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from typing import List, Dict, Any, Tuple, Optional | |
from collections import namedtuple | |
import copy | |
import torch | |
from ding.torch_utils import RMSprop, to_device | |
from ding.rl_utils import v_1step_td_data, v_1step_td_error, get_train_sample | |
from ding.model import model_wrap | |
from ding.utils import POLICY_REGISTRY | |
from ding.utils.data import timestep_collate, default_collate, default_decollate | |
from .base_policy import Policy | |
class QMIXPolicy(Policy): | |
""" | |
Overview: | |
Policy class of QMIX algorithm. QMIX is a multi-agent reinforcement learning algorithm, \ | |
you can view the paper in the following link https://arxiv.org/abs/1803.11485. | |
Config: | |
== ==================== ======== ============== ======================================== ======================= | |
ID Symbol Type Default Value Description Other(Shape) | |
== ==================== ======== ============== ======================================== ======================= | |
1 ``type`` str qmix | RL policy register name, refer to | this arg is optional, | |
| registry ``POLICY_REGISTRY`` | a placeholder | |
2 ``cuda`` bool True | Whether to use cuda for network | this arg can be diff- | |
| erent from modes | |
3 ``on_policy`` bool False | Whether the RL algorithm is on-policy | |
| or off-policy | |
4. ``priority`` bool False | Whether use priority(PER) | priority sample, | |
| update priority | |
5 | ``priority_`` bool False | Whether use Importance Sampling | IS weight | |
| ``IS_weight`` | Weight to correct biased update. | |
6 | ``learn.update_`` int 20 | How many updates(iterations) to train | this args can be vary | |
| ``per_collect`` | after collector's one collection. Only | from envs. Bigger val | |
| valid in serial training | means more off-policy | |
7 | ``learn.target_`` float 0.001 | Target network update momentum | between[0,1] | |
| ``update_theta`` | parameter. | |
8 | ``learn.discount`` float 0.99 | Reward's future discount factor, aka. | may be 1 when sparse | |
| ``_factor`` | gamma | reward env | |
== ==================== ======== ============== ======================================== ======================= | |
""" | |
config = dict( | |
# (str) RL policy register name (refer to function "POLICY_REGISTRY"). | |
type='qmix', | |
# (bool) Whether to use cuda for network. | |
cuda=True, | |
# (bool) Whether the RL algorithm is on-policy or off-policy. | |
on_policy=False, | |
# (bool) Whether use priority(priority sample, IS weight, update priority) | |
priority=False, | |
# (bool) Whether use Importance Sampling Weight to correct biased update. If True, priority must be True. | |
priority_IS_weight=False, | |
# learn_mode config | |
learn=dict( | |
# (int) How many updates(iterations) to train after collector's one collection. | |
# Bigger "update_per_collect" means bigger off-policy. | |
# collect data -> update policy-> collect data -> ... | |
update_per_collect=20, | |
# (int) How many samples in a training batch. | |
batch_size=32, | |
# (float) The step size of gradient descent. | |
learning_rate=0.0005, | |
clip_value=100, | |
# (float) Target network update momentum parameter, in [0, 1]. | |
target_update_theta=0.008, | |
# (float) The discount factor for future rewards, in [0, 1]. | |
discount_factor=0.99, | |
# (bool) Whether to use double DQN mechanism(target q for surpassing over estimation). | |
double_q=False, | |
), | |
# collect_mode config | |
collect=dict( | |
# (int) How many training samples collected in one collection procedure. | |
# In each collect phase, we collect a total of <n_sample> sequence samples, a sample with length unroll_len. | |
# n_sample=32, | |
# (int) Split trajectories into pieces with length ``unroll_len``, the length of timesteps | |
# in each forward when training. In qmix, it is greater than 1 because there is RNN. | |
unroll_len=10, | |
), | |
eval=dict(), # for compatibility | |
other=dict( | |
eps=dict( | |
# (str) Type of epsilon decay. | |
type='exp', | |
# (float) Start value for epsilon decay, in [0, 1]. | |
start=1, | |
# (float) Start value for epsilon decay, in [0, 1]. | |
end=0.05, | |
