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from __future__ import annotations |
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|
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import os |
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import warnings |
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from typing import Optional |
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|
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import torch |
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from huggingface_hub import file_exists, hf_hub_download |
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from huggingface_hub.utils import EntryNotFoundError |
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from safetensors.torch import load_file as safe_load_file |
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|
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from .other import ( |
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EMBEDDING_LAYER_NAMES, |
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SAFETENSORS_WEIGHTS_NAME, |
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WEIGHTS_NAME, |
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check_file_exists_on_hf_hub, |
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infer_device, |
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) |
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from .peft_types import PeftType |
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def has_valid_embedding_base_layer(layer): |
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"""Check if the layer has an embedding base layer""" |
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return hasattr(layer, "base_layer") and isinstance(layer.base_layer, (torch.nn.Linear, torch.nn.Embedding)) |
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def get_embedding_layer_name(model, layer, is_embedding_in_target_modules): |
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"""Get the name of the embedding module for a given layer.""" |
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for name, module in model.named_modules(): |
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if (not is_embedding_in_target_modules and module == layer) or module == getattr(layer, "base_layer", None): |
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return name |
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return None |
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def get_peft_model_state_dict( |
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model, state_dict=None, adapter_name="default", unwrap_compiled=False, save_embedding_layers="auto" |
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): |
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""" |
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Get the state dict of the Peft model. |
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Args: |
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model ([`PeftModel`]): The Peft model. When using torch.nn.DistributedDataParallel, DeepSpeed or FSDP, |
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the model should be the underlying model/unwrapped model (i.e. model.module). |
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state_dict (`dict`, *optional*, defaults to `None`): |
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The state dict of the model. If not provided, the state dict of the passed model will be used. |
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adapter_name (`str`, *optional*, defaults to `"default"`): |
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The name of the adapter whose state dict should be returned. |
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unwrap_compiled (`bool`, *optional*, defaults to `False`): |
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Whether to unwrap the model if torch.compile was used. |
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save_embedding_layers (`Union[bool, str]`, , *optional*, defaults to `auto`): |
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If `True`, save the embedding layers in addition to adapter weights. If `auto`, checks the common embedding |
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layers `peft.utils.other.EMBEDDING_LAYER_NAMES` in config's `target_modules` when available. Based on it |
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sets the boolean flag. This only works for 🤗 transformers models. |
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""" |
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if unwrap_compiled: |
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model = getattr(model, "_orig_mod", model) |
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config = model.peft_config[adapter_name] |
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if state_dict is None: |
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state_dict = model.state_dict() |
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if config.peft_type in (PeftType.LORA, PeftType.ADALORA): |
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bias = config.bias |
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if bias == "none": |
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to_return = {k: state_dict[k] for k in state_dict if "lora_" in k} |
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elif bias == "all": |
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to_return = {k: state_dict[k] for k in state_dict if "lora_" in k or "bias" in k} |
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elif bias == "lora_only": |
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to_return = {} |
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for k in state_dict: |
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if "lora_" in k: |
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to_return[k] = state_dict[k] |
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bias_name = k.split("lora_")[0] + "bias" |
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if bias_name in state_dict: |
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to_return[bias_name] = state_dict[bias_name] |
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else: |
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raise NotImplementedError |
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to_return = {k: v for k, v in to_return.items() if (("lora_" in k and adapter_name in k) or ("bias" in k))} |
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if config.peft_type == PeftType.ADALORA: |
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rank_pattern = config.rank_pattern |
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if rank_pattern is not None: |
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rank_pattern = {k.replace(f".{adapter_name}", ""): v for k, v in rank_pattern.items()} |
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config.rank_pattern = rank_pattern |
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to_return = model.resize_state_dict_by_rank_pattern(rank_pattern, to_return, adapter_name) |
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|
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elif config.peft_type == PeftType.BOFT: |
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bias = config.bias |
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if bias == "none": |
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to_return = {k: state_dict[k] for k in state_dict if "boft_" in k} |
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elif bias == "all": |
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to_return = {k: state_dict[k] for k in state_dict if "boft_" in k or "bias" in k} |
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elif bias == "boft_only": |
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to_return = {} |
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for k in state_dict: |
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if "boft_" in k: |
