = w.view(height, -1).data.shape[1] u = nn.Parameter(w.data.new(height).normal_(0, 1), requires_grad=False) v = nn.Parameter(w.data.new(width).normal_(0, 1), requires_grad=False) u.data = l2normalize(u.data) v.data = l2normalize(v.data) w_bar = nn.Parameter(w.data) del self.module._parameters[self.name] # ... truncated (>4000 chars) for memory efficiency
DistillMSE
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/kq/ckqglep2uxxmtpvso6erxkbhcljhsx4d2chzqc2ps72gtorqejiz.py # Topologically Sorted Source Nodes: [softmax], Original ATen: [aten._softmax] # Source node to ATen node mapping: # softmax => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x3), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/og/cogl6b3opybjuaodzgq25xbzmrlgo67xntwlm3apzjmvljhmqml7.py # Topologically Sorted Source Nodes: [softmax, softmax_1, loss], Original ATen: [aten._softmax, aten.mse_loss] # Source node to ATen node mapping: # loss => mean, pow_1, sub_2 # softmax => div, sum_1 # softmax_1 => div_1, sum_2 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp_1, %sum_2), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div, %div_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_2, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%pow_1,), kwargs = {}) triton_per_fused__softmax_mse_loss_1 = async_compile.triton('triton_per_fused__softmax_mse_loss_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__softmax_mse_loss_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 10, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__softmax_mse_loss_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = (rindex // 64) tmp0 = tl.load(in_ptr0 + (r3), None) tmp1 = tl.load(in_ptr0 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp9 = tl.load(in_ptr1 + (r3), None) tmp10 = tl.load(in_ptr1 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp11 = tl.load(in_ptr1 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp13 = tl.load(in_ptr1 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp15 = tl.load(in_ptr1 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp12 = tmp10 + tmp11 tmp14 = tmp12 + tmp13 tmp16 = tmp14 + tmp15 tmp17 = tmp9 / tmp16 tmp18 = tmp8 - tmp17 tmp19 = tmp18 * tmp18 tmp20 = tl.broadcast_to(tmp19, [RBLOCK]) tmp22 = triton_helpers.promote_to_tensor(tl.sum(tmp20, 0)) tmp23 = 256.0 tmp24 = tmp22 / tmp23 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp24, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [softmax], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [softmax_1], Original ATen: [aten._softmax] triton_poi_fused__softmax_0.run(arg1_1, buf1, 256, grid=grid(256), stream=stream0) del arg1_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [softmax, softmax_1, loss], Original ATen: [aten._softmax, aten.mse_loss] triton_per_fused__softmax_mse_loss_1.run(buf4, buf0, buf1, 1, 256, grid=grid(1), stream=stream0) del buf0 del buf1 return (buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class DistillMSE(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self): super(DistillMSE, self).__init__() pass def forward(self, y_s, y_t): loss = nn.MSELoss(reduction='mean')(F.softmax(y_s, dim=1), F. softmax(y_t, dim=1)) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x3, tmp9, xmask) @triton.jit def triton_per_fused__softmax_mse_loss_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = rindex // 64 tmp0 = tl.load(in_ptr0 + r3, None) tmp1 = tl.load(in_ptr0 + (r0 + 64 * r2), None, eviction_policy='evict_last' ) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr1 + r3, None) tmp10 = tl.load(in_ptr1 + (r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr1 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp13 = tl.load(in_ptr1 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr1 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp12 = tmp10 + tmp11 tmp14 = tmp12 + tmp13 tmp16 = tmp14 + tmp15 tmp17 = tmp9 / tmp16 tmp18 = tmp8 - tmp17 tmp19 = tmp18 * tmp18 tmp20 = tl.broadcast_to(tmp19, [RBLOCK]) tmp22 = triton_helpers.promote_to_tensor(tl.sum(tmp20, 0)) tmp23 = 256.0 tmp24 = tmp22 / tmp23 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp24, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused__softmax_0[grid(256)](arg1_1, buf1, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg1_1 buf3 = empty_strided_cuda((), (), torch.float32) buf4 = buf3 del buf3 triton_per_fused__softmax_mse_loss_1[grid(1)](buf4, buf0, buf1, 1, 256, num_warps=2, num_stages=1) del buf0 del buf1 return buf4, class DistillMSENew(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self): super(DistillMSENew, self).__init__() pass def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
DistillMSE
false
7,688
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): """Distilling the Knowledge in a Neural Network""" def __init__(self): super().__init__() pass def forward(self, y_s, y_t): loss = nn.MSELoss(reduction='mean')(F.softmax(y_s, dim=1), F. softmax(y_t, dim=1)) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
OELossLogConf
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/xi/cxiejddtxbxet6hnwhqr3pqkimbtzrz5bt3paikcbgfukl77zyos.py # Topologically Sorted Source Nodes: [mean, neg], Original ATen: [aten.mean, aten.neg] # Source node to ATen node mapping: # mean => mean # neg => neg # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%arg0_1, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%mean,), kwargs = {}) triton_poi_fused_mean_neg_0 = async_compile.triton('triton_poi_fused_mean_neg_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_neg_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tmp9 = -tmp8 tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean, neg], Original ATen: [aten.mean, aten.neg] stream0 = get_raw_stream(0) triton_poi_fused_mean_neg_0.run(arg0_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class OELossLogConf(nn.Module): def __init__(self): super().__init__() def forward(self, confs): return -confs.mean(1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mean_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tmp9 = -tmp8 tl.store(out_ptr0 + x2, tmp9, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mean_neg_0[grid(64)](arg0_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 return buf0, class OELossLogConfNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
OELossLogConf
false
7,689
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() def forward(self, confs): return -confs.mean(1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Fire
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ux/cux7axsckwo5dxgyf2kefdy5fcl44asubo6jxnefaltmzk6rznwv.py # Topologically Sorted Source Nodes: [input_1, input_2], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # input_1 => convolution # input_2 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=3] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2e/c2epm2hbj4rnlq5ygvy2cdr3kkmfqdnblgcyxnvrruaru2zcca56.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%relu_1, %relu_2], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 8 x0 = xindex % 16 x2 = (xindex // 128) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (16*x1) + (64*x2)), tmp4 & xmask, other=0.0) tmp6 = tl.load(in_ptr1 + (x1), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp7 = tmp5 + tmp6 tmp8 = tl.full([1], 0, tl.int32) tmp9 = triton_helpers.maximum(tmp8, tmp7) tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tmp13 = tl.full([1], 8, tl.int64) tmp14 = tmp0 < tmp13 tmp15 = tl.load(in_ptr2 + (x0 + (16*((-4) + x1)) + (64*x2)), tmp12 & xmask, other=0.0) tmp16 = tl.load(in_ptr3 + ((-4) + x1), tmp12 & xmask, eviction_policy='evict_last', other=0.0) tmp17 = tmp15 + tmp16 tmp18 = triton_helpers.maximum(tmp8, tmp17) tmp19 = tl.full(tmp18.shape, 0.0, tmp18.dtype) tmp20 = tl.where(tmp12, tmp18, tmp19) tmp21 = tl.where(tmp4, tmp11, tmp20) tl.store(out_ptr0 + (x3), tmp21, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/x7/cx76sb55zbm6hkfj5nzftmqxcavkxqiltknd2vhxgp4un4ikja27.py # Topologically Sorted Source Nodes: [input_5, input_6], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # input_5 => convolution_2 # input_6 => relu_2 # Graph fragment: # %convolution_2 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_6, %primals_7, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_2,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_2, 0), kwargs = {}) triton_poi_fused_convolution_relu_threshold_backward_2 = async_compile.triton('triton_poi_fused_convolution_relu_threshold_backward_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_threshold_backward_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x3), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [input_1], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [input_1, input_2], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf1, primals_2, 256, grid=grid(256), stream=stream0) del primals_2 # Topologically Sorted Source Nodes: [input_3], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4, 4), (64, 16, 4, 1)) # Topologically Sorted Source Nodes: [input_5], Original ATen: [aten.convolution] buf3 = extern_kernels.convolution(buf1, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 4, 4, 4), (64, 16, 4, 1)) buf4 = empty_strided_cuda((4, 8, 4, 4), (128, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(buf2, primals_5, buf3, primals_7, buf4, 512, grid=grid(512), stream=stream0) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [input_5, input_6], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] triton_poi_fused_convolution_relu_threshold_backward_2.run(buf3, primals_7, buf5, 256, grid=grid(256), stream=stream0) del buf3 del primals_7 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [input_3, input_4], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] triton_poi_fused_convolution_relu_threshold_backward_2.run(buf2, primals_5, buf6, 256, grid=grid(256), stream=stream0) del buf2 del primals_5 return (buf4, primals_1, primals_3, primals_4, primals_6, buf1, buf5, buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from collections import OrderedDict class Fire(nn.Module): def __init__(self, inplanes, squeeze_planes, expand1x1_planes, expand3x3_planes): super(Fire, self).__init__() self.inplanes = inplanes self.group1 = nn.Sequential(OrderedDict([('squeeze', nn.Conv2d( inplanes, squeeze_planes, kernel_size=1)), ( 'squeeze_activation', nn.ReLU(inplace=True))])) self.group2 = nn.Sequential(OrderedDict([('expand1x1', nn.Conv2d( squeeze_planes, expand1x1_planes, kernel_size=1)), ( 'expand1x1_activation', nn.ReLU(inplace=True))])) self.group3 = nn.Sequential(OrderedDict([('expand3x3', nn.Conv2d( squeeze_planes, expand3x3_planes, kernel_size=3, padding=1)), ( 'expand3x3_activation', nn.ReLU(inplace=True))])) def forward(self, x): x = self.group1(x) return torch.cat([self.group2(x), self.group3(x)], 1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'inplanes': 4, 'squeeze_planes': 4, 'expand1x1_planes': 4, 'expand3x3_planes': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn from collections import OrderedDict assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 8 x0 = xindex % 16 x2 = xindex // 128 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 16 * x1 + 64 * x2), tmp4 & xmask, other=0.0) tmp6 = tl.load(in_ptr1 + x1, tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp7 = tmp5 + tmp6 tmp8 = tl.full([1], 0, tl.int32) tmp9 = triton_helpers.maximum(tmp8, tmp7) tmp10 = tl.full(tmp9.shape, 0.0, tmp9.dtype) tmp11 = tl.where(tmp4, tmp9, tmp10) tmp12 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp15 = tl.load(in_ptr2 + (x0 + 16 * (-4 + x1) + 64 * x2), tmp12 & xmask, other=0.0) tmp16 = tl.load(in_ptr3 + (-4 + x1), tmp12 & xmask, eviction_policy= 'evict_last', other=0.0) tmp17 = tmp15 + tmp16 tmp18 = triton_helpers.maximum(tmp8, tmp17) tmp19 = tl.full(tmp18.shape, 0.0, tmp18.dtype) tmp20 = tl.where(tmp12, tmp18, tmp19) tmp21 = tl.where(tmp4, tmp11, tmp20) tl.store(out_ptr0 + x3, tmp21, xmask) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + x3, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(256)](buf1, primals_2, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4, 4), (64, 16, 4, 1)) buf3 = extern_kernels.convolution(buf1, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 4, 4, 4), (64, 16, 4, 1)) buf4 = empty_strided_cuda((4, 8, 4, 4), (128, 16, 4, 1), torch.float32) triton_poi_fused_cat_1[grid(512)](buf2, primals_5, buf3, primals_7, buf4, 512, XBLOCK=256, num_warps=4, num_stages=1) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_convolution_relu_threshold_backward_2[grid(256)](buf3, primals_7, buf5, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf3 del primals_7 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_convolution_relu_threshold_backward_2[grid(256)](buf2, primals_5, buf6, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf2 del primals_5 return buf4, primals_1, primals_3, primals_4, primals_6, buf1, buf5, buf6 class FireNew(nn.Module): def __init__(self, inplanes, squeeze_planes, expand1x1_planes, expand3x3_planes): super(FireNew, self).__init__() self.inplanes = inplanes self.group1 = nn.Sequential(OrderedDict([('squeeze', nn.Conv2d( inplanes, squeeze_planes, kernel_size=1)), ( 'squeeze_activation', nn.ReLU(inplace=True))])) self.group2 = nn.Sequential(OrderedDict([('expand1x1', nn.Conv2d( squeeze_planes, expand1x1_planes, kernel_size=1)), ( 'expand1x1_activation', nn.ReLU(inplace=True))])) self.group3 = nn.Sequential(OrderedDict([('expand3x3', nn.Conv2d( squeeze_planes, expand3x3_planes, kernel_size=3, padding=1)), ( 'expand3x3_activation', nn.ReLU(inplace=True))])) def forward(self, input_0): primals_1 = self.group1.squeeze.weight primals_2 = self.group1.squeeze.bias primals_4 = self.group2.expand1x1.weight primals_5 = self.group2.expand1x1.bias primals_6 = self.group3.expand3x3.weight primals_7 = self.group3.expand3x3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
Alibaba-AAIG/Beyond-ImageNet-Attack
Fire
false
7,690
[ "MIT" ]
23
c14b4844b64a8035b8fe033a617c0567224a9fa4
https://github.com/Alibaba-AAIG/Beyond-ImageNet-Attack/tree/c14b4844b64a8035b8fe033a617c0567224a9fa4
import torch from torch import nn from collections import OrderedDict class Model(nn.Module): def __init__(self, inplanes, squeeze_planes, expand1x1_planes, expand3x3_planes): super().__init__() self.inplanes = inplanes self.group1 = nn.Sequential(OrderedDict([('squeeze', nn.Conv2d( inplanes, squeeze_planes, kernel_size=1)), ( 'squeeze_activation', nn.ReLU(inplace=True))])) self.group2 = nn.Sequential(OrderedDict([('expand1x1', nn.Conv2d( squeeze_planes, expand1x1_planes, kernel_size=1)), ( 'expand1x1_activation', nn.ReLU(inplace=True))])) self.group3 = nn.Sequential(OrderedDict([('expand3x3', nn.Conv2d( squeeze_planes, expand3x3_planes, kernel_size=3, padding=1)), ( 'expand3x3_activation', nn.ReLU(inplace=True))])) def forward(self, x): x = self.group1(x) return torch.cat([self.group2(x), self.group3(x)], 1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'inplanes': 4, 'squeeze_planes': 4, 'expand1x1_planes': 4, 'expand3x3_planes': 4}]
CTLSTMCell
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/zn/czn6cztle4peyy4pa7mkag53s34sjkn6wpenptu6ttfuvhgzzrup.py # Topologically Sorted Source Nodes: [input_i], Original ATen: [aten.cat] # Source node to ATen node mapping: # input_i => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 3), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/fb/cfb2w4volmeecjsfwgg7olqsteprznrs6xpudbxkusai7ffw2xws.py # Topologically Sorted Source Nodes: [stack, sigmoid_5], Original ATen: [aten.stack, aten.sigmoid] # Source node to ATen node mapping: # sigmoid_5 => sigmoid # stack => cat_1 # Graph fragment: # %cat_1 : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%getitem_2, %getitem_1, %getitem, %getitem_5, %getitem_4],), kwargs = {}) # %sigmoid : [num_users=2] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_2,), kwargs = {}) triton_poi_fused_sigmoid_stack_1 = async_compile.triton('triton_poi_fused_sigmoid_stack_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sigmoid_stack_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sigmoid_stack_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1280 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = (xindex // 64) x0 = xindex % 4 x1 = (xindex // 4) % 16 x3 = xindex tmp0 = x2 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (8 + x0 + (28*x1) + (448*x2)), tmp4 & xmask, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr0 + (4 + x0 + (28*x1) + (448*((-4) + x2))), tmp9 & xmask, other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tmp11 & tmp13 tmp15 = tl.load(in_ptr0 + (x0 + (28*x1) + (448*((-8) + x2))), tmp14 & xmask, other=0.0) tmp16 = tmp0 >= tmp12 tmp17 = tl.full([1], 16, tl.int64) tmp18 = tmp0 < tmp17 tmp19 = tmp16 & tmp18 tmp20 = tl.load(in_ptr0 + (20 + x0 + (28*x1) + (448*((-12) + x2))), tmp19 & xmask, other=0.0) tmp21 = tmp0 >= tmp17 tmp22 = tl.full([1], 20, tl.int64) tmp23 = tmp0 < tmp22 tmp24 = tl.load(in_ptr0 + (16 + x0 + (28*x1) + (448*((-16) + x2))), tmp21 & xmask, other=0.0) tmp25 = tl.where(tmp19, tmp20, tmp24) tmp26 = tl.where(tmp14, tmp15, tmp25) tmp27 = tl.where(tmp9, tmp10, tmp26) tmp28 = tl.where(tmp4, tmp5, tmp27) tmp29 = tl.sigmoid(tmp28) tl.store(in_out_ptr0 + (x3), tmp29, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/n3/cn3ginswanvhhj7k24tgsfrsb3ii6q3q2e5ldm5ueyqiasaqc2mj.py # Topologically Sorted Source Nodes: [gate_pre_c_1, mul, mul_1, cell_i, mul_2, mul_3, cell_bar_i], Original ATen: [aten.tanh, aten.mul, aten.add] # Source node to ATen node mapping: # cell_bar_i => add_1 # cell_i => add # gate_pre_c_1 => tanh # mul => mul_1 # mul_1 => mul_2 # mul_2 => mul_3 # mul_3 => mul_4 # Graph fragment: # %tanh : [num_users=3] = call_function[target=torch.ops.aten.tanh.default](args = (%getitem_3,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%getitem_8, %primals_5), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%getitem_9, %tanh), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %mul_2), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%getitem_10, %primals_6), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%getitem_11, %tanh), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_3, %mul_4), kwargs = {}) triton_poi_fused_add_mul_tanh_2 = async_compile.triton('triton_poi_fused_add_mul_tanh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_tanh_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 7, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_tanh_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, out_ptr1, out_ptr2, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (12 + x0 + (28*x1)), xmask) tmp2 = tl.load(in_ptr1 + (256 + x2), xmask) tmp3 = tl.load(in_ptr2 + (x2), xmask) tmp5 = tl.load(in_ptr1 + (512 + x2), xmask) tmp8 = tl.load(in_ptr1 + (768 + x2), xmask) tmp9 = tl.load(in_ptr3 + (x2), xmask) tmp11 = tl.load(in_ptr1 + (1024 + x2), xmask) tmp1 = libdevice.tanh(tmp0) tmp4 = tmp2 * tmp3 tmp6 = tmp5 * tmp1 tmp7 = tmp4 + tmp6 tmp10 = tmp8 * tmp9 tmp12 = tmp11 * tmp1 tmp13 = tmp10 + tmp12 tl.store(out_ptr0 + (x2), tmp1, xmask) tl.store(out_ptr1 + (x2), tmp7, xmask) tl.store(out_ptr2 + (x2), tmp13, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/dj/cdjoryafscfa26hvwii3wmyk7oospg52w3cfabgzwxtm5pi6zizp.py # Topologically Sorted Source Nodes: [gate_decay_1], Original ATen: [aten.softplus] # Source node to ATen node mapping: # gate_decay_1 => div, exp, gt, log1p, mul, where # Graph fragment: # %mul : [num_users=3] = call_function[target=torch.ops.aten.mul.Tensor](args = (%getitem_6, 1.0), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%mul,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%log1p, 1.0), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%mul, 20), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %getitem_6, %div), kwargs = {}) triton_poi_fused_softplus_3 = async_compile.triton('triton_poi_fused_softplus_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_softplus_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_softplus_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (24 + x0 + (28*x1)), xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 20.0 tmp4 = tmp2 > tmp3 tmp5 = tl_math.exp(tmp2) tmp6 = libdevice.log1p(tmp5) tmp7 = tmp6 * tmp1 tmp8 = tl.where(tmp4, tmp0, tmp7) tl.store(out_ptr0 + (x2), tmp2, xmask) tl.store(out_ptr1 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (28, 8), (8, 1)) assert_size_stride(primals_4, (28, ), (1, )) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [input_i], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, buf0, 512, grid=grid(512), stream=stream0) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 28), (28, 1), torch.float32) # Topologically Sorted Source Nodes: [output_i], Original ATen: [aten.addmm] extern_kernels.addmm(primals_4, reinterpret_tensor(buf0, (64, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 28), (1, 8), 0), alpha=1, beta=1, out=buf1) del primals_3 del primals_4 buf2 = empty_strided_cuda((20, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf3 = reinterpret_tensor(buf2, (5, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0); del buf2 # reuse # Topologically Sorted Source Nodes: [stack, sigmoid_5], Original ATen: [aten.stack, aten.sigmoid] triton_poi_fused_sigmoid_stack_1.run(buf3, buf1, 1280, grid=grid(1280), stream=stream0) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf7 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [gate_pre_c_1, mul, mul_1, cell_i, mul_2, mul_3, cell_bar_i], Original ATen: [aten.tanh, aten.mul, aten.add] triton_poi_fused_add_mul_tanh_2.run(buf1, buf3, primals_5, primals_6, buf4, buf7, buf8, 256, grid=grid(256), stream=stream0) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [gate_decay_1], Original ATen: [aten.softplus] triton_poi_fused_softplus_3.run(buf1, buf5, buf6, 256, grid=grid(256), stream=stream0) del buf1 return (buf7, buf8, buf6, reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_5, primals_6, reinterpret_tensor(buf0, (64, 8), (8, 1), 0), buf3, reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 512), reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 1024), buf4, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((28, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((28, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class CTLSTMCell(nn.Module): def __init__(self, hidden_dim, beta=1.0, device=None): super(CTLSTMCell, self).__init__() device = device or 'cpu' self.device = torch.device(device) self.hidden_dim = hidden_dim self.linear = nn.Linear(hidden_dim * 2, hidden_dim * 7, bias=True) self.beta = beta def forward(self, rnn_input, hidden_t_i_minus, cell_t_i_minus, cell_bar_im1 ): dim_of_hidden = rnn_input.dim() - 1 input_i = torch.cat((rnn_input, hidden_t_i_minus), dim=dim_of_hidden) output_i = self.linear(input_i) (gate_input, gate_forget, gate_output, gate_pre_c, gate_input_bar, gate_forget_bar, gate_decay) = output_i.chunk(7, dim_of_hidden) gate_input = torch.sigmoid(gate_input) gate_forget = torch.sigmoid(gate_forget) gate_output = torch.sigmoid(gate_output) gate_pre_c = torch.tanh(gate_pre_c) gate_input_bar = torch.sigmoid(gate_input_bar) gate_forget_bar = torch.sigmoid(gate_forget_bar) gate_decay = F.softplus(gate_decay, beta=self.beta) cell_i = gate_forget * cell_t_i_minus + gate_input * gate_pre_c cell_bar_i = (gate_forget_bar * cell_bar_im1 + gate_input_bar * gate_pre_c) return cell_i, cell_bar_i, gate_decay, gate_output def decay(self, cell_i, cell_bar_i, gate_decay, gate_output, dtime): if dtime.dim() < cell_i.dim(): dtime = dtime.unsqueeze(cell_i.dim() - 1).expand_as(cell_i) cell_t_ip1_minus = cell_bar_i + (cell_i - cell_bar_i) * torch.exp(- gate_decay * dtime) hidden_t_ip1_minus = gate_output * torch.tanh(cell_t_ip1_minus) return cell_t_ip1_minus, hidden_t_ip1_minus def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_sigmoid_stack_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1280 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex // 64 x0 = xindex % 4 x1 = xindex // 4 % 16 x3 = xindex tmp0 = x2 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (8 + x0 + 28 * x1 + 448 * x2), tmp4 & xmask, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr0 + (4 + x0 + 28 * x1 + 448 * (-4 + x2)), tmp9 & xmask, other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tmp11 & tmp13 tmp15 = tl.load(in_ptr0 + (x0 + 28 * x1 + 448 * (-8 + x2)), tmp14 & xmask, other=0.0) tmp16 = tmp0 >= tmp12 tmp17 = tl.full([1], 16, tl.int64) tmp18 = tmp0 < tmp17 tmp19 = tmp16 & tmp18 tmp20 = tl.load(in_ptr0 + (20 + x0 + 28 * x1 + 448 * (-12 + x2)), tmp19 & xmask, other=0.0) tmp21 = tmp0 >= tmp17 tl.full([1], 20, tl.int64) tmp24 = tl.load(in_ptr0 + (16 + x0 + 28 * x1 + 448 * (-16 + x2)), tmp21 & xmask, other=0.0) tmp25 = tl.where(tmp19, tmp20, tmp24) tmp26 = tl.where(tmp14, tmp15, tmp25) tmp27 = tl.where(tmp9, tmp10, tmp26) tmp28 = tl.where(tmp4, tmp5, tmp27) tmp29 = tl.sigmoid(tmp28) tl.store(in_out_ptr0 + x3, tmp29, xmask) @triton.jit def triton_poi_fused_add_mul_tanh_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, out_ptr1, out_ptr2, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (12 + x0 + 28 * x1), xmask) tmp2 = tl.load(in_ptr1 + (256 + x2), xmask) tmp3 = tl.load(in_ptr2 + x2, xmask) tmp5 = tl.load(in_ptr1 + (512 + x2), xmask) tmp8 = tl.load(in_ptr1 + (768 + x2), xmask) tmp9 = tl.load(in_ptr3 + x2, xmask) tmp11 = tl.load(in_ptr1 + (1024 + x2), xmask) tmp1 = libdevice.tanh(tmp0) tmp4 = tmp2 * tmp3 tmp6 = tmp5 * tmp1 tmp7 = tmp4 + tmp6 tmp10 = tmp8 * tmp9 tmp12 = tmp11 * tmp1 tmp13 = tmp10 + tmp12 tl.store(out_ptr0 + x2, tmp1, xmask) tl.store(out_ptr1 + x2, tmp7, xmask) tl.store(out_ptr2 + x2, tmp13, xmask) @triton.jit def triton_poi_fused_softplus_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (24 + x0 + 28 * x1), xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 20.0 tmp4 = tmp2 > tmp3 tmp5 = tl_math.exp(tmp2) tmp6 = libdevice.log1p(tmp5) tmp7 = tmp6 * tmp1 tmp8 = tl.where(tmp4, tmp0, tmp7) tl.store(out_ptr0 + x2, tmp2, xmask) tl.store(out_ptr1 + x2, tmp8, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (28, 8), (8, 1)) assert_size_stride(primals_4, (28,), (1,)) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(512)](primals_1, primals_2, buf0, 512, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 del primals_2 buf1 = empty_strided_cuda((64, 28), (28, 1), torch.float32) extern_kernels.addmm(primals_4, reinterpret_tensor(buf0, (64, 8), ( 8, 1), 0), reinterpret_tensor(primals_3, (8, 28), (1, 8), 0), alpha=1, beta=1, out=buf1) del primals_3 del primals_4 buf2 = empty_strided_cuda((20, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf3 = reinterpret_tensor(buf2, (5, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0 ) del buf2 triton_poi_fused_sigmoid_stack_1[grid(1280)](buf3, buf1, 1280, XBLOCK=128, num_warps=4, num_stages=1) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf7 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_mul_tanh_2[grid(256)](buf1, buf3, primals_5, primals_6, buf4, buf7, buf8, 256, XBLOCK=128, num_warps=4, num_stages=1) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_softplus_3[grid(256)](buf1, buf5, buf6, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf1 return buf7, buf8, buf6, reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_5, primals_6, reinterpret_tensor(buf0, (64, 8), (8, 1), 0), buf3, reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 512), reinterpret_tensor(buf3, (4, 4, 4, 4), (64, 16, 4, 1), 1024 ), buf4, buf5 class CTLSTMCellNew(nn.Module): def __init__(self, hidden_dim, beta=1.0, device=None): super(CTLSTMCellNew, self).__init__() device = device or 'cpu' self.device = torch.device(device) self.hidden_dim = hidden_dim self.linear = nn.Linear(hidden_dim * 2, hidden_dim * 7, bias=True) self.beta = beta def decay(self, cell_i, cell_bar_i, gate_decay, gate_output, dtime): if dtime.dim() < cell_i.dim(): dtime = dtime.unsqueeze(cell_i.dim() - 1).expand_as(cell_i) cell_t_ip1_minus = cell_bar_i + (cell_i - cell_bar_i) * torch.exp(- gate_decay * dtime) hidden_t_ip1_minus = gate_output * torch.tanh(cell_t_ip1_minus) return cell_t_ip1_minus, hidden_t_ip1_minus def forward(self, input_0, input_1, input_2, input_3): primals_3 = self.linear.weight primals_4 = self.linear.bias primals_1 = input_0 primals_2 = input_1 primals_5 = input_2 primals_6 = input_3 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0], output[1], output[2], output[3]
Anirudh-Murali/neural-hawkes-particle-smoothing
CTLSTMCell
false
7,691
[ "BSD-3-Clause" ]
37
96b258838bdab33b781008daeedfa61dec0d553c
https://github.com/Anirudh-Murali/neural-hawkes-particle-smoothing/tree/96b258838bdab33b781008daeedfa61dec0d553c
import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): def __init__(self, hidden_dim, beta=1.0, device=None): super().__init__() device = device or 'cpu' self.device = torch.device(device) self.hidden_dim = hidden_dim self.linear = nn.Linear(hidden_dim * 2, hidden_dim * 7, bias=True) self.beta = beta def forward(self, rnn_input, hidden_t_i_minus, cell_t_i_minus, cell_bar_im1 ): dim_of_hidden = rnn_input.dim() - 1 input_i = torch.cat((rnn_input, hidden_t_i_minus), dim=dim_of_hidden) output_i = self.linear(input_i) (gate_input, gate_forget, gate_output, gate_pre_c, gate_input_bar, gate_forget_bar, gate_decay) = output_i.chunk(7, dim_of_hidden) gate_input = torch.sigmoid(gate_input) gate_forget = torch.sigmoid(gate_forget) gate_output = torch.sigmoid(gate_output) gate_pre_c = torch.tanh(gate_pre_c) gate_input_bar = torch.sigmoid(gate_input_bar) gate_forget_bar = torch.sigmoid(gate_forget_bar) gate_decay = F.softplus(gate_decay, beta=self.beta) cell_i = gate_forget * cell_t_i_minus + gate_input * gate_pre_c cell_bar_i = (gate_forget_bar * cell_bar_im1 + gate_input_bar * gate_pre_c) return cell_i, cell_bar_i, gate_decay, gate_output def decay(self, cell_i, cell_bar_i, gate_decay, gate_output, dtime): if dtime.dim() < cell_i.dim(): dtime = dtime.unsqueeze(cell_i.dim() - 1).expand_as(cell_i) cell_t_ip1_minus = cell_bar_i + (cell_i - cell_bar_i) * torch.exp(- gate_decay * dtime) hidden_t_ip1_minus = gate_output * torch.tanh(cell_t_ip1_minus) return cell_t_ip1_minus, hidden_t_ip1_minus def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
NormalNoiseGenerator
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/wc/cwc5ci3x64sywutc7imfem4lyme6vua6kqapyj2w55wbh2kjcctq.py # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] # Source node to ATen node mapping: # add => add # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%randn, 1.0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 0), kwargs = {}) triton_poi_fused_add_mul_0 = async_compile.triton('triton_poi_fused_add_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_0(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 0.0 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [randn_like], Original ATen: [aten.randn_like] buf0 = torch.ops.aten.randn.default([4, 4, 4, 4], dtype=torch.float32, device=device(type='cuda', index=0), pin_memory=False) buf1 = buf0 del buf0 buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_0.run(buf2, 256, grid=grid(256), stream=stream0) return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class NormalNoiseGenerator(AdversarialNoiseGenerator): def __init__(self, sigma=1.0, mu=0): super().__init__() self.sigma = sigma self.mu = mu def forward(self, x): return self.sigma * torch.randn_like(x) + self.mu def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch import device import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride @triton.jit def triton_poi_fused_add_mul_0(in_out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 0.0 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = torch.ops.aten.randn.default([4, 4, 4, 4], dtype=torch. float32, device=device(type='cuda', index=0), pin_memory=False) buf1 = buf0 del buf0 buf2 = buf1 del buf1 get_raw_stream(0) triton_poi_fused_add_mul_0[grid(256)](buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf2, class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class NormalNoiseGeneratorNew(AdversarialNoiseGenerator): def __init__(self, sigma=1.0, mu=0): super().__init__() self.sigma = sigma self.mu = mu def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
NormalNoiseGenerator
false
7,692
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Model(AdversarialNoiseGenerator): def __init__(self, sigma=1.0, mu=0): super().__init__() self.sigma = sigma self.mu = mu def forward(self, x): return self.sigma * torch.randn_like(x) + self.mu def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GOODLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/gi/cgi7mwgvdekwsmydaobxhzjo5i6dam527gopmki3pueu3hv4azem.py # Topologically Sorted Source Nodes: [pow_1, truediv, log1p], Original ATen: [aten.pow, aten.div, aten.log1p] # Source node to ATen node mapping: # log1p => log1p # pow_1 => pow_1 # truediv => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 2), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%pow_1, 2), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%div,), kwargs = {}) triton_poi_fused_div_log1p_pow_0 = async_compile.triton('triton_poi_fused_div_log1p_pow_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_log1p_pow_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_log1p_pow_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tmp0 * tmp0 tmp2 = 0.5 tmp3 = tmp1 * tmp2 tmp4 = libdevice.log1p(tmp3) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, truediv, log1p], Original ATen: [aten.pow, aten.div, aten.log1p] stream0 = get_raw_stream(0) triton_poi_fused_div_log1p_pow_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class GOODLoss(nn.Module): def __init__(self): super().__init__() def forward(self, ub_log_conf): return (ub_log_conf ** 2 / 2).log1p() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_div_log1p_pow_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tmp0 * tmp0 tmp2 = 0.5 tmp3 = tmp1 * tmp2 tmp4 = libdevice.log1p(tmp3) tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_div_log1p_pow_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class GOODLossNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
GOODLoss
false
7,693
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() def forward(self, ub_log_conf): return (ub_log_conf ** 2 / 2).log1p() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Lowerer
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/er/cerlxsnpgtnpv7hzmlfz2dhkygmaorqaus4qnehlhykm3idsu6nx.py # Topologically Sorted Source Nodes: [sub, s, sub_1], Original ATen: [aten.sub, aten.clamp] # Source node to ATen node mapping: # s => clamp_max, clamp_min # sub => sub # sub_1 => sub_1 # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, 4), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sub, 0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 1), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clamp_max, %arg0_1), kwargs = {}) triton_poi_fused_clamp_sub_0 = async_compile.triton('triton_poi_fused_clamp_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clamp_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clamp_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 4.0 tmp2 = tmp0 - tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 1.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp6 - tmp0 tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, s, sub_1], Original ATen: [aten.sub, aten.clamp] stream0 = get_raw_stream(0) triton_poi_fused_clamp_sub_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Lowerer(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): eps = self.eps s = torch.clamp(x - eps, 0, 1) return s - x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'eps': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_clamp_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 4.0 tmp2 = tmp0 - tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 1.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp6 - tmp0 tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_clamp_sub_0[grid(256)](arg0_1, buf0, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg0_1 return buf0, class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class LowererNew(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
Lowerer
false
7,694
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Model(AdversarialNoiseGenerator): def __init__(self, eps): super().__init__() self.eps = eps def forward(self, x): eps = self.eps s = torch.clamp(x - eps, 0, 1) return s - x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
LinearI_Neg
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/we/cwekauled5bmurgz6chjws7enieqltsibl3vumqwclix2cci4c2h.py # Topologically Sorted Source Nodes: [exp, neg], Original ATen: [aten.exp, aten.neg] # Source node to ATen node mapping: # exp => exp # neg => neg # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%primals_1,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%exp,), kwargs = {}) triton_poi_fused_exp_neg_0 = async_compile.triton('triton_poi_fused_exp_neg_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_exp_neg_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_exp_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl_math.exp(tmp0) tmp2 = -tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [exp, neg], Original ATen: [aten.exp, aten.neg] stream0 = get_raw_stream(0) triton_poi_fused_exp_neg_0.run(primals_1, buf0, 16, grid=grid(16), stream=stream0) buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del buf0 del primals_2 return (reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.distributions import torch.utils.data class LinearI_Neg(nn.Linear): def forward(self, x): return F.linear(x, -self.weight.exp(), self.bias) def ibp_forward(self, l, u): weight = -self.weight.exp() if self.bias is not None: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t() + self.bias[:, None]).t() u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t() + self.bias[:, None]).t() else: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t()).t( ) u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t()).t( ) return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4, 'out_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_exp_neg_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl_math.exp(tmp0) tmp2 = -tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_exp_neg_0[grid(16)](primals_1, buf0, 16, XBLOCK=16, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del buf0 del primals_2 return reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), primals_1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0) class LinearI_NegNew(nn.Linear): def ibp_forward(self, l, u): weight = -self.weight.exp() if self.bias is not None: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t() + self.bias[:, None]).t() u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t() + self.bias[:, None]).t() else: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t()).t( ) u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t()).t( ) return l_, u_ def forward(self, input_0): primals_1 = self.weight primals_2 = self.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AlexMeinke/Provable-OOD-Detection
LinearI_Neg
false
7,695
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.nn.functional as F import torch.distributions import torch.utils.data class Model(nn.Linear): def forward(self, x): return F.linear(x, -self.weight.exp(), self.bias) def ibp_forward(self, l, u): weight = -self.weight.exp() if self.bias is not None: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t() + self.bias[:, None]).t() u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t() + self.bias[:, None]).t() else: l_ = (weight.clamp(min=0) @ l.t() + weight.clamp(max=0) @ u.t()).t( ) u_ = (weight.clamp(min=0) @ u.t() + weight.clamp(max=0) @ l.t()).t( ) return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
KDETH
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/n7/cn7we7togo35ouvrhrbnvn2aajw35y3b2luwnik3fez2ulvmsdeq.py # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] # Source node to ATen node mapping: # p_t => exp # Graph fragment: # %mul_tensor_1 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg3_1, 1), kwargs = {}) # %amax_default_1 : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor_1, [1], True), kwargs = {}) # %sub_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor_1, %amax_default_1), kwargs = {}) # %div_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor_1, 4), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor_1,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp3 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/3w/c3w2fd4ytdzwqufezwcryyqxyisfo5imj2o4xgnidod5k6gjrmd2.py # Topologically Sorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: # Graph fragment: # %mul_tensor : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%select, 1), kwargs = {}) # %amax_default : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor, [1], True), kwargs = {}) # %sub_tensor : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor, %amax_default), kwargs = {}) # %div_tensor : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_tensor, 4), kwargs = {}) triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (64 + x3), xmask) tmp3 = tl.load(in_ptr0 + (64 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (68 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (72 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (76 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + (x3), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/qt/cqt2csmz5oetxawjqrco63wpmbxw4eus4vccz7nnu3bmmrwip7pv.py # Topologically Sorted Source Nodes: [p_s_th], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # p_s_th => exp_1, log, sub_3, sum_5 # Graph fragment: # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) # %sum_5 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_5,), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div_tensor, %log), kwargs = {}) triton_poi_fused__log_softmax_2 = async_compile.triton('triton_poi_fused__log_softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (4 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (8 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (12 + x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + (x3), tmp13, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/6x/c6x7xgtd6s5qkyp6tf4gg6hn3eio52qq2v7ici7s4fu3ek2g32kh.py # Topologically Sorted Source Nodes: [inputs_embed, targets_embed, loss_kde, p_t, kl_div, p_s_th, mul, loss_th, mul_1, loss], Original ATen: [aten.div, aten.mse_loss, aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.add] # Source node to ATen node mapping: # inputs_embed => div # kl_div => eq, full_default, full_default_1, isnan, log_1, mul, mul_1, sub_4, sum_6, where, where_1 # loss => add # loss_kde => pow_5, sub, sum_3 # loss_th => div_5 # mul => mul_2 # mul_1 => mul_3 # p_s_th => exp_1, log, sub_3, sum_5 # p_t => div_3, sum_4 # targets_embed => div_1 # Graph fragment: # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg0_1, %expand), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg1_1, %expand_1), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div, %div_1), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%pow_5,), kwargs = {}) # %sum_4 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %div_3 : [num_users=5] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_4), kwargs = {}) # %isnan : [num_users=1] = call_function[target=torch.ops.aten.isnan.default](args = (%div_3,), kwargs = {}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], nan), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Scalar](args = (%div_3, 0), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%div_3,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_3, %log_1), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%eq, %full_default, %mul_1), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%isnan, %full_default_1, %where), kwargs = {}) # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div_tensor,), kwargs = {}) # %sum_5 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_5,), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%div_tensor, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_3, %sub_3), kwargs = {}) # %sub_4 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%where_1, %mul), kwargs = {}) # %sum_6 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%sub_4,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sum_6, 16), kwargs = {}) # %div_5 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_2, 4), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_5, 1.0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sum_3, %mul_3), kwargs = {}) triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3 = async_compile.triton('triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {5: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 6), equal_to_1=(5,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 16, 'num_reduction': 2, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = (rindex // 64) r4 = rindex % 64 tmp0 = tl.load(in_ptr0 + (r3), None) tmp1 = tl.load(in_ptr0 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (r3), None) tmp17 = tl.load(in_ptr1 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp19 = tl.load(in_ptr1 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp22 = tl.load(in_ptr1 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp25 = tl.load(in_ptr1 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp36 = tl.load(in_ptr2 + (r3), None) tmp37 = tl.load(in_ptr2 + (r0 + (64*r2)), None, eviction_policy='evict_last') tmp38 = tl.load(in_ptr2 + (16 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp40 = tl.load(in_ptr2 + (32 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp42 = tl.load(in_ptr2 + (48 + r0 + (64*r2)), None, eviction_policy='evict_last') tmp53 = tl.load(in_ptr3 + (r4), None, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tmp18 = tmp17 * tmp17 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = libdevice.sqrt(tmp27) tmp29 = triton_helpers.maximum(tmp28, tmp13) tmp30 = tmp16 / tmp29 tmp31 = tmp15 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp39 = tmp37 + tmp38 tmp41 = tmp39 + tmp40 tmp43 = tmp41 + tmp42 tmp44 = tmp36 / tmp43 tmp45 = libdevice.isnan(tmp44).to(tl.int1) tmp46 = 0.0 tmp47 = tmp44 == tmp46 tmp48 = tl_math.log(tmp44) tmp49 = tmp44 * tmp48 tmp50 = tl.where(tmp47, tmp46, tmp49) tmp51 = float("nan") tmp52 = tl.where(tmp45, tmp51, tmp50) tmp54 = tmp44 * tmp53 tmp55 = tmp52 - tmp54 tmp56 = tl.broadcast_to(tmp55, [RBLOCK]) tmp58 = triton_helpers.promote_to_tensor(tl.sum(tmp56, 0)) tmp59 = 16.0 tmp60 = tmp58 * tmp59 tmp61 = 0.25 tmp62 = tmp60 * tmp61 tmp63 = 1.0 tmp64 = tmp62 * tmp63 tmp65 = tmp35 + tmp64 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp65, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [p_t], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(arg3_1, buf2, 256, grid=grid(256), stream=stream0) del arg3_1 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(arg2_1, buf4, 64, grid=grid(64), stream=stream0) del arg2_1 buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [p_s_th], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_2.run(buf4, buf5, 64, grid=grid(64), stream=stream0) del buf4 buf1 = empty_strided_cuda((), (), torch.float32) buf7 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [inputs_embed, targets_embed, loss_kde, p_t, kl_div, p_s_th, mul, loss_th, mul_1, loss], Original ATen: [aten.div, aten.mse_loss, aten._softmax, aten.xlogy, aten._log_softmax, aten.mul, aten.sub, aten.sum, aten.add] triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3.run(buf7, arg0_1, arg1_1, buf2, buf5, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del buf2 del buf5 return (buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class KDTH(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super(KDTH, self).__init__() self.T = T def forward(self, y_s, y_t): y_s_th = y_s[1] y_s = y_s[0] p_t = F.softmax(y_t / self.T, dim=1) p_s_th = F.log_softmax(y_s_th / self.T, dim=1) loss_th = F.kl_div(p_s_th, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss_th class KDE(nn.Module): """KD on embeddings - KDE""" def __init__(self): super(KDE, self).__init__() def forward(self, embedding_s, embedding_t): inputs_embed = F.normalize(embedding_s, p=2.0, dim=1) targets_embed = F.normalize(embedding_t, p=2.0, dim=1) loss_kde = nn.MSELoss(reduction='sum')(inputs_embed, targets_embed) return loss_kde class KDETH(nn.Module): """Combination of KDE and TH""" def __init__(self, T=4, th_weight=1.0): super(KDETH, self).__init__() self.kde = KDE() self.kdth = KDTH(T=T) self.th_weight = th_weight def forward(self, y_s, y_t, embedding_s, embedding_t): loss_kde = self.kde(embedding_s, embedding_t) loss_kdth = self.kdth(y_s, y_t) loss = loss_kde + self.th_weight * loss_kdth return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp3 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tmp17 = tl_math.exp(tmp16) tl.store(out_ptr0 + x3, tmp17, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_ptr0 + (64 + x3), xmask) tmp3 = tl.load(in_ptr0 + (64 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr0 + (68 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (72 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (76 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp1 tmp6 = tmp5 * tmp1 tmp7 = triton_helpers.maximum(tmp4, tmp6) tmp9 = tmp8 * tmp1 tmp10 = triton_helpers.maximum(tmp7, tmp9) tmp12 = tmp11 * tmp1 tmp13 = triton_helpers.maximum(tmp10, tmp12) tmp14 = tmp2 - tmp13 tmp15 = 0.25 tmp16 = tmp14 * tmp15 tl.store(out_ptr0 + x3, tmp16, xmask) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (4 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (8 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (12 + x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + x3, tmp13, xmask) @triton.jit def triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3( in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r3 = rindex r0 = rindex % 16 r2 = rindex // 64 r4 = rindex % 64 tmp0 = tl.load(in_ptr0 + r3, None) tmp1 = tl.load(in_ptr0 + (r0 + 64 * r2), None, eviction_policy='evict_last' ) tmp3 = tl.load(in_ptr0 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp16 = tl.load(in_ptr1 + r3, None) tmp17 = tl.load(in_ptr1 + (r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp19 = tl.load(in_ptr1 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp22 = tl.load(in_ptr1 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp25 = tl.load(in_ptr1 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp36 = tl.load(in_ptr2 + r3, None) tmp37 = tl.load(in_ptr2 + (r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp38 = tl.load(in_ptr2 + (16 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp40 = tl.load(in_ptr2 + (32 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp42 = tl.load(in_ptr2 + (48 + r0 + 64 * r2), None, eviction_policy= 'evict_last') tmp53 = tl.load(in_ptr3 + r4, None, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tmp18 = tmp17 * tmp17 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = libdevice.sqrt(tmp27) tmp29 = triton_helpers.maximum(tmp28, tmp13) tmp30 = tmp16 / tmp29 tmp31 = tmp15 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp39 = tmp37 + tmp38 tmp41 = tmp39 + tmp40 tmp43 = tmp41 + tmp42 tmp44 = tmp36 / tmp43 tmp45 = libdevice.isnan(tmp44).to(tl.int1) tmp46 = 0.0 tmp47 = tmp44 == tmp46 tmp48 = tl_math.log(tmp44) tmp49 = tmp44 * tmp48 tmp50 = tl.where(tmp47, tmp46, tmp49) tmp51 = float('nan') tmp52 = tl.where(tmp45, tmp51, tmp50) tmp54 = tmp44 * tmp53 tmp55 = tmp52 - tmp54 tmp56 = tl.broadcast_to(tmp55, [RBLOCK]) tmp58 = triton_helpers.promote_to_tensor(tl.sum(tmp56, 0)) tmp59 = 16.0 tmp60 = tmp58 * tmp59 tmp61 = 0.25 tmp62 = tmp60 * tmp61 tmp63 = 1.0 tmp64 = tmp62 * tmp63 tmp65 = tmp35 + tmp64 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp65, None) def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(256)](arg3_1, buf2, 256, XBLOCK= 128, num_warps=4, num_stages=1) del arg3_1 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_1[grid(64)](arg2_1, buf4, 64, XBLOCK=64, num_warps =1, num_stages=1) del arg2_1 buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__log_softmax_2[grid(64)](buf4, buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf4 buf1 = empty_strided_cuda((), (), torch.float32) buf7 = buf1 del buf1 triton_per_fused__log_softmax__softmax_add_div_mse_loss_mul_sub_sum_xlogy_3[ grid(1)](buf7, arg0_1, arg1_1, buf2, buf5, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del buf2 del buf5 return buf7, class KDTH(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super(KDTH, self).__init__() self.T = T def forward(self, y_s, y_t): y_s_th = y_s[1] y_s = y_s[0] p_t = F.softmax(y_t / self.T, dim=1) p_s_th = F.log_softmax(y_s_th / self.T, dim=1) loss_th = F.kl_div(p_s_th, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss_th class KDE(nn.Module): """KD on embeddings - KDE""" def __init__(self): super(KDE, self).__init__() def forward(self, embedding_s, embedding_t): inputs_embed = F.normalize(embedding_s, p=2.0, dim=1) targets_embed = F.normalize(embedding_t, p=2.0, dim=1) loss_kde = nn.MSELoss(reduction='sum')(inputs_embed, targets_embed) return loss_kde class KDETHNew(nn.Module): """Combination of KDE and TH""" def __init__(self, T=4, th_weight=1.0): super(KDETHNew, self).__init__() self.kde = KDE() self.kdth = KDTH(T=T) self.th_weight = th_weight def forward(self, input_0, input_1, input_2, input_3): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 output = call([arg0_1, arg1_1, arg2_1, arg3_1]) return output[0]