# (int) Decay length(env step). | |
decay=50000, | |
), | |
replay_buffer=dict( | |
# (int) Maximum size of replay buffer. Usually, larger buffer size is better. | |
replay_buffer_size=5000, | |
), | |
), | |
) | |
def default_model(self) -> Tuple[str, List[str]]: | |
""" | |
Overview: | |
Return this algorithm default model setting for demonstration. | |
Returns: | |
- model_info (:obj:`Tuple[str, List[str]]`): model name and mode import_names | |
.. note:: | |
The user can define and use customized network model but must obey the same inferface definition indicated \ | |
by import_names path. For QMIX, ``ding.model.qmix.qmix`` | |
""" | |
return 'qmix', ['ding.model.template.qmix'] | |
def _init_learn(self) -> None: | |
""" | |
Overview: | |
Initialize the learn mode of policy, including some attributes and modules. For QMIX, it mainly contains \ | |
optimizer, algorithm-specific arguments such as gamma, main and target model. Because of the use of RNN, \ | |
all the models should be wrappered with ``hidden_state`` which needs to be initialized with proper size. | |
This method will be called in ``__init__`` method if ``learn`` field is in ``enable_field``. | |
.. tip:: | |
For multi-agent algorithm, we often need to use ``agent_num`` to initialize some necessary variables. | |
.. note:: | |
For the member variables that need to be saved and loaded, please refer to the ``_state_dict_learn`` \ | |
and ``_load_state_dict_learn`` methods. | |
.. note:: | |
For the member variables that need to be monitored, please refer to the ``_monitor_vars_learn`` method. | |
.. note:: | |
If you want to set some spacial member variables in ``_init_learn`` method, you'd better name them \ | |
with prefix ``_learn_`` to avoid conflict with other modes, such as ``self._learn_attr1``. | |
- agent_num (:obj:`int`): Since this is a multi-agent algorithm, we need to input the agent num. | |
""" | |
self._priority = self._cfg.priority | |
self._priority_IS_weight = self._cfg.priority_IS_weight | |
assert not self._priority and not self._priority_IS_weight, "Priority is not implemented in QMIX" | |
self._optimizer = RMSprop( | |
params=self._model.parameters(), | |
lr=self._cfg.learn.learning_rate, | |
alpha=0.99, | |
eps=0.00001, | |
weight_decay=1e-5 | |
) | |
self._gamma = self._cfg.learn.discount_factor | |
self._target_model = copy.deepcopy(self._model) | |
self._target_model = model_wrap( | |
self._target_model, | |
wrapper_name='target', | |
update_type='momentum', | |
update_kwargs={'theta': self._cfg.learn.target_update_theta} | |
) | |
self._target_model = model_wrap( | |
self._target_model, | |
wrapper_name='hidden_state', | |
state_num=self._cfg.learn.batch_size, | |
init_fn=lambda: [None for _ in range(self._cfg.model.agent_num)] | |
) | |
self._learn_model = model_wrap( | |
self._model, | |
wrapper_name='hidden_state', | |
state_num=self._cfg.learn.batch_size, | |
init_fn=lambda: [None for _ in range(self._cfg.model.agent_num)] | |
) | |
self._learn_model.reset() | |
self._target_model.reset() | |
def _data_preprocess_learn(self, data: List[Dict[str, Any]]) -> Dict[str, Any]: | |
""" | |
Overview: | |
Preprocess the data to fit the required data format for learning | |
Arguments: | |
- data (:obj:`List[Dict[str, Any]]`): the data collected from collect function | |
Returns: | |
- data (:obj:`Dict[str, Any]`): the processed data, from \ | |
[len=B, ele={dict_key: [len=T, ele=Tensor(any_dims)]}] -> {dict_key: Tensor([T, B, any_dims])} | |
""" | |
# data preprocess | |
data = timestep_collate(data) | |
if self._cuda: | |
data = to_device(data, self._device) | |
data['weight'] = data.get('weight', None) | |
data['done'] = data['done'].float() | |
return data | |
def _forward_learn(self, data: List[List[Dict[str, Any]]]) -> Dict[str, Any]: | |
""" | |
Overview: | |
Policy forward function of learn mode (training policy and updating parameters). Forward means \ | |
that the policy inputs some training batch data (trajectory for QMIX) from the replay buffer and then \ | |
returns the output result, including various training information such as loss, q value, grad_norm. | |
Arguments: | |
