mirror of
https://github.com/vale981/ray
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106 lines
4.6 KiB
Python
106 lines
4.6 KiB
Python
from typing import List
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from ray.actor import ActorHandle
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from ray.rllib.agents import Trainer
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from ray.rllib.agents.dqn.apex import ApexTrainer
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from ray.rllib.algorithms.ddpg.ddpg import DDPGConfig, DDPGTrainer
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from ray.rllib.evaluation.worker_set import WorkerSet
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from ray.rllib.utils.annotations import override
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from ray.rllib.utils.typing import TrainerConfigDict
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from ray.util.iter import LocalIterator
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from ray.rllib.utils.typing import PartialTrainerConfigDict
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from ray.rllib.utils.typing import ResultDict
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from ray.rllib.utils.deprecation import DEPRECATED_VALUE
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APEX_DDPG_DEFAULT_CONFIG = DDPGTrainer.merge_trainer_configs(
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DDPGConfig().to_dict(), # see also the options in ddpg.py, which are also supported
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{
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"optimizer": {
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"max_weight_sync_delay": 400,
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"num_replay_buffer_shards": 4,
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"debug": False,
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},
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"exploration_config": {"type": "PerWorkerOrnsteinUhlenbeckNoise"},
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"n_step": 3,
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"num_gpus": 0,
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"num_workers": 32,
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"replay_buffer_config": {
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"capacity": 2000000,
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"no_local_replay_buffer": True,
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# Specify prioritized replay by supplying a buffer type that supports
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# prioritization, for example: MultiAgentPrioritizedReplayBuffer.
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"prioritized_replay": DEPRECATED_VALUE,
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"learning_starts": 50000,
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# Whether all shards of the replay buffer must be co-located
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# with the learner process (running the execution plan).
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# This is preferred b/c the learner process should have quick
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# access to the data from the buffer shards, avoiding network
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# traffic each time samples from the buffer(s) are drawn.
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# Set this to False for relaxing this constraint and allowing
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# replay shards to be created on node(s) other than the one
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# on which the learner is located.
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"replay_buffer_shards_colocated_with_driver": True,
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"worker_side_prioritization": True,
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},
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"train_batch_size": 512,
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"rollout_fragment_length": 50,
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# Update the target network every `target_network_update_freq` sample timesteps.
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"target_network_update_freq": 500000,
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"min_sample_timesteps_per_reporting": 25000,
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"min_time_s_per_reporting": 30,
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"training_intensity": 1,
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# max number of inflight requests to each sampling worker
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# see the AsyncRequestsManager class for more details
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# Tuning these values is important when running experimens with large sample
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# batches. If the sample batches are large in size, then there is the risk that
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# the object store may fill up, causing the store to spill objects to disk.
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# This can cause any asynchronous requests to become very slow, making your
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# experiment run slowly. You can inspect the object store during your
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# experiment via a call to ray memory on your headnode, and by using the ray
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# dashboard. If you're seeing that the object store is filling up, turn down
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# the number of remote requests in flight, or enable compression in your
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# experiment of timesteps.
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"max_requests_in_flight_per_sampler_worker": 2,
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"max_requests_in_flight_per_replay_worker": float("inf"),
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"timeout_s_sampler_manager": 0.0,
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"timeout_s_replay_manager": 0.0,
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},
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_allow_unknown_configs=True,
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)
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class ApexDDPGTrainer(DDPGTrainer, ApexTrainer):
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@classmethod
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@override(DDPGTrainer)
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def get_default_config(cls) -> TrainerConfigDict:
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return APEX_DDPG_DEFAULT_CONFIG
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@override(DDPGTrainer)
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def setup(self, config: PartialTrainerConfigDict):
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return ApexTrainer.setup(self, config)
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@override(DDPGTrainer)
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def training_iteration(self) -> ResultDict:
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"""Use APEX-DQN's training iteration function."""
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return ApexTrainer.training_iteration(self)
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@override(Trainer)
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def on_worker_failures(
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self, removed_workers: List[ActorHandle], new_workers: List[ActorHandle]
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):
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"""Handle the failures of remote sampling workers
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Args:
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removed_workers: removed worker ids.
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new_workers: ids of newly created workers.
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"""
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self._sampling_actor_manager.remove_workers(removed_workers)
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self._sampling_actor_manager.add_workers(new_workers)
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@staticmethod
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@override(DDPGTrainer)
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def execution_plan(
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workers: WorkerSet, config: dict, **kwargs
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) -> LocalIterator[dict]:
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"""Use APEX-DQN's execution plan."""
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return ApexTrainer.execution_plan(workers, config, **kwargs)
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