mirror of
https://github.com/vale981/ray
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168 lines
7.1 KiB
Python
168 lines
7.1 KiB
Python
import logging
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from typing import Callable, Iterable, List, Optional, Type
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from ray.rllib.agents.trainer import Trainer, COMMON_CONFIG
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from ray.rllib.evaluation.worker_set import WorkerSet
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from ray.rllib.execution.rollout_ops import ParallelRollouts, ConcatBatches
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from ray.rllib.execution.train_ops import TrainOneStep
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from ray.rllib.execution.metric_ops import StandardMetricsReporting
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from ray.rllib.policy import Policy
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from ray.rllib.utils import add_mixins
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from ray.rllib.utils.annotations import override, DeveloperAPI
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from ray.rllib.utils.typing import EnvConfigDict, EnvType, ResultDict, \
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TrainerConfigDict
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logger = logging.getLogger(__name__)
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def default_execution_plan(workers: WorkerSet, config: TrainerConfigDict):
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# Collects experiences in parallel from multiple RolloutWorker actors.
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rollouts = ParallelRollouts(workers, mode="bulk_sync")
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# Combine experiences batches until we hit `train_batch_size` in size.
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# Then, train the policy on those experiences and update the workers.
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train_op = rollouts \
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.combine(ConcatBatches(
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min_batch_size=config["train_batch_size"])) \
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.for_each(TrainOneStep(workers))
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# Add on the standard episode reward, etc. metrics reporting. This returns
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# a LocalIterator[metrics_dict] representing metrics for each train step.
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return StandardMetricsReporting(train_op, workers, config)
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@DeveloperAPI
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def build_trainer(
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name: str,
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*,
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default_config: Optional[TrainerConfigDict] = None,
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validate_config: Optional[Callable[[TrainerConfigDict], None]] = None,
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default_policy: Optional[Type[Policy]] = None,
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get_policy_class: Optional[Callable[[TrainerConfigDict], Optional[Type[
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Policy]]]] = None,
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before_init: Optional[Callable[[Trainer], None]] = None,
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after_init: Optional[Callable[[Trainer], None]] = None,
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before_evaluate_fn: Optional[Callable[[Trainer], None]] = None,
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mixins: Optional[List[type]] = None,
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execution_plan: Optional[Callable[[
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WorkerSet, TrainerConfigDict
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], Iterable[ResultDict]]] = default_execution_plan) -> Type[Trainer]:
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"""Helper function for defining a custom trainer.
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Functions will be run in this order to initialize the trainer:
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1. Config setup: validate_config, get_policy
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2. Worker setup: before_init, execution_plan
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3. Post setup: after_init
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Args:
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name (str): name of the trainer (e.g., "PPO")
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default_config (Optional[TrainerConfigDict]): The default config dict
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of the algorithm, otherwise uses the Trainer default config.
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validate_config (Optional[Callable[[TrainerConfigDict], None]]):
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Optional callable that takes the config to check for correctness.
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It may mutate the config as needed.
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default_policy (Optional[Type[Policy]]): The default Policy class to
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use.
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get_policy_class (Optional[Callable[
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TrainerConfigDict, Optional[Type[Policy]]]]): Optional callable
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that takes a config and returns the policy class or None. If None
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is returned, will use `default_policy` (which must be provided
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then).
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before_init (Optional[Callable[[Trainer], None]]): Optional callable to
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run before anything is constructed inside Trainer (Workers with
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Policies, execution plan, etc..). Takes the Trainer instance as
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argument.
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after_init (Optional[Callable[[Trainer], None]]): Optional callable to
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run at the end of trainer init (after all Workers and the exec.
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plan have been constructed). Takes the Trainer instance as
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argument.
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before_evaluate_fn (Optional[Callable[[Trainer], None]]): Callback to
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run before evaluation. This takes the trainer instance as argument.
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mixins (list): list of any class mixins for the returned trainer class.
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These mixins will be applied in order and will have higher
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precedence than the Trainer class.
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execution_plan (Optional[Callable[[WorkerSet, TrainerConfigDict],
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Iterable[ResultDict]]]): Optional callable that sets up the
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distributed execution workflow.
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Returns:
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Type[Trainer]: A Trainer sub-class configured by the specified args.
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"""
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original_kwargs = locals().copy()
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base = add_mixins(Trainer, mixins)
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class trainer_cls(base):
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_name = name
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_default_config = default_config or COMMON_CONFIG
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_policy_class = default_policy
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def __init__(self, config=None, env=None, logger_creator=None):
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Trainer.__init__(self, config, env, logger_creator)
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def _init(self, config: TrainerConfigDict,
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env_creator: Callable[[EnvConfigDict], EnvType]):
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# Validate config via custom validation function.
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if validate_config:
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validate_config(config)
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if get_policy_class is None:
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if not config["multiagent"]["policies"]:
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assert default_policy is not None
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self._policy_class = default_policy
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else:
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self._policy_class = get_policy_class(config)
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if self._policy_class is None:
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assert default_policy is not None
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self._policy_class = default_policy
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if before_init:
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before_init(self)
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# Creating all workers (excluding evaluation workers).
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self.workers = self._make_workers(env_creator, self._policy_class,
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config,
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self.config["num_workers"])
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self.execution_plan = execution_plan
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self.train_exec_impl = execution_plan(self.workers, config)
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if after_init:
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after_init(self)
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@override(Trainer)
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def step(self):
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res = next(self.train_exec_impl)
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return res
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@override(Trainer)
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def _before_evaluate(self):
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if before_evaluate_fn:
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before_evaluate_fn(self)
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@override(Trainer)
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def __getstate__(self):
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state = Trainer.__getstate__(self)
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state["train_exec_impl"] = (
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self.train_exec_impl.shared_metrics.get().save())
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return state
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@override(Trainer)
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def __setstate__(self, state):
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Trainer.__setstate__(self, state)
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self.train_exec_impl.shared_metrics.get().restore(
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state["train_exec_impl"])
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@staticmethod
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@override(Trainer)
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def with_updates(**overrides) -> Type[Trainer]:
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"""Build a copy of this trainer with the specified overrides.
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Keyword Args:
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overrides (dict): use this to override any of the arguments
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originally passed to build_trainer() for this policy.
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"""
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return build_trainer(**dict(original_kwargs, **overrides))
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trainer_cls.__name__ = name
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trainer_cls.__qualname__ = name
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return trainer_cls
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