- data (:obj:`List[List[Dict[int, Any]]]`): The input data used for policy forward, including a batch of \ | |
training samples. For each dict element, the key of the dict is the name of data items and the \ | |
value is the corresponding data. Usually, the value is torch.Tensor or np.ndarray or there dict/list \ | |
combinations. In the ``_forward_learn`` method, data often need to first be stacked in the time and \ | |
batch dimension by the utility functions ``self._data_preprocess_learn``. \ | |
For QMIX, each element in list is a trajectory with the length of ``unroll_len``, and the element in \ | |
trajectory list is a dict containing at least the following keys: ``obs``, ``action``, ``prev_state``, \ | |
``reward``, ``next_obs``, ``done``. Sometimes, it also contains other keys such as ``weight`` \ | |
and ``value_gamma``. | |
Returns: | |
- info_dict (:obj:`Dict[str, Any]`): The information dict that indicated training result, which will be \ | |
recorded in text log and tensorboard, values must be python scalar or a list of scalars. For the \ | |
detailed definition of the dict, refer to the code of ``_monitor_vars_learn`` method. | |
.. note:: | |
The input value can be torch.Tensor or dict/list combinations and current policy supports all of them. \ | |
For the data type that not supported, the main reason is that the corresponding model does not support it. \ | |
You can implement you own model rather than use the default model. For more information, please raise an \ | |
issue in GitHub repo and we will continue to follow up. | |
.. note:: | |
For more detailed examples, please refer to our unittest for QMIXPolicy: ``ding.policy.tests.test_qmix``. | |
""" | |
data = self._data_preprocess_learn(data) | |
# ==================== | |
# Q-mix forward | |
# ==================== | |
self._learn_model.train() | |
self._target_model.train() | |
# for hidden_state plugin, we need to reset the main model and target model | |
self._learn_model.reset(state=data['prev_state'][0]) | |
self._target_model.reset(state=data['prev_state'][0]) | |
inputs = {'obs': data['obs'], 'action': data['action']} | |
total_q = self._learn_model.forward(inputs, single_step=False)['total_q'] | |
if self._cfg.learn.double_q: | |
next_inputs = {'obs': data['next_obs']} | |
self._learn_model.reset(state=data['prev_state'][1]) | |
logit_detach = self._learn_model.forward(next_inputs, single_step=False)['logit'].clone().detach() | |
next_inputs = {'obs': data['next_obs'], 'action': logit_detach.argmax(dim=-1)} | |
else: | |
next_inputs = {'obs': data['next_obs']} | |
with torch.no_grad(): | |
target_total_q = self._target_model.forward(next_inputs, single_step=False)['total_q'] | |
with torch.no_grad(): | |
if data['done'] is not None: | |
target_v = self._gamma * (1 - data['done']) * target_total_q + data['reward'] | |
else: | |
target_v = self._gamma * target_total_q + data['reward'] | |
data = v_1step_td_data(total_q, target_total_q, data['reward'], data['done'], data['weight']) | |
loss, td_error_per_sample = v_1step_td_error(data, self._gamma) | |
# ==================== | |
# Q-mix update | |
# ==================== | |
self._optimizer.zero_grad() | |
loss.backward() | |
grad_norm = torch.nn.utils.clip_grad_norm_(self._model.parameters(), self._cfg.learn.clip_value) | |
self._optimizer.step() | |
# ============= | |
# after update | |
# ============= | |
self._target_model.update(self._learn_model.state_dict()) | |
return { | |
'cur_lr': self._optimizer.defaults['lr'], | |
'total_loss': loss.item(), | |
'total_q': total_q.mean().item() / self._cfg.model.agent_num, | |
'target_reward_total_q': target_v.mean().item() / self._cfg.model.agent_num, | |
'target_total_q': target_total_q.mean().item() / self._cfg.model.agent_num, | |
'grad_norm': grad_norm, | |
} | |
def _reset_learn(self, data_id: Optional[List[int]] = None) -> None: | |
""" | |
Overview: | |
Reset some stateful variables for learn mode when necessary, such as the hidden state of RNN or the \ | |
memory bank of some special algortihms. If ``data_id`` is None, it means to reset all the stateful \ | |
