- Fix save_checkpoint_fn return value to checkpoint_path; - Fix wrong link in doc; - Fix an off-by-one bug in trainer iterator.
154 lines
6.9 KiB
Python
154 lines
6.9 KiB
Python
from typing import Any, Callable, Dict, Optional, Union
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import numpy as np
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from tianshou.data import Collector
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from tianshou.policy import BasePolicy
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from tianshou.trainer.base import BaseTrainer
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from tianshou.utils import BaseLogger, LazyLogger
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class OnpolicyTrainer(BaseTrainer):
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"""Create an iterator wrapper for on-policy training procedure.
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:param policy: an instance of the :class:`~tianshou.policy.BasePolicy` class.
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:param Collector train_collector: the collector used for training.
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:param Collector test_collector: the collector used for testing. If it's None,
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then no testing will be performed.
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:param int max_epoch: the maximum number of epochs for training. The training
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process might be finished before reaching ``max_epoch`` if ``stop_fn`` is
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set.
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:param int step_per_epoch: the number of transitions collected per epoch.
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:param int repeat_per_collect: the number of repeat time for policy learning,
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for example, set it to 2 means the policy needs to learn each given batch
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data twice.
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:param int episode_per_test: the number of episodes for one policy evaluation.
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:param int batch_size: the batch size of sample data, which is going to feed in
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the policy network.
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:param int step_per_collect: the number of transitions the collector would
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collect before the network update, i.e., trainer will collect
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"step_per_collect" transitions and do some policy network update repeatedly
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in each epoch.
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:param int episode_per_collect: the number of episodes the collector would
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collect before the network update, i.e., trainer will collect
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"episode_per_collect" episodes and do some policy network update repeatedly
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in each epoch.
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:param function train_fn: a hook called at the beginning of training in each
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epoch. It can be used to perform custom additional operations, with the
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signature ``f(num_epoch: int, step_idx: int) -> None``.
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:param function test_fn: a hook called at the beginning of testing in each
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epoch. It can be used to perform custom additional operations, with the
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signature ``f(num_epoch: int, step_idx: int) -> None``.
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:param function save_best_fn: a hook called when the undiscounted average mean
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reward in evaluation phase gets better, with the signature
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``f(policy: BasePolicy) -> None``. It was ``save_fn`` previously.
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:param function save_checkpoint_fn: a function to save training process and
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return the saved checkpoint path, with the signature ``f(epoch: int,
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env_step: int, gradient_step: int) -> str``; you can save whatever you want.
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:param bool resume_from_log: resume env_step/gradient_step and other metadata
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from existing tensorboard log. Default to False.
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:param function stop_fn: a function with signature ``f(mean_rewards: float) ->
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bool``, receives the average undiscounted returns of the testing result,
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returns a boolean which indicates whether reaching the goal.
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:param function reward_metric: a function with signature
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``f(rewards: np.ndarray with shape (num_episode, agent_num)) ->
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np.ndarray with shape (num_episode,)``, used in multi-agent RL.
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We need to return a single scalar for each episode's result to monitor
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training in the multi-agent RL setting. This function specifies what is the
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desired metric, e.g., the reward of agent 1 or the average reward over
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all agents.
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:param BaseLogger logger: A logger that logs statistics during
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training/testing/updating. Default to a logger that doesn't log anything.
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:param bool verbose: whether to print the information. Default to True.
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:param bool show_progress: whether to display a progress bar when training.
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Default to True.
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:param bool test_in_train: whether to test in the training phase. Default to
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True.
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.. note::
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Only either one of step_per_collect and episode_per_collect can be specified.
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"""
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__doc__ = BaseTrainer.gen_doc("onpolicy") + "\n".join(__doc__.split("\n")[1:])
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def __init__(
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self,
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policy: BasePolicy,
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train_collector: Collector,
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test_collector: Optional[Collector],
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max_epoch: int,
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step_per_epoch: int,
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repeat_per_collect: int,
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episode_per_test: int,
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batch_size: int,
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step_per_collect: Optional[int] = None,
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episode_per_collect: Optional[int] = None,
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train_fn: Optional[Callable[[int, int], None]] = None,
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test_fn: Optional[Callable[[int, Optional[int]], None]] = None,
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stop_fn: Optional[Callable[[float], bool]] = None,
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save_best_fn: Optional[Callable[[BasePolicy], None]] = None,
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save_checkpoint_fn: Optional[Callable[[int, int, int], str]] = None,
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resume_from_log: bool = False,
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reward_metric: Optional[Callable[[np.ndarray], np.ndarray]] = None,
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logger: BaseLogger = LazyLogger(),
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verbose: bool = True,
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show_progress: bool = True,
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test_in_train: bool = True,
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**kwargs: Any,
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):
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super().__init__(
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learning_type="onpolicy",
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policy=policy,
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train_collector=train_collector,
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test_collector=test_collector,
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max_epoch=max_epoch,
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step_per_epoch=step_per_epoch,
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repeat_per_collect=repeat_per_collect,
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episode_per_test=episode_per_test,
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batch_size=batch_size,
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step_per_collect=step_per_collect,
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episode_per_collect=episode_per_collect,
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train_fn=train_fn,
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test_fn=test_fn,
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stop_fn=stop_fn,
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save_best_fn=save_best_fn,
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save_checkpoint_fn=save_checkpoint_fn,
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resume_from_log=resume_from_log,
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reward_metric=reward_metric,
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logger=logger,
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verbose=verbose,
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show_progress=show_progress,
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test_in_train=test_in_train,
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**kwargs,
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)
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def policy_update_fn(
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self, data: Dict[str, Any], result: Optional[Dict[str, Any]] = None
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) -> None:
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"""Perform one on-policy update."""
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assert self.train_collector is not None
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losses = self.policy.update(
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0,
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self.train_collector.buffer,
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batch_size=self.batch_size,
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repeat=self.repeat_per_collect,
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)
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self.train_collector.reset_buffer(keep_statistics=True)
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step = max([1] + [len(v) for v in losses.values() if isinstance(v, list)])
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self.gradient_step += step
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self.log_update_data(data, losses)
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def onpolicy_trainer(*args, **kwargs) -> Dict[str, Union[float, str]]: # type: ignore
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"""Wrapper for OnpolicyTrainer run method.
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It is identical to ``OnpolicyTrainer(...).run()``.
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:return: See :func:`~tianshou.trainer.gather_info`.
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"""
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return OnpolicyTrainer(*args, **kwargs).run()
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onpolicy_trainer_iter = OnpolicyTrainer
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