Alibaba-MIIL/HeadSharingKD
KDETH
false
7,696
[ "BSD-2-Clause" ]
15
8e2738bf069c7d12ec933f9b9107f267f7b6603a
https://github.com/Alibaba-MIIL/HeadSharingKD/tree/8e2738bf069c7d12ec933f9b9107f267f7b6603a
import torch from torch import nn import torch.nn.functional as F class KDTH(nn.Module): """KD with a Teacher Head auxiliary loss""" def __init__(self, T=4): super().__init__() self.T = T def forward(self, y_s, y_t): y_s_th = y_s[1] y_s = y_s[0] p_t = F.softmax(y_t / self.T, dim=1) p_s_th = F.log_softmax(y_s_th / self.T, dim=1) loss_th = F.kl_div(p_s_th, p_t, size_average=False ) * self.T ** 2 / y_s.shape[0] return loss_th class KDE(nn.Module): """KD on embeddings - KDE""" def __init__(self): super().__init__() def forward(self, embedding_s, embedding_t): inputs_embed = F.normalize(embedding_s, p=2.0, dim=1) targets_embed = F.normalize(embedding_t, p=2.0, dim=1) loss_kde = nn.MSELoss(reduction='sum')(inputs_embed, targets_embed) return loss_kde class Model(nn.Module): """Combination of KDE and TH""" def __init__(self, T=4, th_weight=1.0): super().__init__() self.kde = KDE() self.kdth = KDTH(T=T) self.th_weight = th_weight def forward(self, y_s, y_t, embedding_s, embedding_t): loss_kde = self.kde(embedding_s, embedding_t) loss_kdth = self.kdth(y_s, y_t) loss = loss_kde + self.th_weight * loss_kdth return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Unet_2levels
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/nd/cndrb2by2g3ednlxsjtytxjhjdm7bdlrgvzzodhsxvxnpml2di7p.py # Topologically Sorted Source Nodes: [conv2d, h11], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # h11 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 4096) % 64 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/j5/cj5x5g7tjylagvbz6h2m6hegls2cywtutdigiphpfjlvmthy7vno.py # Topologically Sorted Source Nodes: [max_pool2d], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # max_pool2d => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = (xindex // 32) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (64 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (65 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x2), tmp6, None) tl.store(out_ptr1 + (x2), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/mq/cmqnowjbbf5yp2iyzub5ti5akz7gubhdcdz3f3t4k5g6bq4zaena.py # Topologically Sorted Source Nodes: [conv2d_2, h21], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_2 => convolution_2 # h21 => relu_2 # Graph fragment: # %convolution_2 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_6, %primals_7, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_2,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[524288], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 524288 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 1024) % 128 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xg/cxgxyrr7zxtmrl73lwrbllbtpffknungebvyukyxpc7hgqxdqyx4.py # Topologically Sorted Source Nodes: [max_pool2d_1], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # max_pool2d_1 => getitem_2, getitem_3 # Graph fragment: # %getitem_2 : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 0), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_3 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[131072], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 131072 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (32 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (33 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x2), tmp6, None) tl.store(out_ptr1 + (x2), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ps/cpsdpd7dgmheuwvvars2afkaeohbae3kf6rwqw3ktrayw3bmt6ys.py # Topologically Sorted Source Nodes: [conv2d_4, h31], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_4 => convolution_4 # h31 => relu_4 # Graph fragment: # %convolution_4 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem_2, %primals_10, %primals_11, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_4 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_4,), kwargs = {}) triton_poi_fused_convolution_relu_4 = async_compile.triton('triton_poi_fused_convolution_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 256) % 256 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/w4/cw47sasqzb3z47x7gzegsqyo7nh2ti3gmlhiugqckuip2ghxpg7f.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu_3, %convolution_6], 1), kwargs = {}) triton_poi_fused_cat_5 = async_compile.triton('triton_poi_fused_cat_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_5', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_5(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 1024) % 256 x0 = xindex % 1024 x2 = (xindex // 262144) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 128, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (1024*x1) + (131072*x2)), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 256, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + (x0 + (1024*((-128) + x1)) + (131072*x2)), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + ((-128) + x1), tmp6, eviction_policy='evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + (x3), tmp14, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/uz/cuz26map2s2pvwzrzxdshauada6cls6a4hyefr7smx5ihhvx7w65.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu_1, %convolution_9], 1), kwargs = {}) triton_poi_fused_cat_6 = async_compile.triton('triton_poi_fused_cat_6', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2097152], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_6', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_6(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2097152 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 4096) % 128 x0 = xindex % 4096 x2 = (xindex // 524288) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 64, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (4096*x1) + (262144*x2)), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 128, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + (x0 + (4096*((-64) + x1)) + (262144*x2)), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + ((-64) + x1), tmp6, eviction_policy='evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + (x3), tmp14, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/co/ccog3dpzb3x6hkrtou5ltnbbnvlb45acdrwuqbsdmo77nrv43iei.py # Topologically Sorted Source Nodes: [conv2d_10, sigmoid], Original ATen: [aten.convolution, aten.sigmoid] # Source node to ATen node mapping: # conv2d_10 => convolution_12 # sigmoid => sigmoid # Graph fragment: # %convolution_12 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu_9, %primals_26, %primals_27, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%convolution_12,), kwargs = {}) triton_poi_fused_convolution_sigmoid_7 = async_compile.triton('triton_poi_fused_convolution_sigmoid_7', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_sigmoid_7', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_sigmoid_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16384 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), None) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tl.store(in_out_ptr0 + (x0), tmp4, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27 = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128, ), (1, )) assert_size_stride(primals_8, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_9, (128, ), (1, )) assert_size_stride(primals_10, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (256, ), (1, )) assert_size_stride(primals_12, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_13, (256, ), (1, )) assert_size_stride(primals_14, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_15, (128, ), (1, )) assert_size_stride(primals_16, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_17, (128, ), (1, )) assert_size_stride(primals_18, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_19, (128, ), (1, )) assert_size_stride(primals_20, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_21, (64, ), (1, )) assert_size_stride(primals_22, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_23, (64, ), (1, )) assert_size_stride(primals_24, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_25, (64, ), (1, )) assert_size_stride(primals_26, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_27, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv2d, h11], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf1, primals_2, 1048576, grid=grid(1048576), stream=stream0) del primals_2 # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [conv2d_1, h12], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf3, primals_5, 1048576, grid=grid(1048576), stream=stream0) del primals_5 buf4 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf5 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf3, buf4, buf5, 262144, grid=grid(262144), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_2], Original ATen: [aten.convolution] buf6 = extern_kernels.convolution(buf4, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf6, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf7 = buf6; del buf6 # reuse # Topologically Sorted Source Nodes: [conv2d_2, h21], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf7, primals_7, 524288, grid=grid(524288), stream=stream0) del primals_7 # Topologically Sorted Source Nodes: [conv2d_3], Original ATen: [aten.convolution] buf8 = extern_kernels.convolution(buf7, primals_8, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf8, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf9 = buf8; del buf8 # reuse # Topologically Sorted Source Nodes: [conv2d_3, h22], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf9, primals_9, 524288, grid=grid(524288), stream=stream0) del primals_9 buf10 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf11 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d_1], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf9, buf10, buf11, 131072, grid=grid(131072), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_4], Original ATen: [aten.convolution] buf12 = extern_kernels.convolution(buf10, primals_10, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 256, 16, 16), (65536, 256, 16, 1)) buf13 = buf12; del buf12 # reuse # Topologically Sorted Source Nodes: [conv2d_4, h31], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf13, primals_11, 262144, grid=grid(262144), stream=stream0) del primals_11 # Topologically Sorted Source Nodes: [conv2d_5], Original ATen: [aten.convolution] buf14 = extern_kernels.convolution(buf13, primals_12, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf14, (4, 256, 16, 16), (65536, 256, 16, 1)) buf15 = buf14; del buf14 # reuse # Topologically Sorted Source Nodes: [conv2d_5, h32], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf15, primals_13, 262144, grid=grid(262144), stream=stream0) del primals_13 # Topologically Sorted Source Nodes: [conv_transpose2d], Original ATen: [aten.convolution] buf16 = extern_kernels.convolution(buf15, primals_14, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf16, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf17 = empty_strided_cuda((4, 256, 32, 32), (262144, 1024, 32, 1), torch.float32) # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] triton_poi_fused_cat_5.run(buf9, buf16, primals_15, buf17, 1048576, grid=grid(1048576), stream=stream0) del buf16 del primals_15 # Topologically Sorted Source Nodes: [conv2d_6], Original ATen: [aten.convolution] buf18 = extern_kernels.convolution(buf17, primals_16, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf18, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf19 = buf18; del buf18 # reuse # Topologically Sorted Source Nodes: [conv2d_6, h41], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf19, primals_17, 524288, grid=grid(524288), stream=stream0) del primals_17 # Topologically Sorted Source Nodes: [conv2d_7], Original ATen: [aten.convolution] buf20 = extern_kernels.convolution(buf19, primals_18, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf20, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf21 = buf20; del buf20 # reuse # Topologically Sorted Source Nodes: [conv2d_7, h42], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf21, primals_19, 524288, grid=grid(524288), stream=stream0) del primals_19 # Topologically Sorted Source Nodes: [conv_transpose2d_1], Original ATen: [aten.convolution] buf22 = extern_kernels.convolution(buf21, primals_20, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf22, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf23 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_6.run(buf3, buf22, primals_21, buf23, 2097152, grid=grid(2097152), stream=stream0) del buf22 del primals_21 # Topologically Sorted Source Nodes: [conv2d_8], Original ATen: [aten.convolution] buf24 = extern_kernels.convolution(buf23, primals_22, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf24, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf25 = buf24; del buf24 # reuse # Topologically Sorted Source Nodes: [conv2d_8, h51], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf25, primals_23, 1048576, grid=grid(1048576), stream=stream0) del primals_23 # Topologically Sorted Source Nodes: [conv2d_9], Original ATen: [aten.convolution] buf26 = extern_kernels.convolution(buf25, primals_24, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf27 = buf26; del buf26 # reuse # Topologically Sorted Source Nodes: [conv2d_9, h52], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf27, primals_25, 1048576, grid=grid(1048576), stream=stream0) del primals_25 # Topologically Sorted Source Nodes: [conv2d_10], Original ATen: [aten.convolution] buf28 = extern_kernels.convolution(buf27, primals_26, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf28, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf29 = buf28; del buf28 # reuse # Topologically Sorted Source Nodes: [conv2d_10, sigmoid], Original ATen: [aten.convolution, aten.sigmoid] triton_poi_fused_convolution_sigmoid_7.run(buf29, primals_27, 16384, grid=grid(16384), stream=stream0) del primals_27 return (buf29, primals_1, primals_3, primals_4, primals_6, primals_8, primals_10, primals_12, primals_14, primals_16, primals_18, primals_20, primals_22, primals_24, primals_26, buf1, buf3, buf4, buf5, buf7, buf9, buf10, buf11, buf13, buf15, buf17, buf19, buf21, buf23, buf25, buf27, buf29, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 1, 3, 3), (9, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 1, 64, 64), (4096, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((128, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((256, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((256, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_14 = rand_strided((256, 128, 2, 2), (512, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_15 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_16 = rand_strided((128, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_17 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_18 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_19 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_20 = rand_strided((128, 64, 2, 2), (256, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_21 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_22 = rand_strided((64, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_23 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_24 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_25 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_26 = rand_strided((1, 64, 1, 1), (64, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_27 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Unet_2levels(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, x): h11 = self.relu(self.l11(x)) h12 = self.relu(self.l12(h11)) h21 = self.relu(self.l21(self.maxpool(h12))) h22 = self.relu(self.l22(h21)) h31 = self.relu(self.l31(self.maxpool(h22))) h32 = self.relu(self.l32(h31)) h41 = self.relu(self.l41(torch.cat([h22, self.up1(h32)], dim=1))) h42 = self.relu(self.l42(h41)) h51 = self.relu(self.l51(torch.cat([h12, self.up2(h42)], dim=1))) h52 = self.relu(self.l52(h51)) return self.sigmoid(self.l53(h52)) def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 4096 % 64 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = xindex // 32 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 128 * x1), None, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 128 * x1), None, eviction_policy ='evict_last') tmp3 = tl.load(in_ptr0 + (64 + 2 * x0 + 128 * x1), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (65 + 2 * x0 + 128 * x1), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x2, tmp6, None) tl.store(out_ptr1 + x2, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 1024 % 128 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 64 * x1), None, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 64 * x1), None, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (32 + 2 * x0 + 64 * x1), None, eviction_policy ='evict_last') tmp5 = tl.load(in_ptr0 + (33 + 2 * x0 + 64 * x1), None, eviction_policy ='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x2, tmp6, None) tl.store(out_ptr1 + x2, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 256 % 256 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_cat_5(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 1024 % 256 x0 = xindex % 1024 x2 = xindex // 262144 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 128, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 1024 * x1 + 131072 * x2), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 256, tl.int64) tmp9 = tl.load(in_ptr1 + (x0 + 1024 * (-128 + x1) + 131072 * x2), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + (-128 + x1), tmp6, eviction_policy= 'evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + x3, tmp14, None) @triton.jit def triton_poi_fused_cat_6(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 4096 % 128 x0 = xindex % 4096 x2 = xindex // 524288 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 64, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 4096 * x1 + 262144 * x2), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 128, tl.int64) tmp9 = tl.load(in_ptr1 + (x0 + 4096 * (-64 + x1) + 262144 * x2), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + (-64 + x1), tmp6, eviction_policy= 'evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + x3, tmp14, None) @triton.jit def triton_poi_fused_convolution_sigmoid_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, None) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tl.store(in_out_ptr0 + x0, tmp4, None) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27) = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128,), (1,)) assert_size_stride(primals_8, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_9, (128,), (1,)) assert_size_stride(primals_10, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (256,), (1,)) assert_size_stride(primals_12, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_13, (256,), (1,)) assert_size_stride(primals_14, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_15, (128,), (1,)) assert_size_stride(primals_16, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_17, (128,), (1,)) assert_size_stride(primals_18, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_19, (128,), (1,)) assert_size_stride(primals_20, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_21, (64,), (1,)) assert_size_stride(primals_22, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_23, (64,), (1,)) assert_size_stride(primals_24, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_25, (64,), (1,)) assert_size_stride(primals_26, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_27, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(1048576)](buf1, primals_2, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_2 buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_0[grid(1048576)](buf3, primals_5, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf5 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_1[grid(262144)](buf3, buf4, buf5, 262144, XBLOCK=512, num_warps=8, num_stages=1) buf6 = extern_kernels.convolution(buf4, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf6, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf7 = buf6 del buf6 triton_poi_fused_convolution_relu_2[grid(524288)](buf7, primals_7, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_7 buf8 = extern_kernels.convolution(buf7, primals_8, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf8, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf9 = buf8 del buf8 triton_poi_fused_convolution_relu_2[grid(524288)](buf9, primals_9, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_9 buf10 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf11 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_3[grid(131072)](buf9, buf10, buf11, 131072, XBLOCK=512, num_warps=8, num_stages=1) buf12 = extern_kernels.convolution(buf10, primals_10, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 256, 16, 16), (65536, 256, 16, 1)) buf13 = buf12 del buf12 triton_poi_fused_convolution_relu_4[grid(262144)](buf13, primals_11, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_11 buf14 = extern_kernels.convolution(buf13, primals_12, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf14, (4, 256, 16, 16), (65536, 256, 16, 1)) buf15 = buf14 del buf14 triton_poi_fused_convolution_relu_4[grid(262144)](buf15, primals_13, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_13 buf16 = extern_kernels.convolution(buf15, primals_14, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf16, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf17 = empty_strided_cuda((4, 256, 32, 32), (262144, 1024, 32, 1), torch.float32) triton_poi_fused_cat_5[grid(1048576)](buf9, buf16, primals_15, buf17, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del buf16 del primals_15 buf18 = extern_kernels.convolution(buf17, primals_16, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf18, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf19 = buf18 del buf18 triton_poi_fused_convolution_relu_2[grid(524288)](buf19, primals_17, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_17 buf20 = extern_kernels.convolution(buf19, primals_18, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf20, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf21 = buf20 del buf20 triton_poi_fused_convolution_relu_2[grid(524288)](buf21, primals_19, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_19 buf22 = extern_kernels.convolution(buf21, primals_20, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf22, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf23 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) triton_poi_fused_cat_6[grid(2097152)](buf3, buf22, primals_21, buf23, 2097152, XBLOCK=1024, num_warps=4, num_stages=1) del buf22 del primals_21 buf24 = extern_kernels.convolution(buf23, primals_22, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf24, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf25 = buf24 del buf24 triton_poi_fused_convolution_relu_0[grid(1048576)](buf25, primals_23, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_23 buf26 = extern_kernels.convolution(buf25, primals_24, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf27 = buf26 del buf26 triton_poi_fused_convolution_relu_0[grid(1048576)](buf27, primals_25, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_25 buf28 = extern_kernels.convolution(buf27, primals_26, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf28, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf29 = buf28 del buf28 triton_poi_fused_convolution_sigmoid_7[grid(16384)](buf29, primals_27, 16384, XBLOCK=256, num_warps=4, num_stages=1) del primals_27 return (buf29, primals_1, primals_3, primals_4, primals_6, primals_8, primals_10, primals_12, primals_14, primals_16, primals_18, primals_20, primals_22, primals_24, primals_26, buf1, buf3, buf4, buf5, buf7, buf9, buf10, buf11, buf13, buf15, buf17, buf19, buf21, buf23, buf25, buf27, buf29) class Unet_2levelsNew(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, input_0): primals_1 = self.l11.weight primals_2 = self.l11.bias primals_4 = self.l12.weight primals_5 = self.l12.bias primals_6 = self.l21.weight primals_7 = self.l21.bias primals_8 = self.l22.weight primals_9 = self.l22.bias primals_10 = self.l31.weight primals_11 = self.l31.bias primals_12 = self.l32.weight primals_13 = self.l32.bias primals_16 = self.l41.weight primals_15 = self.l41.bias primals_18 = self.l42.weight primals_17 = self.l42.bias primals_22 = self.l51.weight primals_21 = self.l51.bias primals_24 = self.l52.weight primals_23 = self.l52.bias primals_26 = self.l53.weight primals_27 = self.l53.bias primals_14 = self.up1.weight primals_19 = self.up1.bias primals_20 = self.up2.weight primals_25 = self.up2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27]) return output[0]
AbdulMuqadim2001/dvae-refiner
Unet_2levels
false
7,697
[ "MIT" ]
27
c1ff46f91b28e613a3b7b157f8fd97ddf43e6fb2
https://github.com/AbdulMuqadim2001/dvae-refiner/tree/c1ff46f91b28e613a3b7b157f8fd97ddf43e6fb2
import torch import torch.nn as nn class Model(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, x): h11 = self.relu(self.l11(x)) h12 = self.relu(self.l12(h11)) h21 = self.relu(self.l21(self.maxpool(h12))) h22 = self.relu(self.l22(h21)) h31 = self.relu(self.l31(self.maxpool(h22))) h32 = self.relu(self.l32(h31)) h41 = self.relu(self.l41(torch.cat([h22, self.up1(h32)], dim=1))) h42 = self.relu(self.l42(h41)) h51 = self.relu(self.l51(torch.cat([h12, self.up2(h42)], dim=1))) h52 = self.relu(self.l52(h51)) return self.sigmoid(self.l53(h52)) def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return []
SavageLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/oy/coyry72e37fo5qzvxxm2qboyyft3aiozv7pslgdjb26nimyyxqa3.py # Topologically Sorted Source Nodes: [exp, add, pow_1, truediv], Original ATen: [aten.exp, aten.add, aten.pow, aten.reciprocal, aten.mul] # Source node to ATen node mapping: # add => add # exp => exp # pow_1 => pow_1 # truediv => mul, reciprocal # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%arg0_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%exp, 1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 2), kwargs = {}) # %reciprocal : [num_users=1] = call_function[target=torch.ops.aten.reciprocal.default](args = (%pow_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%reciprocal, 1), kwargs = {}) triton_poi_fused_add_exp_mul_pow_reciprocal_0 = async_compile.triton('triton_poi_fused_add_exp_mul_pow_reciprocal_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_exp_mul_pow_reciprocal_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_exp_mul_pow_reciprocal_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl_math.exp(tmp0) tmp2 = 1.0 tmp3 = tmp1 + tmp2 tmp4 = tmp3 * tmp3 tmp5 = tl.full([1], 1, tl.int32) tmp6 = tmp5 / tmp4 tmp7 = tmp6 * tmp2 tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [exp, add, pow_1, truediv], Original ATen: [aten.exp, aten.add, aten.pow, aten.reciprocal, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_add_exp_mul_pow_reciprocal_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class SavageLoss(nn.Module): def __init__(self): super().__init__() def forward(self, output): return 1 / (1 + output.exp()) ** 2 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_exp_mul_pow_reciprocal_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl_math.exp(tmp0) tmp2 = 1.0 tmp3 = tmp1 + tmp2 tmp4 = tmp3 * tmp3 tmp5 = tl.full([1], 1, tl.int32) tmp6 = tmp5 / tmp4 tmp7 = tmp6 * tmp2 tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_exp_mul_pow_reciprocal_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class SavageLossNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
SavageLoss
false
7,698
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() def forward(self, output): return 1 / (1 + output.exp()) ** 2 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
UniformNoiseGenerator
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/wc/cwc5ci3x64sywutc7imfem4lyme6vua6kqapyj2w55wbh2kjcctq.py # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] # Source node to ATen node mapping: # add => add # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%rand, 1.0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 0.0), kwargs = {}) triton_poi_fused_add_mul_0 = async_compile.triton('triton_poi_fused_add_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_0(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 0.0 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [rand_like], Original ATen: [aten.rand_like] buf0 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch.float32, device=device(type='cuda', index=0), pin_memory=False) buf1 = buf0 del buf0 buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_0.run(buf2, 256, grid=grid(256), stream=stream0) return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class UniformNoiseGenerator(AdversarialNoiseGenerator): def __init__(self, min=0.0, max=1.0): super().__init__() self.min = min self.max = max def forward(self, x): return (self.max - self.min) * torch.rand_like(x) + self.min def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch import device import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride @triton.jit def triton_poi_fused_add_mul_0(in_out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = 0.0 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch. float32, device=device(type='cuda', index=0), pin_memory=False) buf1 = buf0 del buf0 buf2 = buf1 del buf1 get_raw_stream(0) triton_poi_fused_add_mul_0[grid(256)](buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf2, class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class UniformNoiseGeneratorNew(AdversarialNoiseGenerator): def __init__(self, min=0.0, max=1.0): super().__init__() self.min = min self.max = max def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
UniformNoiseGenerator
false
7,699
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.distributions import torch.utils.data class AdversarialNoiseGenerator(torch.nn.Module): def __init__(self): super().__init__() return def forward(self, x): raise NotImplementedError() class Model(AdversarialNoiseGenerator): def __init__(self, min=0.0, max=1.0): super().__init__() self.min = min self.max = max def forward(self, x): return (self.max - self.min) * torch.rand_like(x) + self.min def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Dunet_2levels
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/nd/cndrb2by2g3ednlxsjtytxjhjdm7bdlrgvzzodhsxvxnpml2di7p.py # Topologically Sorted Source Nodes: [conv2d, h11], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # h11 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 4096) % 64 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/j5/cj5x5g7tjylagvbz6h2m6hegls2cywtutdigiphpfjlvmthy7vno.py # Topologically Sorted Source Nodes: [max_pool2d], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # max_pool2d => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = (xindex // 32) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (64 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (65 + (2*x0) + (128*x1)), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x2), tmp6, None) tl.store(out_ptr1 + (x2), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/mq/cmqnowjbbf5yp2iyzub5ti5akz7gubhdcdz3f3t4k5g6bq4zaena.py # Topologically Sorted Source Nodes: [conv2d_2, h21], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_2 => convolution_2 # h21 => relu_2 # Graph fragment: # %convolution_2 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_6, %primals_7, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_2,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[524288], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 524288 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 1024) % 128 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xg/cxgxyrr7zxtmrl73lwrbllbtpffknungebvyukyxpc7hgqxdqyx4.py # Topologically Sorted Source Nodes: [max_pool2d_1], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # max_pool2d_1 => getitem_2, getitem_3 # Graph fragment: # %getitem_2 : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 0), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_3 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[131072], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 131072 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (32 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (33 + (2*x0) + (64*x1)), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x2), tmp6, None) tl.store(out_ptr1 + (x2), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ps/cpsdpd7dgmheuwvvars2afkaeohbae3kf6rwqw3ktrayw3bmt6ys.py # Topologically Sorted Source Nodes: [conv2d_4, h31], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_4 => convolution_4 # h31 => relu_4 # Graph fragment: # %convolution_4 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem_2, %primals_10, %primals_11, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_4 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_4,), kwargs = {}) triton_poi_fused_convolution_relu_4 = async_compile.triton('triton_poi_fused_convolution_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = (xindex // 256) % 256 tmp0 = tl.load(in_out_ptr0 + (x3), None) tmp1 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/w4/cw47sasqzb3z47x7gzegsqyo7nh2ti3gmlhiugqckuip2ghxpg7f.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu_3, %convolution_6], 1), kwargs = {}) triton_poi_fused_cat_5 = async_compile.triton('triton_poi_fused_cat_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_5', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_5(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 1024) % 256 x0 = xindex % 1024 x2 = (xindex // 262144) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 128, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (1024*x1) + (131072*x2)), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 256, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + (x0 + (1024*((-128) + x1)) + (131072*x2)), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + ((-128) + x1), tmp6, eviction_policy='evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + (x3), tmp14, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/uz/cuz26map2s2pvwzrzxdshauada6cls6a4hyefr7smx5ihhvx7w65.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu_1, %convolution_9], 1), kwargs = {}) triton_poi_fused_cat_6 = async_compile.triton('triton_poi_fused_cat_6', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2097152], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_6', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_6(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2097152 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 4096) % 128 x0 = xindex % 4096 x2 = (xindex // 524288) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 64, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (4096*x1) + (262144*x2)), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 128, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + (x0 + (4096*((-64) + x1)) + (262144*x2)), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + ((-64) + x1), tmp6, eviction_policy='evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + (x3), tmp14, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/co/ccog3dpzb3x6hkrtou5ltnbbnvlb45acdrwuqbsdmo77nrv43iei.py # Topologically Sorted Source Nodes: [conv2d_10, seg], Original ATen: [aten.convolution, aten.sigmoid] # Source node to ATen node mapping: # conv2d_10 => convolution_12 # seg => sigmoid # Graph fragment: # %convolution_12 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu_9, %primals_26, %primals_27, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %sigmoid : [num_users=2] = call_function[target=torch.ops.aten.sigmoid.default](args = (%convolution_12,), kwargs = {}) triton_poi_fused_convolution_sigmoid_7 = async_compile.triton('triton_poi_fused_convolution_sigmoid_7', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_sigmoid_7', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_sigmoid_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16384 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), None) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tl.store(in_out_ptr0 + (x0), tmp4, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27, primals_28, primals_29, primals_30, primals_31, primals_32, primals_33, primals_34, primals_35, primals_36, primals_37, primals_38, primals_39, primals_40, primals_41, primals_42, primals_43, primals_44, primals_45, primals_46, primals_47, primals_48, primals_49, primals_50, primals_51, primals_52, primals_53 = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128, ), (1, )) assert_size_stride(primals_8, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_9, (128, ), (1, )) assert_size_stride(primals_10, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (256, ), (1, )) assert_size_stride(primals_12, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_13, (256, ), (1, )) assert_size_stride(primals_14, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_15, (128, ), (1, )) assert_size_stride(primals_16, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_17, (128, ), (1, )) assert_size_stride(primals_18, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_19, (128, ), (1, )) assert_size_stride(primals_20, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_21, (64, ), (1, )) assert_size_stride(primals_22, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_23, (64, ), (1, )) assert_size_stride(primals_24, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_25, (64, ), (1, )) assert_size_stride(primals_26, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_27, (1, ), (1, )) assert_size_stride(primals_28, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_29, (64, ), (1, )) assert_size_stride(primals_30, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_31, (64, ), (1, )) assert_size_stride(primals_32, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_33, (128, ), (1, )) assert_size_stride(primals_34, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_35, (128, ), (1, )) assert_size_stride(primals_36, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_37, (256, ), (1, )) assert_size_stride(primals_38, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_39, (256, ), (1, )) assert_size_stride(primals_40, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_41, (128, ), (1, )) assert_size_stride(primals_42, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_43, (128, ), (1, )) assert_size_stride(primals_44, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_45, (128, ), (1, )) assert_size_stride(primals_46, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_47, (64, ), (1, )) assert_size_stride(primals_48, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_49, (64, ), (1, )) assert_size_stride(primals_50, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_51, (64, ), (1, )) assert_size_stride(primals_52, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_53, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv2d, h11], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf1, primals_2, 1048576, grid=grid(1048576), stream=stream0) del primals_2 # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [conv2d_1, h12], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf3, primals_5, 1048576, grid=grid(1048576), stream=stream0) del primals_5 buf4 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf5 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf3, buf4, buf5, 262144, grid=grid(262144), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_2], Original ATen: [aten.convolution] buf6 = extern_kernels.convolution(buf4, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf6, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf7 = buf6; del buf6 # reuse # Topologically Sorted Source Nodes: [conv2d_2, h21], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf7, primals_7, 524288, grid=grid(524288), stream=stream0) del primals_7 # Topologically Sorted Source Nodes: [conv2d_3], Original ATen: [aten.convolution] buf8 = extern_kernels.convolution(buf7, primals_8, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf8, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf9 = buf8; del buf8 # reuse # Topologically Sorted Source Nodes: [conv2d_3, h22], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf9, primals_9, 524288, grid=grid(524288), stream=stream0) del primals_9 buf10 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf11 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d_1], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf9, buf10, buf11, 131072, grid=grid(131072), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_4], Original ATen: [aten.convolution] buf12 = extern_kernels.convolution(buf10, primals_10, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 256, 16, 16), (65536, 256, 16, 1)) buf13 = buf12; del buf12 # reuse # Topologically Sorted Source Nodes: [conv2d_4, h31], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf13, primals_11, 262144, grid=grid(262144), stream=stream0) del primals_11 # Topologically Sorted Source Nodes: [conv2d_5], Original ATen: [aten.convolution] buf14 = extern_kernels.convolution(buf13, primals_12, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf14, (4, 256, 16, 16), (65536, 256, 16, 1)) buf15 = buf14; del buf14 # reuse # Topologically Sorted Source Nodes: [conv2d_5, h32], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf15, primals_13, 262144, grid=grid(262144), stream=stream0) del primals_13 # Topologically Sorted Source Nodes: [conv_transpose2d], Original ATen: [aten.convolution] buf16 = extern_kernels.convolution(buf15, primals_14, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf16, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf17 = empty_strided_cuda((4, 256, 32, 32), (262144, 1024, 32, 1), torch.float32) # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] triton_poi_fused_cat_5.run(buf9, buf16, primals_15, buf17, 1048576, grid=grid(1048576), stream=stream0) del buf16 del primals_15 # Topologically Sorted Source Nodes: [conv2d_6], Original ATen: [aten.convolution] buf18 = extern_kernels.convolution(buf17, primals_16, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf18, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf19 = buf18; del buf18 # reuse # Topologically Sorted Source Nodes: [conv2d_6, h41], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf19, primals_17, 524288, grid=grid(524288), stream=stream0) del primals_17 # Topologically Sorted Source Nodes: [conv2d_7], Original ATen: [aten.convolution] buf20 = extern_kernels.convolution(buf19, primals_18, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf20, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf21 = buf20; del buf20 # reuse # Topologically Sorted Source Nodes: [conv2d_7, h42], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf21, primals_19, 524288, grid=grid(524288), stream=stream0) del primals_19 # Topologically Sorted Source Nodes: [conv_transpose2d_1], Original ATen: [aten.convolution] buf22 = extern_kernels.convolution(buf21, primals_20, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf22, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf23 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_6.run(buf3, buf22, primals_21, buf23, 2097152, grid=grid(2097152), stream=stream0) del primals_21 # Topologically Sorted Source Nodes: [conv2d_8], Original ATen: [aten.convolution] buf24 = extern_kernels.convolution(buf23, primals_22, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf24, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf25 = buf24; del buf24 # reuse # Topologically Sorted Source Nodes: [conv2d_8, h51], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf25, primals_23, 1048576, grid=grid(1048576), stream=stream0) del primals_23 # Topologically Sorted Source Nodes: [conv2d_9], Original ATen: [aten.convolution] buf26 = extern_kernels.convolution(buf25, primals_24, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf27 = buf26; del buf26 # reuse # Topologically Sorted Source Nodes: [conv2d_9, h52], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf27, primals_25, 1048576, grid=grid(1048576), stream=stream0) del primals_25 # Topologically Sorted Source Nodes: [conv2d_10], Original ATen: [aten.convolution] buf28 = extern_kernels.convolution(buf27, primals_26, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf28, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf29 = buf28; del buf28 # reuse # Topologically Sorted Source Nodes: [conv2d_10, seg], Original ATen: [aten.convolution, aten.sigmoid] triton_poi_fused_convolution_sigmoid_7.run(buf29, primals_27, 16384, grid=grid(16384), stream=stream0) del primals_27 # Topologically Sorted Source Nodes: [conv2d_11], Original ATen: [aten.convolution] buf30 = extern_kernels.convolution(buf29, primals_28, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf30, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf31 = buf30; del buf30 # reuse # Topologically Sorted Source Nodes: [conv2d_11, h11_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf31, primals_29, 1048576, grid=grid(1048576), stream=stream0) del primals_29 # Topologically Sorted Source Nodes: [conv2d_12], Original ATen: [aten.convolution] buf32 = extern_kernels.convolution(buf31, primals_30, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf32, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf33 = buf32; del buf32 # reuse # Topologically Sorted Source Nodes: [conv2d_12, h12_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf33, primals_31, 1048576, grid=grid(1048576), stream=stream0) del primals_31 buf34 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf35 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d_2], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf33, buf34, buf35, 262144, grid=grid(262144), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_13], Original ATen: [aten.convolution] buf36 = extern_kernels.convolution(buf34, primals_32, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf36, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf37 = buf36; del buf36 # reuse # Topologically Sorted Source Nodes: [conv2d_13, h21_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf37, primals_33, 524288, grid=grid(524288), stream=stream0) del primals_33 # Topologically Sorted Source Nodes: [conv2d_14], Original ATen: [aten.convolution] buf38 = extern_kernels.convolution(buf37, primals_34, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf38, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf39 = buf38; del buf38 # reuse # Topologically Sorted Source Nodes: [conv2d_14, h22_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf39, primals_35, 524288, grid=grid(524288), stream=stream0) del primals_35 buf40 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf41 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) # Topologically Sorted Source Nodes: [max_pool2d_3], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf39, buf40, buf41, 131072, grid=grid(131072), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_15], Original ATen: [aten.convolution] buf42 = extern_kernels.convolution(buf40, primals_36, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf42, (4, 256, 16, 16), (65536, 256, 16, 1)) buf43 = buf42; del buf42 # reuse # Topologically Sorted Source Nodes: [conv2d_15, h31_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf43, primals_37, 262144, grid=grid(262144), stream=stream0) del primals_37 # Topologically Sorted Source Nodes: [conv2d_16], Original ATen: [aten.convolution] buf44 = extern_kernels.convolution(buf43, primals_38, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf44, (4, 256, 16, 16), (65536, 256, 16, 1)) buf45 = buf44; del buf44 # reuse # Topologically Sorted Source Nodes: [conv2d_16, h32_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf45, primals_39, 262144, grid=grid(262144), stream=stream0) del primals_39 # Topologically Sorted Source Nodes: [conv_transpose2d_2], Original ATen: [aten.convolution] buf46 = extern_kernels.convolution(buf45, primals_40, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf46, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf47 = reinterpret_tensor(buf22, (4, 256, 32, 32), (262144, 1024, 32, 1), 0); del buf22 # reuse # Topologically Sorted Source Nodes: [cat_2], Original ATen: [aten.cat] triton_poi_fused_cat_5.run(buf39, buf46, primals_41, buf47, 1048576, grid=grid(1048576), stream=stream0) del buf46 del primals_41 # Topologically Sorted Source Nodes: [conv2d_17], Original ATen: [aten.convolution] buf48 = extern_kernels.convolution(buf47, primals_42, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf48, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf49 = buf48; del buf48 # reuse # Topologically Sorted Source Nodes: [conv2d_17, h41_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf49, primals_43, 524288, grid=grid(524288), stream=stream0) del primals_43 # Topologically Sorted Source Nodes: [conv2d_18], Original ATen: [aten.convolution] buf50 = extern_kernels.convolution(buf49, primals_44, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf50, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf51 = buf50; del buf50 # reuse # Topologically Sorted Source Nodes: [conv2d_18, h42_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf51, primals_45, 524288, grid=grid(524288), stream=stream0) del primals_45 # Topologically Sorted Source Nodes: [conv_transpose2d_3], Original ATen: [aten.convolution] buf52 = extern_kernels.convolution(buf51, primals_46, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf52, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf53 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_3], Original ATen: [aten.cat] triton_poi_fused_cat_6.run(buf33, buf52, primals_47, buf53, 2097152, grid=grid(2097152), stream=stream0) del buf52 del primals_47 # Topologically Sorted Source Nodes: [conv2d_19], Original ATen: [aten.convolution] buf54 = extern_kernels.convolution(buf53, primals_48, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf54, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf55 = buf54; del buf54 # reuse # Topologically Sorted Source Nodes: [conv2d_19, h51_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf55, primals_49, 1048576, grid=grid(1048576), stream=stream0) del primals_49 # Topologically Sorted Source Nodes: [conv2d_20], Original ATen: [aten.convolution] buf56 = extern_kernels.convolution(buf55, primals_50, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf56, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf57 = buf56; del buf56 # reuse # Topologically Sorted Source Nodes: [conv2d_20, h52_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_0.run(buf57, primals_51, 1048576, grid=grid(1048576), stream=stream0) del primals_51 # Topologically Sorted Source Nodes: [conv2d_21], Original ATen: [aten.convolution] buf58 = extern_kernels.convolution(buf57, primals_52, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf58, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf59 = buf58; del buf58 # reuse # Topologically Sorted Source Nodes: [conv2d_21, sigmoid_1], Original ATen: [aten.convolution, aten.sigmoid] triton_poi_fused_convolution_sigmoid_7.run(buf59, primals_53, 16384, grid=grid(16384), stream=stream0) del primals_53 return (buf29, buf59, primals_1, primals_3, primals_4, primals_6, primals_8, primals_10, primals_12, primals_14, primals_16, primals_18, primals_20, primals_22, primals_24, primals_26, primals_28, primals_30, primals_32, primals_34, primals_36, primals_38, primals_40, primals_42, primals_44, primals_46, primals_48, primals_50, primals_52, buf1, buf3, buf4, buf5, buf7, buf9, buf10, buf11, buf13, buf15, buf17, buf19, buf21, buf23, buf25, buf27, buf29, buf31, buf33, buf34, buf35, buf37, buf39, buf40, buf41, buf43, buf45, buf47, buf49, buf51, buf53, buf55, buf57, buf59, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 1, 3, 3), (9, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 1, 64, 64), (4096, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((128, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((256, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((256, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_14 = rand_strided((256, 128, 2, 2), (512, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_15 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_16 = rand_strided((128, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_17 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_18 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_19 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_20 = rand_strided((128, 64, 2, 2), (256, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_21 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_22 = rand_strided((64, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_23 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_24 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_25 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_26 = rand_strided((1, 64, 1, 1), (64, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_27 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_28 = rand_strided((64, 1, 3, 3), (9, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_29 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_30 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_31 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_32 = rand_strided((128, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_33 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_34 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_35 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_36 = rand_strided((256, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_37 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_38 = rand_strided((256, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_39 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_40 = rand_strided((256, 128, 2, 2), (512, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_41 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_42 = rand_strided((128, 256, 3, 3), (2304, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_43 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_44 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_45 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_46 = rand_strided((128, 64, 2, 2), (256, 4, 2, 1), device='cuda:0', dtype=torch.float32) primals_47 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_48 = rand_strided((64, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_49 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_50 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_51 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_52 = rand_strided((1, 64, 1, 1), (64, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_53 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27, primals_28, primals_29, primals_30, primals_31, primals_32, primals_33, primals_34, primals_35, primals_36, primals_37, primals_38, primals_39, primals_40, primals_41, primals_42, primals_43, primals_44, primals_45, primals_46, primals_47, primals_48, primals_49, primals_50, primals_51, primals_52, primals_53]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Unet_2levels(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, x): h11 = self.relu(self.l11(x)) h12 = self.relu(self.l12(h11)) h21 = self.relu(self.l21(self.maxpool(h12))) h22 = self.relu(self.l22(h21)) h31 = self.relu(self.l31(self.maxpool(h22))) h32 = self.relu(self.l32(h31)) h41 = self.relu(self.l41(torch.cat([h22, self.up1(h32)], dim=1))) h42 = self.relu(self.l42(h41)) h51 = self.relu(self.l51(torch.cat([h12, self.up2(h42)], dim=1))) h52 = self.relu(self.l52(h51)) return self.sigmoid(self.l53(h52)) class Dunet_2levels(nn.Module): def __init__(self): super().__init__() self.segmentator = Unet_2levels() self.refiner = Unet_2levels() def segment(self, x): return self.segmentator(x) def refine(self, x): return self.refiner(x) def forward(self, x): seg = self.segment(x) return seg, self.refine(seg) def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 4096 % 64 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = xindex // 32 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 128 * x1), None, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 128 * x1), None, eviction_policy ='evict_last') tmp3 = tl.load(in_ptr0 + (64 + 2 * x0 + 128 * x1), None, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (65 + 2 * x0 + 128 * x1), None, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x2, tmp6, None) tl.store(out_ptr1 + x2, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 1024 % 128 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 64 * x1), None, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 64 * x1), None, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (32 + 2 * x0 + 64 * x1), None, eviction_policy ='evict_last') tmp5 = tl.load(in_ptr0 + (33 + 2 * x0 + 64 * x1), None, eviction_policy ='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x2, tmp6, None) tl.store(out_ptr1 + x2, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x3 = xindex x1 = xindex // 256 % 256 tmp0 = tl.load(in_out_ptr0 + x3, None) tmp1 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, None) @triton.jit def triton_poi_fused_cat_5(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 1024 % 256 x0 = xindex % 1024 x2 = xindex // 262144 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 128, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 1024 * x1 + 131072 * x2), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 256, tl.int64) tmp9 = tl.load(in_ptr1 + (x0 + 1024 * (-128 + x1) + 131072 * x2), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + (-128 + x1), tmp6, eviction_policy= 'evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + x3, tmp14, None) @triton.jit def triton_poi_fused_cat_6(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 4096 % 128 x0 = xindex % 4096 x2 = xindex // 524288 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 64, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 4096 * x1 + 262144 * x2), tmp4, other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 128, tl.int64) tmp9 = tl.load(in_ptr1 + (x0 + 4096 * (-64 + x1) + 262144 * x2), tmp6, other=0.0) tmp10 = tl.load(in_ptr2 + (-64 + x1), tmp6, eviction_policy= 'evict_last', other=0.0) tmp11 = tmp9 + tmp10 tmp12 = tl.full(tmp11.shape, 0.0, tmp11.dtype) tmp13 = tl.where(tmp6, tmp11, tmp12) tmp14 = tl.where(tmp4, tmp5, tmp13) tl.store(out_ptr0 + x3, tmp14, None) @triton.jit def triton_poi_fused_convolution_sigmoid_7(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, None) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tl.store(in_out_ptr0 + x0, tmp4, None) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27, primals_28, primals_29, primals_30, primals_31, primals_32, primals_33, primals_34, primals_35, primals_36, primals_37, primals_38, primals_39, primals_40, primals_41, primals_42, primals_43, primals_44, primals_45, primals_46, primals_47, primals_48, primals_49, primals_50, primals_51, primals_52, primals_53 ) = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (128,), (1,)) assert_size_stride(primals_8, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_9, (128,), (1,)) assert_size_stride(primals_10, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_11, (256,), (1,)) assert_size_stride(primals_12, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_13, (256,), (1,)) assert_size_stride(primals_14, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_15, (128,), (1,)) assert_size_stride(primals_16, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_17, (128,), (1,)) assert_size_stride(primals_18, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_19, (128,), (1,)) assert_size_stride(primals_20, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_21, (64,), (1,)) assert_size_stride(primals_22, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_23, (64,), (1,)) assert_size_stride(primals_24, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_25, (64,), (1,)) assert_size_stride(primals_26, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_27, (1,), (1,)) assert_size_stride(primals_28, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_29, (64,), (1,)) assert_size_stride(primals_30, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_31, (64,), (1,)) assert_size_stride(primals_32, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_33, (128,), (1,)) assert_size_stride(primals_34, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_35, (128,), (1,)) assert_size_stride(primals_36, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_37, (256,), (1,)) assert_size_stride(primals_38, (256, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_39, (256,), (1,)) assert_size_stride(primals_40, (256, 128, 2, 2), (512, 4, 2, 1)) assert_size_stride(primals_41, (128,), (1,)) assert_size_stride(primals_42, (128, 256, 3, 3), (2304, 9, 3, 1)) assert_size_stride(primals_43, (128,), (1,)) assert_size_stride(primals_44, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_45, (128,), (1,)) assert_size_stride(primals_46, (128, 64, 2, 2), (256, 4, 2, 1)) assert_size_stride(primals_47, (64,), (1,)) assert_size_stride(primals_48, (64, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_49, (64,), (1,)) assert_size_stride(primals_50, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_51, (64,), (1,)) assert_size_stride(primals_52, (1, 64, 1, 1), (64, 1, 1, 1)) assert_size_stride(primals_53, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(1048576)](buf1, primals_2, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_2 buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_0[grid(1048576)](buf3, primals_5, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf5 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_1[grid(262144)](buf3, buf4, buf5, 262144, XBLOCK=512, num_warps=8, num_stages=1) buf6 = extern_kernels.convolution(buf4, primals_6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf6, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf7 = buf6 del buf6 triton_poi_fused_convolution_relu_2[grid(524288)](buf7, primals_7, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_7 buf8 = extern_kernels.convolution(buf7, primals_8, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf8, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf9 = buf8 del buf8 triton_poi_fused_convolution_relu_2[grid(524288)](buf9, primals_9, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_9 buf10 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf11 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_3[grid(131072)](buf9, buf10, buf11, 131072, XBLOCK=512, num_warps=8, num_stages=1) buf12 = extern_kernels.convolution(buf10, primals_10, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf12, (4, 256, 16, 16), (65536, 256, 16, 1)) buf13 = buf12 del buf12 triton_poi_fused_convolution_relu_4[grid(262144)](buf13, primals_11, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_11 buf14 = extern_kernels.convolution(buf13, primals_12, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf14, (4, 256, 16, 16), (65536, 256, 16, 1)) buf15 = buf14 del buf14 triton_poi_fused_convolution_relu_4[grid(262144)](buf15, primals_13, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_13 buf16 = extern_kernels.convolution(buf15, primals_14, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf16, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf17 = empty_strided_cuda((4, 256, 32, 32), (262144, 1024, 32, 1), torch.float32) triton_poi_fused_cat_5[grid(1048576)](buf9, buf16, primals_15, buf17, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del buf16 del primals_15 buf18 = extern_kernels.convolution(buf17, primals_16, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf18, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf19 = buf18 del buf18 triton_poi_fused_convolution_relu_2[grid(524288)](buf19, primals_17, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_17 buf20 = extern_kernels.convolution(buf19, primals_18, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf20, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf21 = buf20 del buf20 triton_poi_fused_convolution_relu_2[grid(524288)](buf21, primals_19, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_19 buf22 = extern_kernels.convolution(buf21, primals_20, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf22, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf23 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) triton_poi_fused_cat_6[grid(2097152)](buf3, buf22, primals_21, buf23, 2097152, XBLOCK=1024, num_warps=4, num_stages=1) del primals_21 buf24 = extern_kernels.convolution(buf23, primals_22, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf24, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf25 = buf24 del buf24 triton_poi_fused_convolution_relu_0[grid(1048576)](buf25, primals_23, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_23 buf26 = extern_kernels.convolution(buf25, primals_24, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf26, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf27 = buf26 del buf26 triton_poi_fused_convolution_relu_0[grid(1048576)](buf27, primals_25, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_25 buf28 = extern_kernels.convolution(buf27, primals_26, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf28, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf29 = buf28 del buf28 triton_poi_fused_convolution_sigmoid_7[grid(16384)](buf29, primals_27, 16384, XBLOCK=256, num_warps=4, num_stages=1) del primals_27 buf30 = extern_kernels.convolution(buf29, primals_28, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf30, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf31 = buf30 del buf30 triton_poi_fused_convolution_relu_0[grid(1048576)](buf31, primals_29, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_29 buf32 = extern_kernels.convolution(buf31, primals_30, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf32, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf33 = buf32 del buf32 triton_poi_fused_convolution_relu_0[grid(1048576)](buf33, primals_31, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_31 buf34 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.float32) buf35 = empty_strided_cuda((4, 64, 32, 32), (65536, 1024, 32, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_1[grid(262144)](buf33, buf34, buf35, 262144, XBLOCK=512, num_warps=8, num_stages=1) buf36 = extern_kernels.convolution(buf34, primals_32, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf36, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf37 = buf36 del buf36 triton_poi_fused_convolution_relu_2[grid(524288)](buf37, primals_33, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_33 buf38 = extern_kernels.convolution(buf37, primals_34, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf38, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf39 = buf38 del buf38 triton_poi_fused_convolution_relu_2[grid(524288)](buf39, primals_35, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_35 buf40 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.float32) buf41 = empty_strided_cuda((4, 128, 16, 16), (32768, 256, 16, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_3[grid(131072)](buf39, buf40, buf41, 131072, XBLOCK=512, num_warps=8, num_stages=1) buf42 = extern_kernels.convolution(buf40, primals_36, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf42, (4, 256, 16, 16), (65536, 256, 16, 1)) buf43 = buf42 del buf42 triton_poi_fused_convolution_relu_4[grid(262144)](buf43, primals_37, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_37 buf44 = extern_kernels.convolution(buf43, primals_38, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf44, (4, 256, 16, 16), (65536, 256, 16, 1)) buf45 = buf44 del buf44 triton_poi_fused_convolution_relu_4[grid(262144)](buf45, primals_39, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_39 buf46 = extern_kernels.convolution(buf45, primals_40, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf46, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf47 = reinterpret_tensor(buf22, (4, 256, 32, 32), (262144, 1024, 32, 1), 0) del buf22 triton_poi_fused_cat_5[grid(1048576)](buf39, buf46, primals_41, buf47, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del buf46 del primals_41 buf48 = extern_kernels.convolution(buf47, primals_42, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf48, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf49 = buf48 del buf48 triton_poi_fused_convolution_relu_2[grid(524288)](buf49, primals_43, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_43 buf50 = extern_kernels.convolution(buf49, primals_44, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf50, (4, 128, 32, 32), (131072, 1024, 32, 1)) buf51 = buf50 del buf50 triton_poi_fused_convolution_relu_2[grid(524288)](buf51, primals_45, 524288, XBLOCK=1024, num_warps=4, num_stages=1) del primals_45 buf52 = extern_kernels.convolution(buf51, primals_46, stride=(2, 2), padding=(0, 0), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf52, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf53 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) triton_poi_fused_cat_6[grid(2097152)](buf33, buf52, primals_47, buf53, 2097152, XBLOCK=1024, num_warps=4, num_stages=1) del buf52 del primals_47 buf54 = extern_kernels.convolution(buf53, primals_48, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf54, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf55 = buf54 del buf54 triton_poi_fused_convolution_relu_0[grid(1048576)](buf55, primals_49, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_49 buf56 = extern_kernels.convolution(buf55, primals_50, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf56, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf57 = buf56 del buf56 triton_poi_fused_convolution_relu_0[grid(1048576)](buf57, primals_51, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_51 buf58 = extern_kernels.convolution(buf57, primals_52, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf58, (4, 1, 64, 64), (4096, 4096, 64, 1)) buf59 = buf58 del buf58 triton_poi_fused_convolution_sigmoid_7[grid(16384)](buf59, primals_53, 16384, XBLOCK=256, num_warps=4, num_stages=1) del primals_53 return (buf29, buf59, primals_1, primals_3, primals_4, primals_6, primals_8, primals_10, primals_12, primals_14, primals_16, primals_18, primals_20, primals_22, primals_24, primals_26, primals_28, primals_30, primals_32, primals_34, primals_36, primals_38, primals_40, primals_42, primals_44, primals_46, primals_48, primals_50, primals_52, buf1, buf3, buf4, buf5, buf7, buf9, buf10, buf11, buf13, buf15, buf17, buf19, buf21, buf23, buf25, buf27, buf29, buf31, buf33, buf34, buf35, buf37, buf39, buf40, buf41, buf43, buf45, buf47, buf49, buf51, buf53, buf55, buf57, buf59) class Unet_2levels(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, x): h11 = self.relu(self.l11(x)) h12 = self.relu(self.l12(h11)) h21 = self.relu(self.l21(self.maxpool(h12))) h22 = self.relu(self.l22(h21)) h31 = self.relu(self.l31(self.maxpool(h22))) h32 = self.relu(self.l32(h31)) h41 = self.relu(self.l41(torch.cat([h22, self.up1(h32)], dim=1))) h42 = self.relu(self.l42(h41)) h51 = self.relu(self.l51(torch.cat([h12, self.up2(h42)], dim=1))) h52 = self.relu(self.l52(h51)) return self.sigmoid(self.l53(h52)) class Dunet_2levelsNew(nn.Module): def __init__(self): super().__init__() self.segmentator = Unet_2levels() self.refiner = Unet_2levels() def segment(self, x): return self.segmentator(x) def refine(self, x): return self.refiner(x) def forward(self, input_0): primals_1 = self.segmentator.l11.weight primals_2 = self.segmentator.l11.bias primals_4 = self.segmentator.l12.weight primals_5 = self.segmentator.l12.bias primals_6 = self.segmentator.l21.weight primals_7 = self.segmentator.l21.bias primals_8 = self.segmentator.l22.weight primals_9 = self.segmentator.l22.bias primals_10 = self.segmentator.l31.weight primals_11 = self.segmentator.l31.bias primals_12 = self.segmentator.l32.weight primals_13 = self.segmentator.l32.bias primals_16 = self.segmentator.l41.weight primals_15 = self.segmentator.l41.bias primals_18 = self.segmentator.l42.weight primals_17 = self.segmentator.l42.bias primals_22 = self.segmentator.l51.weight primals_21 = self.segmentator.l51.bias primals_24 = self.segmentator.l52.weight primals_23 = self.segmentator.l52.bias primals_26 = self.segmentator.l53.weight primals_27 = self.segmentator.l53.bias primals_14 = self.segmentator.up1.weight primals_19 = self.segmentator.up1.bias primals_20 = self.segmentator.up2.weight primals_25 = self.segmentator.up2.bias primals_28 = self.refiner.l11.weight primals_29 = self.refiner.l11.bias primals_30 = self.refiner.l12.weight primals_31 = self.refiner.l12.bias primals_32 = self.refiner.l21.weight primals_33 = self.refiner.l21.bias primals_34 = self.refiner.l22.weight primals_35 = self.refiner.l22.bias primals_36 = self.refiner.l31.weight primals_37 = self.refiner.l31.bias primals_38 = self.refiner.l32.weight primals_39 = self.refiner.l32.bias primals_42 = self.refiner.l41.weight primals_41 = self.refiner.l41.bias primals_44 = self.refiner.l42.weight primals_43 = self.refiner.l42.bias primals_48 = self.refiner.l51.weight primals_47 = self.refiner.l51.bias primals_50 = self.refiner.l52.weight primals_49 = self.refiner.l52.bias primals_52 = self.refiner.l53.weight primals_53 = self.refiner.l53.bias primals_40 = self.refiner.up1.weight primals_45 = self.refiner.up1.bias primals_46 = self.refiner.up2.weight primals_51 = self.refiner.up2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17, primals_18, primals_19, primals_20, primals_21, primals_22, primals_23, primals_24, primals_25, primals_26, primals_27, primals_28, primals_29, primals_30, primals_31, primals_32, primals_33, primals_34, primals_35, primals_36, primals_37, primals_38, primals_39, primals_40, primals_41, primals_42, primals_43, primals_44, primals_45, primals_46, primals_47, primals_48, primals_49, primals_50, primals_51, primals_52, primals_53]) return output[0], output[1]
AbdulMuqadim2001/dvae-refiner
Dunet_2levels
false
7,700
[ "MIT" ]
27
c1ff46f91b28e613a3b7b157f8fd97ddf43e6fb2
https://github.com/AbdulMuqadim2001/dvae-refiner/tree/c1ff46f91b28e613a3b7b157f8fd97ddf43e6fb2
import torch import torch.nn as nn class Unet_2levels(nn.Module): def __init__(self): super().__init__() self.relu = nn.ReLU() self.sigmoid = nn.Sigmoid() self.upsample = nn.Upsample(scale_factor=2, mode='bilinear', align_corners=True) self.maxpool = nn.MaxPool2d(kernel_size=2, stride=2, padding=0) self.l11 = nn.Conv2d(1, 64, 3, padding=1) self.l12 = nn.Conv2d(64, 64, 3, padding=1) self.l21 = nn.Conv2d(64, 128, 3, padding=1) self.l22 = nn.Conv2d(128, 128, 3, padding=1) self.l31 = nn.Conv2d(128, 256, 3, padding=1) self.l32 = nn.Conv2d(256, 256, 3, padding=1) self.l41 = nn.Conv2d(256, 128, 3, padding=1) self.l42 = nn.Conv2d(128, 128, 3, padding=1) self.l51 = nn.Conv2d(128, 64, 3, padding=1) self.l52 = nn.Conv2d(64, 64, 3, padding=1) self.l53 = nn.Conv2d(64, 1, 1, padding=0) self.up1 = nn.ConvTranspose2d(256, 128, 2, 2, padding=0, output_padding=0) self.up2 = nn.ConvTranspose2d(128, 64, 2, 2, padding=0, output_padding=0) def forward(self, x): h11 = self.relu(self.l11(x)) h12 = self.relu(self.l12(h11)) h21 = self.relu(self.l21(self.maxpool(h12))) h22 = self.relu(self.l22(h21)) h31 = self.relu(self.l31(self.maxpool(h22))) h32 = self.relu(self.l32(h31)) h41 = self.relu(self.l41(torch.cat([h22, self.up1(h32)], dim=1))) h42 = self.relu(self.l42(h41)) h51 = self.relu(self.l51(torch.cat([h12, self.up2(h42)], dim=1))) h52 = self.relu(self.l52(h51)) return self.sigmoid(self.l53(h52)) class Model(nn.Module): def __init__(self): super().__init__() self.segmentator = Unet_2levels() self.refiner = Unet_2levels() def segment(self, x): return self.segmentator(x) def refine(self, x): return self.refiner(x) def forward(self, x): seg = self.segment(x) return seg, self.refine(seg) def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return []
GlobalAttention
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/wz/cwzlgmghy6nxuchbiog4puo46i4tq7yhd3qu6ftkgjf3gwib6hxn.py # Topologically Sorted Source Nodes: [align_vectors], Original ATen: [aten._softmax] # Source node to ATen node mapping: # align_vectors => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%view, [1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%view, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/yh/cyhf6bhaqimi2pucos5fnrpvhrt4vuaetbxnooyr5pvgjt7s6fgo.py # Topologically Sorted Source Nodes: [align_vectors], Original ATen: [aten._softmax] # Source node to ATen node mapping: # align_vectors => div, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) triton_poi_fused__softmax_1 = async_compile.triton('triton_poi_fused__softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ph/cph7lssg6ok5pn3rbmbprurourgd72q6n57v7b4qu2gqs3wcxbt7.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%bmm_1, %primals_1], 2), kwargs = {}) triton_poi_fused_cat_2 = async_compile.triton('triton_poi_fused_cat_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/5n/c5nzoru25qhqsfq2ae2hsnhwroe2und6kjr6h7td35tqeg7qekch.py # Topologically Sorted Source Nodes: [attn_h_2], Original ATen: [aten.clone] # Source node to ATen node mapping: # attn_h_2 => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_2,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_3 = async_compile.triton('triton_poi_fused_clone_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_3(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) % 4 x2 = (xindex // 16) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*x2) + (16*x1)), xmask) tmp1 = libdevice.tanh(tmp0) tl.store(out_ptr0 + (x3), tmp1, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/sx/csxt2z4nihjsbxcckhpeiwgke5usifqk6ao5saydggkozmd2prcm.py # Topologically Sorted Source Nodes: [align_vectors_2], Original ATen: [aten.clone] # Source node to ATen node mapping: # align_vectors_2 => clone_1 # Graph fragment: # %clone_1 : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_3,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_4 = async_compile.triton('triton_poi_fused_clone_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_4', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_4(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) % 4 x2 = (xindex // 16) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*x2) + (16*x1)), xmask) tl.store(out_ptr0 + (x3), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [align], Original ATen: [aten.bmm] extern_kernels.bmm(primals_1, reinterpret_tensor(primals_2, (4, 4, 4), (16, 1, 4), 0), out=buf0) buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [align_vectors], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(buf0, buf1, 64, grid=grid(64), stream=stream0) buf2 = reinterpret_tensor(buf0, (16, 4), (4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [align_vectors], Original ATen: [aten._softmax] triton_poi_fused__softmax_1.run(buf1, buf2, 64, grid=grid(64), stream=stream0) buf3 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [c], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf2, (4, 4, 4), (16, 4, 1), 0), primals_2, out=buf3) del primals_2 buf4 = empty_strided_cuda((4, 4, 8), (32, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] triton_poi_fused_cat_2.run(buf3, primals_1, buf4, 128, grid=grid(128), stream=stream0) del primals_1 buf5 = reinterpret_tensor(buf3, (16, 4), (4, 1), 0); del buf3 # reuse # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(buf4, (16, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), out=buf5) del primals_3 buf6 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [attn_h_2], Original ATen: [aten.clone] triton_poi_fused_clone_3.run(buf5, buf6, 64, grid=grid(64), stream=stream0) buf7 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [align_vectors_2], Original ATen: [aten.clone] triton_poi_fused_clone_4.run(buf2, buf7, 64, grid=grid(64), stream=stream0) del buf2 return (buf6, buf7, reinterpret_tensor(buf4, (16, 8), (8, 1), 0), buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.cuda def aeq(*args): """ Assert all arguments have the same value """ arguments = (arg for arg in args) first = next(arguments) assert all(arg == first for arg in arguments ), 'Not all arguments have the same value: ' + str(args) def sequence_mask(lengths, max_len=None): """ Creates a boolean mask from sequence lengths. """ batch_size = lengths.numel() max_len = max_len or lengths.max() return torch.arange(0, max_len).type_as(lengths).repeat(batch_size, 1).lt( lengths.unsqueeze(1)) class Bottle(nn.Module): def forward(self, input): if len(input.size()) <= 2: return super(Bottle, self).forward(input) size = input.size()[:2] out = super(Bottle, self).forward(input.view(size[0] * size[1], -1)) return out.contiguous().view(size[0], size[1], -1) class BottleLinear(Bottle, nn.Linear): pass class GlobalAttention(nn.Module): """ Global attention takes a matrix and a query vector. It then computes a parameterized convex combination of the matrix based on the input query. Constructs a unit mapping a query `q` of size `dim` and a source matrix `H` of size `n x dim`, to an output of size `dim`. .. mermaid:: graph BT A[Query] subgraph RNN C[H 1] D[H 2] E[H N] end F[Attn] G[Output] A --> F C --> F D --> F E --> F C -.-> G D -.-> G E -.-> G F --> G All models compute the output as :math:`c = \\sum_{j=1}^{SeqLength} a_j H_j` where :math:`a_j` is the softmax of a score function. Then then apply a projection layer to [q, c]. However they differ on how they compute the attention score. * Luong Attention (dot, general): * dot: :math:`score(H_j,q) = H_j^T q` * general: :math:`score(H_j, q) = H_j^T W_a q` * Bahdanau Attention (mlp): * :math:`score(H_j, q) = v_a^T tanh(W_a q + U_a h_j)` Args: dim (int): dimensionality of query and key coverage (bool): use coverage term attn_type (str): type of attention to use, options [dot,general,mlp] """ def __init__(self, dim, coverage=False, attn_type='dot'): super(GlobalAttention, self).__init__() self.dim = dim self.attn_type = attn_type assert self.attn_type in ['dot', 'general', 'mlp' ], 'Please select a valid attention type.' if self.attn_type == 'general': self.linear_in = nn.Linear(dim, dim, bias=False) elif self.attn_type == 'mlp': self.linear_context = BottleLinear(dim, dim, bias=False) self.linear_query = nn.Linear(dim, dim, bias=True) self.v = BottleLinear(dim, 1, bias=False) out_bias = self.attn_type == 'mlp' self.linear_out = nn.Linear(dim * 2, dim, bias=out_bias) self.sm = nn.Softmax() self.tanh = nn.Tanh() if coverage: self.linear_cover = nn.Linear(1, dim, bias=False) def score(self, h_t, h_s): """ Args: h_t (`FloatTensor`): sequence of queries `[batch x tgt_len x dim]` h_s (`FloatTensor`): sequence of sources `[batch x src_len x dim]` Returns: :obj:`FloatTensor`: raw attention scores (unnormalized) for each src index `[batch x tgt_len x src_len]` """ src_batch, src_len, src_dim = h_s.size() tgt_batch, tgt_len, tgt_dim = h_t.size() aeq(src_batch, tgt_batch) aeq(src_dim, tgt_dim) aeq(self.dim, src_dim) if self.attn_type in ['general', 'dot']: if self.attn_type == 'general': h_t_ = h_t.view(tgt_batch * tgt_len, tgt_dim) h_t_ = self.linear_in(h_t_) h_t = h_t_.view(tgt_batch, tgt_len, tgt_dim) h_s_ = h_s.transpose(1, 2) return torch.bmm(h_t, h_s_) else: dim = self.dim wq = self.linear_query(h_t.view(-1, dim)) wq = wq.view(tgt_batch, tgt_len, 1, dim) wq = wq.expand(tgt_batch, tgt_len, src_len, dim) uh = self.linear_context(h_s.contiguous().view(-1, dim)) uh = uh.view(src_batch, 1, src_len, dim) uh = uh.expand(src_batch, tgt_len, src_len, dim) wquh = self.tanh(wq + uh) return self.v(wquh.view(-1, dim)).view(tgt_batch, tgt_len, src_len) def forward(self, input, context, context_lengths=None, coverage=None): """ Args: input (`FloatTensor`): query vectors `[batch x tgt_len x dim]` context (`FloatTensor`): source vectors `[batch x src_len x dim]` context_lengths (`LongTensor`): the source context lengths `[batch]` coverage (`FloatTensor`): None (not supported yet) Returns: (`FloatTensor`, `FloatTensor`): * Computed vector `[tgt_len x batch x dim]` * Attention distribtutions for each query `[tgt_len x batch x src_len]` """ if input.dim() == 2: one_step = True input = input.unsqueeze(1) else: one_step = False batch, sourceL, dim = context.size() batch_, targetL, dim_ = input.size() aeq(batch, batch_) aeq(dim, dim_) aeq(self.dim, dim) if coverage is not None: batch_, sourceL_ = coverage.size() aeq(batch, batch_) aeq(sourceL, sourceL_) if coverage is not None: cover = coverage.view(-1).unsqueeze(1) context += self.linear_cover(cover).view_as(context) context = self.tanh(context) align = self.score(input, context) if context_lengths is not None: mask = sequence_mask(context_lengths) mask = mask.unsqueeze(1) align.data.masked_fill_(1 - mask, -float('inf')) align_vectors = self.sm(align.view(batch * targetL, sourceL)) align_vectors = align_vectors.view(batch, targetL, sourceL) c = torch.bmm(align_vectors, context) concat_c = torch.cat([c, input], 2).view(batch * targetL, dim * 2) attn_h = self.linear_out(concat_c).view(batch, targetL, dim) if self.attn_type in ['general', 'dot']: attn_h = self.tanh(attn_h) if one_step: attn_h = attn_h.squeeze(1) align_vectors = align_vectors.squeeze(1) batch_, dim_ = attn_h.size() aeq(batch, batch_) aeq(dim, dim_) batch_, sourceL_ = align_vectors.size() aeq(batch, batch_) aeq(sourceL, sourceL_) else: attn_h = attn_h.transpose(0, 1).contiguous() align_vectors = align_vectors.transpose(0, 1).contiguous() targetL_, batch_, dim_ = attn_h.size() aeq(targetL, targetL_) aeq(batch, batch_) aeq(dim, dim_) targetL_, batch_, sourceL_ = align_vectors.size() aeq(targetL, targetL_) aeq(batch, batch_) aeq(sourceL, sourceL_) return attn_h, align_vectors def get_inputs(): return [torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x2, tmp9, xmask) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_clone_3(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 % 4 x2 = xindex // 16 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * x2 + 16 * x1), xmask) tmp1 = libdevice.tanh(tmp0) tl.store(out_ptr0 + x3, tmp1, xmask) @triton.jit def triton_poi_fused_clone_4(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 % 4 x2 = xindex // 16 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * x2 + 16 * x1), xmask) tl.store(out_ptr0 + x3, tmp0, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(primals_1, reinterpret_tensor(primals_2, (4, 4, 4), (16, 1, 4), 0), out=buf0) buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(64)](buf0, buf1, 64, XBLOCK=64, num_warps=1, num_stages=1) buf2 = reinterpret_tensor(buf0, (16, 4), (4, 1), 0) del buf0 triton_poi_fused__softmax_1[grid(64)](buf1, buf2, 64, XBLOCK=64, num_warps=1, num_stages=1) buf3 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0) del buf1 extern_kernels.bmm(reinterpret_tensor(buf2, (4, 4, 4), (16, 4, 1), 0), primals_2, out=buf3) del primals_2 buf4 = empty_strided_cuda((4, 4, 8), (32, 8, 1), torch.float32) triton_poi_fused_cat_2[grid(128)](buf3, primals_1, buf4, 128, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf5 = reinterpret_tensor(buf3, (16, 4), (4, 1), 0) del buf3 extern_kernels.mm(reinterpret_tensor(buf4, (16, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), out=buf5) del primals_3 buf6 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_clone_3[grid(64)](buf5, buf6, 64, XBLOCK=64, num_warps=1, num_stages=1) buf7 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_clone_4[grid(64)](buf2, buf7, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf2 return buf6, buf7, reinterpret_tensor(buf4, (16, 8), (8, 1), 0), buf5 def aeq(*args): """ Assert all arguments have the same value """ arguments = (arg for arg in args) first = next(arguments) assert all(arg == first for arg in arguments ), 'Not all arguments have the same value: ' + str(args) def sequence_mask(lengths, max_len=None): """ Creates a boolean mask from sequence lengths. """ batch_size = lengths.numel() max_len = max_len or lengths.max() return torch.arange(0, max_len).type_as(lengths).repeat(batch_size, 1).lt( lengths.unsqueeze(1)) class Bottle(nn.Module): def forward(self, input): if len(input.size()) <= 2: return super(Bottle, self).forward(input) size = input.size()[:2] out = super(Bottle, self).forward(input.view(size[0] * size[1], -1)) return out.contiguous().view(size[0], size[1], -1) class BottleLinear(Bottle, nn.Linear): pass class GlobalAttentionNew(nn.Module): """ Global attention takes a matrix and a query vector. It then computes a parameterized convex combination of the matrix based on the input query. Constructs a unit mapping a query `q` of size `dim` and a source matrix `H` of size `n x dim`, to an output of size `dim`. .. mermaid:: graph BT A[Query] subgraph RNN C[H 1] D[H 2] E[H N] end F[Attn] G[Output] A --> F C --> F D --> F E --> F C -.-> G D -.-> G E -.-> G F --> G All models compute the output as :math:`c = \\sum_{j=1}^{SeqLength} a_j H_j` where :math:`a_j` is the softmax of a score function. Then then apply a projection layer to [q, c]. However they differ on how they compute the attention score. * Luong Attention (dot, general): * dot: :math:`score(H_j,q) = H_j^T q` * general: :math:`score(H_j, q) = H_j^T W_a q` * Bahdanau Attention (mlp): * :math:`score(H_j, q) = v_a^T tanh(W_a q + U_a h_j)` Args: dim (int): dimensionality of query and key coverage (bool): use coverage term attn_type (str): type of attention to use, options [dot,general,mlp] """ def __init__(self, dim, coverage=False, attn_type='dot'): super(GlobalAttentionNew, self).__init__() self.dim = dim self.attn_type = attn_type assert self.attn_type in ['dot', 'general', 'mlp' ], 'Please select a valid attention type.' if self.attn_type == 'general': self.linear_in = nn.Linear(dim, dim, bias=False) elif self.attn_type == 'mlp': self.linear_context = BottleLinear(dim, dim, bias=False) self.linear_query = nn.Linear(dim, dim, bias=True) self.v = BottleLinear(dim, 1, bias=False) out_bias = self.attn_type == 'mlp' self.linear_out = nn.Linear(dim * 2, dim, bias=out_bias) self.sm = nn.Softmax() self.tanh = nn.Tanh() if coverage: self.linear_cover = nn.Linear(1, dim, bias=False) def score(self, h_t, h_s): """ Args: h_t (`FloatTensor`): sequence of queries `[batch x tgt_len x dim]` h_s (`FloatTensor`): sequence of sources `[batch x src_len x dim]` Returns: :obj:`FloatTensor`: raw attention scores (unnormalized) for each src index `[batch x tgt_len x src_len]` """ src_batch, src_len, src_dim = h_s.size() tgt_batch, tgt_len, tgt_dim = h_t.size() aeq(src_batch, tgt_batch) aeq(src_dim, tgt_dim) aeq(self.dim, src_dim) if self.attn_type in ['general', 'dot']: if self.attn_type == 'general': h_t_ = h_t.view(tgt_batch * tgt_len, tgt_dim) h_t_ = self.linear_in(h_t_) h_t = h_t_.view(tgt_batch, tgt_len, tgt_dim) h_s_ = h_s.transpose(1, 2) return torch.bmm(h_t, h_s_) else: dim = self.dim wq = self.linear_query(h_t.view(-1, dim)) wq = wq.view(tgt_batch, tgt_len, 1, dim) wq = wq.expand(tgt_batch, tgt_len, src_len, dim) uh = self.linear_context(h_s.contiguous().view(-1, dim)) uh = uh.view(src_batch, 1, src_len, dim) uh = uh.expand(src_batch, tgt_len, src_len, dim) wquh = self.tanh(wq + uh) return self.v(wquh.view(-1, dim)).view(tgt_batch, tgt_len, src_len) def forward(self, input_0, input_1): primals_3 = self.linear_out.weight primals_1 = input_0 primals_2 = input_1 output = call([primals_1, primals_2, primals_3]) return output[0], output[1]
AndrewM1998/MultimodalNMT
GlobalAttention
false
7,701
[ "MIT" ]
40
b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
https://github.com/AndrewM1998/MultimodalNMT/tree/b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
import torch import torch.nn as nn import torch.cuda def aeq(*args): """ Assert all arguments have the same value """ arguments = (arg for arg in args) first = next(arguments) assert all(arg == first for arg in arguments ), 'Not all arguments have the same value: ' + str(args) def sequence_mask(lengths, max_len=None): """ Creates a boolean mask from sequence lengths. """ batch_size = lengths.numel() max_len = max_len or lengths.max() return torch.arange(0, max_len).type_as(lengths).repeat(batch_size, 1).lt( lengths.unsqueeze(1)) class Bottle(nn.Module): def forward(self, input): if len(input.size()) <= 2: return super(Bottle, self).forward(input) size = input.size()[:2] out = super(Bottle, self).forward(input.view(size[0] * size[1], -1)) return out.contiguous().view(size[0], size[1], -1) class BottleLinear(Bottle, nn.Linear): pass class Model(nn.Module): """ Global attention takes a matrix and a query vector. It then computes a parameterized convex combination of the matrix based on the input query. Constructs a unit mapping a query `q` of size `dim` and a source matrix `H` of size `n x dim`, to an output of size `dim`. .. mermaid:: graph BT A[Query] subgraph RNN C[H 1] D[H 2] E[H N] end F[Attn] G[Output] A --> F C --> F D --> F E --> F C -.-> G D -.-> G E -.-> G F --> G All models compute the output as :math:`c = \\sum_{j=1}^{SeqLength} a_j H_j` where :math:`a_j` is the softmax of a score function. Then then apply a projection layer to [q, c]. However they differ on how they compute the attention score. * Luong Attention (dot, general): * dot: :math:`score(H_j,q) = H_j^T q` * general: :math:`score(H_j, q) = H_j^T W_a q` * Bahdanau Attention (mlp): * :math:`score(H_j, q) = v_a^T tanh(W_a q + U_a h_j)` Args: dim (int): dimensionality of query and key coverage (bool): use coverage term attn_type (str): type of attention to use, options [dot,general,mlp] """ def __init__(self, dim, coverage=False, attn_type='dot'): super().__init__() self.dim = dim self.attn_type = attn_type assert self.attn_type in ['dot', 'general', 'mlp' ], 'Please select a valid attention type.' if self.attn_type == 'general': self.linear_in = nn.Linear(dim, dim, bias=False) elif self.attn_type == 'mlp': self.linear_context = BottleLinear(dim, dim, bias=False) self.linear_query = nn.Linear(dim, dim, bias=True) self.v = BottleLinear(dim, 1, bias=False) out_bias = self.attn_type == 'mlp' self.linear_out = nn.Linear(dim * 2, dim, bias=out_bias) self.sm = nn.Softmax() self.tanh = nn.Tanh() if coverage: self.linear_cover = nn.Linear(1, dim, bias=False) def score(self, h_t, h_s): """ Args: h_t (`FloatTensor`): sequence of queries `[batch x tgt_len x dim]` h_s (`FloatTensor`): sequence of sources `[batch x src_len x dim]` Returns: :obj:`FloatTensor`: raw attention scores (unnormalized) for each src index `[batch x tgt_len x src_len]` """ src_batch, src_len, src_dim = h_s.size() tgt_batch, tgt_len, tgt_dim = h_t.size() aeq(src_batch, tgt_batch) aeq(src_dim, tgt_dim) aeq(self.dim, src_dim) if self.attn_type in ['general', 'dot']: if self.attn_type == 'general': h_t_ = h_t.view(tgt_batch * tgt_len, tgt_dim) h_t_ = self.linear_in(h_t_) h_t = h_t_.view(tgt_batch, tgt_len, tgt_dim) h_s_ # ... truncated (>4000 chars) for memory efficiency
MLB
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/oq/coqicnew6ngnaiafczvabme6vwu6kzogfsx4kbo5l6b6cg5f3k7i.py # Topologically Sorted Source Nodes: [x0_1, x1_1, z], Original ATen: [aten.relu, aten.mul] # Source node to ATen node mapping: # x0_1 => relu # x1_1 => relu_1 # z => mul # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %relu_1 : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%view_3,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%relu, %relu_1), kwargs = {}) triton_poi_fused_mul_relu_0 = async_compile.triton('triton_poi_fused_mul_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_relu_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 1200 x1 = (xindex // 1200) tmp0 = tl.load(in_ptr0 + (x0 + (1216*x1)), xmask) tmp3 = tl.load(in_ptr1 + (x0 + (1216*x1)), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 * tmp4 tl.store(out_ptr0 + (x0 + (1216*x1)), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2f/c2fdjj4ffoa24qdrhmm2rlzpkphtxofjp54y47wnmyr3rx3f7mht.py # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # z_2 => relu_2 # Graph fragment: # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_5,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_2, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1200, 4), (4, 1)) assert_size_stride(primals_3, (1200, ), (1, )) assert_size_stride(primals_4, (1200, 4), (4, 1)) assert_size_stride(primals_5, (1200, ), (1, )) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) # Topologically Sorted Source Nodes: [x0], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 1200), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) # Topologically Sorted Source Nodes: [x1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (16, 4), (4, 1), 64), reinterpret_tensor(primals_4, (4, 1200), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4, 1200), (4864, 1216, 1), torch.float32) # Topologically Sorted Source Nodes: [x0_1, x1_1, z], Original ATen: [aten.relu, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_relu_0.run(buf0, buf1, buf2, 19200, grid=grid(19200), stream=stream0) buf3 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0), reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3) buf4 = reinterpret_tensor(buf3, (4, 4, 4), (16, 4, 1), 0); del buf3 # reuse buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf4, primals_7, buf5, 64, grid=grid(64), stream=stream0) del primals_7 return (buf4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), buf0, reinterpret_tensor(primals_1, (16, 4), (4, 1), 64), buf1, reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0), buf5, primals_6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1200, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1200, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((1200, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((1200, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 1200), (1200, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from torch.nn import functional as F class MLB(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(MLB, self).__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 * x1 if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) if self.dropout_pre_lin > 0: z = F.dropout(z, p=self.dropout_pre_lin, training=self.training) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_dims': [4, 4], 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_relu_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 1200 x1 = xindex // 1200 tmp0 = tl.load(in_ptr0 + (x0 + 1216 * x1), xmask) tmp3 = tl.load(in_ptr1 + (x0 + 1216 * x1), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 * tmp4 tl.store(out_ptr0 + (x0 + 1216 * x1), tmp5, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1200, 4), (4, 1)) assert_size_stride(primals_3, (1200,), (1,)) assert_size_stride(primals_4, (1200, 4), (4, 1)) assert_size_stride(primals_5, (1200,), (1,)) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 1200), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (16, 4), (4, 1), 64), reinterpret_tensor(primals_4, (4, 1200), (1, 4 ), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4, 1200), (4864, 1216, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_relu_0[grid(19200)](buf0, buf1, buf2, 19200, XBLOCK=128, num_warps=4, num_stages=1) buf3 = empty_strided_cuda((16, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0 ), reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3 ) buf4 = reinterpret_tensor(buf3, (4, 4, 4), (16, 4, 1), 0) del buf3 buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(64)](buf4, primals_7, buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_7 return buf4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0 ), buf0, reinterpret_tensor(primals_1, (16, 4), (4, 1), 64 ), buf1, reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0 ), buf5, primals_6 class MLBNew(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(MLBNew, self).__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, input_0): primals_2 = self.linear0.weight primals_3 = self.linear0.bias primals_4 = self.linear1.weight primals_5 = self.linear1.bias primals_6 = self.linear_out.weight primals_7 = self.linear_out.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AndresPMD/GCN_classification