varaibles. Otherwise, it will reset the stateful variables according to the ``data_id``. For example, \ | |
different trajectories in ``data_id`` will have different hidden state in RNN. | |
Arguments: | |
- data_id (:obj:`Optional[List[int]]`): The id of the data, which is used to reset the stateful variables \ | |
(i.e. RNN hidden_state in QMIX) specified by ``data_id``. | |
""" | |
self._learn_model.reset(data_id=data_id) | |
def _state_dict_learn(self) -> Dict[str, Any]: | |
""" | |
Overview: | |
Return the state_dict of learn mode, usually including model, target_model and optimizer. | |
Returns: | |
- state_dict (:obj:`Dict[str, Any]`): The dict of current policy learn state, for saving and restoring. | |
""" | |
return { | |
'model': self._learn_model.state_dict(), | |
'target_model': self._target_model.state_dict(), | |
'optimizer': self._optimizer.state_dict(), | |
} | |
def _load_state_dict_learn(self, state_dict: Dict[str, Any]) -> None: | |
""" | |
Overview: | |
Load the state_dict variable into policy learn mode. | |
Arguments: | |
- state_dict (:obj:`Dict[str, Any]`): The dict of policy learn state saved before. | |
.. tip:: | |
If you want to only load some parts of model, you can simply set the ``strict`` argument in \ | |
load_state_dict to ``False``, or refer to ``ding.torch_utils.checkpoint_helper`` for more \ | |
complicated operation. | |
""" | |
self._learn_model.load_state_dict(state_dict['model']) | |
self._target_model.load_state_dict(state_dict['target_model']) | |
self._optimizer.load_state_dict(state_dict['optimizer']) | |
def _init_collect(self) -> None: | |
""" | |
Overview: | |
Initialize the collect mode of policy, including related attributes and modules. For QMIX, it contains the \ | |
collect_model to balance the exploration and exploitation with epsilon-greedy sample mechanism and \ | |
maintain the hidden state of rnn. Besides, there are some initialization operations about other \ | |
algorithm-specific arguments such as burnin_step, unroll_len and nstep. | |
This method will be called in ``__init__`` method if ``collect`` field is in ``enable_field``. | |
.. note:: | |
If you want to set some spacial member variables in ``_init_collect`` method, you'd better name them \ | |
with prefix ``_collect_`` to avoid conflict with other modes, such as ``self._collect_attr1``. | |
""" | |
self._unroll_len = self._cfg.collect.unroll_len | |
self._collect_model = model_wrap( | |
self._model, | |
wrapper_name='hidden_state', | |
state_num=self._cfg.collect.env_num, | |
save_prev_state=True, | |
init_fn=lambda: [None for _ in range(self._cfg.model.agent_num)] | |
) | |
self._collect_model = model_wrap(self._collect_model, wrapper_name='eps_greedy_sample') | |
self._collect_model.reset() | |
def _forward_collect(self, data: Dict[int, Any], eps: float) -> Dict[int, Any]: | |
""" | |
Overview: | |
Policy forward function of collect mode (collecting training data by interacting with envs). Forward means \ | |
that the policy gets some necessary data (mainly observation) from the envs and then returns the output \ | |
data, such as the action to interact with the envs. Besides, this policy also needs ``eps`` argument for \ | |
exploration, i.e., classic epsilon-greedy exploration strategy. | |
Arguments: | |
- data (:obj:`Dict[int, Any]`): The input data used for policy forward, including at least the obs. The \ | |
key of the dict is environment id and the value is the corresponding data of the env. | |
- eps (:obj:`float`): The epsilon value for exploration. | |
Returns: | |
- output (:obj:`Dict[int, Any]`): The output data of policy forward, including at least the action and \ | |
other necessary data (prev_state) for learn mode defined in ``self._process_transition`` method. The \ | |
key of the dict is the same as the input data, i.e. environment id. | |
.. note:: | |
RNN's hidden states are maintained in the policy, so we don't need pass them into data but to reset the \ | |
hidden states with ``_reset_collect`` method when episode ends. Besides, the previous hidden states are \ | |
necessary for training, so we need to return them in ``_process_transition`` method. | |
.. note:: | |
