2021-08-30 10:35:02 -04:00
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from abc import ABC, abstractmethod
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2021-09-03 05:05:04 +08:00
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from numbers import Number
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from typing import Callable, Dict, Optional, Tuple, Union
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import numpy as np
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2021-08-30 10:35:02 -04:00
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LOG_DATA_TYPE = Dict[str, Union[int, Number, np.number, np.ndarray]]
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class BaseLogger(ABC):
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"""The base class for any logger which is compatible with trainer.
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Try to overwrite write() method to use your own writer.
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:param int train_interval: the log interval in log_train_data(). Default to 1000.
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:param int test_interval: the log interval in log_test_data(). Default to 1.
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:param int update_interval: the log interval in log_update_data(). Default to 1000.
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"""
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def __init__(
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self,
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train_interval: int = 1000,
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test_interval: int = 1,
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update_interval: int = 1000,
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) -> None:
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super().__init__()
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self.train_interval = train_interval
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self.test_interval = test_interval
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self.update_interval = update_interval
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self.last_log_train_step = -1
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self.last_log_test_step = -1
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self.last_log_update_step = -1
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@abstractmethod
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def write(self, step_type: str, step: int, data: LOG_DATA_TYPE) -> None:
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"""Specify how the writer is used to log data.
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:param str step_type: namespace which the data dict belongs to.
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:param int step: stands for the ordinate of the data dict.
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:param dict data: the data to write with format ``{key: value}``.
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"""
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pass
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def log_train_data(self, collect_result: dict, step: int) -> None:
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"""Use writer to log statistics generated during training.
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:param collect_result: a dict containing information of data collected in
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training stage, i.e., returns of collector.collect().
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:param int step: stands for the timestep the collect_result being logged.
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.. note::
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``collect_result`` will be modified in-place with "rew" and "len" keys.
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"""
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if collect_result["n/ep"] > 0:
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collect_result["rew"] = collect_result["rews"].mean()
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collect_result["len"] = collect_result["lens"].mean()
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if step - self.last_log_train_step >= self.train_interval:
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log_data = {
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"train/episode": collect_result["n/ep"],
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"train/reward": collect_result["rew"],
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"train/length": collect_result["len"],
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}
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self.write("train/env_step", step, log_data)
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self.last_log_train_step = step
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def log_test_data(self, collect_result: dict, step: int) -> None:
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"""Use writer to log statistics generated during evaluating.
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:param collect_result: a dict containing information of data collected in
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evaluating stage, i.e., returns of collector.collect().
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:param int step: stands for the timestep the collect_result being logged.
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.. note::
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``collect_result`` will be modified in-place with "rew", "rew_std", "len",
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and "len_std" keys.
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"""
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assert collect_result["n/ep"] > 0
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rews, lens = collect_result["rews"], collect_result["lens"]
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rew, rew_std, len_, len_std = rews.mean(), rews.std(), lens.mean(), lens.std()
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collect_result.update(rew=rew, rew_std=rew_std, len=len_, len_std=len_std)
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if step - self.last_log_test_step >= self.test_interval:
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log_data = {
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"test/env_step": step,
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"test/reward": rew,
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"test/length": len_,
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"test/reward_std": rew_std,
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"test/length_std": len_std,
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}
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self.write("test/env_step", step, log_data)
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self.last_log_test_step = step
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def log_update_data(self, update_result: dict, step: int) -> None:
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"""Use writer to log statistics generated during updating.
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:param update_result: a dict containing information of data collected in
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updating stage, i.e., returns of policy.update().
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:param int step: stands for the timestep the collect_result being logged.
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"""
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if step - self.last_log_update_step >= self.update_interval:
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log_data = {f"update/{k}": v for k, v in update_result.items()}
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self.write("update/gradient_step", step, log_data)
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self.last_log_update_step = step
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def save_data(
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self,
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epoch: int,
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env_step: int,
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gradient_step: int,
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save_checkpoint_fn: Optional[Callable[[int, int, int], None]] = None,
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) -> None:
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"""Use writer to log metadata when calling ``save_checkpoint_fn`` in trainer.
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:param int epoch: the epoch in trainer.
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:param int env_step: the env_step in trainer.
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:param int gradient_step: the gradient_step in trainer.
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:param function save_checkpoint_fn: a hook defined by user, see trainer
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documentation for detail.
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"""
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pass
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def restore_data(self) -> Tuple[int, int, int]:
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"""Return the metadata from existing log.
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If it finds nothing or an error occurs during the recover process, it will
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return the default parameters.
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:return: epoch, env_step, gradient_step.
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"""
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pass
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class LazyLogger(BaseLogger):
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"""A logger that does nothing. Used as the placeholder in trainer."""
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def __init__(self) -> None:
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super().__init__()
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def write(self, step_type: str, step: int, data: LOG_DATA_TYPE) -> None:
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"""The LazyLogger writes nothing."""
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pass
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