MLB
false
7,702
[ "MIT" ]
39
b005c4256d68f1f90a7f73e7fdb3d066448de28c
https://github.com/AndresPMD/GCN_classification/tree/b005c4256d68f1f90a7f73e7fdb3d066448de28c
import torch from torch import nn from torch.nn import functional as F class Model(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super().__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 * x1 if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) if self.dropout_pre_lin > 0: z = F.dropout(z, p=self.dropout_pre_lin, training=self.training) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
EntityClassifier
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/s2/cs2yhv2fasr5vosqzjvuzmixontsq433wfyzz6it6qjns5pkay3s.py # Topologically Sorted Source Nodes: [mlp_input], Original ATen: [aten.cat] # Source node to ATen node mapping: # mlp_input => cat_2 # Graph fragment: # %cat_2 : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%cat, %cat_1, %abs_1, %mul], -1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 12, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2048 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = (xindex // 32) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 8, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.full([1], 4, tl.int64) tmp6 = tmp0 < tmp5 tmp7 = tmp6 & tmp4 tmp8 = tl.load(in_ptr0 + ((4*x1) + x0), tmp7, eviction_policy='evict_last', other=0.0) tmp9 = tmp0 >= tmp5 tmp10 = tmp9 & tmp4 tmp11 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp10, eviction_policy='evict_last', other=0.0) tmp12 = tl.where(tmp6, tmp8, tmp11) tmp13 = tl.full(tmp12.shape, 0.0, tmp12.dtype) tmp14 = tl.where(tmp4, tmp12, tmp13) tmp15 = tmp0 >= tmp3 tmp16 = tl.full([1], 16, tl.int64) tmp17 = tmp0 < tmp16 tmp18 = tmp15 & tmp17 tmp19 = (-8) + x0 tmp20 = tmp19 >= tmp1 tmp21 = tmp19 < tmp5 tmp22 = tmp21 & tmp18 tmp23 = tl.load(in_ptr2 + ((4*x1) + ((-8) + x0)), tmp22, eviction_policy='evict_last', other=0.0) tmp24 = tmp19 >= tmp5 tmp25 = tmp19 < tmp3 tmp26 = tmp24 & tmp18 tmp27 = tl.load(in_ptr3 + ((4*x1) + ((-4) + ((-8) + x0))), tmp26, eviction_policy='evict_last', other=0.0) tmp28 = tl.where(tmp21, tmp23, tmp27) tmp29 = tl.full(tmp28.shape, 0.0, tmp28.dtype) tmp30 = tl.where(tmp18, tmp28, tmp29) tmp31 = tmp0 >= tmp16 tmp32 = tl.full([1], 24, tl.int64) tmp33 = tmp0 < tmp32 tmp34 = tmp31 & tmp33 tmp35 = (-16) + x0 tmp36 = tmp35 >= tmp1 tmp37 = tmp35 < tmp5 tmp38 = tmp37 & tmp34 tmp39 = tl.load(in_ptr0 + ((4*x1) + ((-16) + x0)), tmp38, eviction_policy='evict_last', other=0.0) tmp40 = tmp35 >= tmp5 tmp41 = tmp35 < tmp3 tmp42 = tmp40 & tmp34 tmp43 = tl.load(in_ptr1 + ((4*x1) + ((-4) + ((-16) + x0))), tmp42, eviction_policy='evict_last', other=0.0) tmp44 = tl.where(tmp37, tmp39, tmp43) tmp45 = tl.load(in_ptr2 + ((4*x1) + ((-16) + x0)), tmp38, eviction_policy='evict_last', other=0.0) tmp46 = tl.load(in_ptr3 + ((4*x1) + ((-4) + ((-16) + x0))), tmp42, eviction_policy='evict_last', other=0.0) tmp47 = tl.where(tmp37, tmp45, tmp46) tmp48 = tmp44 - tmp47 tmp49 = tl_math.abs(tmp48) tmp50 = tl.full(tmp49.shape, 0.0, tmp49.dtype) tmp51 = tl.where(tmp34, tmp49, tmp50) tmp52 = tmp0 >= tmp32 tmp53 = tl.full([1], 32, tl.int64) tmp54 = tmp0 < tmp53 tmp55 = (-24) + x0 tmp56 = tmp55 >= tmp1 tmp57 = tmp55 < tmp5 tmp58 = tmp57 & tmp52 tmp59 = tl.load(in_ptr0 + ((4*x1) + ((-24) + x0)), tmp58, eviction_policy='evict_last', other=0.0) tmp60 = tmp55 >= tmp5 tmp61 = tmp55 < tmp3 tmp62 = tmp60 & tmp52 tmp63 = tl.load(in_ptr1 + ((4*x1) + ((-4) + ((-24) + x0))), tmp62, eviction_policy='evict_last', other=0.0) tmp64 = tl.where(tmp57, tmp59, tmp63) tmp65 = tl.load(in_ptr2 + ((4*x1) + ((-24) + x0)), tmp58, eviction_policy='evict_last', other=0.0) tmp66 = tl.load(in_ptr3 + ((4*x1) + ((-4) + ((-24) + x0))), tmp62, eviction_policy='evict_last', other=0.0) tmp67 = tl.where(tmp57, tmp65, tmp66) tmp68 = tmp64 * tmp67 tmp69 = tl.full(tmp68.shape, 0.0, tmp68.dtype) tmp70 = tl.where(tmp52, tmp68, tmp69) tmp71 = tl.where(tmp34, tmp51, tmp70) tmp72 = tl.where(tmp18, tmp30, tmp71) tmp73 = tl.where(tmp4, tmp14, tmp72) tl.store(out_ptr0 + (x2), tmp73, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/sy/csyq3f2s27ausr5srhudvxwlyubeknzzno766mzdsi5o67nwnhkp.py # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # relu => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_7,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 8 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/hr/chrkejvm3c2syakhmn4sig4kxeujt4keymqjwm5clokafee7y72f.py # Topologically Sorted Source Nodes: [max_1], Original ATen: [aten.max] # Source node to ATen node mapping: # max_1 => getitem # Graph fragment: # %getitem : [num_users=1] = call_function[target=operator.getitem](args = (%max_1, 0), kwargs = {}) triton_poi_fused_max_2 = async_compile.triton('triton_poi_fused_max_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex % 64 x4 = (xindex // 4) x5 = xindex tmp0 = tl.load(in_ptr0 + (x3), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + (x4), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (64 + x3), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr1 + (64 + x4), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (128 + x3), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr1 + (128 + x4), xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr0 + (192 + x3), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (192 + x4), xmask, eviction_policy='evict_last') tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 * tmp2 tmp5 = tl.sigmoid(tmp4) tmp7 = tmp5 * tmp6 tmp8 = triton_helpers.maximum(tmp3, tmp7) tmp10 = tl.sigmoid(tmp9) tmp12 = tmp10 * tmp11 tmp13 = triton_helpers.maximum(tmp8, tmp12) tmp15 = tl.sigmoid(tmp14) tmp17 = tmp15 * tmp16 tmp18 = triton_helpers.maximum(tmp13, tmp17) tl.store(out_ptr0 + (x5), tmp18, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (8, 32), (32, 1)) assert_size_stride(primals_7, (8, ), (1, )) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [global_head], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(primals_1, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(primals_2, (16, 4, 4), (16, 4, 1), 0), out=buf0) del primals_2 buf1 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [global_tail], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(primals_1, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(primals_3, (16, 4, 4), (16, 4, 1), 0), out=buf1) del primals_3 buf2 = empty_strided_cuda((4, 4, 4, 32), (512, 128, 32, 1), torch.float32) # Topologically Sorted Source Nodes: [mlp_input], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_4, buf0, primals_5, buf1, buf2, 2048, grid=grid(2048), stream=stream0) del primals_4 del primals_5 buf3 = empty_strided_cuda((64, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf2, (64, 32), (32, 1), 0), reinterpret_tensor(primals_6, (32, 8), (1, 32), 0), out=buf3) del primals_6 buf4 = reinterpret_tensor(buf3, (4, 4, 4, 8), (128, 32, 8, 1), 0); del buf3 # reuse buf7 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.bool) # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf4, primals_7, buf7, 512, grid=grid(512), stream=stream0) del primals_7 buf5 = reinterpret_tensor(buf1, (64, 4), (4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [pred], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, reinterpret_tensor(buf4, (64, 8), (8, 1), 0), reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_9 buf6 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [max_1], Original ATen: [aten.max] triton_poi_fused_max_2.run(buf5, primals_1, buf6, 256, grid=grid(256), stream=stream0) return (buf6, primals_1, reinterpret_tensor(buf2, (64, 32), (32, 1), 0), reinterpret_tensor(buf4, (64, 8), (8, 1), 0), buf5, primals_8, buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((8, 32), (32, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((8, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class MLP(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, head_rep, tail_rep): """ :param head_rep: (?, hs) :param tail_rep: (?, hs) :param doc_rep: (1, hs) :return: logits (?, outdim) """ mlp_input = [head_rep, tail_rep, torch.abs(head_rep - tail_rep), head_rep * tail_rep] mlp_input = torch.cat(mlp_input, -1) h = self.drop(F.relu(self.linear1(mlp_input))) return self.linear2(h) class EntityClassifier(nn.Module): def __init__(self, hs, num_class, mlp_drop): super().__init__() indim = 2 * hs self.classifier = MLP(indim, hs, num_class, mlp_drop) def forward(self, global_head, global_tail, local_head, local_tail, path2ins): ins2path = torch.transpose(path2ins, 0, 1) global_head = torch.matmul(path2ins, global_head) global_tail = torch.matmul(path2ins, global_tail) head_rep, tail_rep = [], [] head_rep.append(local_head) tail_rep.append(local_tail) head_rep.append(global_head) tail_rep.append(global_tail) head_rep = torch.cat(head_rep, dim=-1) tail_rep = torch.cat(tail_rep, dim=-1) pred = self.classifier(head_rep, tail_rep) pred = pred.squeeze(-1) pred = torch.sigmoid(pred) pred = pred.unsqueeze(0) ins2path = ins2path.unsqueeze(-1) pred = torch.max(pred * ins2path, dim=1)[0] return pred def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hs': 4, 'num_class': 4, 'mlp_drop': 0.5}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 32 x1 = xindex // 32 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 8, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.full([1], 4, tl.int64) tmp6 = tmp0 < tmp5 tmp7 = tmp6 & tmp4 tmp8 = tl.load(in_ptr0 + (4 * x1 + x0), tmp7, eviction_policy= 'evict_last', other=0.0) tmp9 = tmp0 >= tmp5 tmp10 = tmp9 & tmp4 tmp11 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp10, eviction_policy= 'evict_last', other=0.0) tmp12 = tl.where(tmp6, tmp8, tmp11) tmp13 = tl.full(tmp12.shape, 0.0, tmp12.dtype) tmp14 = tl.where(tmp4, tmp12, tmp13) tmp15 = tmp0 >= tmp3 tmp16 = tl.full([1], 16, tl.int64) tmp17 = tmp0 < tmp16 tmp18 = tmp15 & tmp17 tmp19 = -8 + x0 tmp21 = tmp19 < tmp5 tmp22 = tmp21 & tmp18 tmp23 = tl.load(in_ptr2 + (4 * x1 + (-8 + x0)), tmp22, eviction_policy= 'evict_last', other=0.0) tmp24 = tmp19 >= tmp5 tmp26 = tmp24 & tmp18 tmp27 = tl.load(in_ptr3 + (4 * x1 + (-4 + (-8 + x0))), tmp26, eviction_policy='evict_last', other=0.0) tmp28 = tl.where(tmp21, tmp23, tmp27) tmp29 = tl.full(tmp28.shape, 0.0, tmp28.dtype) tmp30 = tl.where(tmp18, tmp28, tmp29) tmp31 = tmp0 >= tmp16 tmp32 = tl.full([1], 24, tl.int64) tmp33 = tmp0 < tmp32 tmp34 = tmp31 & tmp33 tmp35 = -16 + x0 tmp37 = tmp35 < tmp5 tmp38 = tmp37 & tmp34 tmp39 = tl.load(in_ptr0 + (4 * x1 + (-16 + x0)), tmp38, eviction_policy ='evict_last', other=0.0) tmp40 = tmp35 >= tmp5 tmp42 = tmp40 & tmp34 tmp43 = tl.load(in_ptr1 + (4 * x1 + (-4 + (-16 + x0))), tmp42, eviction_policy='evict_last', other=0.0) tmp44 = tl.where(tmp37, tmp39, tmp43) tmp45 = tl.load(in_ptr2 + (4 * x1 + (-16 + x0)), tmp38, eviction_policy ='evict_last', other=0.0) tmp46 = tl.load(in_ptr3 + (4 * x1 + (-4 + (-16 + x0))), tmp42, eviction_policy='evict_last', other=0.0) tmp47 = tl.where(tmp37, tmp45, tmp46) tmp48 = tmp44 - tmp47 tmp49 = tl_math.abs(tmp48) tmp50 = tl.full(tmp49.shape, 0.0, tmp49.dtype) tmp51 = tl.where(tmp34, tmp49, tmp50) tmp52 = tmp0 >= tmp32 tl.full([1], 32, tl.int64) tmp55 = -24 + x0 tmp57 = tmp55 < tmp5 tmp58 = tmp57 & tmp52 tmp59 = tl.load(in_ptr0 + (4 * x1 + (-24 + x0)), tmp58, eviction_policy ='evict_last', other=0.0) tmp60 = tmp55 >= tmp5 tmp62 = tmp60 & tmp52 tmp63 = tl.load(in_ptr1 + (4 * x1 + (-4 + (-24 + x0))), tmp62, eviction_policy='evict_last', other=0.0) tmp64 = tl.where(tmp57, tmp59, tmp63) tmp65 = tl.load(in_ptr2 + (4 * x1 + (-24 + x0)), tmp58, eviction_policy ='evict_last', other=0.0) tmp66 = tl.load(in_ptr3 + (4 * x1 + (-4 + (-24 + x0))), tmp62, eviction_policy='evict_last', other=0.0) tmp67 = tl.where(tmp57, tmp65, tmp66) tmp68 = tmp64 * tmp67 tmp69 = tl.full(tmp68.shape, 0.0, tmp68.dtype) tmp70 = tl.where(tmp52, tmp68, tmp69) tmp71 = tl.where(tmp34, tmp51, tmp70) tmp72 = tl.where(tmp18, tmp30, tmp71) tmp73 = tl.where(tmp4, tmp14, tmp72) tl.store(out_ptr0 + x2, tmp73, None) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 8 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) @triton.jit def triton_poi_fused_max_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex % 64 x4 = xindex // 4 x5 = xindex tmp0 = tl.load(in_ptr0 + x3, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + x4, xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (64 + x3), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr1 + (64 + x4), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (128 + x3), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr1 + (128 + x4), xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr0 + (192 + x3), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (192 + x4), xmask, eviction_policy='evict_last') tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 * tmp2 tmp5 = tl.sigmoid(tmp4) tmp7 = tmp5 * tmp6 tmp8 = triton_helpers.maximum(tmp3, tmp7) tmp10 = tl.sigmoid(tmp9) tmp12 = tmp10 * tmp11 tmp13 = triton_helpers.maximum(tmp8, tmp12) tmp15 = tl.sigmoid(tmp14) tmp17 = tmp15 * tmp16 tmp18 = triton_helpers.maximum(tmp13, tmp17) tl.store(out_ptr0 + x5, tmp18, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (8, 32), (32, 1)) assert_size_stride(primals_7, (8,), (1,)) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(primals_1, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(primals_2, (16, 4, 4), (16, 4, 1), 0 ), out=buf0) del primals_2 buf1 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(primals_1, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(primals_3, (16, 4, 4), (16, 4, 1), 0 ), out=buf1) del primals_3 buf2 = empty_strided_cuda((4, 4, 4, 32), (512, 128, 32, 1), torch. float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(2048)](primals_4, buf0, primals_5, buf1, buf2, 2048, XBLOCK=128, num_warps=4, num_stages=1) del primals_4 del primals_5 buf3 = empty_strided_cuda((64, 8), (8, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf2, (64, 32), (32, 1), 0), reinterpret_tensor(primals_6, (32, 8), (1, 32), 0), out=buf3) del primals_6 buf4 = reinterpret_tensor(buf3, (4, 4, 4, 8), (128, 32, 8, 1), 0) del buf3 buf7 = empty_strided_cuda((4, 4, 4, 8), (128, 32, 8, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(512)](buf4, primals_7, buf7, 512, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 buf5 = reinterpret_tensor(buf1, (64, 4), (4, 1), 0) del buf1 extern_kernels.addmm(primals_9, reinterpret_tensor(buf4, (64, 8), ( 8, 1), 0), reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_9 buf6 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 triton_poi_fused_max_2[grid(256)](buf5, primals_1, buf6, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf6, primals_1, reinterpret_tensor(buf2, (64, 32), (32, 1), 0 ), reinterpret_tensor(buf4, (64, 8), (8, 1), 0), buf5, primals_8, buf7 class MLP(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, head_rep, tail_rep): """ :param head_rep: (?, hs) :param tail_rep: (?, hs) :param doc_rep: (1, hs) :return: logits (?, outdim) """ mlp_input = [head_rep, tail_rep, torch.abs(head_rep - tail_rep), head_rep * tail_rep] mlp_input = torch.cat(mlp_input, -1) h = self.drop(F.relu(self.linear1(mlp_input))) return self.linear2(h) class EntityClassifierNew(nn.Module): def __init__(self, hs, num_class, mlp_drop): super().__init__() indim = 2 * hs self.classifier = MLP(indim, hs, num_class, mlp_drop) def forward(self, input_0, input_1, input_2, input_3, input_4): primals_6 = self.classifier.linear1.weight primals_7 = self.classifier.linear1.bias primals_8 = self.classifier.linear2.weight primals_9 = self.classifier.linear2.bias primals_1 = input_0 primals_2 = input_1 primals_3 = input_2 primals_4 = input_3 primals_5 = input_4 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0]
AndrewZhe/Three-Sentences-Are-All-You-Need
EntityClassifier
false
7,703
[ "MIT" ]
21
afad6f9e700c9a95e03ef200718ebee8e18ca016
https://github.com/AndrewZhe/Three-Sentences-Are-All-You-Need/tree/afad6f9e700c9a95e03ef200718ebee8e18ca016
import torch import torch.nn as nn import torch.nn.functional as F class MLP(nn.Module): def __init__(self, indim, hs, outdim, mlp_drop): super().__init__() """ eh, et, |eh-et|, eh*et """ indim = 4 * indim self.linear1 = nn.Linear(indim, 2 * hs) self.linear2 = nn.Linear(2 * hs, outdim) self.drop = nn.Dropout(mlp_drop) def forward(self, head_rep, tail_rep): """ :param head_rep: (?, hs) :param tail_rep: (?, hs) :param doc_rep: (1, hs) :return: logits (?, outdim) """ mlp_input = [head_rep, tail_rep, torch.abs(head_rep - tail_rep), head_rep * tail_rep] mlp_input = torch.cat(mlp_input, -1) h = self.drop(F.relu(self.linear1(mlp_input))) return self.linear2(h) class Model(nn.Module): def __init__(self, hs, num_class, mlp_drop): super().__init__() indim = 2 * hs self.classifier = MLP(indim, hs, num_class, mlp_drop) def forward(self, global_head, global_tail, local_head, local_tail, path2ins): ins2path = torch.transpose(path2ins, 0, 1) global_head = torch.matmul(path2ins, global_head) global_tail = torch.matmul(path2ins, global_tail) head_rep, tail_rep = [], [] head_rep.append(local_head) tail_rep.append(local_tail) head_rep.append(global_head) tail_rep.append(global_tail) head_rep = torch.cat(head_rep, dim=-1) tail_rep = torch.cat(tail_rep, dim=-1) pred = self.classifier(head_rep, tail_rep) pred = pred.squeeze(-1) pred = torch.sigmoid(pred) pred = pred.unsqueeze(0) ins2path = ins2path.unsqueeze(-1) pred = torch.max(pred * ins2path, dim=1)[0] return pred def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 0.5]
HingeLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/3s/c3s6xwrgeoqmm6begy7ib3zj3tlc4ayrh4ccaz652wrqxums364s.py # Topologically Sorted Source Nodes: [sub, relu], Original ATen: [aten.rsub, aten.relu] # Source node to ATen node mapping: # relu => relu # sub => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %arg0_1), kwargs = {}) # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%sub,), kwargs = {}) triton_poi_fused_relu_rsub_0 = async_compile.triton('triton_poi_fused_relu_rsub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_rsub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_rsub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, relu], Original ATen: [aten.rsub, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_rsub_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.distributions import torch.utils.data class HingeLoss(nn.Module): def __init__(self, margin=1.0): super().__init__() self.margin = margin def forward(self, output): return F.relu(self.margin - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_relu_rsub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_relu_rsub_0[grid(256)](arg0_1, buf0, 256, XBLOCK= 256, num_warps=4, num_stages=1) del arg0_1 return buf0, class HingeLossNew(nn.Module): def __init__(self, margin=1.0): super().__init__() self.margin = margin def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
HingeLoss
false
7,704
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.nn.functional as F import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self, margin=1.0): super().__init__() self.margin = margin def forward(self, output): return F.relu(self.margin - output) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
OELoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/u2/cu2beycg2t2ghizs6f4qom7bxbxmajhdaakuyq6y2korxywhp6ba.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) triton_poi_fused__log_softmax_0 = async_compile.triton('triton_poi_fused__log_softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x3), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/f5/cf5cuos5qoy2s73wpluoupkvenanje2t5o75d4cg3btjgta3dxlz.py # Topologically Sorted Source Nodes: [log_softmax, mean, neg], Original ATen: [aten._log_softmax, aten.mean, aten.neg] # Source node to ATen node mapping: # log_softmax => exp, log, sub_1, sum_1 # mean => mean # neg => neg # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%sub_1, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%mean,), kwargs = {}) triton_poi_fused__log_softmax_mean_neg_1 = async_compile.triton('triton_poi_fused__log_softmax_mean_neg_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_mean_neg_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_mean_neg_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp8 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp13 = tmp2 - tmp11 tmp14 = tmp12 + tmp13 tmp15 = tmp5 - tmp11 tmp16 = tmp14 + tmp15 tmp17 = tmp8 - tmp11 tmp18 = tmp16 + tmp17 tmp19 = 4.0 tmp20 = tmp18 / tmp19 tmp21 = -tmp20 tl.store(out_ptr0 + (x2), tmp21, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] stream0 = get_raw_stream(0) triton_poi_fused__log_softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [log_softmax, mean, neg], Original ATen: [aten._log_softmax, aten.mean, aten.neg] triton_poi_fused__log_softmax_mean_neg_1.run(buf0, buf1, 64, grid=grid(64), stream=stream0) del buf0 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class OELoss(nn.Module): def __init__(self): super().__init__() def forward(self, logits): return -torch.log_softmax(logits, 1).mean(1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x3, tmp8, xmask) @triton.jit def triton_poi_fused__log_softmax_mean_neg_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp8 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp13 = tmp2 - tmp11 tmp14 = tmp12 + tmp13 tmp15 = tmp5 - tmp11 tmp16 = tmp14 + tmp15 tmp17 = tmp8 - tmp11 tmp18 = tmp16 + tmp17 tmp19 = 4.0 tmp20 = tmp18 / tmp19 tmp21 = -tmp20 tl.store(out_ptr0 + x2, tmp21, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__log_softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__log_softmax_mean_neg_1[grid(64)](buf0, buf1, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf0 return buf1, class OELossNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
OELoss
false
7,705
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() def forward(self, logits): return -torch.log_softmax(logits, 1).mean(1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
SourceContextGate
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5s/c5s7q2ybzwodeuorig3awcwebk53edcn54ogeiiskva3k6c4iqxd.py # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] # Source node to ATen node mapping: # input_tensor => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2, %primals_3], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = (xindex // 12) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tl.load(in_ptr2 + ((4*x1) + ((-8) + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/r6/cr6pdrpsjrizy2emadm3elrnad3xvoc6ejngp3sx6gbksgyalpru.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/6j/c6jegmwlu3gpzd7ocps6mkqksk32tyz3b5p2rf3sercrtr3k2m3s.py # Topologically Sorted Source Nodes: [z, mul, add, tanh], Original ATen: [aten.sigmoid, aten.mul, aten.add, aten.tanh] # Source node to ATen node mapping: # add => add # mul => mul # tanh => tanh # z => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%addmm,), kwargs = {}) # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_9), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sigmoid, %addmm_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_tensor, %mul), kwargs = {}) # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%add,), kwargs = {}) triton_poi_fused_add_mul_sigmoid_tanh_2 = async_compile.triton('triton_poi_fused_add_mul_sigmoid_tanh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_sigmoid_tanh_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_sigmoid_tanh_2(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x2), xmask) tmp5 = tl.load(in_ptr2 + (x2), xmask) tmp2 = tmp0 + tmp1 tmp4 = tl.sigmoid(tmp3) tmp6 = tmp4 * tmp5 tmp7 = tmp2 + tmp6 tmp8 = libdevice.tanh(tmp7) tl.store(in_out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, primals_3, buf0, 48, grid=grid(48), stream=stream0) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_source], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(primals_1, primals_2, buf3, 32, grid=grid(32), stream=stream0) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), out=buf4) del primals_8 buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [z, mul, add, tanh], Original ATen: [aten.sigmoid, aten.mul, aten.add, aten.tanh] triton_poi_fused_add_mul_sigmoid_tanh_2.run(buf5, primals_9, buf1, buf2, 16, grid=grid(16), stream=stream0) del primals_9 return (buf5, primals_3, buf0, buf1, buf2, buf3, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 12), (12, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class SourceContextGate(nn.Module): """Apply the context gate only to the source context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(SourceContextGate, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh(target + z * source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = xindex // 12 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tl.full([1], 12, tl.int64) tmp14 = tl.load(in_ptr2 + (4 * x1 + (-8 + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_add_mul_sigmoid_tanh_2(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + x2, xmask) tmp5 = tl.load(in_ptr2 + x2, xmask) tmp2 = tmp0 + tmp1 tmp4 = tl.sigmoid(tmp3) tmp6 = tmp4 * tmp5 tmp7 = tmp2 + tmp6 tmp8 = libdevice.tanh(tmp7) tl.store(in_out_ptr0 + x2, tmp8, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(48)](primals_1, primals_2, primals_3, buf0, 48, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor( primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_1[grid(32)](primals_1, primals_2, buf3, 32, XBLOCK=32, num_warps=1, num_stages=1) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8 ), 0), out=buf4) del primals_8 buf5 = buf4 del buf4 triton_poi_fused_add_mul_sigmoid_tanh_2[grid(16)](buf5, primals_9, buf1, buf2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_9 return buf5, primals_3, buf0, buf1, buf2, buf3, buf5 class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class SourceContextGateNew(nn.Module): """Apply the context gate only to the source context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(SourceContextGateNew, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, input_0, input_1, input_2): primals_4 = self.context_gate.gate.weight primals_5 = self.context_gate.gate.bias primals_1 = self.context_gate.source_proj.weight primals_7 = self.context_gate.source_proj.bias primals_8 = self.context_gate.target_proj.weight primals_9 = self.context_gate.target_proj.bias primals_2 = input_0 primals_3 = input_1 primals_6 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0]
AndrewM1998/MultimodalNMT
SourceContextGate
false
7,706
[ "MIT" ]
40
b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
https://github.com/AndrewM1998/MultimodalNMT/tree/b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class Model(nn.Module): """Apply the context gate only to the source context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh(target + z * source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
AttentionBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/qs/cqsgbydauqwdluexymrszxq7nqjh3tcbqqiq5ccrsj74pb354tqf.py # Topologically Sorted Source Nodes: [att], Original ATen: [aten.tanh] # Source node to ATen node mapping: # att => tanh # Graph fragment: # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_1,), kwargs = {}) triton_poi_fused_tanh_0 = async_compile.triton('triton_poi_fused_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/4x/c4xd6y4gkp7z3srq6gzq52swaegpimvl35zpaduo4j5wyernpskh.py # Topologically Sorted Source Nodes: [attention_weights], Original ATen: [aten._softmax] # Source node to ATen node mapping: # attention_weights => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%view_3, [1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%view_3, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_1 = async_compile.triton('triton_poi_fused__softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x3), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/jb/cjb2flam36ihzrg7kisq2ynqucex3acwyvdjjirqx4wzpphmzfia.py # Topologically Sorted Source Nodes: [attention_weights, context_vector, context_vector_1], Original ATen: [aten._softmax, aten.mul, aten.sum] # Source node to ATen node mapping: # attention_weights => div, sum_1 # context_vector => mul # context_vector_1 => sum_2 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div, %primals_3), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) triton_poi_fused__softmax_mul_sum_2 = async_compile.triton('triton_poi_fused__softmax_mul_sum_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_mul_sum_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_mul_sum_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp8 = tl.load(in_ptr1 + (x0 + (64*x1)), xmask) tmp11 = tl.load(in_ptr1 + (16 + x0 + (64*x1)), xmask) tmp15 = tl.load(in_ptr1 + (32 + x0 + (64*x1)), xmask) tmp19 = tl.load(in_ptr1 + (48 + x0 + (64*x1)), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = tmp0 / tmp6 tmp9 = tmp7 * tmp8 tmp10 = tmp1 / tmp6 tmp12 = tmp10 * tmp11 tmp13 = tmp9 + tmp12 tmp14 = tmp3 / tmp6 tmp16 = tmp14 * tmp15 tmp17 = tmp13 + tmp16 tmp18 = tmp5 / tmp6 tmp20 = tmp18 * tmp19 tmp21 = tmp17 + tmp20 tl.store(out_ptr0 + (x2), tmp21, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [att], Original ATen: [aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_tanh_0.run(buf1, primals_2, 256, grid=grid(256), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [score], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [attention_weights], Original ATen: [aten._softmax] triton_poi_fused__softmax_1.run(buf2, buf3, 256, grid=grid(256), stream=stream0) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [attention_weights, context_vector, context_vector_1], Original ATen: [aten._softmax, aten.mul, aten.sum] triton_poi_fused__softmax_mul_sum_2.run(buf3, primals_3, buf4, 64, grid=grid(64), stream=stream0) del buf3 return (buf4, primals_3, buf1, buf2, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class AttentionBlock(nn.Module): def __init__(self, in_features, middle_features, out_features): super().__init__() self.in_features = in_features self.middle_features = middle_features self.out_features = out_features self.W = nn.Linear(in_features, middle_features) self.V = nn.Linear(middle_features, out_features) def forward(self, features): att = torch.tanh(self.W(features)) score = self.V(att) attention_weights = torch.softmax(score, dim=1) context_vector = attention_weights * features context_vector = torch.sum(context_vector, dim=1) return context_vector def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4, 'middle_features': 4, 'out_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x3, tmp9, xmask) @triton.jit def triton_poi_fused__softmax_mul_sum_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp1 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp3 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp8 = tl.load(in_ptr1 + (x0 + 64 * x1), xmask) tmp11 = tl.load(in_ptr1 + (16 + x0 + 64 * x1), xmask) tmp15 = tl.load(in_ptr1 + (32 + x0 + 64 * x1), xmask) tmp19 = tl.load(in_ptr1 + (48 + x0 + 64 * x1), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = tmp0 / tmp6 tmp9 = tmp7 * tmp8 tmp10 = tmp1 / tmp6 tmp12 = tmp10 * tmp11 tmp13 = tmp9 + tmp12 tmp14 = tmp3 / tmp6 tmp16 = tmp14 * tmp15 tmp17 = tmp13 + tmp16 tmp18 = tmp5 / tmp6 tmp20 = tmp18 * tmp19 tmp21 = tmp17 + tmp20 tl.store(out_ptr0 + x2, tmp21, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_tanh_0[grid(256)](buf1, primals_2, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused__softmax_1[grid(256)](buf2, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__softmax_mul_sum_2[grid(64)](buf3, primals_3, buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf3 return buf4, primals_3, buf1, buf2, primals_4 class AttentionBlockNew(nn.Module): def __init__(self, in_features, middle_features, out_features): super().__init__() self.in_features = in_features self.middle_features = middle_features self.out_features = out_features self.W = nn.Linear(in_features, middle_features) self.V = nn.Linear(middle_features, out_features) def forward(self, input_0): primals_1 = self.W.weight primals_2 = self.W.bias primals_4 = self.V.weight primals_5 = self.V.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Anjum48/commonlitreadabilityprize
AttentionBlock
false
7,707
[ "MIT" ]
28
b310742520b847b452ced0d27f47a934e834e4de
https://github.com/Anjum48/commonlitreadabilityprize/tree/b310742520b847b452ced0d27f47a934e834e4de
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_features, middle_features, out_features): super().__init__() self.in_features = in_features self.middle_features = middle_features self.out_features = out_features self.W = nn.Linear(in_features, middle_features) self.V = nn.Linear(middle_features, out_features) def forward(self, features): att = torch.tanh(self.W(features)) score = self.V(att) attention_weights = torch.softmax(score, dim=1) context_vector = attention_weights * features context_vector = torch.sum(context_vector, dim=1) return context_vector def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4]
Scale_By_ParamI
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/vr/cvrswc7sghptzlhz7ewvsjbd7v2xnbaz46y44nuebjysb3adwjz2.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.mul] # Source node to ATen node mapping: # out => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %primals_1), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (1, ), (1, )) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 return (buf0, primals_2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Scale_By_ParamI(nn.Module): def __init__(self): super().__init__() self.scalar = nn.Parameter(torch.ones(1)) def forward(self, x): out = x * self.scalar return out def ibp_forward(self, l, u): if self.scalar >= 0: l_ = l * self.scalar u_ = u * self.scalar else: u_ = l * self.scalar l_ = u * self.scalar return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (1,), (1,)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 return buf0, primals_2 class Scale_By_ParamINew(nn.Module): def __init__(self): super().__init__() self.scalar = nn.Parameter(torch.ones(1)) def ibp_forward(self, l, u): if self.scalar >= 0: l_ = l * self.scalar u_ = u * self.scalar else: u_ = l * self.scalar l_ = u * self.scalar return l_, u_ def forward(self, input_0): primals_1 = self.scalar primals_2 = input_0 output = call([primals_1, primals_2]) return output[0]
AlexMeinke/Provable-OOD-Detection
Scale_By_ParamI
false
7,708
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self): super().__init__() self.scalar = nn.Parameter(torch.ones(1)) def forward(self, x): out = x * self.scalar return out def ibp_forward(self, l, u): if self.scalar >= 0: l_ = l * self.scalar u_ = u * self.scalar else: u_ = l * self.scalar l_ = u * self.scalar return l_, u_ def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Mish
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/cw/ccwyu7ntk57rkkdptbadtv27ku7lnl5vvxmgpgfsv3e6t5pbraah.py # Topologically Sorted Source Nodes: [softplus, tanh, mul], Original ATen: [aten.softplus, aten.tanh, aten.mul] # Source node to ATen node mapping: # mul => mul # softplus => exp, gt, log1p, where # tanh => tanh # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg0_1, 20), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%arg0_1,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %arg0_1, %log1p), kwargs = {}) # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%where,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %tanh), kwargs = {}) triton_poi_fused_mul_softplus_tanh_0 = async_compile.triton('triton_poi_fused_mul_softplus_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_softplus_tanh_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_softplus_tanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = libdevice.tanh(tmp5) tmp7 = tmp0 * tmp6 tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [softplus, tanh, mul], Original ATen: [aten.softplus, aten.tanh, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_softplus_tanh_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class Mish(nn.Module): def __init__(self): super().__init__() def forward(self, x): return x * torch.tanh(F.softplus(x)) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_softplus_tanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = libdevice.tanh(tmp5) tmp7 = tmp0 * tmp6 tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_softplus_tanh_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class MishNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Archaic-Atom/JackFramework
Mish
false
7,709
[ "MIT" ]
13
e847d0bafe335ee33caf174676d12ad3c28011a6
https://github.com/Archaic-Atom/JackFramework/tree/e847d0bafe335ee33caf174676d12ad3c28011a6
import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): def __init__(self): super().__init__() def forward(self, x): return x * torch.tanh(F.softplus(x)) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
TargetContextGate
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5s/c5s7q2ybzwodeuorig3awcwebk53edcn54ogeiiskva3k6c4iqxd.py # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] # Source node to ATen node mapping: # input_tensor => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2, %primals_3], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = (xindex // 12) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tl.load(in_ptr2 + ((4*x1) + ((-8) + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/r6/cr6pdrpsjrizy2emadm3elrnad3xvoc6ejngp3sx6gbksgyalpru.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/wx/cwxgaxitmqslced4igsbzz4fo6hjnraigfwkx4zs3jtiedrlhwbc.py # Topologically Sorted Source Nodes: [z, mul, add, tanh], Original ATen: [aten.sigmoid, aten.mul, aten.add, aten.tanh] # Source node to ATen node mapping: # add => add # mul => mul # tanh => tanh # z => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%addmm,), kwargs = {}) # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_7), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sigmoid, %addmm_2), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %add_tensor), kwargs = {}) # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%add,), kwargs = {}) triton_poi_fused_add_mul_sigmoid_tanh_2 = async_compile.triton('triton_poi_fused_add_mul_sigmoid_tanh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_sigmoid_tanh_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_sigmoid_tanh_2(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp2 = tl.load(in_ptr1 + (x2), xmask) tmp4 = tl.load(in_out_ptr0 + (x2), xmask) tmp5 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 * tmp2 tmp6 = tmp4 + tmp5 tmp7 = tmp3 + tmp6 tmp8 = libdevice.tanh(tmp7) tl.store(in_out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, primals_3, buf0, 48, grid=grid(48), stream=stream0) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(primals_3, reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), out=buf2) del primals_6 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(primals_1, primals_2, buf3, 32, grid=grid(32), stream=stream0) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_target], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf4) del primals_8 del primals_9 buf5 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [z, mul, add, tanh], Original ATen: [aten.sigmoid, aten.mul, aten.add, aten.tanh] triton_poi_fused_add_mul_sigmoid_tanh_2.run(buf5, buf1, buf4, primals_7, 16, grid=grid(16), stream=stream0) del primals_7 return (buf5, primals_3, buf0, buf1, buf3, buf4, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 12), (12, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class TargetContextGate(nn.Module): """Apply the context gate only to the target context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(TargetContextGate, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh(z * target + source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = xindex // 12 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tl.full([1], 12, tl.int64) tmp14 = tl.load(in_ptr2 + (4 * x1 + (-8 + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_add_mul_sigmoid_tanh_2(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp2 = tl.load(in_ptr1 + x2, xmask) tmp4 = tl.load(in_out_ptr0 + x2, xmask) tmp5 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 * tmp2 tmp6 = tmp4 + tmp5 tmp7 = tmp3 + tmp6 tmp8 = libdevice.tanh(tmp7) tl.store(in_out_ptr0 + x2, tmp8, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(48)](primals_1, primals_2, primals_3, buf0, 48, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_3, reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), out=buf2) del primals_6 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_1[grid(32)](primals_1, primals_2, buf3, 32, XBLOCK=32, num_warps=1, num_stages=1) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_9, buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf4) del primals_8 del primals_9 buf5 = buf2 del buf2 triton_poi_fused_add_mul_sigmoid_tanh_2[grid(16)](buf5, buf1, buf4, primals_7, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_7 return buf5, primals_3, buf0, buf1, buf3, buf4, buf5 class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class TargetContextGateNew(nn.Module): """Apply the context gate only to the target context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(TargetContextGateNew, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, input_0, input_1, input_2): primals_4 = self.context_gate.gate.weight primals_5 = self.context_gate.gate.bias primals_1 = self.context_gate.source_proj.weight primals_7 = self.context_gate.source_proj.bias primals_8 = self.context_gate.target_proj.weight primals_9 = self.context_gate.target_proj.bias primals_2 = input_0 primals_3 = input_1 primals_6 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0]
AndrewM1998/MultimodalNMT
TargetContextGate
false
7,710
[ "MIT" ]
40
b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
https://github.com/AndrewM1998/MultimodalNMT/tree/b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class Model(nn.Module): """Apply the context gate only to the target context""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh(z * target + source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
MFB
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5d/c5dlivtxr2m3u6x4kwljeqjoj5v7qlephxarei3sukefh3t5alnl.py # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.sum] # Source node to ATen node mapping: # z_2 => sum_1 # Graph fragment: # %sum_1 : [num_users=2] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%view, [2]), kwargs = {}) triton_poi_fused_sum_0 = async_compile.triton('triton_poi_fused_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4800 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 1200 x1 = (xindex // 1200) tmp0 = tl.load(in_ptr0 + (2*x2), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (2*x2), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (1 + (2*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (1 + (2*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 * tmp4 tmp7 = triton_helpers.maximum(tmp1, tmp6) tmp9 = triton_helpers.maximum(tmp1, tmp8) tmp10 = tmp7 * tmp9 tmp11 = tmp5 + tmp10 tl.store(out_ptr0 + (x0 + (1216*x1)), tmp11, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xo/cxoy25xst5lr7sipjfpjv7a72jjvrc7bpzabd73irv466cnlaugy.py # Topologically Sorted Source Nodes: [z_4], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # z_4 => relu_2 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_7), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_2, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (2400, 4), (4, 1)) assert_size_stride(primals_3, (2400, ), (1, )) assert_size_stride(primals_4, (2400, 4), (4, 1)) assert_size_stride(primals_5, (2400, ), (1, )) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x0], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16), reinterpret_tensor(primals_4, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 1200), (1216, 1), torch.float32) # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_sum_0.run(buf0, buf1, buf2, 4800, grid=grid(4800), stream=stream0) buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf2, reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3) buf4 = buf3; del buf3 # reuse buf5 = empty_strided_cuda((4, 4), (4, 1), torch.bool) # Topologically Sorted Source Nodes: [z_4], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf4, primals_7, buf5, 16, grid=grid(16), stream=stream0) del primals_7 return (buf4, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0), buf0, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16), buf1, buf2, buf5, primals_6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 1200), (1200, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from torch.nn import functional as F class MFB(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_norm=0.0, dropout_output=0.0): super(MFB, self).__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.factor = factor self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_norm = dropout_pre_norm self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 * x1 if self.dropout_pre_norm > 0: z = F.dropout(z, p=self.dropout_pre_norm, training=self.training) z = z.view(z.size(0), self.mm_dim, self.factor) z = z.sum(2) if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'input_dims': [4, 4], 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 4800 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 1200 x1 = xindex // 1200 tmp0 = tl.load(in_ptr0 + 2 * x2, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + 2 * x2, xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (1 + 2 * x2), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (1 + 2 * x2), xmask, eviction_policy='evict_last') tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 * tmp4 tmp7 = triton_helpers.maximum(tmp1, tmp6) tmp9 = triton_helpers.maximum(tmp1, tmp8) tmp10 = tmp7 * tmp9 tmp11 = tmp5 + tmp10 tl.store(out_ptr0 + (x0 + 1216 * x1), tmp11, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (2400, 4), (4, 1)) assert_size_stride(primals_3, (2400,), (1,)) assert_size_stride(primals_4, (2400, 4), (4, 1)) assert_size_stride(primals_5, (2400,), (1,)) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 0), reinterpret_tensor(primals_2, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 16), reinterpret_tensor(primals_4, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 1200), (1216, 1), torch.float32) get_raw_stream(0) triton_poi_fused_sum_0[grid(4800)](buf0, buf1, buf2, 4800, XBLOCK= 256, num_warps=4, num_stages=1) buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf2, reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3) buf4 = buf3 del buf3 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(16)](buf4, primals_7, buf5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_7 return buf4, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0 ), buf0, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16 ), buf1, buf2, buf5, primals_6 class MFBNew(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_norm=0.0, dropout_output=0.0): super(MFBNew, self).__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.factor = factor self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_norm = dropout_pre_norm self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, input_0): primals_2 = self.linear0.weight primals_3 = self.linear0.bias primals_4 = self.linear1.weight primals_5 = self.linear1.bias primals_6 = self.linear_out.weight primals_7 = self.linear_out.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AndresPMD/GCN_classification
MFB
false
7,711
[ "MIT" ]
39
b005c4256d68f1f90a7f73e7fdb3d066448de28c
https://github.com/AndresPMD/GCN_classification/tree/b005c4256d68f1f90a7f73e7fdb3d066448de28c
import torch from torch import nn from torch.nn import functional as F class Model(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_norm=0.0, dropout_output=0.0): super().__init__() self.input_dims = input_dims self.mm_dim = mm_dim self.factor = factor self.output_dim = output_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_norm = dropout_pre_norm self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 * x1 if self.dropout_pre_norm > 0: z = F.dropout(z, p=self.dropout_pre_norm, training=self.training) z = z.view(z.size(0), self.mm_dim, self.factor) z = z.sum(2) if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [4]
