import logging from ray._private.usage import usage_lib # Note: do not introduce unnecessary library dependencies here, e.g. gym. # This file is imported from the tune module in order to register RLlib agents. from ray.rllib.env.base_env import BaseEnv from ray.rllib.env.external_env import ExternalEnv from ray.rllib.env.multi_agent_env import MultiAgentEnv from ray.rllib.env.vector_env import VectorEnv from ray.rllib.evaluation.rollout_worker import RolloutWorker from ray.rllib.policy.policy import Policy from ray.rllib.policy.sample_batch import SampleBatch from ray.rllib.policy.tf_policy import TFPolicy from ray.rllib.policy.torch_policy import TorchPolicy from ray.tune.registry import register_trainable def _setup_logger(): logger = logging.getLogger("ray.rllib") handler = logging.StreamHandler() handler.setFormatter( logging.Formatter( "%(asctime)s\t%(levelname)s %(filename)s:%(lineno)s -- %(message)s" ) ) logger.addHandler(handler) logger.propagate = False def _register_all(): from ray.rllib.algorithms.registry import ALGORITHMS, _get_algorithm_class for key, get_trainable_class_and_config in ALGORITHMS.items(): register_trainable(key, get_trainable_class_and_config()[0]) for key in ["__fake", "__sigmoid_fake_data", "__parameter_tuning"]: register_trainable(key, _get_algorithm_class(key)) _setup_logger() usage_lib.record_library_usage("rllib") __all__ = [ "Policy", "TFPolicy", "TorchPolicy", "RolloutWorker", "SampleBatch", "BaseEnv", "MultiAgentEnv", "VectorEnv", "ExternalEnv", ]