The input value can be torch.Tensor or dict/list combinations and current policy supports all of them. \ | |
For the data type that not supported, the main reason is that the corresponding model does not support it. \ | |
You can implement you own model rather than use the default model. For more information, please raise an \ | |
issue in GitHub repo and we will continue to follow up. | |
.. note:: | |
For more detailed examples, please refer to our unittest for QMIXPolicy: ``ding.policy.tests.test_qmix``. | |
""" | |
data_id = list(data.keys()) | |
data = default_collate(list(data.values())) | |
if self._cuda: | |
data = to_device(data, self._device) | |
data = {'obs': data} | |
self._collect_model.eval() | |
with torch.no_grad(): | |
output = self._collect_model.forward(data, eps=eps, data_id=data_id) | |
if self._cuda: | |
output = to_device(output, 'cpu') | |
output = default_decollate(output) | |
return {i: d for i, d in zip(data_id, output)} | |
def _reset_collect(self, data_id: Optional[List[int]] = None) -> None: | |
""" | |
Overview: | |
Reset some stateful variables for eval mode when necessary, such as the hidden state of RNN or the \ | |
memory bank of some special algortihms. If ``data_id`` is None, it means to reset all the stateful \ | |
varaibles. Otherwise, it will reset the stateful variables according to the ``data_id``. For example, \ | |
different environments/episodes in evaluation in ``data_id`` will have different hidden state in RNN. | |
Arguments: | |
- data_id (:obj:`Optional[List[int]]`): The id of the data, which is used to reset the stateful variables \ | |
(i.e., RNN hidden_state in QMIX) specified by ``data_id``. | |
""" | |
self._collect_model.reset(data_id=data_id) | |
def _process_transition(self, obs: torch.Tensor, policy_output: Dict[str, torch.Tensor], | |
timestep: namedtuple) -> Dict[str, torch.Tensor]: | |
""" | |
Overview: | |
Process and pack one timestep transition data into a dict, which can be directly used for training and \ | |
saved in replay buffer. For QMIX, it contains obs, next_obs, action, prev_state, reward, done. | |
Arguments: | |
- obs (:obj:`torch.Tensor`): The env observation of current timestep, usually including ``agent_obs`` \ | |
and ``global_obs`` in multi-agent environment like MPE and SMAC. | |
- policy_output (:obj:`Dict[str, torch.Tensor]`): The output of the policy network with the observation \ | |
as input. For QMIX, it contains the action and the prev_state of RNN. | |
- timestep (:obj:`namedtuple`): The execution result namedtuple returned by the environment step method, \ | |
except all the elements have been transformed into tensor data. Usually, it contains the next obs, \ | |
reward, done, info, etc. | |
Returns: | |
- transition (:obj:`Dict[str, torch.Tensor]`): The processed transition data of the current timestep. | |
""" | |
transition = { | |
'obs': obs, | |
'next_obs': timestep.obs, | |
'prev_state': policy_output['prev_state'], | |
'action': policy_output['action'], | |
'reward': timestep.reward, | |
'done': timestep.done, | |
} | |
return transition | |
def _get_train_sample(self, transitions: List[Dict[str, Any]]) -> List[Dict[str, Any]]: | |
""" | |
Overview: | |
For a given trajectory (transitions, a list of transition) data, process it into a list of sample that \ | |
can be used for training directly. In QMIX, a train sample is processed transitions with unroll_len \ | |
length. This method is usually used in collectors to execute necessary \ | |
RL data preprocessing before training, which can help learner amortize revelant time consumption. \ | |
In addition, you can also implement this method as an identity function and do the data processing \ | |
in ``self._forward_learn`` method. | |
Arguments: | |
- transitions (:obj:`List[Dict[str, Any]`): The trajectory data (a list of transition), each element is \ | |
the same format as the return value of ``self._process_transition`` method. | |
Returns: | |
- samples (:obj:`List[Dict[str, Any]]`): The processed train samples, each sample is a fixed-length \ | |
trajectory, and each element in a sample is the similar format as input transitions. | |
""" | |
return get_train_sample(transitions, self._unroll_len) | |
