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170 行
7.1 KiB
170 行
7.1 KiB
import os
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import shutil
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from typing import Optional, Union, cast
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from mlagents_envs.exception import UnityPolicyException
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from mlagents_envs.logging_util import get_logger
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from mlagents.tf_utils import tf
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from mlagents.trainers.saver.saver import BaseSaver
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from mlagents.trainers.tf.model_serialization import export_policy_model
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from mlagents.trainers.settings import TrainerSettings, SerializationSettings
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from mlagents.trainers.policy.tf_policy import TFPolicy
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from mlagents.trainers.optimizer.tf_optimizer import TFOptimizer
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from mlagents.trainers import __version__
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logger = get_logger(__name__)
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class TFSaver(BaseSaver):
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"""
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Saver class for TensorFlow
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"""
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def __init__(
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self, trainer_settings: TrainerSettings, model_path: str, load: bool = False
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):
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super().__init__()
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self.model_path = model_path
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self.initialize_path = trainer_settings.init_path
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self._keep_checkpoints = trainer_settings.keep_checkpoints
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self.load = load
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# Currently only support saving one policy. This is the one to be saved.
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self.policy: Optional[TFPolicy] = None
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self.graph = None
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self.sess = None
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self.tf_saver = None
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def register(self, module: Union[TFPolicy, TFOptimizer]) -> None:
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if isinstance(module, TFPolicy):
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self._register_policy(module)
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elif isinstance(module, TFOptimizer):
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self._register_optimizer(module)
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else:
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raise UnityPolicyException(
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"Registering Object of unsupported type {} to Saver ".format(
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type(module)
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)
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)
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def _register_policy(self, policy: TFPolicy) -> None:
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if self.policy is None:
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self.policy = policy
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self.graph = self.policy.graph
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self.sess = self.policy.sess
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with self.policy.graph.as_default():
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self.tf_saver = tf.train.Saver(max_to_keep=self._keep_checkpoints)
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def save_checkpoint(self, brain_name: str, step: int) -> str:
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checkpoint_path = os.path.join(self.model_path, f"{brain_name}-{step}")
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# Save the TF checkpoint and graph definition
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if self.graph:
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with self.graph.as_default():
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if self.tf_saver:
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self.tf_saver.save(self.sess, f"{checkpoint_path}.ckpt")
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tf.train.write_graph(
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self.graph, self.model_path, "raw_graph_def.pb", as_text=False
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)
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# also save the policy so we have optimized model files for each checkpoint
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self.export(checkpoint_path, brain_name)
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return checkpoint_path
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def export(self, output_filepath: str, brain_name: str) -> None:
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# save model if there is only one worker or
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# only on worker-0 if there are multiple workers
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if self.policy and self.policy.rank is not None and self.policy.rank != 0:
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return
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export_policy_model(
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self.model_path, output_filepath, brain_name, self.graph, self.sess
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)
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def initialize_or_load(self, policy: Optional[TFPolicy] = None) -> None:
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# If there is an initialize path, load from that. Else, load from the set model path.
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# If load is set to True, don't reset steps to 0. Else, do. This allows a user to,
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# e.g., resume from an initialize path.
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if policy is None:
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policy = self.policy
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policy = cast(TFPolicy, policy)
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reset_steps = not self.load
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if self.initialize_path is not None:
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self._load_graph(
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policy, self.initialize_path, reset_global_steps=reset_steps
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)
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elif self.load:
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self._load_graph(policy, self.model_path, reset_global_steps=reset_steps)
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else:
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policy.initialize()
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TFPolicy.broadcast_global_variables(0)
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def _load_graph(
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self, policy: TFPolicy, model_path: str, reset_global_steps: bool = False
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) -> None:
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with policy.graph.as_default():
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logger.info(f"Loading model from {model_path}.")
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ckpt = tf.train.get_checkpoint_state(model_path)
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if ckpt is None:
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raise UnityPolicyException(
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"The model {} could not be loaded. Make "
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"sure you specified the right "
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"--run-id and that the previous run you are loading from had the same "
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"behavior names.".format(model_path)
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)
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if self.tf_saver:
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try:
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self.tf_saver.restore(policy.sess, ckpt.model_checkpoint_path)
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except tf.errors.NotFoundError:
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raise UnityPolicyException(
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"The model {} was found but could not be loaded. Make "
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"sure the model is from the same version of ML-Agents, has the same behavior parameters, "
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"and is using the same trainer configuration as the current run.".format(
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model_path
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)
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)
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self._check_model_version(__version__)
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if reset_global_steps:
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policy.set_step(0)
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logger.info(
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"Starting training from step 0 and saving to {}.".format(
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self.model_path
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)
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)
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else:
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logger.info(f"Resuming training from step {policy.get_current_step()}.")
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def _check_model_version(self, version: str) -> None:
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"""
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Checks whether the model being loaded was created with the same version of
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ML-Agents, and throw a warning if not so.
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"""
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if self.policy is not None and self.policy.version_tensors is not None:
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loaded_ver = tuple(
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num.eval(session=self.sess) for num in self.policy.version_tensors
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)
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if loaded_ver != TFPolicy._convert_version_string(version):
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logger.warning(
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f"The model checkpoint you are loading from was saved with ML-Agents version "
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f"{loaded_ver[0]}.{loaded_ver[1]}.{loaded_ver[2]} but your current ML-Agents"
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f"version is {version}. Model may not behave properly."
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)
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def copy_final_model(self, source_nn_path: str) -> None:
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"""
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Copy the .nn file at the given source to the destination.
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Also copies the corresponding .onnx file if it exists.
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"""
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final_model_name = os.path.splitext(source_nn_path)[0]
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if SerializationSettings.convert_to_barracuda:
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source_path = f"{final_model_name}.nn"
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destination_path = f"{self.model_path}.nn"
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shutil.copyfile(source_path, destination_path)
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logger.info(f"Copied {source_path} to {destination_path}.")
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if SerializationSettings.convert_to_onnx:
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try:
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source_path = f"{final_model_name}.onnx"
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destination_path = f"{self.model_path}.onnx"
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shutil.copyfile(source_path, destination_path)
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logger.info(f"Copied {source_path} to {destination_path}.")
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except OSError:
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pass
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