Mlp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/jb/cjbxzli6v7rwzt24mjtja7cu7a6zbkabsw5two6m5axucpijmjfr.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.gelu] # Source node to ATen node mapping: # x_1 => add, erf, mul, mul_1, mul_2 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, 0.5), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, 0.7071067811865476), kwargs = {}) # %erf : [num_users=1] = call_function[target=torch.ops.aten.erf.default](args = (%mul_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%erf, 1), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %add), kwargs = {}) triton_poi_fused_gelu_0 = async_compile.triton('triton_poi_fused_gelu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_gelu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_gelu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865476 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + (x0), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.gelu] stream0 = get_raw_stream(0) triton_poi_fused_gelu_0.run(buf0, buf1, 256, grid=grid(256), stream=stream0) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Mlp(nn.Module): def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.0): super().__init__() out_features = out_features or in_features hidden_features = hidden_features or in_features self.fc1 = nn.Linear(in_features, hidden_features) self.act = act_layer() self.fc2 = nn.Linear(hidden_features, out_features) self.drop = nn.Dropout(drop) def forward(self, x): x = self.fc1(x) x = self.act(x) x = self.drop(x) x = self.fc2(x) x = self.drop(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_gelu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865476 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + x0, tmp8, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_gelu_0[grid(256)](buf0, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf0, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4 class MlpNew(nn.Module): def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.0): super().__init__() out_features = out_features or in_features hidden_features = hidden_features or in_features self.fc1 = nn.Linear(in_features, hidden_features) self.act = act_layer() self.fc2 = nn.Linear(hidden_features, out_features) self.drop = nn.Dropout(drop) def forward(self, input_0): primals_1 = self.fc1.weight primals_2 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Arnav0400/ViT-Slim
Mlp
false
7,712
[ "MIT" ]
14
78edd4fecbb8cd4043e9878148576b1c327c74f9
https://github.com/Arnav0400/ViT-Slim/tree/78edd4fecbb8cd4043e9878148576b1c327c74f9
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.0): super().__init__() out_features = out_features or in_features hidden_features = hidden_features or in_features self.fc1 = nn.Linear(in_features, hidden_features) self.act = act_layer() self.fc2 = nn.Linear(hidden_features, out_features) self.drop = nn.Dropout(drop) def forward(self, x): x = self.fc1(x) x = self.act(x) x = self.drop(x) x = self.fc2(x) x = self.drop(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
QGOODLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/zb/czbrmktcjjh2muir4w6s5unglfr4zndpc44gc75km6sblpktfsiz.py # Topologically Sorted Source Nodes: [getitem_2, pow_1, truediv, log1p], Original ATen: [aten.index, aten.pow, aten.div, aten.log1p] # Source node to ATen node mapping: # getitem_2 => index # log1p => log1p # pow_1 => pow_1 # truediv => div # Graph fragment: # %index : [num_users=1] = call_function[target=torch.ops.aten.index.Tensor](args = (%arg0_1, [%getitem_1]), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%index, 2), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%pow_1, 2), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%div,), kwargs = {}) triton_poi_fused_div_index_log1p_pow_0 = async_compile.triton('triton_poi_fused_div_index_log1p_pow_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*i64', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_index_log1p_pow_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_index_log1p_pow_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x1 = (xindex // 64) x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + (x1), None, eviction_policy='evict_last') tmp1 = tl.full([XBLOCK], 4, tl.int32) tmp2 = tmp0 + tmp1 tmp3 = tmp0 < 0 tmp4 = tl.where(tmp3, tmp2, tmp0) tl.device_assert((0 <= tmp4) & (tmp4 < 4), "index out of bounds: 0 <= tmp4 < 4") tmp6 = tl.load(in_ptr1 + (x0 + (64*tmp4)), None) tmp7 = tmp6 * tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = libdevice.log1p(tmp9) tl.store(out_ptr0 + (x2), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [topk], Original ATen: [aten.topk] buf0 = torch.ops.aten.topk.default(arg0_1, 1) buf2 = buf0[1] del buf0 buf3 = empty_strided_cuda((4, 4, 4, 1, 4, 4, 4), (1024, 256, 64, 64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [getitem_2, pow_1, truediv, log1p], Original ATen: [aten.index, aten.pow, aten.div, aten.log1p] stream0 = get_raw_stream(0) triton_poi_fused_div_index_log1p_pow_0.run(buf2, arg0_1, buf3, 4096, grid=grid(4096), stream=stream0) del arg0_1 del buf2 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn import torch.distributions import torch.utils.data class QGOODLoss(nn.Module): def __init__(self, quantile=0.8): super().__init__() self.quantile = quantile def forward(self, ub_log_conf): batch_size_out = ub_log_conf.shape[0] l = math.floor(batch_size_out * self.quantile) h = batch_size_out - l above_quantile_indices = ub_log_conf.topk(h, largest=True)[1] return (ub_log_conf[above_quantile_indices] ** 2 / 2).log1p() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.distributions import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_div_index_log1p_pow_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x1 = xindex // 64 x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + x1, None, eviction_policy='evict_last') tmp1 = tl.full([XBLOCK], 4, tl.int32) tmp2 = tmp0 + tmp1 tmp3 = tmp0 < 0 tmp4 = tl.where(tmp3, tmp2, tmp0) tl.device_assert((0 <= tmp4) & (tmp4 < 4), 'index out of bounds: 0 <= tmp4 < 4') tmp6 = tl.load(in_ptr1 + (x0 + 64 * tmp4), None) tmp7 = tmp6 * tmp6 tmp8 = 0.5 tmp9 = tmp7 * tmp8 tmp10 = libdevice.log1p(tmp9) tl.store(out_ptr0 + x2, tmp10, None) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = torch.ops.aten.topk.default(arg0_1, 1) buf2 = buf0[1] del buf0 buf3 = empty_strided_cuda((4, 4, 4, 1, 4, 4, 4), (1024, 256, 64, 64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_div_index_log1p_pow_0[grid(4096)](buf2, arg0_1, buf3, 4096, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 del buf2 return buf3, class QGOODLossNew(nn.Module): def __init__(self, quantile=0.8): super().__init__() self.quantile = quantile def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AlexMeinke/Provable-OOD-Detection
QGOODLoss
false
7,713
[ "MIT" ]
21
9a132aec994ff718c96b81885736ab866df60d87
https://github.com/AlexMeinke/Provable-OOD-Detection/tree/9a132aec994ff718c96b81885736ab866df60d87
import math import torch import torch.nn as nn import torch.distributions import torch.utils.data class Model(nn.Module): def __init__(self, quantile=0.8): super().__init__() self.quantile = quantile def forward(self, ub_log_conf): batch_size_out = ub_log_conf.shape[0] l = math.floor(batch_size_out * self.quantile) h = batch_size_out - l above_quantile_indices = ub_log_conf.topk(h, largest=True)[1] return (ub_log_conf[above_quantile_indices] ** 2 / 2).log1p() def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
MultinomialKLDivergenceLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5d/c5dpizftfjcqv6r6knepuuu5pnogim6wiplpg76lx3mbzrg6e6xf.py # Topologically Sorted Source Nodes: [log, log_1, sub, loss, loss_1, truediv], Original ATen: [aten.log, aten.sub, aten.mul, aten.sum, aten.div] # Source node to ATen node mapping: # log => log # log_1 => log_1 # loss => mul # loss_1 => sum_1 # sub => sub # truediv => div # Graph fragment: # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%arg0_1,), kwargs = {}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%arg1_1,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%log, %log_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %sub), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sum_1, 16), kwargs = {}) triton_per_fused_div_log_mul_sub_sum_0 = async_compile.triton('triton_per_fused_div_log_mul_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_div_log_mul_sub_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_div_log_mul_sub_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp2 = tl.load(in_ptr1 + (r0), None) tmp1 = tl_math.log(tmp0) tmp3 = tl_math.log(tmp2) tmp4 = tmp1 - tmp3 tmp5 = tmp0 * tmp4 tmp6 = tl.broadcast_to(tmp5, [RBLOCK]) tmp8 = triton_helpers.promote_to_tensor(tl.sum(tmp6, 0)) tmp9 = 0.0625 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [log, log_1, sub, loss, loss_1, truediv], Original ATen: [aten.log, aten.sub, aten.mul, aten.sum, aten.div] stream0 = get_raw_stream(0) triton_per_fused_div_log_mul_sub_sum_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class MultinomialKLDivergenceLoss(nn.Module): def __init__(self): super().__init__() def forward(self, p_proba, q_proba): loss = q_proba * (torch.log(q_proba) - torch.log(p_proba)) loss = torch.sum(loss) return loss / (p_proba.size(1) * p_proba.size(0)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_div_log_mul_sub_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp2 = tl.load(in_ptr1 + r0, None) tmp1 = tl_math.log(tmp0) tmp3 = tl_math.log(tmp2) tmp4 = tmp1 - tmp3 tmp5 = tmp0 * tmp4 tmp6 = tl.broadcast_to(tmp5, [RBLOCK]) tmp8 = triton_helpers.promote_to_tensor(tl.sum(tmp6, 0)) tmp9 = 0.0625 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_div_log_mul_sub_sum_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, class MultinomialKLDivergenceLossNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AuCson/SEDST
MultinomialKLDivergenceLoss
false
7,714
[ "MIT" ]
23
1c1691e2abc50eb2120ed49c874090f6c4f741d3
https://github.com/AuCson/SEDST/tree/1c1691e2abc50eb2120ed49c874090f6c4f741d3
import torch from torch import nn class Model(nn.Module): def __init__(self): super().__init__() def forward(self, p_proba, q_proba): loss = q_proba * (torch.log(q_proba) - torch.log(p_proba)) loss = torch.sum(loss) return loss / (p_proba.size(1) * p_proba.size(0)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GCN
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/az/caz4izfxpdhaj7d73v6i6xckoy554utwuiwxjyrlkg7kqdz6h25i.py # Topologically Sorted Source Nodes: [add, x], Original ATen: [aten.add, aten.relu] # Source node to ATen node mapping: # add => add # x => relu # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_1, %primals_4), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add,), kwargs = {}) triton_poi_fused_add_relu_0 = async_compile.triton('triton_poi_fused_add_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2d/c2dizfaekcnz32ufz3uo3z65uz7anm6zf67prosayb2z6w7nyjhu.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%addmm_default, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%addmm_default, %amax), kwargs = {}) triton_poi_fused__log_softmax_1 = async_compile.triton('triton_poi_fused__log_softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ce/ccevra67aphe5dpz3mn5hiaxb3trxtxxtuaongwy4mcgun6uapq7.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => exp, log, sub_1, sum_1 # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) triton_poi_fused__log_softmax_2 = async_compile.triton('triton_poi_fused__log_softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + (x2), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, ), (1, )) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [support], Original ATen: [aten.mm] extern_kernels.mm(primals_2, primals_1, out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [output], Original ATen: [aten.mm] extern_kernels.mm(primals_3, buf0, out=buf1) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [add, x], Original ATen: [aten.add, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_add_relu_0.run(buf2, primals_4, 16, grid=grid(16), stream=stream0) del primals_4 buf3 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [support_1], Original ATen: [aten.mm] extern_kernels.mm(buf2, primals_5, out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.addmm(primals_6, primals_3, buf3, alpha=1, beta=1, out=buf4) del primals_6 buf5 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_1.run(buf4, buf5, 16, grid=grid(16), stream=stream0) buf6 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_2.run(buf5, buf6, 16, grid=grid(16), stream=stream0) del buf5 return (buf6, buf2, buf6, reinterpret_tensor(primals_3, (4, 4), (1, 4), 0), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
from torch.nn import Module import math import torch import torch.nn.functional as F from torch.nn.parameter import Parameter from torch.nn.modules.module import Module import torch.nn as nn class GraphConvolution(Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super(GraphConvolution, self).__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.mm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class GCN(nn.Module): def __init__(self, nfeat, nhid, nclass, dropout): super(GCN, self).__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nclass) self.dropout = dropout def forward(self, x, adj): x = F.relu(self.gc1(x, adj)) x = F.dropout(x, self.dropout, training=self.training) x = self.gc2(x, adj) return F.log_softmax(x, dim=1) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'nfeat': 4, 'nhid': 4, 'nclass': 4, 'dropout': 0.5}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math from torch.nn import Module import math from torch.nn.parameter import Parameter from torch.nn.modules.module import Module import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused__log_softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + x2, tmp13, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4,), (1,)) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_2, primals_1, out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_3, buf0, out=buf1) buf2 = buf1 del buf1 get_raw_stream(0) triton_poi_fused_add_relu_0[grid(16)](buf2, primals_4, 16, XBLOCK= 16, num_warps=1, num_stages=1) del primals_4 buf3 = buf0 del buf0 extern_kernels.mm(buf2, primals_5, out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_6, primals_3, buf3, alpha=1, beta=1, out=buf4) del primals_6 buf5 = buf3 del buf3 triton_poi_fused__log_softmax_1[grid(16)](buf4, buf5, 16, XBLOCK=16, num_warps=1, num_stages=1) buf6 = buf4 del buf4 triton_poi_fused__log_softmax_2[grid(16)](buf5, buf6, 16, XBLOCK=16, num_warps=1, num_stages=1) del buf5 return buf6, buf2, buf6, reinterpret_tensor(primals_3, (4, 4), (1, 4), 0 ), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0 ), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0) class GraphConvolution(Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super(GraphConvolution, self).__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.mm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class GCNNew(nn.Module): def __init__(self, nfeat, nhid, nclass, dropout): super(GCNNew, self).__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nclass) self.dropout = dropout def forward(self, input_0, input_1): primals_1 = self.gc1.weight primals_4 = self.gc1.bias primals_2 = self.gc2.weight primals_6 = self.gc2.bias primals_3 = input_0 primals_5 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
Anou9531/GUA
GCN
false
7,715
[ "MIT" ]
20
354acceb69656e76fb4ee296c66ae42c18cd939f
https://github.com/Anou9531/GUA/tree/354acceb69656e76fb4ee296c66ae42c18cd939f
from torch.nn import Module import math import torch import torch.nn.functional as F from torch.nn.parameter import Parameter from torch.nn.modules.module import Module import torch.nn as nn class GraphConvolution(Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super().__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.mm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class Model(nn.Module): def __init__(self, nfeat, nhid, nclass, dropout): super().__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nclass) self.dropout = dropout def forward(self, x, adj): x = F.relu(self.gc1(x, adj)) x = F.dropout(x, self.dropout, training=self.training) x = self.gc2(x, adj) return F.log_softmax(x, dim=1) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [4, 4, 4, 0.5]
MSELoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/7s/c7slhd2yhynjifzztjeslhh6lo7ff2yggulq3ttsnhaa7rsq2gjx.py # Topologically Sorted Source Nodes: [loss, loss_1, loss_2], Original ATen: [aten.mse_loss, aten.mean, aten.mul] # Source node to ATen node mapping: # loss => pow_1, sub # loss_1 => mean # loss_2 => mul # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%pow_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_mean_mse_loss_mul_0 = async_compile.triton('triton_per_fused_mean_mse_loss_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_mse_loss_mul_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_mse_loss_mul_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [loss, loss_1, loss_2], Original ATen: [aten.mse_loss, aten.mean, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_mean_mse_loss_mul_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def mse_loss(pred, target): """Warpper of mse loss.""" return F.mse_loss(pred, target, reduction='none') class MSELoss(nn.Module): """MSELoss. Args: reduction (str, optional): The method that reduces the loss to a scalar. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of the loss. Defaults to 1.0 """ def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None): """Forward function of loss. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. weight (torch.Tensor, optional): Weight of the loss for each prediction. Defaults to None. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. Returns: torch.Tensor: The calculated loss """ loss = self.loss_weight * mse_loss(pred, target, weight, reduction= self.reduction, avg_factor=avg_factor) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_mean_mse_loss_mul_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_mean_mse_loss_mul_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def mse_loss(pred, target): """Warpper of mse loss.""" return F.mse_loss(pred, target, reduction='none') class MSELossNew(nn.Module): """MSELoss. Args: reduction (str, optional): The method that reduces the loss to a scalar. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of the loss. Defaults to 1.0 """ def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Andrew-Zhu/DyFPN
MSELoss
false
7,716
[ "Apache-2.0" ]
32
a74463b59c4ce28253c2449a07c0f6692a0147a1
https://github.com/Andrew-Zhu/DyFPN/tree/a74463b59c4ce28253c2449a07c0f6692a0147a1
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def mse_loss(pred, target): """Warpper of mse loss.""" return F.mse_loss(pred, target, reduction='none') class Model(nn.Module): """MSELoss. Args: reduction (str, optional): The method that reduces the loss to a scalar. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of the loss. Defaults to 1.0 """ def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None): """Forward function of loss. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. weight (torch.Tensor, optional): Weight of the loss for each prediction. Defaults to None. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. Returns: torch.Tensor: The calculated loss """ loss = self.loss_weight * mse_loss(pred, target, weight, reduction= self.reduction, avg_factor=avg_factor) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
BothContextGate
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5s/c5s7q2ybzwodeuorig3awcwebk53edcn54ogeiiskva3k6c4iqxd.py # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] # Source node to ATen node mapping: # input_tensor => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2, %primals_3], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = (xindex // 12) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tl.load(in_ptr2 + ((4*x1) + ((-8) + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/r6/cr6pdrpsjrizy2emadm3elrnad3xvoc6ejngp3sx6gbksgyalpru.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/3p/c3pf6dt3zjvt4f54gg5ydgcf2etvvyrydqq473h2gccvvmljtaet.py # Topologically Sorted Source Nodes: [z, sub, mul, mul_1, add, tanh], Original ATen: [aten.sigmoid, aten.rsub, aten.mul, aten.add, aten.tanh] # Source node to ATen node mapping: # add => add # mul => mul # mul_1 => mul_1 # sub => sub # tanh => tanh # z => sigmoid # Graph fragment: # %sigmoid : [num_users=2] = call_function[target=torch.ops.aten.sigmoid.default](args = (%addmm,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %sigmoid), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %addmm_2), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sigmoid, %addmm_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_1), kwargs = {}) # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%add,), kwargs = {}) triton_poi_fused_add_mul_rsub_sigmoid_tanh_2 = async_compile.triton('triton_poi_fused_add_mul_rsub_sigmoid_tanh_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_rsub_sigmoid_tanh_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_rsub_sigmoid_tanh_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp4 = tl.load(in_ptr1 + (x0), xmask) tmp6 = tl.load(in_ptr2 + (x0), xmask) tmp1 = tl.sigmoid(tmp0) tmp2 = 1.0 tmp3 = tmp2 - tmp1 tmp5 = tmp3 * tmp4 tmp7 = tmp1 * tmp6 tmp8 = tmp5 + tmp7 tmp9 = libdevice.tanh(tmp8) tl.store(out_ptr0 + (x0), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, primals_3, buf0, 48, grid=grid(48), stream=stream0) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_source], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(primals_1, primals_2, buf3, 32, grid=grid(32), stream=stream0) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_target], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf4) del primals_8 del primals_9 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [z, sub, mul, mul_1, add, tanh], Original ATen: [aten.sigmoid, aten.rsub, aten.mul, aten.add, aten.tanh] triton_poi_fused_add_mul_rsub_sigmoid_tanh_2.run(buf1, buf4, buf2, buf5, 16, grid=grid(16), stream=stream0) return (buf5, primals_3, buf0, buf1, buf2, buf3, buf4, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 12), (12, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class BothContextGate(nn.Module): """Apply the context gate to both contexts""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(BothContextGate, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh((1.0 - z) * target + z * source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = xindex // 12 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tl.full([1], 12, tl.int64) tmp14 = tl.load(in_ptr2 + (4 * x1 + (-8 + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_add_mul_rsub_sigmoid_tanh_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp4 = tl.load(in_ptr1 + x0, xmask) tmp6 = tl.load(in_ptr2 + x0, xmask) tmp1 = tl.sigmoid(tmp0) tmp2 = 1.0 tmp3 = tmp2 - tmp1 tmp5 = tmp3 * tmp4 tmp7 = tmp1 * tmp6 tmp8 = tmp5 + tmp7 tmp9 = libdevice.tanh(tmp8) tl.store(out_ptr0 + x0, tmp9, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(48)](primals_1, primals_2, primals_3, buf0, 48, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor( primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_1[grid(32)](primals_1, primals_2, buf3, 32, XBLOCK=32, num_warps=1, num_stages=1) del primals_1 del primals_2 buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_9, buf3, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf4) del primals_8 del primals_9 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) triton_poi_fused_add_mul_rsub_sigmoid_tanh_2[grid(16)](buf1, buf4, buf2, buf5, 16, XBLOCK=16, num_warps=1, num_stages=1) return buf5, primals_3, buf0, buf1, buf2, buf3, buf4, buf5 class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class BothContextGateNew(nn.Module): """Apply the context gate to both contexts""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(BothContextGateNew, self).__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, input_0, input_1, input_2): primals_4 = self.context_gate.gate.weight primals_5 = self.context_gate.gate.bias primals_1 = self.context_gate.source_proj.weight primals_7 = self.context_gate.source_proj.bias primals_8 = self.context_gate.target_proj.weight primals_9 = self.context_gate.target_proj.bias primals_2 = input_0 primals_3 = input_1 primals_6 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0]
AndrewM1998/MultimodalNMT
BothContextGate
false
7,717
[ "MIT" ]
40
b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
https://github.com/AndrewM1998/MultimodalNMT/tree/b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target class Model(nn.Module): """Apply the context gate to both contexts""" def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() self.context_gate = ContextGate(embeddings_size, decoder_size, attention_size, output_size) self.tanh = nn.Tanh() def forward(self, prev_emb, dec_state, attn_state): z, source, target = self.context_gate(prev_emb, dec_state, attn_state) return self.tanh((1.0 - z) * target + z * source) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
ContextGate
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5s/c5s7q2ybzwodeuorig3awcwebk53edcn54ogeiiskva3k6c4iqxd.py # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] # Source node to ATen node mapping: # input_tensor => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2, %primals_3], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = (xindex // 12) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tmp12 = tl.full([1], 12, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tl.load(in_ptr2 + ((4*x1) + ((-8) + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/32/c32slg6hax4e5s5lih7gq4k2u4kiyq7iy3dwygl5hzxvxpvxxodr.py # Topologically Sorted Source Nodes: [z], Original ATen: [aten.sigmoid] # Source node to ATen node mapping: # z => sigmoid # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_5), kwargs = {}) # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_sigmoid_1 = async_compile.triton('triton_poi_fused_sigmoid_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sigmoid_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sigmoid_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/mt/cmtt4jgavxgyxw4hrt3tqlulzsn4ezp2jrwnzdwmgwcfb3ryqurt.py # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat_1 => cat_1 # Graph fragment: # %cat_1 : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 1), kwargs = {}) triton_poi_fused_cat_2 = async_compile.triton('triton_poi_fused_cat_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) # Topologically Sorted Source Nodes: [input_tensor], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, primals_3, buf0, 48, grid=grid(48), stream=stream0) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), out=buf1) del primals_4 buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [z], Original ATen: [aten.sigmoid] triton_poi_fused_sigmoid_1.run(buf2, primals_5, 16, grid=grid(16), stream=stream0) del primals_5 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_source], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_6 del primals_7 buf4 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat_1], Original ATen: [aten.cat] triton_poi_fused_cat_2.run(primals_1, primals_2, buf4, 32, grid=grid(32), stream=stream0) del primals_1 del primals_2 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [proj_target], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, buf4, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_8 del primals_9 return (buf2, buf3, buf5, primals_3, buf0, buf2, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 12), (12, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.cuda class ContextGate(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGate, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 48 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 12 x1 = xindex // 12 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tmp6 & tmp8 tmp10 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp9 & xmask, eviction_policy='evict_last', other=0.0) tmp11 = tmp0 >= tmp7 tl.full([1], 12, tl.int64) tmp14 = tl.load(in_ptr2 + (4 * x1 + (-8 + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tl.where(tmp9, tmp10, tmp14) tmp16 = tl.where(tmp4, tmp5, tmp15) tl.store(out_ptr0 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_sigmoid_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 12), (12, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 8), (8, 1)) assert_size_stride(primals_9, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 12), (12, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(48)](primals_1, primals_2, primals_3, buf0, 48, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf0, reinterpret_tensor(primals_4, (12, 4), (1, 12), 0), out=buf1) del primals_4 buf2 = buf1 del buf1 triton_poi_fused_sigmoid_1[grid(16)](buf2, primals_5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_5 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, primals_3, reinterpret_tensor( primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_6 del primals_7 buf4 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_2[grid(32)](primals_1, primals_2, buf4, 32, XBLOCK=32, num_warps=1, num_stages=1) del primals_1 del primals_2 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_9, buf4, reinterpret_tensor(primals_8, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_8 del primals_9 return buf2, buf3, buf5, primals_3, buf0, buf2, buf4 class ContextGateNew(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super(ContextGateNew, self).__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, input_0, input_1, input_2): primals_4 = self.gate.weight primals_5 = self.gate.bias primals_1 = self.source_proj.weight primals_7 = self.source_proj.bias primals_8 = self.target_proj.weight primals_9 = self.target_proj.bias primals_2 = input_0 primals_3 = input_1 primals_6 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0], output[1], output[2]
AndrewM1998/MultimodalNMT
ContextGate
false
7,718
[ "MIT" ]
40
b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
https://github.com/AndrewM1998/MultimodalNMT/tree/b66d3a40ac9bc5c11ae124f51d1a9abf7cd6a04b
import torch import torch.nn as nn import torch.cuda class Model(nn.Module): """ Context gate is a decoder module that takes as input the previous word embedding, the current decoder state and the attention state, and produces a gate. The gate can be used to select the input from the target side context (decoder state), from the source context (attention state) or both. """ def __init__(self, embeddings_size, decoder_size, attention_size, output_size): super().__init__() input_size = embeddings_size + decoder_size + attention_size self.gate = nn.Linear(input_size, output_size, bias=True) self.sig = nn.Sigmoid() self.source_proj = nn.Linear(attention_size, output_size) self.target_proj = nn.Linear(embeddings_size + decoder_size, output_size) def forward(self, prev_emb, dec_state, attn_state): input_tensor = torch.cat((prev_emb, dec_state, attn_state), dim=1) z = self.sig(self.gate(input_tensor)) proj_source = self.source_proj(attn_state) proj_target = self.target_proj(torch.cat((prev_emb, dec_state), dim=1)) return z, proj_source, proj_target def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'embeddings_size': 4, 'decoder_size': 4, 'attention_size': 4, 'output_size': 4}]
LandmarkLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/66/c66uogwgeae4cbjin36g7u3qjflnul45lmdrbd7zkxs5tc5qww23.py # Topologically Sorted Source Nodes: [x, absolute_x, gt, truediv, add, log, mul, sub_1, losses, sum_1], Original ATen: [aten.sub, aten.abs, aten.lt, aten.div, aten.add, aten.log, aten.mul, aten.where, aten.sum] # Source node to ATen node mapping: # absolute_x => abs_1 # add => add # gt => lt # log => log # losses => where # mul => mul # sub_1 => sub_1 # sum_1 => sum_1 # truediv => div # x => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%view_1, %view), kwargs = {}) # %abs_1 : [num_users=3] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %lt : [num_users=1] = call_function[target=torch.ops.aten.lt.Scalar](args = (%abs_1, 10.0), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%abs_1, 2.0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%div, 1.0), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%log, 10.0), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%abs_1, -7.91759469228055), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%lt, %mul, %sub_1), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%where, [1, 2]), kwargs = {}) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0 = async_compile.triton('triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 196 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = rindex < rnumel r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (196*x0)), rmask & xmask, other=0.0) tmp1 = tl.load(in_ptr1 + (r1 + (196*x0)), rmask & xmask, other=0.0) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 10.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = 1.0 tmp9 = tmp7 + tmp8 tmp10 = tl_math.log(tmp9) tmp11 = tmp10 * tmp4 tmp12 = -7.91759469228055 tmp13 = tmp3 - tmp12 tmp14 = tl.where(tmp5, tmp11, tmp13) tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(rmask & xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tl.store(out_ptr0 + (x0), tmp18, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/w2/cw2c7vkk2lnhm6ivvews4xcgtjinqbw56opqwjfy2go2o2nll3qc.py # Topologically Sorted Source Nodes: [loss], Original ATen: [aten.mean] # Source node to ATen node mapping: # loss => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%sum_1, [0]), kwargs = {}) triton_per_fused_mean_1 = async_compile.triton('triton_per_fused_mean_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 4], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {2: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=(2,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_1(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 4 RBLOCK: tl.constexpr = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.sum(tmp1, 1)[:, None] tmp4 = 4.0 tmp5 = tmp3 / tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp5, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 98, 2), (196, 2, 1)) assert_size_stride(arg1_1, (4, 98, 2), (196, 2, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, ), (1, ), torch.float32) # Topologically Sorted Source Nodes: [x, absolute_x, gt, truediv, add, log, mul, sub_1, losses, sum_1], Original ATen: [aten.sub, aten.abs, aten.lt, aten.div, aten.add, aten.log, aten.mul, aten.where, aten.sum] stream0 = get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0.run(arg0_1, arg1_1, buf0, 4, 196, grid=grid(4), stream=stream0) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [loss], Original ATen: [aten.mean] triton_per_fused_mean_1.run(buf2, buf0, 1, 4, grid=grid(1), stream=stream0) del buf0 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 98, 2), (196, 2, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 98, 2), (196, 2, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch from torch import nn def wing_loss(y_true, y_pred, N_LANDMARK, w=10.0, epsilon=2.0): y_pred = y_pred.reshape(-1, N_LANDMARK, 2) y_true = y_true.reshape(-1, N_LANDMARK, 2) x = y_true - y_pred c = w * (1.0 - math.log(1.0 + w / epsilon)) absolute_x = torch.abs(x) losses = torch.where(w > absolute_x, w * torch.log(1.0 + absolute_x / epsilon), absolute_x - c) loss = torch.mean(torch.sum(losses, axis=[1, 2]), axis=0) return loss class LandmarkLoss(nn.Module): def __init__(self, n_landmark=98): super(LandmarkLoss, self).__init__() self.n_landmark = n_landmark def forward(self, landmark_gt, landmark_pred): loss = wing_loss(landmark_gt, landmark_pred, N_LANDMARK=self.n_landmark ) return loss def get_inputs(): return [torch.rand([4, 98, 2]), torch.rand([4, 98, 2])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import math from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 rnumel = 196 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] rmask = rindex < rnumel r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 196 * x0), rmask & xmask, other=0.0) tmp1 = tl.load(in_ptr1 + (r1 + 196 * x0), rmask & xmask, other=0.0) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 10.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = 1.0 tmp9 = tmp7 + tmp8 tmp10 = tl_math.log(tmp9) tmp11 = tmp10 * tmp4 tmp12 = -7.91759469228055 tmp13 = tmp3 - tmp12 tmp14 = tl.where(tmp5, tmp11, tmp13) tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(rmask & xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tl.store(out_ptr0 + x0, tmp18, xmask) @triton.jit def triton_per_fused_mean_1(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 4 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.sum(tmp1, 1)[:, None] tmp4 = 4.0 tmp5 = tmp3 / tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp5, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 98, 2), (196, 2, 1)) assert_size_stride(arg1_1, (4, 98, 2), (196, 2, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4,), (1,), torch.float32) get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0[grid(4)](arg0_1 , arg1_1, buf0, 4, 196, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 triton_per_fused_mean_1[grid(1)](buf2, buf0, 1, 4, XBLOCK=1, num_warps=2, num_stages=1) del buf0 return buf2, def wing_loss(y_true, y_pred, N_LANDMARK, w=10.0, epsilon=2.0): y_pred = y_pred.reshape(-1, N_LANDMARK, 2) y_true = y_true.reshape(-1, N_LANDMARK, 2) x = y_true - y_pred c = w * (1.0 - math.log(1.0 + w / epsilon)) absolute_x = torch.abs(x) losses = torch.where(w > absolute_x, w * torch.log(1.0 + absolute_x / epsilon), absolute_x - c) loss = torch.mean(torch.sum(losses, axis=[1, 2]), axis=0) return loss class LandmarkLossNew(nn.Module): def __init__(self, n_landmark=98): super(LandmarkLossNew, self).__init__() self.n_landmark = n_landmark def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AnthonyF333/FaceLandmark_PFLD_UltraLight
LandmarkLoss
false
7,719
[ "Apache-2.0" ]
38
c7c9543bd7f44ab434240eab077242f259df21f8
https://github.com/AnthonyF333/FaceLandmark_PFLD_UltraLight/tree/c7c9543bd7f44ab434240eab077242f259df21f8
import math import torch from torch import nn def wing_loss(y_true, y_pred, N_LANDMARK, w=10.0, epsilon=2.0): y_pred = y_pred.reshape(-1, N_LANDMARK, 2) y_true = y_true.reshape(-1, N_LANDMARK, 2) x = y_true - y_pred c = w * (1.0 - math.log(1.0 + w / epsilon)) absolute_x = torch.abs(x) losses = torch.where(w > absolute_x, w * torch.log(1.0 + absolute_x / epsilon), absolute_x - c) loss = torch.mean(torch.sum(losses, axis=[1, 2]), axis=0) return loss class Model(nn.Module): def __init__(self, n_landmark=98): super().__init__() self.n_landmark = n_landmark def forward(self, landmark_gt, landmark_pred): loss = wing_loss(landmark_gt, landmark_pred, N_LANDMARK=self.n_landmark ) return loss def get_inputs(): return [torch.rand([4, 98, 2]), torch.rand([4, 98, 2])] def get_init_inputs(): return []
MFH
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ry/crymkmzyr52ux5i5fsugcweymgo3bqzkvrnx3ycb6v4j4irckdjn.py # Topologically Sorted Source Nodes: [z], Original ATen: [aten.cat] # Source node to ATen node mapping: # z => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%sum_1, %sum_2], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 12, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 9600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 2400 x1 = (xindex // 2400) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 1200, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((2*x0) + (2400*x1)), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tl.full([1], 0, tl.int32) tmp7 = triton_helpers.maximum(tmp6, tmp5) tmp8 = tl.load(in_ptr1 + ((2*x0) + (2400*x1)), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp9 = triton_helpers.maximum(tmp6, tmp8) tmp10 = tmp7 * tmp9 tmp11 = tl.load(in_ptr0 + (1 + (2*x0) + (2400*x1)), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp12 = triton_helpers.maximum(tmp6, tmp11) tmp13 = tl.load(in_ptr1 + (1 + (2*x0) + (2400*x1)), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp14 = triton_helpers.maximum(tmp6, tmp13) tmp15 = tmp12 * tmp14 tmp16 = tmp10 + tmp15 tmp17 = tl.full(tmp16.shape, 0.0, tmp16.dtype) tmp18 = tl.where(tmp4, tmp16, tmp17) tmp19 = tmp0 >= tmp3 tmp20 = tl.full([1], 2400, tl.int64) tmp21 = tmp0 < tmp20 tmp22 = tl.load(in_ptr2 + ((2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp23 = triton_helpers.maximum(tmp6, tmp22) tmp24 = tl.load(in_ptr3 + ((2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp25 = triton_helpers.maximum(tmp6, tmp24) tmp26 = tmp23 * tmp25 tmp27 = tl.load(in_ptr0 + ((2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp28 = triton_helpers.maximum(tmp6, tmp27) tmp29 = tl.load(in_ptr1 + ((2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp30 = triton_helpers.maximum(tmp6, tmp29) tmp31 = tmp28 * tmp30 tmp32 = tmp26 * tmp31 tmp33 = tl.load(in_ptr2 + (1 + (2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp34 = triton_helpers.maximum(tmp6, tmp33) tmp35 = tl.load(in_ptr3 + (1 + (2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp36 = triton_helpers.maximum(tmp6, tmp35) tmp37 = tmp34 * tmp36 tmp38 = tl.load(in_ptr0 + (1 + (2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp39 = triton_helpers.maximum(tmp6, tmp38) tmp40 = tl.load(in_ptr1 + (1 + (2*((-1200) + x0)) + (2400*x1)), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp41 = triton_helpers.maximum(tmp6, tmp40) tmp42 = tmp39 * tmp41 tmp43 = tmp37 * tmp42 tmp44 = tmp32 + tmp43 tmp45 = tl.full(tmp44.shape, 0.0, tmp44.dtype) tmp46 = tl.where(tmp19, tmp44, tmp45) tmp47 = tl.where(tmp4, tmp18, tmp46) tl.store(out_ptr0 + (x2), tmp47, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xo/cxoy25xst5lr7sipjfpjv7a72jjvrc7bpzabd73irv466cnlaugy.py # Topologically Sorted Source Nodes: [z_6], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # z_6 => relu_4 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_11), kwargs = {}) # %relu_4 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_4, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (2400, 4), (4, 1)) assert_size_stride(primals_3, (2400, ), (1, )) assert_size_stride(primals_4, (2400, 4), (4, 1)) assert_size_stride(primals_5, (2400, ), (1, )) assert_size_stride(primals_6, (2400, 4), (4, 1)) assert_size_stride(primals_7, (2400, ), (1, )) assert_size_stride(primals_8, (2400, 4), (4, 1)) assert_size_stride(primals_9, (2400, ), (1, )) assert_size_stride(primals_10, (4, 2400), (2400, 1)) assert_size_stride(primals_11, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x0], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16), reinterpret_tensor(primals_4, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x0_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0), reinterpret_tensor(primals_6, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [x1_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16), reinterpret_tensor(primals_8, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_8 del primals_9 buf4 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) # Topologically Sorted Source Nodes: [z], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(buf0, buf1, buf2, buf3, buf4, 9600, grid=grid(9600), stream=stream0) buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf4, reinterpret_tensor(primals_10, (2400, 4), (1, 2400), 0), out=buf5) buf6 = buf5; del buf5 # reuse buf7 = empty_strided_cuda((4, 4), (4, 1), torch.bool) # Topologically Sorted Source Nodes: [z_6], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf6, primals_11, buf7, 16, grid=grid(16), stream=stream0) del primals_11 return (buf6, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0), buf0, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16), buf1, buf2, buf3, buf4, buf7, primals_10, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((2400, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((2400, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, 2400), (2400, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from torch.nn import functional as F class MFH(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(MFH, self).__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.factor = factor self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0_0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_0 = nn.Linear(input_dims[1], mm_dim * factor) self.linear0_1 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim * 2, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0_0(x[0]) x1 = self.linear1_0(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z_0_skip = x0 * x1 if self.dropout_pre_lin: z_0_skip = F.dropout(z_0_skip, p=self.dropout_pre_lin, training =self.training) z_0 = z_0_skip.view(z_0_skip.size(0), self.mm_dim, self.factor) z_0 = z_0.sum(2) if self.normalize: z_0 = torch.sqrt(F.relu(z_0)) - torch.sqrt(F.relu(-z_0)) z_0 = F.normalize(z_0, p=2) x0 = self.linear0_1(x[0]) x1 = self.linear1_1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z_1 = x0 * x1 * z_0_skip if self.dropout_pre_lin > 0: z_1 = F.dropout(z_1, p=self.dropout_pre_lin, training=self.training ) z_1 = z_1.view(z_1.size(0), self.mm_dim, self.factor) z_1 = z_1.sum(2) if self.normalize: z_1 = torch.sqrt(F.relu(z_1)) - torch.sqrt(F.relu(-z_1)) z_1 = F.normalize(z_1, p=2) cat_dim = z_0.dim() - 1 z = torch.cat([z_0, z_1], cat_dim) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'input_dims': [4, 4], 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 9600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 2400 x1 = xindex // 2400 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 1200, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (2 * x0 + 2400 * x1), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tl.full([1], 0, tl.int32) tmp7 = triton_helpers.maximum(tmp6, tmp5) tmp8 = tl.load(in_ptr1 + (2 * x0 + 2400 * x1), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp9 = triton_helpers.maximum(tmp6, tmp8) tmp10 = tmp7 * tmp9 tmp11 = tl.load(in_ptr0 + (1 + 2 * x0 + 2400 * x1), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp12 = triton_helpers.maximum(tmp6, tmp11) tmp13 = tl.load(in_ptr1 + (1 + 2 * x0 + 2400 * x1), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp14 = triton_helpers.maximum(tmp6, tmp13) tmp15 = tmp12 * tmp14 tmp16 = tmp10 + tmp15 tmp17 = tl.full(tmp16.shape, 0.0, tmp16.dtype) tmp18 = tl.where(tmp4, tmp16, tmp17) tmp19 = tmp0 >= tmp3 tl.full([1], 2400, tl.int64) tmp22 = tl.load(in_ptr2 + (2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp23 = triton_helpers.maximum(tmp6, tmp22) tmp24 = tl.load(in_ptr3 + (2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp25 = triton_helpers.maximum(tmp6, tmp24) tmp26 = tmp23 * tmp25 tmp27 = tl.load(in_ptr0 + (2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp28 = triton_helpers.maximum(tmp6, tmp27) tmp29 = tl.load(in_ptr1 + (2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp30 = triton_helpers.maximum(tmp6, tmp29) tmp31 = tmp28 * tmp30 tmp32 = tmp26 * tmp31 tmp33 = tl.load(in_ptr2 + (1 + 2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp34 = triton_helpers.maximum(tmp6, tmp33) tmp35 = tl.load(in_ptr3 + (1 + 2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp36 = triton_helpers.maximum(tmp6, tmp35) tmp37 = tmp34 * tmp36 tmp38 = tl.load(in_ptr0 + (1 + 2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp39 = triton_helpers.maximum(tmp6, tmp38) tmp40 = tl.load(in_ptr1 + (1 + 2 * (-1200 + x0) + 2400 * x1), tmp19 & xmask, eviction_policy='evict_last', other=0.0) tmp41 = triton_helpers.maximum(tmp6, tmp40) tmp42 = tmp39 * tmp41 tmp43 = tmp37 * tmp42 tmp44 = tmp32 + tmp43 tmp45 = tl.full(tmp44.shape, 0.0, tmp44.dtype) tmp46 = tl.where(tmp19, tmp44, tmp45) tmp47 = tl.where(tmp4, tmp18, tmp46) tl.store(out_ptr0 + x2, tmp47, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11) = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (2400, 4), (4, 1)) assert_size_stride(primals_3, (2400,), (1,)) assert_size_stride(primals_4, (2400, 4), (4, 1)) assert_size_stride(primals_5, (2400,), (1,)) assert_size_stride(primals_6, (2400, 4), (4, 1)) assert_size_stride(primals_7, (2400,), (1,)) assert_size_stride(primals_8, (2400, 4), (4, 1)) assert_size_stride(primals_9, (2400,), (1,)) assert_size_stride(primals_10, (4, 2400), (2400, 1)) assert_size_stride(primals_11, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 0), reinterpret_tensor(primals_2, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 16), reinterpret_tensor(primals_4, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_7, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 0), reinterpret_tensor(primals_6, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_6 del primals_7 buf3 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) extern_kernels.addmm(primals_9, reinterpret_tensor(primals_1, (4, 4 ), (4, 1), 16), reinterpret_tensor(primals_8, (4, 2400), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_8 del primals_9 buf4 = empty_strided_cuda((4, 2400), (2400, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(9600)](buf0, buf1, buf2, buf3, buf4, 9600, XBLOCK=128, num_warps=4, num_stages=1) buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf4, reinterpret_tensor(primals_10, (2400, 4), ( 1, 2400), 0), out=buf5) buf6 = buf5 del buf5 buf7 = empty_strided_cuda((4, 4), (4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(16)](buf6, primals_11, buf7, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_11 return buf6, reinterpret_tensor(primals_1, (4, 4), (4, 1), 0 ), buf0, reinterpret_tensor(primals_1, (4, 4), (4, 1), 16 ), buf1, buf2, buf3, buf4, buf7, primals_10 class MFHNew(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(MFHNew, self).__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.factor = factor self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0_0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_0 = nn.Linear(input_dims[1], mm_dim * factor) self.linear0_1 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim * 2, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, input_0): primals_2 = self.linear0_0.weight primals_3 = self.linear0_0.bias primals_4 = self.linear1_0.weight primals_5 = self.linear1_0.bias primals_6 = self.linear0_1.weight primals_7 = self.linear0_1.bias primals_8 = self.linear1_1.weight primals_9 = self.linear1_1.bias primals_10 = self.linear_out.weight primals_11 = self.linear_out.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return output[0]
AndresPMD/GCN_classification
MFH
false
7,720
[ "MIT" ]
39
b005c4256d68f1f90a7f73e7fdb3d066448de28c
https://github.com/AndresPMD/GCN_classification/tree/b005c4256d68f1f90a7f73e7fdb3d066448de28c