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to_return[k] = state_dict[k] |
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bias_name = k.split("boft_")[0] + "bias" |
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if bias_name in state_dict: |
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to_return[bias_name] = state_dict[bias_name] |
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else: |
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raise NotImplementedError |
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elif config.peft_type == PeftType.LOHA: |
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to_return = {k: state_dict[k] for k in state_dict if "hada_" in k} |
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elif config.peft_type == PeftType.LOKR: |
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to_return = {k: state_dict[k] for k in state_dict if "lokr_" in k} |
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elif config.peft_type == PeftType.ADAPTION_PROMPT: |
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to_return = {k: state_dict[k] for k in state_dict if k.split(".")[-1].startswith("adaption_")} |
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|
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elif config.is_prompt_learning: |
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to_return = {} |
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if config.peft_type == PeftType.MULTITASK_PROMPT_TUNING: |
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to_return["prefix_task_cols"] = model.prompt_encoder[adapter_name].prefix_task_cols |
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to_return["prefix_task_rows"] = model.prompt_encoder[adapter_name].prefix_task_rows |
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prompt_embeddings = model.prompt_encoder[adapter_name].embedding.weight |
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else: |
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if config.inference_mode: |
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prompt_embeddings = model.prompt_encoder[adapter_name].embedding.weight |
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else: |
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prompt_embeddings = model.get_prompt_embedding_to_save(adapter_name) |
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to_return["prompt_embeddings"] = prompt_embeddings |
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elif config.peft_type == PeftType.IA3: |
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to_return = {k: state_dict[k] for k in state_dict if "ia3_" in k} |
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elif config.peft_type == PeftType.OFT: |
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to_return = {k: state_dict[k] for k in state_dict if "oft_" in k} |
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elif config.peft_type == PeftType.POLY: |
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to_return = {k: state_dict[k] for k in state_dict if "poly_" in k} |
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elif config.peft_type == PeftType.LN_TUNING: |
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to_return = {k: state_dict[k] for k in state_dict if "ln_tuning_" in k} |
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elif config.peft_type == PeftType.VERA: |
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to_return = {k: state_dict[k] for k in state_dict if "vera_lambda_" in k} |
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if config.save_projection: |
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if f"base_model.vera_A.{adapter_name}" not in state_dict: |
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raise ValueError( |
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"Model was initialised to not save vera_A and vera_B but config now specifies to save projection!" |
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" Set `config.save_projection` to `False`." |
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) |
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to_return["base_model.vera_A." + adapter_name] = state_dict["base_model.vera_A." + adapter_name] |
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to_return["base_model.vera_B." + adapter_name] = state_dict["base_model.vera_B." + adapter_name] |
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else: |
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raise ValueError(f"Unknown PEFT type passed: {config.peft_type}") |
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if getattr(model, "modules_to_save", None) is not None: |
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for key, value in state_dict.items(): |
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if any(f"{module_name}.modules_to_save.{adapter_name}" in key for module_name in model.modules_to_save): |
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to_return[key.replace("modules_to_save.", "")] = value |
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is_embedding_in_target_modules = False |
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if ( |
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save_embedding_layers == "auto" |
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and hasattr(config, "target_modules") |
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and any(k in config.target_modules for k in EMBEDDING_LAYER_NAMES) |
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): |
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warnings.warn("Setting `save_embedding_layers` to `True` as embedding layers found in `target_modules`.") |
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save_embedding_layers = is_embedding_in_target_modules = True |
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elif save_embedding_layers == "auto": |
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vocab_size = getattr(getattr(model, "config", None), "vocab_size", None) |
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model_id = getattr(config, "base_model_name_or_path", None) |
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has_base_config = False |
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if model_id is not None: |
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local_config_exists = os.path.exists(os.path.join(model_id, "config.json")) |
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exists = local_config_exists or check_file_exists_on_hf_hub(model_id, "config.json") |
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if exists is None: |
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warnings.warn( |
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f"Could not find a config file in {model_id} - will assume that the vocabulary was not modified." |
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) |
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has_base_config = False |
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else: |
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has_base_config = exists |
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|
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if ( |
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vocab_size |
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and model_id |
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and has_base_config |
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and (vocab_size != model.config.__class__.from_pretrained(model_id).vocab_size) |
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): |
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warnings.warn( |
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"Setting `save_embedding_layers` to `True` as the embedding layer has been resized during finetuning." |
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) |
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save_embedding_layers = True |
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else: |