def _init_eval(self) -> None: | |
""" | |
Overview: | |
Initialize the eval mode of policy, including related attributes and modules. For QMIX, it contains the \ | |
eval model to greedily select action with argmax q_value mechanism and main the hidden state. | |
This method will be called in ``__init__`` method if ``eval`` field is in ``enable_field``. | |
.. note:: | |
If you want to set some spacial member variables in ``_init_eval`` method, you'd better name them \ | |
with prefix ``_eval_`` to avoid conflict with other modes, such as ``self._eval_attr1``. | |
""" | |
self._eval_model = model_wrap( | |
self._model, | |
wrapper_name='hidden_state', | |
state_num=self._cfg.eval.env_num, | |
save_prev_state=True, | |
init_fn=lambda: [None for _ in range(self._cfg.model.agent_num)] | |
) | |
self._eval_model = model_wrap(self._eval_model, wrapper_name='argmax_sample') | |
self._eval_model.reset() | |
def _forward_eval(self, data: dict) -> dict: | |
""" | |
Overview: | |
Policy forward function of eval mode (evaluation policy performance by interacting with envs). Forward \ | |
means that the policy gets some necessary data (mainly observation) from the envs and then returns the \ | |
action to interact with the envs. ``_forward_eval`` often use argmax sample method to get actions that \ | |
q_value is the highest. | |
Arguments: | |
- data (:obj:`Dict[int, Any]`): The input data used for policy forward, including at least the obs. The \ | |
key of the dict is environment id and the value is the corresponding data of the env. | |
Returns: | |
- output (:obj:`Dict[int, Any]`): The output data of policy forward, including at least the action. The \ | |
key of the dict is the same as the input data, i.e. environment id. | |
.. note:: | |
RNN's hidden states are maintained in the policy, so we don't need pass them into data but to reset the \ | |
hidden states with ``_reset_eval`` method when the episode ends. | |
.. note:: | |
The input value can be torch.Tensor or dict/list combinations and current policy supports all of them. \ | |
For the data type that not supported, the main reason is that the corresponding model does not support it. \ | |
You can implement you own model rather than use the default model. For more information, please raise an \ | |
issue in GitHub repo and we will continue to follow up. | |
.. note:: | |
For more detailed examples, please refer to our unittest for QMIXPolicy: ``ding.policy.tests.test_qmix``. | |
""" | |
data_id = list(data.keys()) | |
data = default_collate(list(data.values())) | |
if self._cuda: | |
data = to_device(data, self._device) | |
data = {'obs': data} | |
self._eval_model.eval() | |
with torch.no_grad(): | |
output = self._eval_model.forward(data, data_id=data_id) | |
if self._cuda: | |
output = to_device(output, 'cpu') | |
output = default_decollate(output) | |
return {i: d for i, d in zip(data_id, output)} | |
def _reset_eval(self, data_id: Optional[List[int]] = None) -> None: | |
""" | |
Overview: | |
Reset some stateful variables for eval mode when necessary, such as the hidden state of RNN or the \ | |
memory bank of some special algortihms. If ``data_id`` is None, it means to reset all the stateful \ | |
varaibles. Otherwise, it will reset the stateful variables according to the ``data_id``. For example, \ | |
different environments/episodes in evaluation in ``data_id`` will have different hidden state in RNN. | |
Arguments: | |
- data_id (:obj:`Optional[List[int]]`): The id of the data, which is used to reset the stateful variables \ | |
(i.e., RNN hidden_state in QMIX) specified by ``data_id``. | |
""" | |
self._eval_model.reset(data_id=data_id) | |
def _monitor_vars_learn(self) -> List[str]: | |
""" | |
Overview: | |
Return the necessary keys for logging the return dict of ``self._forward_learn``. The logger module, such \ | |
as text logger, tensorboard logger, will use these keys to save the corresponding data. | |
Returns: | |
- necessary_keys (:obj:`List[str]`): The list of the necessary keys to be logged. | |
""" | |
return ['cur_lr', 'total_loss', 'total_q', 'target_total_q', 'grad_norm', 'target_reward_total_q'] | |