import torch from torch import nn from torch.nn import functional as F class Model(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, factor=2, activ_input='relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super().__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.factor = factor self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0_0 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_0 = nn.Linear(input_dims[1], mm_dim * factor) self.linear0_1 = nn.Linear(input_dims[0], mm_dim * factor) self.linear1_1 = nn.Linear(input_dims[1], mm_dim * factor) self.linear_out = nn.Linear(mm_dim * 2, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0_0(x[0]) x1 = self.linear1_0(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z_0_skip = x0 * x1 if self.dropout_pre_lin: z_0_skip = F.dropout(z_0_skip, p=self.dropout_pre_lin, training =self.training) z_0 = z_0_skip.view(z_0_skip.size(0), self.mm_dim, self.factor) z_0 = z_0.sum(2) if self.normalize: z_0 = torch.sqrt(F.relu(z_0)) - torch.sqrt(F.relu(-z_0)) z_0 = F.normalize(z_0, p=2) x0 = self.linear0_1(x[0]) x1 = self.linear1_1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z_1 = x0 * x1 * z_0_skip if self.dropout_pre_lin > 0: z_1 = F.dropout(z_1, p=self.dropout_pre_lin, training=self.training ) z_1 = z_1.view(z_1.size(0), self.mm_dim, self.factor) z_1 = z_1.sum(2) if self.normalize: z_1 = torch.sqrt(F.relu(z_1)) - torch.sqrt(F.relu(-z_1)) z_1 = F.normalize(z_1, p=2) cat_dim = z_0.dim() - 1 z = torch.cat([z_0, z_1], cat_dim) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [4]
LinearSum
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/4y/c4yedjzei3qgi633ob4kzrhqjqv2suo4jvbg5af6ihkhyftz43mm.py # Topologically Sorted Source Nodes: [x0_1, x1_1, z], Original ATen: [aten.relu, aten.add, aten.threshold_backward] # Source node to ATen node mapping: # x0_1 => relu # x1_1 => relu_1 # z => add # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_3,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%relu, %relu_1), kwargs = {}) # %le_1 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_1, 0), kwargs = {}) # %le_2 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_add_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_add_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*i1', 6: '*i1', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_relu_threshold_backward_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_relu_threshold_backward_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, out_ptr1, out_ptr2, xnumel, XBLOCK : tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 1200 x1 = (xindex // 1200) tmp0 = tl.load(in_ptr0 + (x0 + (1216*x1)), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + (x0 + (1216*x1)), xmask) tmp6 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp7 = tmp5 + tmp6 tmp8 = triton_helpers.maximum(tmp3, tmp7) tmp9 = tmp4 + tmp8 tmp10 = 0.0 tmp11 = tmp8 <= tmp10 tmp12 = tmp4 <= tmp10 tl.store(out_ptr0 + (x0 + (1216*x1)), tmp9, xmask) tl.store(out_ptr1 + (x0 + (1280*x1)), tmp11, xmask) tl.store(out_ptr2 + (x0 + (1280*x1)), tmp12, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/2f/c2fdjj4ffoa24qdrhmm2rlzpkphtxofjp54y47wnmyr3rx3f7mht.py # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # z_2 => relu_2 # Graph fragment: # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_5,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_2, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1200, 4), (4, 1)) assert_size_stride(primals_3, (1200, ), (1, )) assert_size_stride(primals_4, (1200, 4), (4, 1)) assert_size_stride(primals_5, (1200, ), (1, )) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 1200), (1, 4), 0), out=buf0) del primals_2 buf1 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 64), reinterpret_tensor(primals_4, (4, 1200), (1, 4), 0), out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 1200), (4864, 1216, 1), torch.float32) buf6 = empty_strided_cuda((4, 4, 1200), (5120, 1280, 1), torch.bool) buf7 = empty_strided_cuda((4, 4, 1200), (5120, 1280, 1), torch.bool) # Topologically Sorted Source Nodes: [x0_1, x1_1, z], Original ATen: [aten.relu, aten.add, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_add_relu_threshold_backward_0.run(buf0, primals_3, buf1, primals_5, buf2, buf6, buf7, 19200, grid=grid(19200), stream=stream0) del buf0 del buf1 del primals_3 del primals_5 buf3 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0), reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3) buf4 = reinterpret_tensor(buf3, (4, 4, 4), (16, 4, 1), 0); del buf3 # reuse buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [z_2], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf4, primals_7, buf5, 64, grid=grid(64), stream=stream0) del primals_7 return (buf4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_1, (16, 4), (4, 1), 64), reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0), buf5, primals_6, buf6, buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1200, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1200, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((1200, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((1200, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 1200), (1200, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from torch.nn import functional as F class LinearSum(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(LinearSum, self).__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 + x1 if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) if self.dropout_pre_lin > 0: z = F.dropout(z, p=self.dropout_pre_lin, training=self.training) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_dims': [4, 4], 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_relu_threshold_backward_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, out_ptr1, out_ptr2, xnumel, XBLOCK: tl. constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 1200 x1 = xindex // 1200 tmp0 = tl.load(in_ptr0 + (x0 + 1216 * x1), xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + (x0 + 1216 * x1), xmask) tmp6 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp7 = tmp5 + tmp6 tmp8 = triton_helpers.maximum(tmp3, tmp7) tmp9 = tmp4 + tmp8 tmp10 = 0.0 tmp11 = tmp8 <= tmp10 tmp12 = tmp4 <= tmp10 tl.store(out_ptr0 + (x0 + 1216 * x1), tmp9, xmask) tl.store(out_ptr1 + (x0 + 1280 * x1), tmp11, xmask) tl.store(out_ptr2 + (x0 + 1280 * x1), tmp12, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1200, 4), (4, 1)) assert_size_stride(primals_3, (1200,), (1,)) assert_size_stride(primals_4, (1200, 4), (4, 1)) assert_size_stride(primals_5, (1200,), (1,)) assert_size_stride(primals_6, (4, 1200), (1200, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 1200), (1, 4), 0), out=buf0) del primals_2 buf1 = empty_strided_cuda((16, 1200), (1216, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 64 ), reinterpret_tensor(primals_4, (4, 1200), (1, 4), 0), out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 1200), (4864, 1216, 1), torch.float32) buf6 = empty_strided_cuda((4, 4, 1200), (5120, 1280, 1), torch.bool) buf7 = empty_strided_cuda((4, 4, 1200), (5120, 1280, 1), torch.bool) get_raw_stream(0) triton_poi_fused_add_relu_threshold_backward_0[grid(19200)](buf0, primals_3, buf1, primals_5, buf2, buf6, buf7, 19200, XBLOCK=128, num_warps=4, num_stages=1) del buf0 del buf1 del primals_3 del primals_5 buf3 = empty_strided_cuda((16, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0 ), reinterpret_tensor(primals_6, (1200, 4), (1, 1200), 0), out=buf3 ) buf4 = reinterpret_tensor(buf3, (4, 4, 4), (16, 4, 1), 0) del buf3 buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(64)](buf4, primals_7, buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_7 return buf4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0 ), reinterpret_tensor(primals_1, (16, 4), (4, 1), 64 ), reinterpret_tensor(buf2, (16, 1200), (1216, 1), 0 ), buf5, primals_6, buf6, buf7 class LinearSumNew(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super(LinearSumNew, self).__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, input_0): primals_2 = self.linear0.weight primals_3 = self.linear0.bias primals_4 = self.linear1.weight primals_5 = self.linear1.bias primals_6 = self.linear_out.weight primals_7 = self.linear_out.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AndresPMD/GCN_classification
LinearSum
false
7,721
[ "MIT" ]
39
b005c4256d68f1f90a7f73e7fdb3d066448de28c
https://github.com/AndresPMD/GCN_classification/tree/b005c4256d68f1f90a7f73e7fdb3d066448de28c
import torch from torch import nn from torch.nn import functional as F class Model(nn.Module): def __init__(self, input_dims, output_dim, mm_dim=1200, activ_input= 'relu', activ_output='relu', normalize=False, dropout_input=0.0, dropout_pre_lin=0.0, dropout_output=0.0): super().__init__() self.input_dims = input_dims self.output_dim = output_dim self.mm_dim = mm_dim self.activ_input = activ_input self.activ_output = activ_output self.normalize = normalize self.dropout_input = dropout_input self.dropout_pre_lin = dropout_pre_lin self.dropout_output = dropout_output self.linear0 = nn.Linear(input_dims[0], mm_dim) self.linear1 = nn.Linear(input_dims[1], mm_dim) self.linear_out = nn.Linear(mm_dim, output_dim) self.n_params = sum(p.numel() for p in self.parameters() if p. requires_grad) def forward(self, x): x0 = self.linear0(x[0]) x1 = self.linear1(x[1]) if self.activ_input: x0 = getattr(F, self.activ_input)(x0) x1 = getattr(F, self.activ_input)(x1) if self.dropout_input > 0: x0 = F.dropout(x0, p=self.dropout_input, training=self.training) x1 = F.dropout(x1, p=self.dropout_input, training=self.training) z = x0 + x1 if self.normalize: z = torch.sqrt(F.relu(z)) - torch.sqrt(F.relu(-z)) z = F.normalize(z, p=2) if self.dropout_pre_lin > 0: z = F.dropout(z, p=self.dropout_pre_lin, training=self.training) z = self.linear_out(z) if self.activ_output: z = getattr(F, self.activ_output)(z) if self.dropout_output > 0: z = F.dropout(z, p=self.dropout_output, training=self.training) return z def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
L1Loss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/yk/cyks2icyvnk2b4pd7r2kedzvq6f3vgtslw4ocvbbo7zqbogzbkib.py # Topologically Sorted Source Nodes: [sub, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.mean, aten.mul] # Source node to ATen node mapping: # loss => abs_1 # loss_1 => mean # loss_bbox => mul # sub => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%abs_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_abs_mean_mul_sub_0 = async_compile.triton('triton_per_fused_abs_mean_mul_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_mean_mul_sub_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_mean_mul_sub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [sub, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.mean, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_abs_mean_mul_sub_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def l1_loss(pred, target): """L1 loss. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. Returns: torch.Tensor: Calculated loss """ assert pred.size() == target.size() and target.numel() > 0 loss = torch.abs(pred - target) return loss class L1Loss(nn.Module): """L1 loss. Args: reduction (str, optional): The method to reduce the loss. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of loss. """ def __init__(self, reduction='mean', loss_weight=1.0): super(L1Loss, self).__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None): """Forward function. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. weight (torch.Tensor, optional): The weight of loss for each prediction. Defaults to None. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction_override (str, optional): The reduction method used to override the original reduction method of the loss. Defaults to None. """ assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * l1_loss(pred, target, weight, reduction=reduction, avg_factor=avg_factor) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_mean_mul_sub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_abs_mean_mul_sub_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def l1_loss(pred, target): """L1 loss. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. Returns: torch.Tensor: Calculated loss """ assert pred.size() == target.size() and target.numel() > 0 loss = torch.abs(pred - target) return loss class L1LossNew(nn.Module): """L1 loss. Args: reduction (str, optional): The method to reduce the loss. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of loss. """ def __init__(self, reduction='mean', loss_weight=1.0): super(L1LossNew, self).__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Andrew-Zhu/DyFPN
L1Loss
false
7,722
[ "Apache-2.0" ]
32
a74463b59c4ce28253c2449a07c0f6692a0147a1
https://github.com/Andrew-Zhu/DyFPN/tree/a74463b59c4ce28253c2449a07c0f6692a0147a1
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def l1_loss(pred, target): """L1 loss. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. Returns: torch.Tensor: Calculated loss """ assert pred.size() == target.size() and target.numel() > 0 loss = torch.abs(pred - target) return loss class Model(nn.Module): """L1 loss. Args: reduction (str, optional): The method to reduce the loss. Options are "none", "mean" and "sum". loss_weight (float, optional): The weight of loss. """ def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None): """Forward function. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction. weight (torch.Tensor, optional): The weight of loss for each prediction. Defaults to None. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction_override (str, optional): The reduction method used to override the original reduction # ... truncated (>4000 chars) for memory efficiency
DeconvBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/2q/c2qklzvneo3ccrwnjc6dittigc6cnfvolnyaniw6w36hayaa3mhk.py # Topologically Sorted Source Nodes: [out, out_1, out_2], Original ATen: [aten.convolution, aten.reflection_pad2d, aten.elu] # Source node to ATen node mapping: # out => convolution # out_1 => _unsafe_index, _unsafe_index_1 # out_2 => expm1, gt, mul, mul_2, where # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [2, 2], [1, 1], [1, 1], True, [0, 0], 1), kwargs = {}) # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%convolution, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_1]), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%_unsafe_index_1, 0), kwargs = {}) # %mul : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%_unsafe_index_1, 1.0), kwargs = {}) # %expm1 : [num_users=1] = call_function[target=torch.ops.aten.expm1.default](args = (%mul,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expm1, 1.0), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %mul, %mul_2), kwargs = {}) triton_poi_fused_convolution_elu_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_convolution_elu_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_elu_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_elu_reflection_pad2d_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) % 8 x4 = (xindex // 64) x2 = (xindex // 64) % 4 x5 = xindex tmp0 = tl.load(in_ptr0 + (48 + ((-1)*(tl_math.abs((-6) + x0))) + ((-7)*(tl_math.abs((-6) + x1))) + (49*x4)), xmask) tmp1 = tl.load(in_ptr1 + (x2), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp5 = 1.0 tmp6 = tmp2 * tmp5 tmp7 = libdevice.expm1(tmp6) tmp8 = tmp7 * tmp5 tmp9 = tl.where(tmp4, tmp6, tmp8) tl.store(out_ptr0 + (x5), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 7, 7), (196, 49, 7, 1)) buf1 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [out, out_1, out_2], Original ATen: [aten.convolution, aten.reflection_pad2d, aten.elu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_elu_reflection_pad2d_0.run(buf0, primals_2, buf1, 1024, grid=grid(1024), stream=stream0) del buf0 del primals_2 return (buf1, primals_1, primals_3, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class DeconvBlock(nn.Module): def __init__(self, in_channels, out_channels): super(DeconvBlock, self).__init__() self.conv = nn.ConvTranspose2d(in_channels, out_channels, kernel_size=3, stride=2, padding=1, output_padding=0) self.pad = nn.ReflectionPad2d((0, 1, 0, 1)) self.nonlin = nn.ELU(inplace=True) def forward(self, x): out = self.conv(x) out = self.pad(out) out = self.nonlin(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_elu_reflection_pad2d_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 % 8 x4 = xindex // 64 x2 = xindex // 64 % 4 x5 = xindex tmp0 = tl.load(in_ptr0 + (48 + -1 * tl_math.abs(-6 + x0) + -7 * tl_math .abs(-6 + x1) + 49 * x4), xmask) tmp1 = tl.load(in_ptr1 + x2, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp5 = 1.0 tmp6 = tmp2 * tmp5 tmp7 = libdevice.expm1(tmp6) tmp8 = tmp7 * tmp5 tmp9 = tl.where(tmp4, tmp6, tmp8) tl.store(out_ptr0 + x5, tmp9, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=True, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 7, 7), (196, 49, 7, 1)) buf1 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) get_raw_stream(0) triton_poi_fused_convolution_elu_reflection_pad2d_0[grid(1024)](buf0, primals_2, buf1, 1024, XBLOCK=256, num_warps=4, num_stages=1) del buf0 del primals_2 return buf1, primals_1, primals_3, buf1 class DeconvBlockNew(nn.Module): def __init__(self, in_channels, out_channels): super(DeconvBlockNew, self).__init__() self.conv = nn.ConvTranspose2d(in_channels, out_channels, kernel_size=3, stride=2, padding=1, output_padding=0) self.pad = nn.ReflectionPad2d((0, 1, 0, 1)) self.nonlin = nn.ELU(inplace=True) def forward(self, input_0): primals_1 = self.conv.weight primals_2 = self.conv.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArminMasoumian/GCNDepth
DeconvBlock
false
7,723
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_channels, out_channels): super().__init__() self.conv = nn.ConvTranspose2d(in_channels, out_channels, kernel_size=3, stride=2, padding=1, output_padding=0) self.pad = nn.ReflectionPad2d((0, 1, 0, 1)) self.nonlin = nn.ELU(inplace=True) def forward(self, x): out = self.conv(x) out = self.pad(out) out = self.nonlin(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
ConvBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/tt/ctthexrcgmoykvsyasq7xirwxi6m3yxgjocmuvarikaawgqvdiws.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] # Source node to ATen node mapping: # out => _unsafe_index, _unsafe_index_1 # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%primals_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_1]), kwargs = {}) triton_poi_fused_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = (xindex // 6) % 6 x2 = (xindex // 36) x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x3), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ty/ctyzpua7fjfn7hztwdpigb3gi7yf6hmfsexovkmknohzjtrj2z3h.py # Topologically Sorted Source Nodes: [out_1, out_2], Original ATen: [aten.convolution, aten.elu] # Source node to ATen node mapping: # out_1 => convolution # out_2 => expm1, gt, mul, mul_2, where # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%convolution, 0), kwargs = {}) # %mul : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convolution, 1.0), kwargs = {}) # %expm1 : [num_users=1] = call_function[target=torch.ops.aten.expm1.default](args = (%mul,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expm1, 1.0), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %mul, %mul_2), kwargs = {}) triton_poi_fused_convolution_elu_1 = async_compile.triton('triton_poi_fused_convolution_elu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_elu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_elu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp5 = 1.0 tmp6 = tmp2 * tmp5 tmp7 = libdevice.expm1(tmp6) tmp8 = tmp7 * tmp5 tmp9 = tl.where(tmp4, tmp6, tmp8) tl.store(in_out_ptr0 + (x3), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] stream0 = get_raw_stream(0) triton_poi_fused_reflection_pad2d_0.run(primals_1, buf0, 576, grid=grid(576), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [out_1, out_2], Original ATen: [aten.convolution, aten.elu] triton_poi_fused_convolution_elu_1.run(buf2, primals_3, 256, grid=grid(256), stream=stream0) del primals_3 return (buf2, primals_2, buf0, buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Conv3x3(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv3x3, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, x): out = self.pad(x) out = self.conv(out) return out class ConvBlock(nn.Module): def __init__(self, in_channels, out_channels): super(ConvBlock, self).__init__() self.conv = Conv3x3(in_channels, out_channels) self.nonlin = nn.ELU(inplace=True) def forward(self, x): out = self.conv(x) out = self.nonlin(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = xindex // 6 % 6 x2 = xindex // 36 x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x3, tmp0, xmask) @triton.jit def triton_poi_fused_convolution_elu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp5 = 1.0 tmp6 = tmp2 * tmp5 tmp7 = libdevice.expm1(tmp6) tmp8 = tmp7 * tmp5 tmp9 = tl.where(tmp4, tmp6, tmp8) tl.store(in_out_ptr0 + x3, tmp9, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) get_raw_stream(0) triton_poi_fused_reflection_pad2d_0[grid(576)](primals_1, buf0, 576, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1 del buf1 triton_poi_fused_convolution_elu_1[grid(256)](buf2, primals_3, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_3 return buf2, primals_2, buf0, buf2 class Conv3x3(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv3x3, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, x): out = self.pad(x) out = self.conv(out) return out class ConvBlockNew(nn.Module): def __init__(self, in_channels, out_channels): super(ConvBlockNew, self).__init__() self.conv = Conv3x3(in_channels, out_channels) self.nonlin = nn.ELU(inplace=True) def forward(self, input_0): primals_2 = self.conv.conv.weight primals_3 = self.conv.conv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArminMasoumian/GCNDepth
ConvBlock
false
7,724
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Conv3x3(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super().__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, x): out = self.pad(x) out = self.conv(out) return out class Model(nn.Module): def __init__(self, in_channels, out_channels): super().__init__() self.conv = Conv3x3(in_channels, out_channels) self.nonlin = nn.ELU(inplace=True) def forward(self, x): out = self.conv(x) out = self.nonlin(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
CrossEntropyLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/u2/cu2beycg2t2ghizs6f4qom7bxbxmajhdaakuyq6y2korxywhp6ba.py # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # loss => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) triton_poi_fused__log_softmax_0 = async_compile.triton('triton_poi_fused__log_softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x3), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ft/cftd5bo5nwp4mk44vcilyjf5fs66bazamiascpuokae72kshpzyi.py # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] # Source node to ATen node mapping: # loss => exp, log, mul, neg, sub_1, sum_1, sum_2 # loss_1 => mean # loss_cls => mul_1 # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, %arg1_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_2,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%neg,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused__log_softmax_mean_mul_neg_sum_1 = async_compile.triton('triton_per_fused__log_softmax_mean_mul_neg_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_mean_mul_neg_sum_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = (rindex // 16) tmp0 = tl.load(in_ptr0 + (r0 + (64*r1)), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r1)), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + (64*r1)), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + (64*r1)), None) tmp13 = tl.load(in_ptr1 + (r0 + (64*r1)), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + (64*r1)), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + (64*r1)), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + (64*r1)), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tmp31 = 64.0 tmp32 = tmp30 / tmp31 tmp33 = 1.0 tmp34 = tmp32 * tmp33 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp34, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] stream0 = get_raw_stream(0) triton_poi_fused__log_softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] triton_per_fused__log_softmax_mean_mul_neg_sum_1.run(buf2, buf0, arg1_1, 1, 64, grid=grid(1), stream=stream0) del arg1_1 del buf0 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1, as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 if label_weights is None: bin_label_weights = None else: bin_label_weights = label_weights.view(-1, 1).expand(label_weights. size(0), label_channels) return bin_labels, bin_label_weights def binary_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the binary CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, 1). label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ if pred.dim() != label.dim(): label, weight = _expand_binary_labels(label, weight, pred.size(-1)) if weight is not None: weight = weight.float() loss = F.binary_cross_entropy_with_logits(pred, label.float(), weight= class_weight, reduction='none') loss = weight_reduce_loss(loss, weight, reduction=reduction, avg_factor =avg_factor) return loss def cross_entropy(pred, label, weight=None, reduction='mean', avg_factor= None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss def mask_cross_entropy(pred, target, label, reduction='mean', avg_factor= None, class_weight=None): """Calculate the CrossEntropy loss for masks. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. target (torch.Tensor): The learning label of the prediction. label (torch.Tensor): ``label`` indicates the class label of the mask' corresponding object. This will be used to select the mask in the of the class which the object belongs to when the mask prediction if not class-agnostic. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ assert reduction == 'mean' and avg_factor is None num_rois = pred.size()[0] inds = torch.arange(0, num_rois, dtype=torch.long, device=pred.device) pred_slice = pred[inds, label].squeeze(1) return F.binary_cross_entropy_with_logits(pred_slice, target, weight= class_weight, reduction='mean')[None] class CrossEntropyLoss(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', class_weight=None, loss_weight=1.0): """CrossEntropyLoss. Args: use_sigmoid (bool, optional): Whether the prediction uses sigmoid of softmax. Defaults to False. use_mask (bool, optional): Whether to use mask cross entropy loss. Defaults to False. reduction (str, optional): . Defaults to 'mean'. Options are "none", "mean" and "sum". class_weight (list[float], optional): Weight of each class. Defaults to None. loss_weight (float, optional): Weight of the loss. Defaults to 1.0. """ super(CrossEntropyLoss, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight self.class_weight = class_weight if self.use_sigmoid: self.cls_criterion = binary_cross_entropy elif self.use_mask: self.cls_criterion = mask_cross_entropy else: self.cls_criterion = cross_entropy def forward(self, cls_score, label, weight=None, avg_factor=None, reduction_override=None, **kwargs): """Forward function. Args: cls_score (torch.Tensor): The prediction. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". Returns: torch.Tensor: The calculated loss """ assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) if self.class_weight is not None: class_weight = cls_score.new_tensor(self.class_weight) else: class_weight = None loss_cls = self.loss_weight * self.cls_criterion(cls_score, label, weight, class_weight=class_weight, reduction=reduction, avg_factor=avg_factor, **kwargs) return loss_cls def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x3, tmp8, xmask) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r0 + 64 * r1), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r1), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + 64 * r1), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + 64 * r1), None) tmp13 = tl.load(in_ptr1 + (r0 + 64 * r1), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + 64 * r1), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + 64 * r1), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + 64 * r1), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tmp31 = 64.0 tmp32 = tmp30 / tmp31 tmp33 = 1.0 tmp34 = tmp32 * tmp33 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp34, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__log_softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 triton_per_fused__log_softmax_mean_mul_neg_sum_1[grid(1)](buf2, buf0, arg1_1, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg1_1 del buf0 return buf2, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1, as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 if label_weights is None: bin_label_weights = None else: bin_label_weights = label_weights.view(-1, 1).expand(label_weights. size(0), label_channels) return bin_labels, bin_label_weights def binary_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the binary CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, 1). label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ if pred.dim() != label.dim(): label, weight = _expand_binary_labels(label, weight, pred.size(-1)) if weight is not None: weight = weight.float() loss = F.binary_cross_entropy_with_logits(pred, label.float(), weight= class_weight, reduction='none') loss = weight_reduce_loss(loss, weight, reduction=reduction, avg_factor =avg_factor) return loss def cross_entropy(pred, label, weight=None, reduction='mean', avg_factor= None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss def mask_cross_entropy(pred, target, label, reduction='mean', avg_factor= None, class_weight=None): """Calculate the CrossEntropy loss for masks. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. target (torch.Tensor): The learning label of the prediction. label (torch.Tensor): ``label`` indicates the class label of the mask' corresponding object. This will be used to select the mask in the of the class which the object belongs to when the mask prediction if not class-agnostic. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ assert reduction == 'mean' and avg_factor is None num_rois = pred.size()[0] inds = torch.arange(0, num_rois, dtype=torch.long, device=pred.device) pred_slice = pred[inds, label].squeeze(1) return F.binary_cross_entropy_with_logits(pred_slice, target, weight= class_weight, reduction='mean')[None] class CrossEntropyLossNew(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', class_weight=None, loss_weight=1.0): """CrossEntropyLoss. Args: use_sigmoid (bool, optional): Whether the prediction uses sigmoid of softmax. Defaults to False. use_mask (bool, optional): Whether to use mask cross entropy loss. Defaults to False. reduction (str, optional): . Defaults to 'mean'. Options are "none", "mean" and "sum". class_weight (list[float], optional): Weight of each class. Defaults to None. loss_weight (float, optional): Weight of the loss. Defaults to 1.0. """ super(CrossEntropyLossNew, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight self.class_weight = class_weight if self.use_sigmoid: self.cls_criterion = binary_cross_entropy elif self.use_mask: self.cls_criterion = mask_cross_entropy else: self.cls_criterion = cross_entropy def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Andrew-Zhu/DyFPN
CrossEntropyLoss
false
7,725
[ "Apache-2.0" ]
32
a74463b59c4ce28253c2449a07c0f6692a0147a1
https://github.com/Andrew-Zhu/DyFPN/tree/a74463b59c4ce28253c2449a07c0f6692a0147a1
import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1, as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 if label_weights is None: bin_label_weights = None else: bin_label_weights = label_weights.view(-1, 1).expand(label_weights. size(0), label_channels) return bin_labels, bin_label_weights def binary_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the binary CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, 1). label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ if pred.dim() != label.dim(): label, weight = _expand_binary_labels(label, weight, pred.size(-1)) if weight is not None: weight = weight.float() loss = F.binary_cross_entropy_with_logits(pred, label.float(), weight= class_weight, reduction='none') loss = weight_reduce_loss(loss, weight, reduction=reduction, avg_factor =avg_factor) return loss def cross_entropy(pred, label, weight=None, reduction='mean', avg_factor= None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss def mask_cross_entropy(pred, target, label, reduction='mean', avg_factor= None, class_weight=None): # ... truncated (>4000 chars) for memory efficiency
SSIM
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ej/cej2a6xxnolmzoep5ojsfqcahzezsuoiyyzy53hjcqadwccridxo.py # Topologically Sorted Source Nodes: [x, y, mul], Original ATen: [aten.reflection_pad2d, aten.mul] # Source node to ATen node mapping: # mul => mul # x => _unsafe_index, _unsafe_index_1 # y => _unsafe_index_2, _unsafe_index_3 # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg0_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=3] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_3]), kwargs = {}) # %_unsafe_index_2 : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg1_1, [None, None, %sub_5, None]), kwargs = {}) # %_unsafe_index_3 : [num_users=3] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index_2, [None, None, None, %sub_7]), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%_unsafe_index_1, %_unsafe_index_3), kwargs = {}) triton_poi_fused_mul_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_mul_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_reflection_pad2d_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = (xindex // 6) % 6 x2 = (xindex // 36) x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/hn/chnkzxhzqq76ck2yjcccwwqis5ftbw3hrr6yefhkstf3wqajozke.py # Topologically Sorted Source Nodes: [x, mu_x, mul_2, y, mu_y, mul_3, add, mul, avg_pool2d_4, mul_1, sigma_xy, mul_4, add_1, SSIM_n, pow_5, pow_6, add_2, add_3, pow_1, avg_pool2d_2, pow_2, sigma_x, pow_3, avg_pool2d_3, pow_4, sigma_y, add_4, add_5, SSIM_d, truediv, sub_3, truediv_1, clamp], Original ATen: [aten.reflection_pad2d, aten.avg_pool2d, aten.mul, aten.add, aten.sub, aten.pow, aten.div, aten.rsub, aten.clamp] # Source node to ATen node mapping: # SSIM_d => mul_6 # SSIM_n => mul_5 # add => add # add_1 => add_1 # add_2 => add_2 # add_3 => add_3 # add_4 => add_4 # add_5 => add_5 # avg_pool2d_2 => avg_pool2d_2 # avg_pool2d_3 => avg_pool2d_3 # avg_pool2d_4 => avg_pool2d_4 # clamp => clamp_max, clamp_min # mu_x => avg_pool2d # mu_y => avg_pool2d_1 # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # mul_3 => mul_3 # mul_4 => mul_4 # pow_1 => pow_1 # pow_2 => pow_2 # pow_3 => pow_3 # pow_4 => pow_4 # pow_5 => pow_5 # pow_6 => pow_6 # sigma_x => sub_8 # sigma_xy => sub_10 # sigma_y => sub_9 # sub_3 => sub_11 # truediv => div # truediv_1 => div_1 # x => _unsafe_index, _unsafe_index_1 # y => _unsafe_index_2, _unsafe_index_3 # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg0_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=3] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_3]), kwargs = {}) # %avg_pool2d : [num_users=4] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%_unsafe_index_1, [3, 3], [1, 1]), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%avg_pool2d, 2), kwargs = {}) # %_unsafe_index_2 : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg1_1, [None, None, %sub_5, None]), kwargs = {}) # %_unsafe_index_3 : [num_users=3] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index_2, [None, None, None, %sub_7]), kwargs = {}) # %avg_pool2d_1 : [num_users=4] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%_unsafe_index_3, [3, 3], [1, 1]), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_2, %avg_pool2d_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_3, 0.0001), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%_unsafe_index_1, %_unsafe_index_3), kwargs = {}) # %avg_pool2d_4 : [num_users=1] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%mul, [3, 3], [1, 1]), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%avg_pool2d, %avg_pool2d_1), kwargs = {}) # %sub_10 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%avg_pool2d_4, %mul_1), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_10, 2), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_4, 0.0009), kwargs = {}) # %mul_5 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, %add_1), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%avg_pool2d, 2), kwargs = {}) # %pow_6 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%avg_pool2d_1, 2), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%pow_5, %pow_6), kwargs = {}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_2, 0.0001), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%_unsafe_index_1, 2), kwargs = {}) # %avg_pool2d_2 : [num_users=1] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%pow_1, [3, 3], [1, 1]), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%avg_pool2d, 2), kwargs = {}) # %sub_8 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%avg_pool2d_2, %pow_2), kwargs = {}) # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%_unsafe_index_3, 2), kwargs = {}) # %avg_pool2d_3 : [num_users=1] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%pow_3, [3, 3], [1, 1]), kwargs = {}) # %pow_4 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%avg_pool2d_1, 2), kwargs = {}) # %sub_9 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%avg_pool2d_3, %pow_4), kwargs = {}) # %add_4 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_8, %sub_9), kwargs = {}) # %add_5 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_4, 0.0009), kwargs = {}) # %mul_6 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add_3, %add_5), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_5, %mul_6), kwargs = {}) # %sub_11 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %div), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_11, 2), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%div_1, 0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 1), kwargs = {}) triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1 = async_compile.triton('triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 27, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) % 4 x2 = (xindex // 16) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (6*x1) + (36*x2)), xmask) tmp1 = tl.load(in_ptr0 + (1 + x0 + (6*x1) + (36*x2)), xmask) tmp3 = tl.load(in_ptr0 + (2 + x0 + (6*x1) + (36*x2)), xmask) tmp5 = tl.load(in_ptr0 + (6 + x0 + (6*x1) + (36*x2)), xmask) tmp7 = tl.load(in_ptr0 + (7 + x0 + (6*x1) + (36*x2)), xmask) tmp9 = tl.load(in_ptr0 + (8 + x0 + (6*x1) + (36*x2)), xmask) tmp11 = tl.load(in_ptr0 + (12 + x0 + (6*x1) + (36*x2)), xmask) tmp13 = tl.load(in_ptr0 + (13 + x0 + (6*x1) + (36*x2)), xmask) tmp15 = tl.load(in_ptr0 + (14 + x0 + (6*x1) + (36*x2)), xmask) tmp19 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask) tmp22 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask) tmp24 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask, eviction_policy='evict_last') tmp26 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask) tmp28 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask) tmp30 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask, eviction_policy='evict_last') tmp32 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask) tmp34 = tl.load(in_ptr1 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask) tmp55 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tmp56 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask) tmp58 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask) tmp60 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask, eviction_policy='evict_last') tmp62 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask) tmp64 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-3) + x1))) + (16*x2)), xmask) tmp66 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask, eviction_policy='evict_last') tmp68 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-3) + x0))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask) tmp70 = tl.load(in_ptr2 + (15 + ((-1)*(tl_math.abs((-2) + x0))) + ((-4)*(tl_math.abs((-2) + x1))) + (16*x2)), xmask) tmp2 = tmp1 + tmp0 tmp4 = tmp3 + tmp2 tmp6 = tmp5 + tmp4 tmp8 = tmp7 + tmp6 tmp10 = tmp9 + tmp8 tmp12 = tmp11 + tmp10 tmp14 = tmp13 + tmp12 tmp16 = tmp15 + tmp14 tmp17 = 0.1111111111111111 tmp18 = tmp16 * tmp17 tmp21 = tmp20 + tmp19 tmp23 = tmp22 + tmp21 tmp25 = tmp24 + tmp23 tmp27 = tmp26 + tmp25 tmp29 = tmp28 + tmp27 tmp31 = tmp30 + tmp29 tmp33 = tmp32 + tmp31 tmp35 = tmp34 + tmp33 tmp36 = tmp35 * tmp17 tmp37 = tmp19 * tmp19 tmp38 = tmp20 * tmp20 tmp39 = tmp38 + tmp37 tmp40 = tmp22 * tmp22 tmp41 = tmp40 + tmp39 tmp42 = tmp24 * tmp24 tmp43 = tmp42 + tmp41 tmp44 = tmp26 * tmp26 tmp45 = tmp44 + tmp43 tmp46 = tmp28 * tmp28 tmp47 = tmp46 + tmp45 tmp48 = tmp30 * tmp30 tmp49 = tmp48 + tmp47 tmp50 = tmp32 * tmp32 tmp51 = tmp50 + tmp49 tmp52 = tmp34 * tmp34 tmp53 = tmp52 + tmp51 tmp54 = tmp53 * tmp17 tmp57 = tmp56 + tmp55 tmp59 = tmp58 + tmp57 tmp61 = tmp60 + tmp59 tmp63 = tmp62 + tmp61 tmp65 = tmp64 + tmp63 tmp67 = tmp66 + tmp65 tmp69 = tmp68 + tmp67 tmp71 = tmp70 + tmp69 tmp72 = tmp71 * tmp17 tmp73 = tmp55 * tmp55 tmp74 = tmp56 * tmp56 tmp75 = tmp74 + tmp73 tmp76 = tmp58 * tmp58 tmp77 = tmp76 + tmp75 tmp78 = tmp60 * tmp60 tmp79 = tmp78 + tmp77 tmp80 = tmp62 * tmp62 tmp81 = tmp80 + tmp79 tmp82 = tmp64 * tmp64 tmp83 = tmp82 + tmp81 tmp84 = tmp66 * tmp66 tmp85 = tmp84 + tmp83 tmp86 = tmp68 * tmp68 tmp87 = tmp86 + tmp85 tmp88 = tmp70 * tmp70 tmp89 = tmp88 + tmp87 tmp90 = tmp89 * tmp17 tmp91 = 2.0 tmp92 = tmp36 * tmp91 tmp93 = tmp92 * tmp72 tmp94 = 0.0001 tmp95 = tmp93 + tmp94 tmp96 = tmp36 * tmp72 tmp97 = tmp18 - tmp96 tmp98 = tmp97 * tmp91 tmp99 = 0.0009 tmp100 = tmp98 + tmp99 tmp101 = tmp95 * tmp100 tmp102 = tmp36 * tmp36 tmp103 = tmp72 * tmp72 tmp104 = tmp102 + tmp103 tmp105 = tmp104 + tmp94 tmp106 = tmp54 - tmp102 tmp107 = tmp90 - tmp103 tmp108 = tmp106 + tmp107 tmp109 = tmp108 + tmp99 tmp110 = tmp105 * tmp109 tmp111 = tmp101 / tmp110 tmp112 = 1.0 tmp113 = tmp112 - tmp111 tmp114 = 0.5 tmp115 = tmp113 * tmp114 tmp116 = 0.0 tmp117 = triton_helpers.maximum(tmp115, tmp116) tmp118 = triton_helpers.minimum(tmp117, tmp112) tl.store(in_out_ptr0 + (x3), tmp118, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [x, y, mul], Original ATen: [aten.reflection_pad2d, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_reflection_pad2d_0.run(arg0_1, arg1_1, buf2, 576, grid=grid(576), stream=stream0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf6 = buf0; del buf0 # reuse buf7 = buf6; del buf6 # reuse # Topologically Sorted Source Nodes: [x, mu_x, mul_2, y, mu_y, mul_3, add, mul, avg_pool2d_4, mul_1, sigma_xy, mul_4, add_1, SSIM_n, pow_5, pow_6, add_2, add_3, pow_1, avg_pool2d_2, pow_2, sigma_x, pow_3, avg_pool2d_3, pow_4, sigma_y, add_4, add_5, SSIM_d, truediv, sub_3, truediv_1, clamp], Original ATen: [aten.reflection_pad2d, aten.avg_pool2d, aten.mul, aten.add, aten.sub, aten.pow, aten.div, aten.rsub, aten.clamp] triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1.run(buf7, buf2, arg0_1, arg1_1, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 del buf2 return (buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SSIM(nn.Module): def __init__(self): super(SSIM, self).__init__() self.mu_x_pool = nn.AvgPool2d(3, 1) self.mu_y_pool = nn.AvgPool2d(3, 1) self.sig_x_pool = nn.AvgPool2d(3, 1) self.sig_y_pool = nn.AvgPool2d(3, 1) self.sig_xy_pool = nn.AvgPool2d(3, 1) self.refl = nn.ReflectionPad2d(1) self.C1 = 0.01 ** 2 self.C2 = 0.03 ** 2 def forward(self, x, y): x = self.refl(x) y = self.refl(y) mu_x = self.mu_x_pool(x) mu_y = self.mu_y_pool(y) sigma_x = self.sig_x_pool(x ** 2) - mu_x ** 2 sigma_y = self.sig_y_pool(y ** 2) - mu_y ** 2 sigma_xy = self.sig_xy_pool(x * y) - mu_x * mu_y SSIM_n = (2 * mu_x * mu_y + self.C1) * (2 * sigma_xy + self.C2) SSIM_d = (mu_x ** 2 + mu_y ** 2 + self.C1) * (sigma_x + sigma_y + self.C2) return torch.clamp((1 - SSIM_n / SSIM_d) / 2, 0, 1) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_reflection_pad2d_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = xindex // 6 % 6 x2 = xindex // 36 x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x3, tmp2, xmask) @triton.jit def triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1( in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 % 4 x2 = xindex // 16 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 6 * x1 + 36 * x2), xmask) tmp1 = tl.load(in_ptr0 + (1 + x0 + 6 * x1 + 36 * x2), xmask) tmp3 = tl.load(in_ptr0 + (2 + x0 + 6 * x1 + 36 * x2), xmask) tmp5 = tl.load(in_ptr0 + (6 + x0 + 6 * x1 + 36 * x2), xmask) tmp7 = tl.load(in_ptr0 + (7 + x0 + 6 * x1 + 36 * x2), xmask) tmp9 = tl.load(in_ptr0 + (8 + x0 + 6 * x1 + 36 * x2), xmask) tmp11 = tl.load(in_ptr0 + (12 + x0 + 6 * x1 + 36 * x2), xmask) tmp13 = tl.load(in_ptr0 + (13 + x0 + 6 * x1 + 36 * x2), xmask) tmp15 = tl.load(in_ptr0 + (14 + x0 + 6 * x1 + 36 * x2), xmask) tmp19 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask) tmp22 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask) tmp24 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask, eviction_policy ='evict_last') tmp26 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask) tmp28 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask) tmp30 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask, eviction_policy ='evict_last') tmp32 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask) tmp34 = tl.load(in_ptr1 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask) tmp55 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tmp56 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask) tmp58 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask) tmp60 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask, eviction_policy ='evict_last') tmp62 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask) tmp64 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-3 + x1) + 16 * x2), xmask) tmp66 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask, eviction_policy ='evict_last') tmp68 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-3 + x0) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask) tmp70 = tl.load(in_ptr2 + (15 + -1 * tl_math.abs(-2 + x0) + -4 * tl_math.abs(-2 + x1) + 16 * x2), xmask) tmp2 = tmp1 + tmp0 tmp4 = tmp3 + tmp2 tmp6 = tmp5 + tmp4 tmp8 = tmp7 + tmp6 tmp10 = tmp9 + tmp8 tmp12 = tmp11 + tmp10 tmp14 = tmp13 + tmp12 tmp16 = tmp15 + tmp14 tmp17 = 0.1111111111111111 tmp18 = tmp16 * tmp17 tmp21 = tmp20 + tmp19 tmp23 = tmp22 + tmp21 tmp25 = tmp24 + tmp23 tmp27 = tmp26 + tmp25 tmp29 = tmp28 + tmp27 tmp31 = tmp30 + tmp29 tmp33 = tmp32 + tmp31 tmp35 = tmp34 + tmp33 tmp36 = tmp35 * tmp17 tmp37 = tmp19 * tmp19 tmp38 = tmp20 * tmp20 tmp39 = tmp38 + tmp37 tmp40 = tmp22 * tmp22 tmp41 = tmp40 + tmp39 tmp42 = tmp24 * tmp24 tmp43 = tmp42 + tmp41 tmp44 = tmp26 * tmp26 tmp45 = tmp44 + tmp43 tmp46 = tmp28 * tmp28 tmp47 = tmp46 + tmp45 tmp48 = tmp30 * tmp30 tmp49 = tmp48 + tmp47 tmp50 = tmp32 * tmp32 tmp51 = tmp50 + tmp49 tmp52 = tmp34 * tmp34 tmp53 = tmp52 + tmp51 tmp54 = tmp53 * tmp17 tmp57 = tmp56 + tmp55 tmp59 = tmp58 + tmp57 tmp61 = tmp60 + tmp59 tmp63 = tmp62 + tmp61 tmp65 = tmp64 + tmp63 tmp67 = tmp66 + tmp65 tmp69 = tmp68 + tmp67 tmp71 = tmp70 + tmp69 tmp72 = tmp71 * tmp17 tmp73 = tmp55 * tmp55 tmp74 = tmp56 * tmp56 tmp75 = tmp74 + tmp73 tmp76 = tmp58 * tmp58 tmp77 = tmp76 + tmp75 tmp78 = tmp60 * tmp60 tmp79 = tmp78 + tmp77 tmp80 = tmp62 * tmp62 tmp81 = tmp80 + tmp79 tmp82 = tmp64 * tmp64 tmp83 = tmp82 + tmp81 tmp84 = tmp66 * tmp66 tmp85 = tmp84 + tmp83 tmp86 = tmp68 * tmp68 tmp87 = tmp86 + tmp85 tmp88 = tmp70 * tmp70 tmp89 = tmp88 + tmp87 tmp90 = tmp89 * tmp17 tmp91 = 2.0 tmp92 = tmp36 * tmp91 tmp93 = tmp92 * tmp72 tmp94 = 0.0001 tmp95 = tmp93 + tmp94 tmp96 = tmp36 * tmp72 tmp97 = tmp18 - tmp96 tmp98 = tmp97 * tmp91 tmp99 = 0.0009 tmp100 = tmp98 + tmp99 tmp101 = tmp95 * tmp100 tmp102 = tmp36 * tmp36 tmp103 = tmp72 * tmp72 tmp104 = tmp102 + tmp103 tmp105 = tmp104 + tmp94 tmp106 = tmp54 - tmp102 tmp107 = tmp90 - tmp103 tmp108 = tmp106 + tmp107 tmp109 = tmp108 + tmp99 tmp110 = tmp105 * tmp109 tmp111 = tmp101 / tmp110 tmp112 = 1.0 tmp113 = tmp112 - tmp111 tmp114 = 0.5 tmp115 = tmp113 * tmp114 tmp116 = 0.0 tmp117 = triton_helpers.maximum(tmp115, tmp116) tmp118 = triton_helpers.minimum(tmp117, tmp112) tl.store(in_out_ptr0 + x3, tmp118, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_reflection_pad2d_0[grid(576)](arg0_1, arg1_1, buf2, 576, XBLOCK=128, num_warps=4, num_stages=1) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf6 = buf0 del buf0 buf7 = buf6 del buf6 triton_poi_fused_add_avg_pool2d_clamp_div_mul_pow_reflection_pad2d_rsub_sub_1[ grid(256)](buf7, buf2, arg0_1, arg1_1, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 del arg1_1 del buf2 return buf7, class SSIMNew(nn.Module): def __init__(self): super(SSIMNew, self).__init__() self.mu_x_pool = nn.AvgPool2d(3, 1) self.mu_y_pool = nn.AvgPool2d(3, 1) self.sig_x_pool = nn.AvgPool2d(3, 1) self.sig_y_pool = nn.AvgPool2d(3, 1) self.sig_xy_pool = nn.AvgPool2d(3, 1) self.refl = nn.ReflectionPad2d(1) self.C1 = 0.01 ** 2 self.C2 = 0.03 ** 2 def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
ArminMasoumian/GCNDepth
SSIM
false
7,726
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Model(nn.Module): def __init__(self): super().__init__() self.mu_x_pool = nn.AvgPool2d(3, 1) self.mu_y_pool = nn.AvgPool2d(3, 1) self.sig_x_pool = nn.AvgPool2d(3, 1) self.sig_y_pool = nn.AvgPool2d(3, 1) self.sig_xy_pool = nn.AvgPool2d(3, 1) self.refl = nn.ReflectionPad2d(1) self.C1 = 0.01 ** 2 self.C2 = 0.03 ** 2 def forward(self, x, y): x = self.refl(x) y = self.refl(y) mu_x = self.mu_x_pool(x) mu_y = self.mu_y_pool(y) sigma_x = self.sig_x_pool(x ** 2) - mu_x ** 2 sigma_y = self.sig_y_pool(y ** 2) - mu_y ** 2 sigma_xy = self.sig_xy_pool(x * y) - mu_x * mu_y SSIM_n = (2 * mu_x * mu_y + self.C1) * (2 * sigma_xy + self.C2) SSIM_d = (mu_x ** 2 + mu_y ** 2 + self.C1) * (sigma_x + sigma_y + self.C2) return torch.clamp((1 - SSIM_n / SSIM_d) / 2, 0, 1) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Hardswish