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save_embedding_layers = False |
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|
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if save_embedding_layers and hasattr(model, "get_input_embeddings"): |
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for layer in [model.get_input_embeddings(), model.get_output_embeddings()]: |
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if not is_embedding_in_target_modules or has_valid_embedding_base_layer(layer): |
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embedding_module_name = get_embedding_layer_name(model, layer, is_embedding_in_target_modules) |
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if embedding_module_name: |
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to_return.update({k: v for k, v in state_dict.items() if embedding_module_name in k}) |
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elif save_embedding_layers: |
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warnings.warn("Could not identify embedding layer(s) because the model is not a 🤗 transformers model.") |
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to_return = {k.replace(f".{adapter_name}", ""): v for k, v in to_return.items()} |
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return to_return |
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def _find_mismatched_keys( |
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model: torch.nn.Module, peft_model_state_dict: dict[str, torch.Tensor], ignore_mismatched_sizes: bool = False |
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) -> tuple[dict[str, torch.Tensor], list[tuple[str, tuple[int, ...], tuple[int, ...]]]]: |
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if not ignore_mismatched_sizes: |
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return peft_model_state_dict, [] |
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|
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mismatched = [] |
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state_dict = model.state_dict() |
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for key, tensor in peft_model_state_dict.items(): |
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if key not in state_dict: |
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continue |
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|
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if (state_dict[key].shape[-1] == 1) and (state_dict[key].numel() * 2 == tensor.numel()): |
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continue |
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|
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if state_dict[key].shape != tensor.shape: |
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mismatched.append((key, tensor.shape, state_dict[key].shape)) |
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for key, _, _ in mismatched: |
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del peft_model_state_dict[key] |
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return peft_model_state_dict, mismatched |
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|
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def set_peft_model_state_dict( |
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model, peft_model_state_dict, adapter_name="default", ignore_mismatched_sizes: bool = False |
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): |
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""" |
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Set the state dict of the Peft model. |
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|
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Args: |
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model ([`PeftModel`]): |
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The Peft model. |
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peft_model_state_dict (`dict`): |
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The state dict of the Peft model. |
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adapter_name (`str`, *optional*, defaults to `"default"`): |
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The name of the adapter whose state dict should be set. |
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ignore_mismatched_sizes (`bool`, *optional*, defaults to `False`): |
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Whether to ignore mismatched in the state dict. |
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""" |
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config = model.peft_config[adapter_name] |
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state_dict = {} |
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if getattr(model, "modules_to_save", None) is not None: |
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for key, value in peft_model_state_dict.items(): |
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if any(module_name in key for module_name in model.modules_to_save): |
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for module_name in model.modules_to_save: |
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if module_name in key: |
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key = key.replace(module_name, f"{module_name}.modules_to_save.{adapter_name}") |
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break |
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state_dict[key] = value |
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else: |
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state_dict = peft_model_state_dict |
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|
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if config.peft_type in ( |
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PeftType.LORA, |
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PeftType.LOHA, |
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PeftType.LOKR, |
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PeftType.ADALORA, |
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PeftType.IA3, |
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PeftType.OFT, |
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PeftType.POLY, |
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PeftType.LN_TUNING, |
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PeftType.BOFT, |
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PeftType.VERA, |
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): |
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peft_model_state_dict = {} |
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parameter_prefix = { |
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PeftType.IA3: "ia3_", |
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PeftType.LORA: "lora_", |
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PeftType.ADALORA: "lora_", |
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PeftType.LOHA: "hada_", |
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PeftType.LOKR: "lokr_", |
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PeftType.OFT: "oft_", |
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PeftType.POLY: "poly_", |
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PeftType.BOFT: "boft_", |
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PeftType.LN_TUNING: "ln_tuning_", |
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PeftType.VERA: "vera_lambda_", |
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}[config.peft_type] |
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for k, v in state_dict.items(): |
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if parameter_prefix in k: |
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suffix = k.split(parameter_prefix)[1] |
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if "." in suffix: |
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suffix_to_replace = ".".join(suffix.split(".")[1:]) |
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k = k.replace(suffix_to_replace, f"{adapter_name}.{suffix_to_replace}") |