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/rw/crwdk3j4ojtagun7zhqwyf5bqe7salukzcept7ykzhjfr5nro3cm.py # Topologically Sorted Source Nodes: [add, hardtanh, mul, truediv], Original ATen: [aten.add, aten.hardtanh, aten.mul, aten.div] # Source node to ATen node mapping: # add => add # hardtanh => clamp_max, clamp_min # mul => mul # truediv => div # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0.0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %clamp_max), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul, 6.0), kwargs = {}) triton_poi_fused_add_div_hardtanh_mul_0 = async_compile.triton('triton_poi_fused_add_div_hardtanh_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_hardtanh_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_hardtanh_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + (x0), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, hardtanh, mul, truediv], Original ATen: [aten.add, aten.hardtanh, aten.mul, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_hardtanh_mul_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class Hardswish(nn.Module): @staticmethod def forward(x): return x * F.hardtanh(x + 3, 0.0, 6.0) / 6.0 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_hardtanh_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + x0, tmp9, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_hardtanh_mul_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class HardswishNew(nn.Module): def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AsakusaRinne/tensorrt_yolov5_tracker
Hardswish
false
7,727
[ "MIT" ]
22
b9a3a6fc94710e8291d6a614ed2b04cbc4c56599
https://github.com/AsakusaRinne/tensorrt_yolov5_tracker/tree/b9a3a6fc94710e8291d6a614ed2b04cbc4c56599
import torch import torch.nn as nn import torch.nn.functional as F class Model(nn.Module): @staticmethod def forward(x): return x * F.hardtanh(x + 3, 0.0, 6.0) / 6.0 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
FlopsCrossEntropyLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/u2/cu2beycg2t2ghizs6f4qom7bxbxmajhdaakuyq6y2korxywhp6ba.py # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # loss => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) triton_poi_fused__log_softmax_0 = async_compile.triton('triton_poi_fused__log_softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x3), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/3m/c3m76x57mjnaxdkpl4v6vcdbwdbpvqyeua4zy7e2t2tlfmcnoly7.py # Topologically Sorted Source Nodes: [loss, loss_1], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] # Source node to ATen node mapping: # loss => exp, log, mul, neg, sub_1, sum_1, sum_2 # loss_1 => mean # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, %arg1_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_2,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%neg,), kwargs = {}) triton_per_fused__log_softmax_mean_mul_neg_sum_1 = async_compile.triton('triton_per_fused__log_softmax_mean_mul_neg_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_mean_mul_neg_sum_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = (rindex // 16) tmp0 = tl.load(in_ptr0 + (r0 + (64*r1)), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r1)), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + (64*r1)), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + (64*r1)), None) tmp13 = tl.load(in_ptr1 + (r0 + (64*r1)), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + (64*r1)), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + (64*r1)), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + (64*r1)), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tl.store(out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp30, None) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/ir/cir4h53skzf32s5fbbvsxfe7242yf2cidr5bfq6ube77klsp3nnh.py # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls, loss_cls_1], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean, aten.add] # Source node to ATen node mapping: # loss => exp, log, mul, neg, sub_1, sum_1, sum_2 # loss_1 => mean # loss_cls => mul_1 # loss_cls_1 => add # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, %arg1_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_2,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%neg,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %arg2_1), kwargs = {}) triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2 = async_compile.triton('triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (0)) tmp1 = tl.broadcast_to(tmp0, [XBLOCK]) tmp6 = tl.load(in_ptr1 + (x0), xmask) tmp2 = 64.0 tmp3 = tmp1 / tmp2 tmp4 = 1.0 tmp5 = tmp3 * tmp4 tmp7 = tmp5 + tmp6 tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] stream0 = get_raw_stream(0) triton_poi_fused__log_softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [loss, loss_1], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] triton_per_fused__log_softmax_mean_mul_neg_sum_1.run(buf0, arg1_1, buf1, 1, 64, grid=grid(1), stream=stream0) del arg1_1 buf2 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls, loss_cls_1], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean, aten.add] triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2.run(buf1, arg2_1, buf2, 256, grid=grid(256), stream=stream0) del arg2_1 del buf1 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def flops_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss class FlopsCrossEntropyLoss(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', class_weight=None, loss_weight=1.0): """CrossEntropyLoss. Args: use_sigmoid (bool, optional): Whether the prediction uses sigmoid of softmax. Defaults to False. use_mask (bool, optional): Whether to use mask cross entropy loss. Defaults to False. reduction (str, optional): . Defaults to 'mean'. Options are "none", "mean" and "sum". class_weight (list[float], optional): Weight of each class. Defaults to None. loss_weight (float, optional): Weight of the loss. Defaults to 1.0. """ super(FlopsCrossEntropyLoss, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight self.class_weight = class_weight self.cls_criterion = flops_cross_entropy def forward(self, loss_flops, cls_score, label, weight=None, avg_factor =None, reduction_override=None, **kwargs): """Forward function. Args: cls_score (torch.Tensor): The prediction. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". Returns: torch.Tensor: The calculated loss """ assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) if self.class_weight is not None: class_weight = cls_score.new_tensor(self.class_weight) else: class_weight = None loss_cls = self.loss_weight * self.cls_criterion(cls_score, label, weight, class_weight=class_weight, reduction=reduction, avg_factor=avg_factor, **kwargs) loss_cls = loss_cls + loss_flops return loss_cls def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x3, tmp8, xmask) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r0 + 64 * r1), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r1), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + 64 * r1), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + 64 * r1), None) tmp13 = tl.load(in_ptr1 + (r0 + 64 * r1), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + 64 * r1), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + 64 * r1), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + 64 * r1), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tl.store(out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp30, None) @triton.jit def triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK]) tmp6 = tl.load(in_ptr1 + x0, xmask) tmp2 = 64.0 tmp3 = tmp1 / tmp2 tmp4 = 1.0 tmp5 = tmp3 * tmp4 tmp7 = tmp5 + tmp6 tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__log_softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) triton_per_fused__log_softmax_mean_mul_neg_sum_1[grid(1)](buf0, arg1_1, buf1, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg1_1 buf2 = buf0 del buf0 triton_poi_fused__log_softmax_add_mean_mul_neg_sum_2[grid(256)](buf1, arg2_1, buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg2_1 del buf1 return buf2, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def flops_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss class FlopsCrossEntropyLossNew(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', class_weight=None, loss_weight=1.0): """CrossEntropyLoss. Args: use_sigmoid (bool, optional): Whether the prediction uses sigmoid of softmax. Defaults to False. use_mask (bool, optional): Whether to use mask cross entropy loss. Defaults to False. reduction (str, optional): . Defaults to 'mean'. Options are "none", "mean" and "sum". class_weight (list[float], optional): Weight of each class. Defaults to None. loss_weight (float, optional): Weight of the loss. Defaults to 1.0. """ super(FlopsCrossEntropyLossNew, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight self.class_weight = class_weight self.cls_criterion = flops_cross_entropy def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
Andrew-Zhu/DyFPN
FlopsCrossEntropyLoss
false
7,728
[ "Apache-2.0" ]
32
a74463b59c4ce28253c2449a07c0f6692a0147a1
https://github.com/Andrew-Zhu/DyFPN/tree/a74463b59c4ce28253c2449a07c0f6692a0147a1
import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def flops_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None, class_weight=None): """Calculate the CrossEntropy loss. Args: pred (torch.Tensor): The prediction with shape (N, C), C is the number of classes. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. reduction (str, optional): The method used to reduce the loss. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. class_weight (list[float], optional): The weight for each class. Returns: torch.Tensor: The calculated loss """ loss = F.cross_entropy(pred, label, weight=class_weight, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss class Model(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', class_weight=None, loss_weight=1.0): """CrossEntropyLoss. Args: use_sigmoid (bool, optional): Whether the prediction uses sigmoid of softmax. Defaults to False. use_mask (bool, optional): Whether to use mask cross entropy loss. Defaults to False. reduction (str, optional): . Defaults to 'mean'. Options are "none", "mean" and "sum". class_weight (list[float], optional): Weight of each class. Defaults to None. loss_weight (float, optional): Weight of the loss. Defaults to 1.0. """ super().__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight self.class_weight = class_weight self.cls_criterion = flops_cross_entropy def forward(self, loss_flops, cls_score, label, weight=None, avg_factor =None, reduction_override=None, **kwargs): """Forward function. Args: cls_score (torch.Tensor): The prediction. label (torch.Tensor): The learning label of the prediction. weight (torch.Tensor, optional): Sample-wise loss weight. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction (str, optional): The method used to reduce the loss. Options are "none", "mean" and "sum". Returns: torch.Tensor: The calculated # ... truncated (>4000 chars) for memory efficiency
GaussianFocalLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ux/cux3rdvmurnb775fshvmb35y2xr5glzkvviyrjmg7ygqg2dz3lsx.py # Topologically Sorted Source Nodes: [add, log, neg, sub_1, pow_2, mul, pos_weights, pos_loss, sub_2, add_1, log_1, neg_1, pow_3, mul_2, sub, neg_weights, neg_loss, loss, loss_1, loss_reg], Original ATen: [aten.add, aten.log, aten.neg, aten.rsub, aten.pow, aten.mul, aten.eq, aten.mean] # Source node to ATen node mapping: # add => add # add_1 => add_1 # log => log # log_1 => log_1 # loss => add_2 # loss_1 => mean # loss_reg => mul_4 # mul => mul # mul_2 => mul_2 # neg => neg # neg_1 => neg_1 # neg_loss => mul_3 # neg_weights => pow_1 # pos_loss => mul_1 # pos_weights => eq # pow_2 => pow_2 # pow_3 => pow_3 # sub => sub # sub_1 => sub_1 # sub_2 => sub_2 # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 1e-12), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%log,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg0_1), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_1, 2.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%neg, %pow_2), kwargs = {}) # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Scalar](args = (%arg1_1, 1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %eq), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg0_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_2, 1e-12), kwargs = {}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_1,), kwargs = {}) # %neg_1 : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%log_1,), kwargs = {}) # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 2.0), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%neg_1, %pow_3), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 4.0), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_2, %pow_1), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %mul_3), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_2,), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0 = async_compile.triton('triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp9 = tl.load(in_ptr1 + (r0), None) tmp1 = 1e-12 tmp2 = tmp0 + tmp1 tmp3 = tl_math.log(tmp2) tmp4 = -tmp3 tmp5 = 1.0 tmp6 = tmp5 - tmp0 tmp7 = tmp6 * tmp6 tmp8 = tmp4 * tmp7 tmp10 = tmp9 == tmp5 tmp11 = tmp10.to(tl.float32) tmp12 = tmp8 * tmp11 tmp13 = tmp6 + tmp1 tmp14 = tl_math.log(tmp13) tmp15 = -tmp14 tmp16 = tmp0 * tmp0 tmp17 = tmp15 * tmp16 tmp18 = tmp5 - tmp9 tmp19 = tmp18 * tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp17 * tmp20 tmp22 = tmp12 + tmp21 tmp23 = tl.broadcast_to(tmp22, [RBLOCK]) tmp25 = triton_helpers.promote_to_tensor(tl.sum(tmp23, 0)) tmp26 = 256.0 tmp27 = tmp25 / tmp26 tmp28 = tmp27 * tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp28, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [add, log, neg, sub_1, pow_2, mul, pos_weights, pos_loss, sub_2, add_1, log_1, neg_1, pow_3, mul_2, sub, neg_weights, neg_loss, loss, loss_1, loss_reg], Original ATen: [aten.add, aten.log, aten.neg, aten.rsub, aten.pow, aten.mul, aten.eq, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def gaussian_focal_loss(pred, gaussian_target, alpha=2.0, gamma=4.0): """`Focal Loss <https://arxiv.org/abs/1708.02002>`_ for targets in gaussian distribution. Args: pred (torch.Tensor): The prediction. gaussian_target (torch.Tensor): The learning target of the prediction in gaussian distribution. alpha (float, optional): A balanced form for Focal Loss. Defaults to 2.0. gamma (float, optional): The gamma for calculating the modulating factor. Defaults to 4.0. """ eps = 1e-12 pos_weights = gaussian_target.eq(1) neg_weights = (1 - gaussian_target).pow(gamma) pos_loss = -(pred + eps).log() * (1 - pred).pow(alpha) * pos_weights neg_loss = -(1 - pred + eps).log() * pred.pow(alpha) * neg_weights return pos_loss + neg_loss class GaussianFocalLoss(nn.Module): """GaussianFocalLoss is a variant of focal loss. More details can be found in the `paper <https://arxiv.org/abs/1808.01244>`_ Code is modified from `kp_utils.py <https://github.com/princeton-vl/CornerNet/blob/master/models/py_utils/kp_utils.py#L152>`_ # noqa: E501 Please notice that the target in GaussianFocalLoss is a gaussian heatmap, not 0/1 binary target. Args: alpha (float): Power of prediction. gamma (float): Power of target for negtive samples. reduction (str): Options are "none", "mean" and "sum". loss_weight (float): Loss weight of current loss. """ def __init__(self, alpha=2.0, gamma=4.0, reduction='mean', loss_weight=1.0 ): super(GaussianFocalLoss, self).__init__() self.alpha = alpha self.gamma = gamma self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None): """Forward function. Args: pred (torch.Tensor): The prediction. target (torch.Tensor): The learning target of the prediction in gaussian distribution. weight (torch.Tensor, optional): The weight of loss for each prediction. Defaults to None. avg_factor (int, optional): Average factor that is used to average the loss. Defaults to None. reduction_override (str, optional): The reduction method used to override the original reduction method of the loss. Defaults to None. """ assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_reg = self.loss_weight * gaussian_focal_loss(pred, target, weight, alpha=self.alpha, gamma=self.gamma, reduction=reduction, avg_factor=avg_factor) return loss_reg def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp9 = tl.load(in_ptr1 + r0, None) tmp1 = 1e-12 tmp2 = tmp0 + tmp1 tmp3 = tl_math.log(tmp2) tmp4 = -tmp3 tmp5 = 1.0 tmp6 = tmp5 - tmp0 tmp7 = tmp6 * tmp6 tmp8 = tmp4 * tmp7 tmp10 = tmp9 == tmp5 tmp11 = tmp10.to(tl.float32) tmp12 = tmp8 * tmp11 tmp13 = tmp6 + tmp1 tmp14 = tl_math.log(tmp13) tmp15 = -tmp14 tmp16 = tmp0 * tmp0 tmp17 = tmp15 * tmp16 tmp18 = tmp5 - tmp9 tmp19 = tmp18 * tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp17 * tmp20 tmp22 = tmp12 + tmp21 tmp23 = tl.broadcast_to(tmp22, [RBLOCK]) tmp25 = triton_helpers.promote_to_tensor(tl.sum(tmp23, 0)) tmp26 = 256.0 tmp27 = tmp25 / tmp26 tmp28 = tmp27 * tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp28, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_add_eq_log_mean_mul_neg_pow_rsub_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def gaussian_focal_loss(pred, gaussian_target, alpha=2.0, gamma=4.0): """`Focal Loss <https://arxiv.org/abs/1708.02002>`_ for targets in gaussian distribution. Args: pred (torch.Tensor): The prediction. gaussian_target (torch.Tensor): The learning target of the prediction in gaussian distribution. alpha (float, optional): A balanced form for Focal Loss. Defaults to 2.0. gamma (float, optional): The gamma for calculating the modulating factor. Defaults to 4.0. """ eps = 1e-12 pos_weights = gaussian_target.eq(1) neg_weights = (1 - gaussian_target).pow(gamma) pos_loss = -(pred + eps).log() * (1 - pred).pow(alpha) * pos_weights neg_loss = -(1 - pred + eps).log() * pred.pow(alpha) * neg_weights return pos_loss + neg_loss class GaussianFocalLossNew(nn.Module): """GaussianFocalLoss is a variant of focal loss. More details can be found in the `paper <https://arxiv.org/abs/1808.01244>`_ Code is modified from `kp_utils.py <https://github.com/princeton-vl/CornerNet/blob/master/models/py_utils/kp_utils.py#L152>`_ # noqa: E501 Please notice that the target in GaussianFocalLoss is a gaussian heatmap, not 0/1 binary target. Args: alpha (float): Power of prediction. gamma (float): Power of target for negtive samples. reduction (str): Options are "none", "mean" and "sum". loss_weight (float): Loss weight of current loss. """ def __init__(self, alpha=2.0, gamma=4.0, reduction='mean', loss_weight=1.0 ): super(GaussianFocalLossNew, self).__init__() self.alpha = alpha self.gamma = gamma self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Andrew-Zhu/DyFPN
GaussianFocalLoss
false
7,729
[ "Apache-2.0" ]
32
a74463b59c4ce28253c2449a07c0f6692a0147a1
https://github.com/Andrew-Zhu/DyFPN/tree/a74463b59c4ce28253c2449a07c0f6692a0147a1
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def gaussian_focal_loss(pred, gaussian_target, alpha=2.0, gamma=4.0): """`Focal Loss <https://arxiv.org/abs/1708.02002>`_ for targets in gaussian distribution. Args: pred (torch.Tensor): The prediction. gaussian_target (torch.Tensor): The learning target of the prediction in gaussian distribution. alpha (float, optional): A balanced form for Focal Loss. Defaults to 2.0. gamma (float, optional): The gamma for calculating the modulating factor. Defaults to 4.0. """ eps = 1e-12 pos_weights = gaussian_target.eq(1) neg_weights = (1 - gaussian_target).pow(gamma) pos_loss = -(pred + eps).log() * (1 - pred).pow(alpha) * pos_weights neg_loss = -(1 - pred + eps).log() * pred.pow(alpha) * neg_weights return pos_loss + neg_loss class Model(nn.Module): """GaussianFocalLoss is a variant of focal loss. More details can be found in the `paper <https://arxiv.org/abs/1808.01244>`_ Code is modified from `kp_utils.py <https://github.com/princeton-vl/CornerNet/blob/master/models/py_utils/kp_utils.py#L152>`_ # noqa: E501 Please notice that the target in GaussianFocalLoss is a gaussian heatmap, not 0/1 binary target. Args: alpha (float): Power of prediction. gamma (float): Power of target for negtive samples. # ... truncated (>4000 chars) for memory efficiency
Conv3x3
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/tt/ctthexrcgmoykvsyasq7xirwxi6m3yxgjocmuvarikaawgqvdiws.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] # Source node to ATen node mapping: # out => _unsafe_index, _unsafe_index_1 # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%primals_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_1]), kwargs = {}) triton_poi_fused_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = (xindex // 6) % 6 x2 = (xindex // 36) x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-1) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-1) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x3), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/7r/c7r2u57hr54idc3of6lw2ouxuoyy44tzonl7cy4k7awnnjece2kt.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] # Source node to ATen node mapping: # out_1 => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] stream0 = get_raw_stream(0) triton_poi_fused_reflection_pad2d_0.run(primals_1, buf0, 576, grid=grid(576), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf2, primals_3, 256, grid=grid(256), stream=stream0) del primals_3 return (buf2, primals_2, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Conv3x3(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv3x3, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, x): out = self.pad(x) out = self.conv(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 6 x1 = xindex // 6 % 6 x2 = xindex // 36 x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-1 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-1 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x3, tmp0, xmask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 6, 6), (144, 36, 6, 1), torch.float32) get_raw_stream(0) triton_poi_fused_reflection_pad2d_0[grid(576)](primals_1, buf0, 576, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1 del buf1 triton_poi_fused_convolution_1[grid(256)](buf2, primals_3, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_3 return buf2, primals_2, buf0 class Conv3x3New(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv3x3New, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, input_0): primals_2 = self.conv.weight primals_3 = self.conv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArminMasoumian/GCNDepth
Conv3x3
false
7,730
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super().__init__() if use_refl: self.pad = nn.ReflectionPad2d(1) else: self.pad = nn.ZeroPad2d(1) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 3) def forward(self, x): out = self.pad(x) out = self.conv(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
Project
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/kr/ckrqlzua65nhcln4midrf2pl3tvnjymm2dp3k72pz4ewuznk4gxv.py # Topologically Sorted Source Nodes: [cam_points], Original ATen: [aten.clone] # Source node to ATen node mapping: # cam_points => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%expand_2,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_0 = async_compile.triton('triton_poi_fused_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 192 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 48 x1 = (xindex // 48) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tl.store(out_ptr0 + (x2), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/u4/cu4g75wjxdgmpiaoh52q4hr2kvbrsv4sgbnhvr2co3j5nfxzbi3u.py # Topologically Sorted Source Nodes: [sub, pix_coords_3], Original ATen: [aten.sub, aten.mul] # Source node to ATen node mapping: # pix_coords_3 => mul # sub => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%permute_16, 0.5), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, 2), kwargs = {}) triton_poi_fused_mul_sub_1 = async_compile.triton('triton_poi_fused_mul_sub_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sub_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sub_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 2 x0 = xindex % 16 x2 = (xindex // 32) x3 = xindex % 32 x4 = xindex tmp7 = tl.load(in_ptr0 + (x0 + (48*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + (48*x2)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (16 + x0 + (48*x2)), xmask, eviction_policy='evict_last') tmp22 = tl.load(in_ptr0 + (x3 + (48*x2)), xmask) tmp0 = x1 tmp1 = tl.full([1], 1, tl.int32) tmp2 = tmp0 == tmp1 tmp3 = tmp1 == tmp1 tmp4 = tl.full([1], 0, tl.int32) tmp5 = tmp1 == tmp4 tmp6 = tmp4 == tmp4 tmp9 = 1e-07 tmp10 = tmp8 + tmp9 tmp11 = tmp7 / tmp10 tmp12 = 0.3333333333333333 tmp13 = tmp11 * tmp12 tmp14 = tl.where(tmp6, tmp13, tmp11) tmp16 = tmp15 / tmp10 tmp17 = tl.where(tmp5, tmp13, tmp16) tmp18 = tl.where(tmp5, tmp14, tmp17) tmp19 = tmp18 * tmp12 tmp20 = tl.where(tmp3, tmp19, tmp18) tmp21 = tmp0 == tmp4 tmp23 = tmp22 / tmp10 tmp24 = tl.where(tmp21, tmp13, tmp23) tmp25 = tl.where(tmp21, tmp14, tmp24) tmp26 = tl.where(tmp2, tmp19, tmp25) tmp27 = tl.where(tmp2, tmp20, tmp26) tmp28 = 0.5 tmp29 = tmp27 - tmp28 tmp30 = 2.0 tmp31 = tmp29 * tmp30 tl.store(out_ptr0 + (x4), tmp31, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 3, 4, 4), (48, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(arg1_1, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(arg0_1, (16, 4, 4), (16, 4, 1), 0), out=buf0) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((4, 3, 4, 4), (48, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [cam_points], Original ATen: [aten.clone] stream0 = get_raw_stream(0) triton_poi_fused_clone_0.run(buf0, buf1, 192, grid=grid(192), stream=stream0) del buf0 buf2 = empty_strided_cuda((12, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [cam_points], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf1, (12, 4, 4), (16, 4, 1), 0), reinterpret_tensor(arg2_1, (12, 4, 4), (16, 4, 1), 0), out=buf2) del arg2_1 del buf1 buf3 = empty_strided_cuda((4, 4, 4, 2), (32, 4, 1, 16), torch.float32) # Topologically Sorted Source Nodes: [sub, pix_coords_3], Original ATen: [aten.sub, aten.mul] triton_poi_fused_mul_sub_1.run(buf2, buf3, 128, grid=grid(128), stream=stream0) del buf2 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 3, 4, 4), (48, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Project(nn.Module): def __init__(self, batch_size, height, width, eps=1e-07): super(Project, self).__init__() self.batch_size = batch_size self.height = height self.width = width self.eps = eps def forward(self, points, K, T): P = torch.matmul(K, T)[:, :3, :] cam_points = torch.matmul(P, points) pix_coords = cam_points[:, :2, :] / (cam_points[:, 2, :].unsqueeze( 1) + self.eps) pix_coords = pix_coords.view(self.batch_size, 2, self.height, self. width) pix_coords = pix_coords.permute(0, 2, 3, 1) pix_coords[..., 0] /= self.width - 1 pix_coords[..., 1] /= self.height - 1 pix_coords = (pix_coords - 0.5) * 2 return pix_coords def get_inputs(): return [torch.rand([4, 3, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {'batch_size': 4, 'height': 4, 'width': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 192 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 48 x1 = xindex // 48 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tl.store(out_ptr0 + x2, tmp0, xmask) @triton.jit def triton_poi_fused_mul_sub_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 2 x0 = xindex % 16 x2 = xindex // 32 x3 = xindex % 32 x4 = xindex tmp7 = tl.load(in_ptr0 + (x0 + 48 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (32 + x0 + 48 * x2), xmask, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr0 + (16 + x0 + 48 * x2), xmask, eviction_policy= 'evict_last') tmp22 = tl.load(in_ptr0 + (x3 + 48 * x2), xmask) tmp0 = x1 tmp1 = tl.full([1], 1, tl.int32) tmp2 = tmp0 == tmp1 tmp3 = tmp1 == tmp1 tmp4 = tl.full([1], 0, tl.int32) tmp5 = tmp1 == tmp4 tmp6 = tmp4 == tmp4 tmp9 = 1e-07 tmp10 = tmp8 + tmp9 tmp11 = tmp7 / tmp10 tmp12 = 0.3333333333333333 tmp13 = tmp11 * tmp12 tmp14 = tl.where(tmp6, tmp13, tmp11) tmp16 = tmp15 / tmp10 tmp17 = tl.where(tmp5, tmp13, tmp16) tmp18 = tl.where(tmp5, tmp14, tmp17) tmp19 = tmp18 * tmp12 tmp20 = tl.where(tmp3, tmp19, tmp18) tmp21 = tmp0 == tmp4 tmp23 = tmp22 / tmp10 tmp24 = tl.where(tmp21, tmp13, tmp23) tmp25 = tl.where(tmp21, tmp14, tmp24) tmp26 = tl.where(tmp2, tmp19, tmp25) tmp27 = tl.where(tmp2, tmp20, tmp26) tmp28 = 0.5 tmp29 = tmp27 - tmp28 tmp30 = 2.0 tmp31 = tmp29 * tmp30 tl.store(out_ptr0 + x4, tmp31, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 3, 4, 4), (48, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(arg1_1, (16, 4, 4), (16, 4, 1 ), 0), reinterpret_tensor(arg0_1, (16, 4, 4), (16, 4, 1), 0), out=buf0) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((4, 3, 4, 4), (48, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_clone_0[grid(192)](buf0, buf1, 192, XBLOCK=128, num_warps=4, num_stages=1) del buf0 buf2 = empty_strided_cuda((12, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(buf1, (12, 4, 4), (16, 4, 1), 0), reinterpret_tensor(arg2_1, (12, 4, 4), (16, 4, 1), 0), out=buf2 ) del arg2_1 del buf1 buf3 = empty_strided_cuda((4, 4, 4, 2), (32, 4, 1, 16), torch.float32) triton_poi_fused_mul_sub_1[grid(128)](buf2, buf3, 128, XBLOCK=128, num_warps=4, num_stages=1) del buf2 return buf3, class ProjectNew(nn.Module): def __init__(self, batch_size, height, width, eps=1e-07): super(ProjectNew, self).__init__() self.batch_size = batch_size self.height = height self.width = width self.eps = eps def forward(self, input_0, input_1, input_2): arg2_1 = input_0 arg0_1 = input_1 arg1_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
ArminMasoumian/GCNDepth
Project
false
7,731
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, batch_size, height, width, eps=1e-07): super().__init__() self.batch_size = batch_size self.height = height self.width = width self.eps = eps def forward(self, points, K, T): P = torch.matmul(K, T)[:, :3, :] cam_points = torch.matmul(P, points) pix_coords = cam_points[:, :2, :] / (cam_points[:, 2, :].unsqueeze( 1) + self.eps) pix_coords = pix_coords.view(self.batch_size, 2, self.height, self. width) pix_coords = pix_coords.permute(0, 2, 3, 1) pix_coords[..., 0] /= self.width - 1 pix_coords[..., 1] /= self.height - 1 pix_coords = (pix_coords - 0.5) * 2 return pix_coords def get_inputs(): return [torch.rand([4, 3, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4]
MakeFeatures
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/4p/c4p6fbm6ms2rmajy7mwyf472kad6lksnhpbc4mhdwcejcglv42zf.py # Topologically Sorted Source Nodes: [pairs], Original ATen: [aten.sub] # Source node to ATen node mapping: # pairs => sub # Graph fragment: # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%unsqueeze, %unsqueeze_1), kwargs = {}) triton_poi_fused_sub_0 = async_compile.triton('triton_poi_fused_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = (xindex // 64) x4 = xindex % 16 x0 = xindex % 4 x5 = (xindex // 16) x6 = xindex tmp0 = tl.load(in_ptr0 + (x4 + (16*x3)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (x0 + (4*x5)), xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tl.store(out_ptr0 + (x6), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pairs], Original ATen: [aten.sub] stream0 = get_raw_stream(0) triton_poi_fused_sub_0.run(primals_1, buf0, 1024, grid=grid(1024), stream=stream0) buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((256, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf0, (256, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_4 del primals_5 return (reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf2, (4, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0), buf0, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (256, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class MakeFeatures(nn.Module): """ Returns features to be used by PairDrift. """ def __init__(self, in_dim, out_dim): super(MakeFeatures, self).__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) def forward(self, x): pairs = x[..., None, :, :] - x[..., :, None, :] return self.single(x), self.pair(pairs), pairs def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_dim': 4, 'out_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex // 64 x4 = xindex % 16 x0 = xindex % 4 x5 = xindex // 16 x6 = xindex tmp0 = tl.load(in_ptr0 + (x4 + 16 * x3), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (x0 + 4 * x5), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 - tmp1 tl.store(out_ptr0 + x6, tmp2, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_sub_0[grid(1024)](primals_1, buf0, 1024, XBLOCK= 128, num_warps=4, num_stages=1) buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((256, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf0, (256, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_4 del primals_5 return reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf2, (4, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0 ), buf0, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf0, (256, 4), (4, 1), 0) class MakeFeaturesNew(nn.Module): """ Returns features to be used by PairDrift. """ def __init__(self, in_dim, out_dim): super(MakeFeaturesNew, self).__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) def forward(self, input_0): primals_2 = self.single.weight primals_3 = self.single.bias primals_4 = self.pair.weight primals_5 = self.pair.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0], output[1], output[2]
AustenLamacraft/QuaRL
MakeFeatures
false
7,732
[ "MIT" ]
13
1764f0ccd0ba90d44e799b6ac908df76be14a52e
https://github.com/AustenLamacraft/QuaRL/tree/1764f0ccd0ba90d44e799b6ac908df76be14a52e
import torch import torch.nn as nn class Model(nn.Module): """ Returns features to be used by PairDrift. """ def __init__(self, in_dim, out_dim): super().__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) def forward(self, x): pairs = x[..., None, :, :] - x[..., :, None, :] return self.single(x), self.pair(pairs), pairs def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
Conv5x5
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/zo/czoefxnecwpok2nmimcnrjk6tumldvtx7xkzpmzgmnay3tkwhjwg.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] # Source node to ATen node mapping: # out => _unsafe_index, _unsafe_index_1 # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%primals_1, [None, None, %sub_1, None]), kwargs = {}) # %_unsafe_index_1 : [num_users=2] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%_unsafe_index, [None, None, None, %sub_1]), kwargs = {}) triton_poi_fused_reflection_pad2d_0 = async_compile.triton('triton_poi_fused_reflection_pad2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_reflection_pad2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) % 8 x2 = (xindex // 64) x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + ((-1)*(tl_math.abs((-3) + (tl_math.abs((-2) + x0))))) + ((-4)*(tl_math.abs((-3) + (tl_math.abs((-2) + x1))))) + (16*x2)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x3), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/7r/c7r2u57hr54idc3of6lw2ouxuoyy44tzonl7cy4k7awnnjece2kt.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] # Source node to ATen node mapping: # out_1 => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%_unsafe_index_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 5, 5), (100, 25, 5, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.reflection_pad2d] stream0 = get_raw_stream(0) triton_poi_fused_reflection_pad2d_0.run(primals_1, buf0, 1024, grid=grid(1024), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf2, primals_3, 256, grid=grid(256), stream=stream0) del primals_3 return (buf2, primals_2, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 5, 5), (100, 25, 5, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Conv5x5(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv5x5, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(2) else: self.pad = nn.ZeroPad2d(2) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 5) def forward(self, x): out = self.pad(x) out = self.conv(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_reflection_pad2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 % 8 x2 = xindex // 64 x3 = xindex tmp0 = tl.load(in_ptr0 + (15 + -1 * tl_math.abs(-3 + tl_math.abs(-2 + x0)) + -4 * tl_math.abs(-3 + tl_math.abs(-2 + x1)) + 16 * x2), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x3, tmp0, xmask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 5, 5), (100, 25, 5, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) get_raw_stream(0) triton_poi_fused_reflection_pad2d_0[grid(1024)](primals_1, buf0, 1024, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 4, 4), (64, 16, 4, 1)) buf2 = buf1 del buf1 triton_poi_fused_convolution_1[grid(256)](buf2, primals_3, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_3 return buf2, primals_2, buf0 class Conv5x5New(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super(Conv5x5New, self).__init__() if use_refl: self.pad = nn.ReflectionPad2d(2) else: self.pad = nn.ZeroPad2d(2) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 5) def forward(self, input_0): primals_2 = self.conv.weight primals_3 = self.conv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArminMasoumian/GCNDepth
Conv5x5
false
7,733
[ "MIT" ]
32
9fa77812fa944c2701a45f09acf988815ca50aee
https://github.com/ArminMasoumian/GCNDepth/tree/9fa77812fa944c2701a45f09acf988815ca50aee
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, in_channels, out_channels, use_refl=True): super().__init__() if use_refl: self.pad = nn.ReflectionPad2d(2) else: self.pad = nn.ZeroPad2d(2) self.conv = nn.Conv2d(int(in_channels), int(out_channels), 5) def forward(self, x): out = self.pad(x) out = self.conv(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
BCEBlurWithLogitsLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/bt/cbthslxolot4snz64lg4mgx6loe6p3mf22th4nfnb7mwuintpm6d.py # Topologically Sorted Source Nodes: [loss, pred, dx, sub_1, truediv, exp, alpha_factor, loss_1, mean], Original ATen: [aten.binary_cross_entropy_with_logits, aten.sigmoid, aten.sub, aten.div, aten.exp, aten.rsub, aten.mul, aten.mean] # Source node to ATen node mapping: # alpha_factor => sub_5 # dx => sub_3 # exp => exp_1 # loss => abs_1, exp, full_default, log1p, minimum, mul, neg, sub, sub_1, sub_2 # loss_1 => mul_1 # mean => mean # pred => sigmoid # sub_1 => sub_4 # truediv => div # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg0_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %arg1_1), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %minimum : [num_users=1] = call_function[target=torch.ops.aten.minimum.default](args = (%full_default, %arg1_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%arg1_1,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%abs_1,), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%neg,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%minimum, %log1p), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul, %sub_1), kwargs = {}) # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%arg1_1,), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sigmoid, %arg0_1), kwargs = {}) # %sub_4 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_3, 1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub_4, 0.050100000000000006), kwargs = {}) # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%div,), kwargs = {}) # %sub_5 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %exp_1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_2, %sub_5), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%mul_1,), kwargs = {}) triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0 = async_compile.triton('triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp3 = tl.load(in_ptr1 + (r0), None) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp4 = tmp2 * tmp3 tmp5 = 0.0 tmp6 = triton_helpers.minimum(tmp5, tmp3) tmp7 = tl_math.abs(tmp3) tmp8 = -tmp7 tmp9 = tl_math.exp(tmp8) tmp10 = libdevice.log1p(tmp9) tmp11 = tmp6 - tmp10 tmp12 = tmp4 - tmp11 tmp13 = tl.sigmoid(tmp3) tmp14 = tmp13 - tmp0 tmp15 = tmp14 - tmp1 tmp16 = 19.96007984031936 tmp17 = tmp15 * tmp16 tmp18 = tl_math.exp(tmp17) tmp19 = tmp1 - tmp18 tmp20 = tmp12 * tmp19 tmp21 = tl.broadcast_to(tmp20, [RBLOCK]) tmp23 = triton_helpers.promote_to_tensor(tl.sum(tmp21, 0)) tmp24 = 256.0 tmp25 = tmp23 / tmp24 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp25, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [loss, pred, dx, sub_1, truediv, exp, alpha_factor, loss_1, mean], Original ATen: [aten.binary_cross_entropy_with_logits, aten.sigmoid, aten.sub, aten.div, aten.exp, aten.rsub, aten.mul, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class BCEBlurWithLogitsLoss(nn.Module): def __init__(self, alpha=0.05): super(BCEBlurWithLogitsLoss, self).__init__() self.loss_fcn = nn.BCEWithLogitsLoss(reduction='none') self.alpha = alpha def forward(self, pred, true): loss = self.loss_fcn(pred, true) pred = torch.sigmoid(pred) dx = pred - true alpha_factor = 1 - torch.exp((dx - 1) / (self.alpha + 0.0001)) loss *= alpha_factor return loss.mean() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0( in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp3 = tl.load(in_ptr1 + r0, None) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp4 = tmp2 * tmp3 tmp5 = 0.0 tmp6 = triton_helpers.minimum(tmp5, tmp3) tmp7 = tl_math.abs(tmp3) tmp8 = -tmp7 tmp9 = tl_math.exp(tmp8) tmp10 = libdevice.log1p(tmp9) tmp11 = tmp6 - tmp10 tmp12 = tmp4 - tmp11 tmp13 = tl.sigmoid(tmp3) tmp14 = tmp13 - tmp0 tmp15 = tmp14 - tmp1 tmp16 = 19.96007984031936 tmp17 = tmp15 * tmp16 tmp18 = tl_math.exp(tmp17) tmp19 = tmp1 - tmp18 tmp20 = tmp12 * tmp19 tmp21 = tl.broadcast_to(tmp20, [RBLOCK]) tmp23 = triton_helpers.promote_to_tensor(tl.sum(tmp21, 0)) tmp24 = 256.0 tmp25 = tmp23 / tmp24 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp25, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_binary_cross_entropy_with_logits_div_exp_mean_mul_rsub_sigmoid_sub_0[ grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, class BCEBlurWithLogitsLossNew(nn.Module): def __init__(self, alpha=0.05): super(BCEBlurWithLogitsLossNew, self).__init__() self.loss_fcn = nn.BCEWithLogitsLoss(reduction='none') self.alpha = alpha def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AsakusaRinne/tensorrt_yolov5_tracker
BCEBlurWithLogitsLoss
false
7,734
[ "MIT" ]
22
b9a3a6fc94710e8291d6a614ed2b04cbc4c56599
https://github.com/AsakusaRinne/tensorrt_yolov5_tracker/tree/b9a3a6fc94710e8291d6a614ed2b04cbc4c56599
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, alpha=0.05): super().__init__() self.loss_fcn = nn.BCEWithLogitsLoss(reduction='none') self.alpha = alpha def forward(self, pred, true): loss = self.loss_fcn(pred, true) pred = torch.sigmoid(pred) dx = pred - true alpha_factor = 1 - torch.exp((dx - 1) / (self.alpha + 0.0001)) loss *= alpha_factor return loss.mean() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
GCNSynthetic
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/l4/cl4erxzml5b5vcjtgvhzru54hbwjhajvwtatu5eqym5h3jov2vwu.py # Topologically Sorted Source Nodes: [add, x1, cat], Original ATen: [aten.add, aten.relu, aten.cat] # Source node to ATen node mapping: # add => add # cat => cat # x1 => relu # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_1, %primals_4), kwargs = {}) # %relu : [num_users=3] = call_function[target=torch.ops.aten.relu.default](args = (%add,), kwargs = {}) # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu, %relu_1, %addmm_default], 1), kwargs = {}) triton_poi_fused_add_cat_relu_0 = async_compile.triton('triton_poi_fused_add_cat_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_cat_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_cat_relu_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = (xindex // 4) tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x0 + (12*x1)), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/xd/cxdmpcvyydfochkbxbhacpqhxbmtsliairoaghapfdjq656mtnrv.py # Topologically Sorted Source Nodes: [add_1, x2, cat], Original ATen: [aten.add, aten.relu, aten.cat] # Source node to ATen node mapping: # add_1 => add_1 # cat => cat # x2 => relu_1 # Graph fragment: # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_3, %primals_6), kwargs = {}) # %relu_1 : [num_users=3] = call_function[target=torch.ops.aten.relu.default](args = (%add_1,), kwargs = {}) # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%relu, %relu_1, %addmm_default], 1), kwargs = {}) triton_poi_fused_add_cat_relu_1 = async_compile.triton('triton_poi_fused_add_cat_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_cat_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_cat_relu_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = (xindex // 4) tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x0 + (12*x1)), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/o2/co2aigwruj54iepuvlt5gm5ptlwz5taujaqcixgdclopgas2mn5w.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%addmm, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%addmm, %amax), kwargs = {}) triton_poi_fused__log_softmax_2 = async_compile.triton('triton_poi_fused__log_softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/7j/c7jk3avfkotgym4tjnrwbeqixy4pxganlveqbmupgw7b267aeaw5.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => exp, log, sub_1, sum_1 # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) triton_poi_fused__log_softmax_3 = async_compile.triton('triton_poi_fused__log_softmax_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_3(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + (x2), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, ), (1, )) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4, ), (1, )) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4, ), (1, )) assert_size_stride(primals_9, (4, 12), (12, 1)) assert_size_stride(primals_10, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [support], Original ATen: [aten.mm] extern_kernels.mm(primals_2, primals_1, out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [output], Original ATen: [aten.mm] extern_kernels.mm(primals_3, buf0, out=buf1) buf2 = buf1; del buf1 # reuse buf10 = empty_strided_cuda((4, 12), (12, 1), torch.float32) buf8 = reinterpret_tensor(buf10, (4, 4), (12, 1), 0) # alias # Topologically Sorted Source Nodes: [add, x1, cat], Original ATen: [aten.add, aten.relu, aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_add_cat_relu_0.run(buf2, primals_4, buf8, 16, grid=grid(16), stream=stream0) del primals_4 buf3 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [support_1], Original ATen: [aten.mm] extern_kernels.mm(buf2, primals_5, out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [output_1], Original ATen: [aten.mm] extern_kernels.mm(primals_3, buf3, out=buf4) buf5 = buf4; del buf4 # reuse buf9 = reinterpret_tensor(buf10, (4, 4), (12, 1), 4) # alias # Topologically Sorted Source Nodes: [add_1, x2, cat], Original ATen: [aten.add, aten.relu, aten.cat] triton_poi_fused_add_cat_relu_1.run(buf5, primals_6, buf9, 16, grid=grid(16), stream=stream0) del primals_6 buf6 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [support_2], Original ATen: [aten.mm] extern_kernels.mm(buf5, primals_7, out=buf6) buf7 = reinterpret_tensor(buf10, (4, 4), (12, 1), 8) # alias # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.addmm(primals_8, primals_3, buf6, alpha=1, beta=1, out=buf7) del primals_8 buf11 = buf6; del buf6 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.addmm] extern_kernels.addmm(primals_10, buf10, reinterpret_tensor(primals_9, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf11) del primals_10 buf12 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_2.run(buf11, buf12, 16, grid=grid(16), stream=stream0) buf13 = buf11; del buf11 # reuse # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] triton_poi_fused__log_softmax_3.run(buf12, buf13, 16, grid=grid(16), stream=stream0) del buf12 return (buf13, buf2, buf5, buf10, buf13, primals_9, reinterpret_tensor(primals_3, (4, 4), (1, 4), 0), reinterpret_tensor(primals_7, (4, 4), (1, 4), 0), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, 12), (12, 1), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn.functional as F import torch.nn as nn from torch.nn.parameter import Parameter class GraphConvolution(nn.Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super(GraphConvolution, self).__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.spmm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class GCNSynthetic(nn.Module): """ 3-layer GCN used in GNN Explainer synthetic tasks, including """ def __init__(self, nfeat, nhid, nout, nclass, dropout): super(GCNSynthetic, self).__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nhid) self.gc3 = GraphConvolution(nhid, nout) self.lin = nn.Linear(nhid + nhid + nout, nclass) self.dropout = dropout def forward(self, x, adj): x1 = F.relu(self.gc1(x, adj)) x1 = F.dropout(x1, self.dropout, training=self.training) x2 = F.relu(self.gc2(x1, adj)) x2 = F.dropout(x2, self.dropout, training=self.training) x3 = self.gc3(x2, adj) x = self.lin(torch.cat((x1, x2, x3), dim=1)) return F.log_softmax(x, dim=1) def loss(self, pred, label): return F.nll_loss(pred, label) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'nfeat': 4, 'nhid': 4, 'nout': 4, 'nclass': 4, 'dropout': 0.5} ]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import math import torch.nn.functional as F import torch.nn as nn from torch.nn.parameter import Parameter assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_cat_relu_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = xindex // 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + (x0 + 12 * x1), tmp4, xmask) @triton.jit def triton_poi_fused_add_cat_relu_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = xindex // 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + (x0 + 12 * x1), tmp4, xmask) @triton.jit def triton_poi_fused__log_softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_poi_fused__log_softmax_3(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tl_math.exp(tmp1) tmp4 = tl_math.exp(tmp3) tmp5 = tmp2 + tmp4 tmp7 = tl_math.exp(tmp6) tmp8 = tmp5 + tmp7 tmp10 = tl_math.exp(tmp9) tmp11 = tmp8 + tmp10 tmp12 = tl_math.log(tmp11) tmp13 = tmp0 - tmp12 tl.store(out_ptr0 + x2, tmp13, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4,), (1,)) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4,), (1,)) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4,), (1,)) assert_size_stride(primals_9, (4, 12), (12, 1)) assert_size_stride(primals_10, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_2, primals_1, out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_3, buf0, out=buf1) buf2 = buf1 del buf1 buf10 = empty_strided_cuda((4, 12), (12, 1), torch.float32) buf8 = reinterpret_tensor(buf10, (4, 4), (12, 1), 0) get_raw_stream(0) triton_poi_fused_add_cat_relu_0[grid(16)](buf2, primals_4, buf8, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_4 buf3 = buf0 del buf0 extern_kernels.mm(buf2, primals_5, out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_3, buf3, out=buf4) buf5 = buf4 del buf4 buf9 = reinterpret_tensor(buf10, (4, 4), (12, 1), 4) triton_poi_fused_add_cat_relu_1[grid(16)](buf5, primals_6, buf9, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_6 buf6 = buf3 del buf3 extern_kernels.mm(buf5, primals_7, out=buf6) buf7 = reinterpret_tensor(buf10, (4, 4), (12, 1), 8) extern_kernels.addmm(primals_8, primals_3, buf6, alpha=1, beta=1, out=buf7) del primals_8 buf11 = buf6 del buf6 extern_kernels.addmm(primals_10, buf10, reinterpret_tensor( primals_9, (12, 4), (1, 12), 0), alpha=1, beta=1, out=buf11) del primals_10 buf12 = empty_strided_cuda((4, 4), (4, 1), torch.float32) triton_poi_fused__log_softmax_2[grid(16)](buf11, buf12, 16, XBLOCK= 16, num_warps=1, num_stages=1) buf13 = buf11 del buf11 triton_poi_fused__log_softmax_3[grid(16)](buf12, buf13, 16, XBLOCK= 16, num_warps=1, num_stages=1) del buf12 return buf13, buf2, buf5, buf10, buf13, primals_9, reinterpret_tensor( primals_3, (4, 4), (1, 4), 0), reinterpret_tensor(primals_7, (4, 4), (1, 4), 0), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0 ), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0) class GraphConvolution(nn.Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super(GraphConvolution, self).__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.spmm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class GCNSyntheticNew(nn.Module): """ 3-layer GCN used in GNN Explainer synthetic tasks, including """ def __init__(self, nfeat, nhid, nout, nclass, dropout): super(GCNSyntheticNew, self).__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nhid) self.gc3 = GraphConvolution(nhid, nout) self.lin = nn.Linear(nhid + nhid + nout, nclass) self.dropout = dropout def loss(self, pred, label): return F.nll_loss(pred, label) def forward(self, input_0, input_1): primals_1 = self.gc1.weight primals_4 = self.gc1.bias primals_2 = self.gc2.weight primals_6 = self.gc2.bias primals_3 = self.gc3.weight primals_8 = self.gc3.bias primals_9 = self.lin.weight primals_10 = self.lin.bias primals_5 = input_0 primals_7 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10]) return output[0]
Armagaan/cf-gnnexplainer
GCNSynthetic
false
7,735
[ "MIT" ]
15
22b415e114c52d8d60ca45a40c3cb33c1947400c
https://github.com/Armagaan/cf-gnnexplainer/tree/22b415e114c52d8d60ca45a40c3cb33c1947400c
import math import torch import torch.nn.functional as F import torch.nn as nn from torch.nn.parameter import Parameter class GraphConvolution(nn.Module): """ Simple GCN layer, similar to https://arxiv.org/abs/1609.02907 """ def __init__(self, in_features, out_features, bias=True): super().__init__() self.in_features = in_features self.out_features = out_features self.weight = Parameter(torch.FloatTensor(in_features, out_features)) if bias: self.bias = Parameter(torch.FloatTensor(out_features)) else: self.register_parameter('bias', None) self.reset_parameters() def reset_parameters(self): stdv = 1.0 / math.sqrt(self.weight.size(1)) self.weight.data.uniform_(-stdv, stdv) if self.bias is not None: self.bias.data.uniform_(-stdv, stdv) def forward(self, input, adj): support = torch.mm(input, self.weight) output = torch.spmm(adj, support) if self.bias is not None: return output + self.bias else: return output def __repr__(self): return self.__class__.__name__ + ' (' + str(self.in_features ) + ' -> ' + str(self.out_features) + ')' class Model(nn.Module): """ 3-layer GCN used in GNN Explainer synthetic tasks, including """ def __init__(self, nfeat, nhid, nout, nclass, dropout): super().__init__() self.gc1 = GraphConvolution(nfeat, nhid) self.gc2 = GraphConvolution(nhid, nhid) self.gc3 = GraphConvolution(nhid, nout) self.lin = nn.Linear(nhid + nhid + nout, nclass) self.dropout = dropout def forward(self, x, adj): x1 = F.relu(self.gc1(x, adj)) x1 = F.dropout(x1, self.dropout, training=self.training) x2 = F.relu(self.gc2(x1, adj)) x2 = F.dropout(x2, self.dropout, training=self.training) x3 = self.gc3(x2, adj) x = self.lin(torch.cat((x1, x2, x3), dim=1)) return F.log_softmax(x, dim=1) def loss(self, pred, label): return F.nll_loss(pred, label) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'nfeat': 4, 'nhid': 4, 'nout': 4, 'nclass': 4, 'dropout': 0.5} ]
BertLayerNorm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/fi/cfirwebzg3c53rtcua4vzlldpuixnutokbath2cbd6sgyitlgnch.py # Topologically Sorted Source Nodes: [u, sub], Original ATen: [aten.mean, aten.sub] # Source node to ATen node mapping: # sub => sub # u => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_1, %mean), kwargs = {}) triton_poi_fused_mean_sub_0 = async_compile.triton('triton_poi_fused_mean_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = 4.0 tmp9 = tmp7 / tmp8 tmp10 = tmp0 - tmp9 tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/dj/cdjs7ww2qw4tk4fj7o2pa4ttqgamorvzy3hku5vjlwyhmt3qkdh7.py # Topologically Sorted Source Nodes: [pow_1, s, add, sqrt, x, mul, add_1], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div, aten.mul] # Source node to ATen node mapping: # add => add # add_1 => add_1 # mul => mul # pow_1 => pow_1 # s => mean_1 # sqrt => sqrt # x => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mean_1 : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%pow_1, [-1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean_1, 1e-12), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %sqrt), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %div), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %primals_3), kwargs = {}) triton_poi_fused_add_div_mean_mul_pow_sqrt_1 = async_compile.triton('triton_poi_fused_add_div_mean_mul_pow_sqrt_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mean_mul_pow_sqrt_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 7, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mean_mul_pow_sqrt_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x2), xmask) tmp2 = tl.load(in_ptr1 + (4*x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = 4.0 tmp14 = tmp12 / tmp13 tmp15 = 1e-12 tmp16 = tmp14 + tmp15 tmp17 = libdevice.sqrt(tmp16) tmp18 = tmp1 / tmp17 tmp19 = tmp0 * tmp18 tmp21 = tmp19 + tmp20 tl.store(out_ptr0 + (x2), tmp21, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [u, sub], Original ATen: [aten.mean, aten.sub] stream0 = get_raw_stream(0) triton_poi_fused_mean_sub_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, s, add, sqrt, x, mul, add_1], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div, aten.mul] triton_poi_fused_add_div_mean_mul_pow_sqrt_1.run(primals_2, buf0, primals_3, buf1, 256, grid=grid(256), stream=stream0) del buf0 del primals_2 del primals_3 return (buf1, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class BertLayerNorm(nn.Module): def __init__(self, hidden_size, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super(BertLayerNorm, self).__init__() self.weight = nn.Parameter(torch.ones(hidden_size)) self.bias = nn.Parameter(torch.zeros(hidden_size)) self.variance_epsilon = eps def forward(self, x): u = x.mean(-1, keepdim=True) s = (x - u).pow(2).mean(-1, keepdim=True) x = (x - u) / torch.sqrt(s + self.variance_epsilon) return self.weight * x + self.bias def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_size': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mean_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = 4.0 tmp9 = tmp7 / tmp8 tmp10 = tmp0 - tmp9 tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_add_div_mean_mul_pow_sqrt_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x2, xmask) tmp2 = tl.load(in_ptr1 + 4 * x1, xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp20 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = 4.0 tmp14 = tmp12 / tmp13 tmp15 = 1e-12 tmp16 = tmp14 + tmp15 tmp17 = libdevice.sqrt(tmp16) tmp18 = tmp1 / tmp17 tmp19 = tmp0 * tmp18 tmp21 = tmp19 + tmp20 tl.store(out_ptr0 + x2, tmp21, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mean_sub_0[grid(256)](primals_1, buf0, 256, XBLOCK =128, num_warps=4, num_stages=1) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_div_mean_mul_pow_sqrt_1[grid(256)](primals_2, buf0, primals_3, buf1, 256, XBLOCK=256, num_warps=4, num_stages=1) del buf0 del primals_2 del primals_3 return buf1, primals_1 class BertLayerNormNew(nn.Module): def __init__(self, hidden_size, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super(BertLayerNormNew, self).__init__() self.weight = nn.Parameter(torch.ones(hidden_size)) self.bias = nn.Parameter(torch.zeros(hidden_size)) self.variance_epsilon = eps def forward(self, input_0): primals_2 = self.weight primals_3 = self.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArrowLuo/GRACE
BertLayerNorm
false
7,736
[ "Apache-2.0" ]
17
f27b500ba905685c03eee6d91d87adc9ef78b4d1
https://github.com/ArrowLuo/GRACE/tree/f27b500ba905685c03eee6d91d87adc9ef78b4d1
import torch from torch import nn class Model(nn.Module): def __init__(self, hidden_size, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super().__init__() self.weight = nn.Parameter(torch.ones(hidden_size)) self.bias = nn.Parameter(torch.zeros(hidden_size)) self.variance_epsilon = eps def forward(self, x): u = x.mean(-1, keepdim=True) s = (x - u).pow(2).mean(-1, keepdim=True) x = (x - u) / torch.sqrt(s + self.variance_epsilon) return self.weight * x + self.bias def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
Net
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/4g/c4guhk7x6skkidedvs2gxz2kcu6gb76l3ig5crjjvjtzvnjlhlte.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le_3 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 4), (4, 1)) assert_size_stride(primals_9, (4, ), (1, )) assert_size_stride(primals_10, (4, 4), (4, 1)) assert_size_stride(primals_11, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse buf12 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, primals_2, buf12, 256, grid=grid(256), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf2 # reuse buf11 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_0.run(buf3, primals_5, buf11, 256, grid=grid(256), stream=stream0) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), out=buf4) buf5 = reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf4 # reuse buf10 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_0.run(buf5, primals_7, buf10, 256, grid=grid(256), stream=stream0) del primals_7 buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf5, (64, 4), (4, 1), 0), reinterpret_tensor(primals_8, (4, 4), (1, 4), 0), out=buf6) buf7 = reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf6 # reuse buf9 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_0.run(buf7, primals_9, buf9, 256, grid=grid(256), stream=stream0) del primals_9 buf8 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.addmm] extern_kernels.addmm(primals_11, reinterpret_tensor(buf7, (64, 4), (4, 1), 0), reinterpret_tensor(primals_10, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf8) del primals_11 return (reinterpret_tensor(buf8, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(buf5, (64, 4), (4, 1), 0), reinterpret_tensor(buf7, (64, 4), (4, 1), 0), primals_10, buf9, primals_8, buf10, primals_6, buf11, primals_4, buf12, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch class Net(torch.nn.Module): def __init__(self, n_input, n_hidden, n_output): super(Net, self).__init__() self.hidden1 = torch.nn.Linear(n_input, n_hidden) self.hidden2 = torch.nn.Linear(n_hidden, n_hidden) self.hidden3 = torch.nn.Linear(n_hidden, n_hidden) self.hidden4 = torch.nn.Linear(n_hidden, n_hidden) self.predict = torch.nn.Linear(n_hidden, n_output) def forward(self, x): x = torch.relu(self.hidden1(x)) x = torch.relu(self.hidden2(x)) x = torch.relu(self.hidden3(x)) x = torch.relu(self.hidden4(x)) x = self.predict(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'n_input': 4, 'n_hidden': 4, 'n_output': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 4), (4, 1)) assert_size_stride(primals_9, (4,), (1,)) assert_size_stride(primals_10, (4, 4), (4, 1)) assert_size_stride(primals_11, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 buf12 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf1, primals_2, buf12, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf2 buf11 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf3, primals_5, buf11, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), out=buf4) buf5 = reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf4 buf10 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf5, primals_7, buf10, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf5, (64, 4), (4, 1), 0), reinterpret_tensor(primals_8, (4, 4), (1, 4), 0), out=buf6) buf7 = reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf6 buf9 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf7, primals_9, buf9, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_9 buf8 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_11, reinterpret_tensor(buf7, (64, 4), (4, 1), 0), reinterpret_tensor(primals_10, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf8) del primals_11 return reinterpret_tensor(buf8, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor( buf3, (64, 4), (4, 1), 0), reinterpret_tensor(buf5, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf7, (64, 4), (4, 1), 0 ), primals_10, buf9, primals_8, buf10, primals_6, buf11, primals_4, buf12 class NetNew(torch.nn.Module): def __init__(self, n_input, n_hidden, n_output): super(NetNew, self).__init__() self.hidden1 = torch.nn.Linear(n_input, n_hidden) self.hidden2 = torch.nn.Linear(n_hidden, n_hidden) self.hidden3 = torch.nn.Linear(n_hidden, n_hidden) self.hidden4 = torch.nn.Linear(n_hidden, n_hidden) self.predict = torch.nn.Linear(n_hidden, n_output) def forward(self, input_0): primals_1 = self.hidden1.weight primals_2 = self.hidden1.bias primals_4 = self.hidden2.weight primals_5 = self.hidden2.bias primals_6 = self.hidden3.weight primals_7 = self.hidden3.bias primals_8 = self.hidden4.weight primals_9 = self.hidden4.bias primals_10 = self.predict.weight primals_11 = self.predict.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return output[0]
AstroHiro/NCM
Net
false
7,737
[ "MIT" ]
23
720db63ec018a1986ac9e370613f8209328b89e1
https://github.com/AstroHiro/NCM/tree/720db63ec018a1986ac9e370613f8209328b89e1
import torch class Model(torch.nn.Module): def __init__(self, n_input, n_hidden, n_output): super().__init__() self.hidden1 = torch.nn.Linear(n_input, n_hidden) self.hidden2 = torch.nn.Linear(n_hidden, n_hidden) self.hidden3 = torch.nn.Linear(n_hidden, n_hidden) self.hidden4 = torch.nn.Linear(n_hidden, n_hidden) self.predict = torch.nn.Linear(n_hidden, n_output) def forward(self, x): x = torch.relu(self.hidden1(x)) x = torch.relu(self.hidden2(x)) x = torch.relu(self.hidden3(x)) x = torch.relu(self.hidden4(x)) x = self.predict(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4, 4]
CrossEntropyLossOneHot
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/rr/crrkfiuzinrqlkjsh6ixacvyrm76qb7yzuyt5euwmtbejf7u6uax.py # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # log_softmax => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg1_1, [-1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %amax), kwargs = {}) triton_poi_fused__log_softmax_0 = async_compile.triton('triton_poi_fused__log_softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/6s/c6sddowrz4by4chs67oamk6t4pmleuc5qcqaieq43mtarvf6gtqe.py # Topologically Sorted Source Nodes: [neg, log_softmax, mul, sum_1, mean], Original ATen: [aten.neg, aten._log_softmax, aten.mul, aten.sum, aten.mean] # Source node to ATen node mapping: # log_softmax => exp, log, sub_1, sum_1 # mean => mean # mul => mul # neg => neg # sum_1 => sum_2 # Graph fragment: # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%arg0_1,), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [-1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%neg, %sub_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [-1]), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%sum_2,), kwargs = {}) triton_per_fused__log_softmax_mean_mul_neg_sum_1 = async_compile.triton('triton_per_fused__log_softmax_mean_mul_neg_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_mean_mul_neg_sum_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 1, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (4*r0), None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + (4*r0), None, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*r0)), None, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + (4*r0)), None, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + (4*r0)), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (1 + (4*r0)), None, eviction_policy='evict_last') tmp21 = tl.load(in_ptr0 + (2 + (4*r0)), None, eviction_policy='evict_last') tmp26 = tl.load(in_ptr0 + (3 + (4*r0)), None, eviction_policy='evict_last') tmp1 = -tmp0 tmp3 = tl_math.exp(tmp2) tmp5 = tl_math.exp(tmp4) tmp6 = tmp3 + tmp5 tmp8 = tl_math.exp(tmp7) tmp9 = tmp6 + tmp8 tmp11 = tl_math.exp(tmp10) tmp12 = tmp9 + tmp11 tmp13 = tl_math.log(tmp12) tmp14 = tmp2 - tmp13 tmp15 = tmp1 * tmp14 tmp17 = -tmp16 tmp18 = tmp4 - tmp13 tmp19 = tmp17 * tmp18 tmp20 = tmp15 + tmp19 tmp22 = -tmp21 tmp23 = tmp7 - tmp13 tmp24 = tmp22 * tmp23 tmp25 = tmp20 + tmp24 tmp27 = -tmp26 tmp28 = tmp10 - tmp13 tmp29 = tmp27 * tmp28 tmp30 = tmp25 + tmp29 tmp31 = tl.broadcast_to(tmp30, [XBLOCK, RBLOCK]) tmp33 = tl.sum(tmp31, 1)[:, None] tmp34 = 64.0 tmp35 = tmp33 / tmp34 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp35, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [log_softmax], Original ATen: [aten._log_softmax] stream0 = get_raw_stream(0) triton_poi_fused__log_softmax_0.run(arg1_1, buf0, 256, grid=grid(256), stream=stream0) del arg1_1 buf2 = empty_strided_cuda((), (), torch.float32) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [neg, log_softmax, mul, sum_1, mean], Original ATen: [aten.neg, aten._log_softmax, aten.mul, aten.sum, aten.mean] triton_per_fused__log_softmax_mean_mul_neg_sum_1.run(buf3, arg0_1, buf0, 1, 64, grid=grid(1), stream=stream0) del arg0_1 del buf0 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class CrossEntropyLossOneHot(nn.Module): def __init__(self): super(CrossEntropyLossOneHot, self).__init__() self.log_softmax = nn.LogSoftmax(dim=-1) def forward(self, preds, labels): return torch.mean(torch.sum(-labels * self.log_softmax(preds), -1)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + 4 * r0, None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + 4 * r0, None, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * r0), None, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + 4 * r0), None, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + 4 * r0), None, eviction_policy='evict_last') tmp16 = tl.load(in_ptr0 + (1 + 4 * r0), None, eviction_policy='evict_last') tmp21 = tl.load(in_ptr0 + (2 + 4 * r0), None, eviction_policy='evict_last') tmp26 = tl.load(in_ptr0 + (3 + 4 * r0), None, eviction_policy='evict_last') tmp1 = -tmp0 tmp3 = tl_math.exp(tmp2) tmp5 = tl_math.exp(tmp4) tmp6 = tmp3 + tmp5 tmp8 = tl_math.exp(tmp7) tmp9 = tmp6 + tmp8 tmp11 = tl_math.exp(tmp10) tmp12 = tmp9 + tmp11 tmp13 = tl_math.log(tmp12) tmp14 = tmp2 - tmp13 tmp15 = tmp1 * tmp14 tmp17 = -tmp16 tmp18 = tmp4 - tmp13 tmp19 = tmp17 * tmp18 tmp20 = tmp15 + tmp19 tmp22 = -tmp21 tmp23 = tmp7 - tmp13 tmp24 = tmp22 * tmp23 tmp25 = tmp20 + tmp24 tmp27 = -tmp26 tmp28 = tmp10 - tmp13 tmp29 = tmp27 * tmp28 tmp30 = tmp25 + tmp29 tmp31 = tl.broadcast_to(tmp30, [XBLOCK, RBLOCK]) tmp33 = tl.sum(tmp31, 1)[:, None] tmp34 = 64.0 tmp35 = tmp33 / tmp34 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp35, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__log_softmax_0[grid(256)](arg1_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg1_1 buf2 = empty_strided_cuda((), (), torch.float32) buf3 = buf2 del buf2 triton_per_fused__log_softmax_mean_mul_neg_sum_1[grid(1)](buf3, arg0_1, buf0, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del buf0 return buf3, class CrossEntropyLossOneHotNew(nn.Module): def __init__(self): super(CrossEntropyLossOneHotNew, self).__init__() self.log_softmax = nn.LogSoftmax(dim=-1) def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
B0Qi/hualubei2020-callingsmoking
CrossEntropyLossOneHot
false
7,738
[ "MIT" ]
27
73d1049d95554b5d669afa93132a0fce37461ff4
https://github.com/B0Qi/hualubei2020-callingsmoking/tree/73d1049d95554b5d669afa93132a0fce37461ff4
import torch import torch.nn as nn class Model(nn.Module): def __init__(self): super().__init__() self.log_softmax = nn.LogSoftmax(dim=-1) def forward(self, preds, labels): return torch.mean(torch.sum(-labels * self.log_softmax(preds), -1)) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return []
Attn
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/44/c44qgqrsnqzen4fn5emv6trgirlgxm3ednkk4by4h6c2vygx3iut.py # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] # Source node to ATen node mapping: # cat => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%permute_1, %permute], 2), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[128], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x2 = (xindex // 32) x1 = (xindex // 8) % 4 x3 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x2) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x2) + (16*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x3), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/cv/ccvvrbl5xq2dop2s3ilfb3hyf275whlxxdyq7j2gky5t2pg6gozw.py # Topologically Sorted Source Nodes: [tanh], Original ATen: [aten.tanh] # Source node to ATen node mapping: # tanh => tanh # Graph fragment: # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_1,), kwargs = {}) triton_poi_fused_tanh_1 = async_compile.triton('triton_poi_fused_tanh_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/fp/cfp6aijow2g5is2smjrqj7kca6itit4xrxs2tseqvxiqv3qu5hs6.py # Topologically Sorted Source Nodes: [normalized_energy], Original ATen: [aten._softmax] # Source node to ATen node mapping: # normalized_energy => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%permute_4, [2], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%permute_4, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_2 = async_compile.triton('triton_poi_fused__softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/vk/cvkegrqrqvgc6l3q574j6alpmoropwpd76xcxahk7k7j2fjfbppc.py # Topologically Sorted Source Nodes: [normalized_energy], Original ATen: [aten._softmax] # Source node to ATen node mapping: # normalized_energy => div, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [2], True), kwargs = {}) # %div : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) triton_poi_fused__softmax_3 = async_compile.triton('triton_poi_fused__softmax_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_3(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) assert_size_stride(primals_4, (4, ), (1, )) assert_size_stride(primals_5, (1, 4), (4, 1)) assert_size_stride(primals_6, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8), (32, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [cat], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_2, primals_1, buf0, 128, grid=grid(128), stream=stream0) del primals_2 buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf0, (16, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), out=buf1) del primals_3 buf2 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [tanh], Original ATen: [aten.tanh] triton_poi_fused_tanh_1.run(buf2, primals_4, 64, grid=grid(64), stream=stream0) del primals_4 buf4 = empty_strided_cuda((16, 1), (1, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_6, reinterpret_tensor(buf2, (16, 4), (4, 1), 0), reinterpret_tensor(primals_5, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_6 buf5 = empty_strided_cuda((4, 1, 4), (4, 16, 1), torch.float32) # Topologically Sorted Source Nodes: [normalized_energy], Original ATen: [aten._softmax] triton_poi_fused__softmax_2.run(buf4, buf5, 16, grid=grid(16), stream=stream0) buf6 = reinterpret_tensor(buf4, (4, 1, 4), (4, 4, 1), 0); del buf4 # reuse # Topologically Sorted Source Nodes: [normalized_energy], Original ATen: [aten._softmax] triton_poi_fused__softmax_3.run(buf5, buf6, 16, grid=grid(16), stream=stream0) buf7 = reinterpret_tensor(buf5, (4, 1, 4), (4, 4, 1), 0); del buf5 # reuse # Topologically Sorted Source Nodes: [context], Original ATen: [aten.bmm] extern_kernels.bmm(buf6, reinterpret_tensor(primals_1, (4, 4, 4), (4, 16, 1), 0), out=buf7) return (reinterpret_tensor(buf7, (1, 4, 4), (4, 4, 1), 0), reinterpret_tensor(buf0, (16, 8), (8, 1), 0), buf2, buf6, reinterpret_tensor(primals_1, (4, 4, 4), (4, 1, 16), 0), primals_5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.nn.functional as F class Attn(nn.Module): def __init__(self, hidden_size): super(Attn, self).__init__() self.hidden_size = hidden_size self.attn = nn.Linear(self.hidden_size * 2, hidden_size) self.v = nn.Linear(self.hidden_size, 1) def forward(self, hidden, encoder_outputs, normalize=True): encoder_outputs = encoder_outputs.transpose(0, 1) attn_energies = self.score(hidden, encoder_outputs) normalized_energy = F.softmax(attn_energies, dim=2) context = torch.bmm(normalized_energy, encoder_outputs) return context.transpose(0, 1) def score(self, hidden, encoder_outputs): max_len = encoder_outputs.size(1) H = hidden.repeat(max_len, 1, 1).transpose(0, 1) energy = self.attn(torch.cat([H, encoder_outputs], 2)) energy = self.v(F.tanh(energy)).transpose(1, 2) return energy def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'hidden_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch import nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 128 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x2 = xindex // 32 x1 = xindex // 8 % 4 x3 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x2 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x2 + 16 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x3, tmp10, xmask) @triton.jit def triton_poi_fused_tanh_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) @triton.jit def triton_poi_fused__softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x2, tmp9, xmask) @triton.jit def triton_poi_fused__softmax_3(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) assert_size_stride(primals_4, (4,), (1,)) assert_size_stride(primals_5, (1, 4), (4, 1)) assert_size_stride(primals_6, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8), (32, 8, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(128)](primals_2, primals_1, buf0, 128, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf0, (16, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), out=buf1) del primals_3 buf2 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0) del buf1 triton_poi_fused_tanh_1[grid(64)](buf2, primals_4, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_4 buf4 = empty_strided_cuda((16, 1), (1, 1), torch.float32) extern_kernels.addmm(primals_6, reinterpret_tensor(buf2, (16, 4), ( 4, 1), 0), reinterpret_tensor(primals_5, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_6 buf5 = empty_strided_cuda((4, 1, 4), (4, 16, 1), torch.float32) triton_poi_fused__softmax_2[grid(16)](buf4, buf5, 16, XBLOCK=16, num_warps=1, num_stages=1) buf6 = reinterpret_tensor(buf4, (4, 1, 4), (4, 4, 1), 0) del buf4 triton_poi_fused__softmax_3[grid(16)](buf5, buf6, 16, XBLOCK=16, num_warps=1, num_stages=1) buf7 = reinterpret_tensor(buf5, (4, 1, 4), (4, 4, 1), 0) del buf5 extern_kernels.bmm(buf6, reinterpret_tensor(primals_1, (4, 4, 4), ( 4, 16, 1), 0), out=buf7) return reinterpret_tensor(buf7, (1, 4, 4), (4, 4, 1), 0 ), reinterpret_tensor(buf0, (16, 8), (8, 1), 0 ), buf2, buf6, reinterpret_tensor(primals_1, (4, 4, 4), (4, 1, 16), 0 ), primals_5 class AttnNew(nn.Module): def __init__(self, hidden_size): super(AttnNew, self).__init__() self.hidden_size = hidden_size self.attn = nn.Linear(self.hidden_size * 2, hidden_size) self.v = nn.Linear(self.hidden_size, 1) def score(self, hidden, encoder_outputs): max_len = encoder_outputs.size(1) H = hidden.repeat(max_len, 1, 1).transpose(0, 1) energy = self.attn(torch.cat([H, encoder_outputs], 2)) energy = self.v(F.tanh(energy)).transpose(1, 2) return energy def forward(self, input_0, input_1): primals_3 = self.attn.weight primals_4 = self.attn.bias primals_5 = self.v.weight primals_6 = self.v.bias primals_2 = input_0 primals_1 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
AuCson/SEDST
Attn
false
7,739
[ "MIT" ]
23
1c1691e2abc50eb2120ed49c874090f6c4f741d3
https://github.com/AuCson/SEDST/tree/1c1691e2abc50eb2120ed49c874090f6c4f741d3
import torch from torch import nn import torch.nn.functional as F class Model(nn.Module): def __init__(self, hidden_size): super().__init__() self.hidden_size = hidden_size self.attn = nn.Linear(self.hidden_size * 2, hidden_size) self.v = nn.Linear(self.hidden_size, 1) def forward(self, hidden, encoder_outputs, normalize=True): encoder_outputs = encoder_outputs.transpose(0, 1) attn_energies = self.score(hidden, encoder_outputs) normalized_energy = F.softmax(attn_energies, dim=2) context = torch.bmm(normalized_energy, encoder_outputs) return context.transpose(0, 1) def score(self, hidden, encoder_outputs): max_len = encoder_outputs.size(1) H = hidden.repeat(max_len, 1, 1).transpose(0, 1) energy = self.attn(torch.cat([H, encoder_outputs], 2)) energy = self.v(F.tanh(energy)).transpose(1, 2) return energy def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [4]
PermEqMean
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ko/ckozuzulh7d5hpqmxqtwy7lq25nzdulcboum5vvrdvybl6bk7fms.py # Topologically Sorted Source Nodes: [x_mean], Original ATen: [aten.mean] # Source node to ATen node mapping: # x_mean => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-2], True), kwargs = {}) triton_poi_fused_mean_0 = async_compile.triton('triton_poi_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x1)), xmask) tmp1 = tl.load(in_ptr0 + (4 + x0 + (16*x1)), xmask) tmp3 = tl.load(in_ptr0 + (8 + x0 + (16*x1)), xmask) tmp5 = tl.load(in_ptr0 + (12 + x0 + (16*x1)), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/pt/cptzrqdjpiokafnnih5fbehf44fh2xgzimdjqjyqvmeo56jn3z6b.py # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] # Source node to ATen node mapping: # add => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %view_3), kwargs = {}) triton_poi_fused_add_1 = async_compile.triton('triton_poi_fused_add_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x0 + (4*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), out=buf0) del primals_2 buf1 = empty_strided_cuda((4, 4, 1, 4), (16, 4, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_mean], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_poi_fused_mean_0.run(primals_1, buf1, 64, grid=grid(64), stream=stream0) buf2 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(buf1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) del primals_4 buf3 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] triton_poi_fused_add_1.run(buf3, primals_3, buf2, 256, grid=grid(256), stream=stream0) del buf2 del primals_3 return (buf3, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (16, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class PermEqMean(nn.Module): """ Returns equivariant layer used by EquivarDrift. """ def __init__(self, in_dim, out_dim): super(PermEqMean, self).__init__() self.Gamma = nn.Linear(in_dim, out_dim) self.Lambda = nn.Linear(in_dim, out_dim, bias=False) def forward(self, x): x_mean = x.mean(-2, keepdim=True) return self.Gamma(x) + self.Lambda(x_mean) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_dim': 4, 'out_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mean_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x1), xmask) tmp1 = tl.load(in_ptr0 + (4 + x0 + 16 * x1), xmask) tmp3 = tl.load(in_ptr0 + (8 + x0 + 16 * x1), xmask) tmp5 = tl.load(in_ptr0 + (12 + x0 + 16 * x1), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_poi_fused_add_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x0 + 4 * x2), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + x3, tmp4, xmask) def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), out=buf0) del primals_2 buf1 = empty_strided_cuda((4, 4, 1, 4), (16, 4, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mean_0[grid(64)](primals_1, buf1, 64, XBLOCK=64, num_warps=1, num_stages=1) buf2 = empty_strided_cuda((16, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) del primals_4 buf3 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 triton_poi_fused_add_1[grid(256)](buf3, primals_3, buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf2 del primals_3 return buf3, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf1, (16, 4), (4, 1), 0) class PermEqMeanNew(nn.Module): """ Returns equivariant layer used by EquivarDrift. """ def __init__(self, in_dim, out_dim): super(PermEqMeanNew, self).__init__() self.Gamma = nn.Linear(in_dim, out_dim) self.Lambda = nn.Linear(in_dim, out_dim, bias=False) def forward(self, input_0): primals_2 = self.Gamma.weight primals_3 = self.Gamma.bias primals_4 = self.Lambda.weight primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4]) return output[0]
AustenLamacraft/QuaRL
PermEqMean
false
7,740
[ "MIT" ]
13
1764f0ccd0ba90d44e799b6ac908df76be14a52e
https://github.com/AustenLamacraft/QuaRL/tree/1764f0ccd0ba90d44e799b6ac908df76be14a52e
import torch import torch.nn as nn class Model(nn.Module): """ Returns equivariant layer used by EquivarDrift. """ def __init__(self, in_dim, out_dim): super().__init__() self.Gamma = nn.Linear(in_dim, out_dim) self.Lambda = nn.Linear(in_dim, out_dim, bias=False) def forward(self, x): x_mean = x.mean(-2, keepdim=True) return self.Gamma(x) + self.Lambda(x_mean) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
CombineFeatures
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/5e/c5ekg254p74blql6ruetgeauz76z37oa3yw5yjnbph72j2qfgyhr.py # Topologically Sorted Source Nodes: [sum_1, add], Original ATen: [aten.sum, aten.add] # Source node to ATen node mapping: # add => add # sum_1 => sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%view_3, [-3]), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %sum_1), kwargs = {}) triton_poi_fused_add_sum_0 = async_compile.triton('triton_poi_fused_add_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 4 x2 = (xindex // 16) % 4 x5 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (16 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr1 + (32 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (48 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp9 = tmp7 + tmp8 tmp10 = tmp2 + tmp9 tl.store(in_out_ptr0 + (x4), tmp10, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [sum_1, add], Original ATen: [aten.sum, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_sum_0.run(buf2, primals_2, buf1, 256, grid=grid(256), stream=stream0) del buf1 del primals_2 return (buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class CombineFeatures(nn.Module): """ Returns layer to be used by PairDrift. """ def __init__(self, in_dim, out_dim, zero_init=False): super(CombineFeatures, self).__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) if zero_init: self.single.weight.data = torch.zeros(out_dim, in_dim) self.single.bias.data = torch.zeros(out_dim) self.pair.weight.data = torch.zeros(out_dim, in_dim) self.pair.bias.data = torch.zeros(out_dim) def forward(self, s, p): return self.single(s) + self.pair(p).sum(dim=-3) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_dim': 4, 'out_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 4 x2 = xindex // 16 % 4 x5 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr1 + (16 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr1 + (32 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr1 + (48 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp9 = tmp7 + tmp8 tmp10 = tmp2 + tmp9 tl.store(in_out_ptr0 + x4, tmp10, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf1) del primals_4 del primals_5 buf2 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_add_sum_0[grid(256)](buf2, primals_2, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf1 del primals_2 return buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), reinterpret_tensor(primals_6, (64, 4), (4, 1), 0) class CombineFeaturesNew(nn.Module): """ Returns layer to be used by PairDrift. """ def __init__(self, in_dim, out_dim, zero_init=False): super(CombineFeaturesNew, self).__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) if zero_init: self.single.weight.data = torch.zeros(out_dim, in_dim) self.single.bias.data = torch.zeros(out_dim) self.pair.weight.data = torch.zeros(out_dim, in_dim) self.pair.bias.data = torch.zeros(out_dim) def forward(self, input_0, input_1): primals_1 = self.single.weight primals_2 = self.single.bias primals_4 = self.pair.weight primals_5 = self.pair.bias primals_3 = input_0 primals_6 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
AustenLamacraft/QuaRL
CombineFeatures
false
7,741
[ "MIT" ]
13
1764f0ccd0ba90d44e799b6ac908df76be14a52e
https://github.com/AustenLamacraft/QuaRL/tree/1764f0ccd0ba90d44e799b6ac908df76be14a52e
import torch import torch.nn as nn class Model(nn.Module): """ Returns layer to be used by PairDrift. """ def __init__(self, in_dim, out_dim, zero_init=False): super().__init__() self.single = nn.Linear(in_dim, out_dim) self.pair = nn.Linear(in_dim, out_dim) if zero_init: self.single.weight.data = torch.zeros(out_dim, in_dim) self.single.bias.data = torch.zeros(out_dim) self.pair.weight.data = torch.zeros(out_dim, in_dim) self.pair.bias.data = torch.zeros(out_dim) def forward(self, s, p): return self.single(s) + self.pair(p).sum(dim=-3) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4, 4]
disparityentropy
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/qu/cquu2bqryjdygz4rb7v2iyzqfmnfhprkbn6ky2rfc57ylwnwxvwy.py # Topologically Sorted Source Nodes: [neg, log, mul, out], Original ATen: [aten.neg, aten.log, aten.mul, aten.sum] # Source node to ATen node mapping: # log => log # mul => mul # neg => neg # out => sum_1 # Graph fragment: # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%arg0_1,), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%arg0_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%neg, %log), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) triton_poi_fused_log_mul_neg_sum_0 = async_compile.triton('triton_poi_fused_log_mul_neg_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_log_mul_neg_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_log_mul_neg_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp1 = -tmp0 tmp2 = tl_math.log(tmp0) tmp3 = tmp1 * tmp2 tmp5 = -tmp4 tmp6 = tl_math.log(tmp4) tmp7 = tmp5 * tmp6 tmp8 = tmp3 + tmp7 tmp10 = -tmp9 tmp11 = tl_math.log(tmp9) tmp12 = tmp10 * tmp11 tmp13 = tmp8 + tmp12 tmp15 = -tmp14 tmp16 = tl_math.log(tmp14) tmp17 = tmp15 * tmp16 tmp18 = tmp13 + tmp17 tl.store(out_ptr0 + (x2), tmp18, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [neg, log, mul, out], Original ATen: [aten.neg, aten.log, aten.mul, aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_log_mul_neg_sum_0.run(arg0_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn import torch.utils.data import torch.nn.parallel class disparityentropy(nn.Module): def __init__(self, maxdisp): super(disparityentropy, self).__init__() def forward(self, x): out = torch.sum(-x * torch.log(x), 1) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'maxdisp': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math from torch import nn import torch.utils.data import torch.nn.parallel assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_log_mul_neg_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp1 = -tmp0 tmp2 = tl_math.log(tmp0) tmp3 = tmp1 * tmp2 tmp5 = -tmp4 tmp6 = tl_math.log(tmp4) tmp7 = tmp5 * tmp6 tmp8 = tmp3 + tmp7 tmp10 = -tmp9 tmp11 = tl_math.log(tmp9) tmp12 = tmp10 * tmp11 tmp13 = tmp8 + tmp12 tmp15 = -tmp14 tmp16 = tl_math.log(tmp14) tmp17 = tmp15 * tmp16 tmp18 = tmp13 + tmp17 tl.store(out_ptr0 + x2, tmp18, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_log_mul_neg_sum_0[grid(64)](arg0_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 return buf0, class disparityentropyNew(nn.Module): def __init__(self, maxdisp): super(disparityentropyNew, self).__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AvrilCheng/LidarStereoNet
disparityentropy
false
7,742
[ "MIT" ]
27
96c7cd6d5edb9b2fd302e2edd0c05cbda1ed024e
https://github.com/AvrilCheng/LidarStereoNet/tree/96c7cd6d5edb9b2fd302e2edd0c05cbda1ed024e
import torch from torch import nn import torch.utils.data import torch.nn.parallel class Model(nn.Module): def __init__(self, maxdisp): super().__init__() def forward(self, x): out = torch.sum(-x * torch.log(x), 1) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [4]
ConvReLUNorm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_1/inductor_cache/ak/cakpca4eo6izghuc2gyprh5fzpktzalyrpynoedxva3limqncjzp.py # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] # Source node to ATen node mapping: # conv1d => convolution # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1], [0], [1], False, [0], 1), kwargs = {}) triton_poi_fused_convolution_0 = async_compile.triton('triton_poi_fused_convolution_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 4) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/di/cdix6wzehkhahrbioxxwto6oy2xvg7nedanhyjbv7bisl2w3nc7b.py # Topologically Sorted Source Nodes: [layer_norm], Original ATen: [aten.native_layer_norm] # Source node to ATen node mapping: # layer_norm => add, clone, rsqrt, var_mean # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone, [2]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=1] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) triton_poi_fused_native_layer_norm_1 = async_compile.triton('triton_poi_fused_native_layer_norm_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_native_layer_norm_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_native_layer_norm_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x1)), xmask) tmp3 = tl.load(in_ptr0 + (4 + x0 + (16*x1)), xmask) tmp6 = tl.load(in_ptr0 + (8 + x0 + (16*x1)), xmask) tmp9 = tl.load(in_ptr0 + (12 + x0 + (16*x1)), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 + tmp4 tmp7 = triton_helpers.maximum(tmp1, tmp6) tmp8 = tmp5 + tmp7 tmp10 = triton_helpers.maximum(tmp1, tmp9) tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = tmp2 - tmp13 tmp15 = tmp14 * tmp14 tmp16 = tmp4 - tmp13 tmp17 = tmp16 * tmp16 tmp18 = tmp15 + tmp17 tmp19 = tmp7 - tmp13 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp22 = tmp10 - tmp13 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp25 = tmp24 / tmp12 tmp26 = 1e-05 tmp27 = tmp25 + tmp26 tmp28 = libdevice.rsqrt(tmp27) tl.store(out_ptr0 + (x2), tmp13, xmask) tl.store(out_ptr1 + (x2), tmp28, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_1/inductor_cache/dy/cdyxhxvrtmcsmbrruusa74djm53glklp5t6up2y4qegnt4ovcoha.py # Topologically Sorted Source Nodes: [layer_norm], Original ATen: [aten.native_layer_norm] # Source node to ATen node mapping: # layer_norm => add, add_1, clone, mul, mul_1, rsqrt, sub, var_mean # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone, [2]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=1] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clone, %getitem_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %rsqrt), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %primals_4), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %primals_5), kwargs = {}) triton_poi_fused_native_layer_norm_2 = async_compile.triton('triton_poi_fused_native_layer_norm_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16, 4], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=90, major=9, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=132), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_native_layer_norm_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'B098E03CDA7B8ADC90DAFFDF24A2956451D1B13F297756A5DCC209498AA53705', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_native_layer_norm_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = (yindex // 4) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (4*x2) + (16*y1)), xmask & ymask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (y3), ymask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + (y3), ymask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr3 + (x2), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr4 + (x2), xmask, eviction_policy='evict_last') tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = tmp4 * tmp5 tmp8 = tmp6 * tmp7 tmp10 = tmp8 + tmp9 tl.store(out_ptr0 + (x2 + (4*y3)), tmp10, xmask & ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 1), (4, 1, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (4, ), (1, )) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1,), padding=(0,), dilation=(1,), transposed=False, output_padding=(0,), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4), (16, 4, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] stream0 = get_raw_stream(0) triton_poi_fused_convolution_0.run(buf1, primals_2, 64, grid=grid(64), stream=stream0) del primals_2 buf2 = empty_strided_cuda((4, 4, 1), (4, 1, 16), torch.float32) buf3 = empty_strided_cuda((4, 4, 1), (4, 1, 16), torch.float32) # Topologically Sorted Source Nodes: [layer_norm], Original ATen: [aten.native_layer_norm] triton_poi_fused_native_layer_norm_1.run(buf1, buf2, buf3, 16, grid=grid(16), stream=stream0) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [layer_norm], Original ATen: [aten.native_layer_norm] triton_poi_fused_native_layer_norm_2.run(buf1, buf2, buf3, primals_4, primals_5, buf4, 16, 4, grid=grid(16, 4), stream=stream0) del buf2 del buf3 del primals_5 return (reinterpret_tensor(buf4, (4, 4, 4), (16, 1, 4), 0), primals_1, primals_3, primals_4, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 1), (4, 1, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.utils.data import torch.nn.functional as F class ConvReLUNorm(torch.nn.Module): def __init__(self, in_channels, out_channels, kernel_size=1, dropout=0.0): super(ConvReLUNorm, self).__init__() self.conv = torch.nn.Conv1d(in_channels, out_channels, kernel_size= kernel_size, padding=kernel_size // 2) self.norm = torch.nn.LayerNorm(out_channels) self.dropout_val = dropout self.dropout = torch.nn.Dropout(dropout) def forward(self, signal): out = F.relu(self.conv(signal)) out = self.norm(out.transpose(1, 2)).transpose(1, 2) if self.dropout_val > 0.0: out = self.dropout(out) return out def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 4 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) @triton.jit def triton_poi_fused_native_layer_norm_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x1), xmask) tmp3 = tl.load(in_ptr0 + (4 + x0 + 16 * x1), xmask) tmp6 = tl.load(in_ptr0 + (8 + x0 + 16 * x1), xmask) tmp9 = tl.load(in_ptr0 + (12 + x0 + 16 * x1), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp1, tmp3) tmp5 = tmp2 + tmp4 tmp7 = triton_helpers.maximum(tmp1, tmp6) tmp8 = tmp5 + tmp7 tmp10 = triton_helpers.maximum(tmp1, tmp9) tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = tmp2 - tmp13 tmp15 = tmp14 * tmp14 tmp16 = tmp4 - tmp13 tmp17 = tmp16 * tmp16 tmp18 = tmp15 + tmp17 tmp19 = tmp7 - tmp13 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp22 = tmp10 - tmp13 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp25 = tmp24 / tmp12 tmp26 = 1e-05 tmp27 = tmp25 + tmp26 tmp28 = libdevice.rsqrt(tmp27) tl.store(out_ptr0 + x2, tmp13, xmask) tl.store(out_ptr1 + x2, tmp28, xmask) @triton.jit def triton_poi_fused_native_layer_norm_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl. constexpr): ynumel = 16 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = yindex // 4 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 4 * x2 + 16 * y1), xmask & ymask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + y3, ymask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + y3, ymask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr3 + x2, xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr4 + x2, xmask, eviction_policy='evict_last') tmp1 = tl.full([1, 1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = tmp2 - tmp3 tmp6 = tmp4 * tmp5 tmp8 = tmp6 * tmp7 tmp10 = tmp8 + tmp9 tl.store(out_ptr0 + (x2 + 4 * y3), tmp10, xmask & ymask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 1), (4, 1, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (4,), (1,)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1,), padding=(0,), dilation=(1,), transposed=False, output_padding=( 0,), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4), (16, 4, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_0[grid(64)](buf1, primals_2, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_2 buf2 = empty_strided_cuda((4, 4, 1), (4, 1, 16), torch.float32) buf3 = empty_strided_cuda((4, 4, 1), (4, 1, 16), torch.float32) triton_poi_fused_native_layer_norm_1[grid(16)](buf1, buf2, buf3, 16, XBLOCK=16, num_warps=1, num_stages=1) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_native_layer_norm_2[grid(16, 4)](buf1, buf2, buf3, primals_4, primals_5, buf4, 16, 4, XBLOCK=2, YBLOCK=16, num_warps=1, num_stages=1) del buf2 del buf3 del primals_5 return reinterpret_tensor(buf4, (4, 4, 4), (16, 1, 4), 0 ), primals_1, primals_3, primals_4, buf1 class ConvReLUNormNew(torch.nn.Module): def __init__(self, in_channels, out_channels, kernel_size=1, dropout=0.0): super(ConvReLUNormNew, self).__init__() self.conv = torch.nn.Conv1d(in_channels, out_channels, kernel_size= kernel_size, padding=kernel_size // 2) self.norm = torch.nn.LayerNorm(out_channels) self.dropout_val = dropout self.dropout = torch.nn.Dropout(dropout) def forward(self, input_0): primals_1 = self.conv.weight primals_2 = self.conv.bias primals_4 = self.norm.weight primals_5 = self.norm.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
AstraliteHeart/cookietts
ConvReLUNorm
false
7,743
[ "BSD-3-Clause" ]
25
c871f5f7b5790656d5b57bcd9e63946a2da52f0f
https://github.com/AstraliteHeart/cookietts/tree/c871f5f7b5790656d5b57bcd9e63946a2da52f0f
import torch import torch.utils.data import torch.nn.functional as F class Model(torch.nn.Module): def __init__(self, in_channels, out_channels, kernel_size=1, dropout=0.0): super().__init__() self.conv = torch.nn.Conv1d(in_channels, out_channels, kernel_size= kernel_size, padding=kernel_size // 2) self.norm = torch.nn.LayerNorm(out_channels) self.dropout_val = dropout self.dropout = torch.nn.Dropout(dropout) def forward(self, signal): out = F.relu(self.conv(signal)) out = self.norm(out.transpose(1, 2)).transpose(1, 2) if self.dropout_val > 0.0: out = self.dropout(out) return out def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [4, 4]