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else: |
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k = f"{k}.{adapter_name}" |
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peft_model_state_dict[k] = v |
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else: |
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peft_model_state_dict[k] = v |
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|
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if config.peft_type == PeftType.ADALORA: |
|
rank_pattern = config.rank_pattern |
|
if rank_pattern is not None: |
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model.resize_modules_by_rank_pattern(rank_pattern, adapter_name) |
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elif config.peft_type == PeftType.VERA: |
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if config.save_projection and "base_model.vera_A" not in peft_model_state_dict: |
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raise ValueError( |
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"Specified to load vera_A and vera_B from state dictionary however they were not present!" |
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) |
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elif not config.save_projection and "base_model.vera_A" in peft_model_state_dict: |
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warnings.warn( |
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"Specified to not load vera_A and vera_B from state dictionary however they are present in state" |
|
" dictionary! Consider using them to ensure checkpoint loading is correct on all platforms using" |
|
" `peft_config.save_projection = True`" |
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) |
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elif not config.save_projection: |
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warnings.warn( |
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"Specified to not load vera_A and vera_B from state dictionary. This means we will be relying on" |
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" PRNG initialisation to restore these projections using `config.projection_prng_key`, which may" |
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" not be accurate on all system configurations." |
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) |
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elif config.is_prompt_learning or config.peft_type == PeftType.ADAPTION_PROMPT: |
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peft_model_state_dict = state_dict |
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else: |
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raise NotImplementedError |
|
|
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peft_model_state_dict, mismatched_keys = _find_mismatched_keys( |
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model, peft_model_state_dict, ignore_mismatched_sizes=ignore_mismatched_sizes |
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) |
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load_result = model.load_state_dict(peft_model_state_dict, strict=False) |
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if config.is_prompt_learning: |
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model.prompt_encoder[adapter_name].embedding.load_state_dict( |
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{"weight": peft_model_state_dict["prompt_embeddings"]}, strict=True |
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) |
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|
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if config.peft_type == PeftType.MULTITASK_PROMPT_TUNING: |
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model.prompt_encoder[adapter_name].load_state_dict(peft_model_state_dict, strict=False) |
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|
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if mismatched_keys: |
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|
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mismatched_warning = "\n".join( |
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[ |
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f"- {key}: found shape {shape1} in the checkpoint and {shape2} in the model instantiated" |
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for key, shape1, shape2 in mismatched_keys |
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] |
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) |
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msg = ( |
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f"Some weights of {model.__class__.__name__} were not initialized from the model checkpoint " |
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f"and are being ignored because you passed `ignore_mismatched_sizes=True`: {mismatched_warning}." |
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) |
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warnings.warn(msg) |
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return load_result |
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|
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def load_peft_weights(model_id: str, device: Optional[str] = None, **hf_hub_download_kwargs) -> dict: |
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r""" |
|
A helper method to load the PEFT weights from the HuggingFace Hub or locally |
|
|
|
Args: |
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model_id (`str`): |
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The local path to the adapter weights or the name of the adapter to load from the HuggingFace Hub. |
|
device (`str`): |
|
The device to load the weights onto. |
|
hf_hub_download_kwargs (`dict`): |
|
Additional arguments to pass to the `hf_hub_download` method when loading from the HuggingFace Hub. |
|
""" |
|
path = ( |
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os.path.join(model_id, hf_hub_download_kwargs["subfolder"]) |
|
if hf_hub_download_kwargs.get("subfolder", None) is not None |
|
else model_id |
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) |
|
|
|
if device is None: |
|
device = infer_device() |
|
|
|
if os.path.exists(os.path.join(path, SAFETENSORS_WEIGHTS_NAME)): |
|
filename = os.path.join(path, SAFETENSORS_WEIGHTS_NAME) |
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use_safetensors = True |
|
elif os.path.exists(os.path.join(path, WEIGHTS_NAME)): |
|
filename = os.path.join(path, WEIGHTS_NAME) |
|
use_safetensors = False |
|
else: |
|
token = hf_hub_download_kwargs.get("token", None) |
|
if token is None: |
|
token = hf_hub_download_kwargs.get("use_auth_token", None) |
|
|
|
hub_filename = ( |
|
os.path.join(hf_hub_download_kwargs["subfolder"], SAFETENSORS_WEIGHTS_NAME) |
|
if hf_hub_download_kwargs.get("subfolder", None) is not None |
|
else SAFETENSORS_WEIGHTS_NAME |
|
) |
|
has_remote_safetensors_file = file_exists( |
|
repo_id=model_id, |
|
filename=hub_filename, |
|
revision=hf_hub_download_kwargs.get("revision", None), |
|
repo_type=hf_hub_download_kwargs.get("repo_type", None), |
|
token=token, |
|
) |
|
use_safetensors = has_remote_safetensors_file |
|
|
|
if has_remote_safetensors_file: |
|
|
|
filename = hf_hub_download( |
|
model_id, |
|
SAFETENSORS_WEIGHTS_NAME, |
|
**hf_hub_download_kwargs, |
|
) |
|
else: |
|
try: |
|
filename = hf_hub_download(model_id, WEIGHTS_NAME, **hf_hub_download_kwargs) |
|
except EntryNotFoundError: |
|
raise ValueError( |
|
f"Can't find weights for {model_id} in {model_id} or in the Hugging Face Hub. " |
|
f"Please check that the file {WEIGHTS_NAME} or {SAFETENSORS_WEIGHTS_NAME} is present at {model_id}." |
|
) |
|
|
|
if use_safetensors: |
|
if hasattr(torch.backends, "mps") and (device == torch.device("mps")): |
|
adapters_weights = safe_load_file(filename, device="cpu") |
|
else: |
|
adapters_weights = safe_load_file(filename, device=device) |
|
else: |
|
adapters_weights = torch.load(filename, map_location=torch.device(device)) |
|
|
|
return adapters_weights |
|
|