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284 行
10 KiB
284 行
10 KiB
# # Unity ML-Agents Toolkit
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import logging
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from typing import Dict, List, Deque, Any
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import os
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from mlagents.trainers import tf
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import numpy as np
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from collections import deque, defaultdict
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from mlagents.envs.action_info import ActionInfoOutputs
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from mlagents.envs.exception import UnityException
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from mlagents.envs.timers import set_gauge
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from mlagents.trainers.trainer_metrics import TrainerMetrics
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from mlagents.trainers.tf_policy import TFPolicy
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from mlagents.envs.brain import BrainParameters, AllBrainInfo
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LOGGER = logging.getLogger("mlagents.trainers")
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class UnityTrainerException(UnityException):
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"""
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Related to errors with the Trainer.
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"""
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pass
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class Trainer(object):
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"""This class is the base class for the mlagents.envs.trainers"""
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def __init__(
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self,
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brain: BrainParameters,
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trainer_parameters: dict,
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training: bool,
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run_id: str,
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reward_buff_cap: int = 1,
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):
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"""
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Responsible for collecting experiences and training a neural network model.
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:BrainParameters brain: Brain to be trained.
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:dict trainer_parameters: The parameters for the trainer (dictionary).
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:bool training: Whether the trainer is set for training.
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:str run_id: The identifier of the current run
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:int reward_buff_cap:
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"""
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self.param_keys: List[str] = []
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self.brain_name = brain.brain_name
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self.run_id = run_id
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self.trainer_parameters = trainer_parameters
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self.summary_path = trainer_parameters["summary_path"]
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if not os.path.exists(self.summary_path):
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os.makedirs(self.summary_path)
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self.cumulative_returns_since_policy_update: List[float] = []
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self.is_training = training
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self.stats: Dict[str, List] = defaultdict(list)
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self.trainer_metrics = TrainerMetrics(
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path=self.summary_path + ".csv", brain_name=self.brain_name
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)
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self.summary_writer = tf.summary.FileWriter(self.summary_path)
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self._reward_buffer: Deque[float] = deque(maxlen=reward_buff_cap)
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self.policy: TFPolicy = None
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self.step: int = 0
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def check_param_keys(self):
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for k in self.param_keys:
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if k not in self.trainer_parameters:
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raise UnityTrainerException(
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"The hyper-parameter {0} could not be found for the {1} trainer of "
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"brain {2}.".format(k, self.__class__, self.brain_name)
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)
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def dict_to_str(self, param_dict: Dict[str, Any], num_tabs: int) -> str:
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"""
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Takes a parameter dictionary and converts it to a human-readable string.
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Recurses if there are multiple levels of dict. Used to print out hyperaparameters.
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param: param_dict: A Dictionary of key, value parameters.
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return: A string version of this dictionary.
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"""
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if not isinstance(param_dict, dict):
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return str(param_dict)
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else:
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append_newline = "\n" if num_tabs > 0 else ""
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return append_newline + "\n".join(
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[
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"\t"
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+ " " * num_tabs
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+ "{0}:\t{1}".format(
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x, self.dict_to_str(param_dict[x], num_tabs + 1)
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)
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for x in param_dict
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]
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)
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def __str__(self) -> str:
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return """Hyperparameters for the {0} of brain {1}: \n{2}""".format(
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self.__class__.__name__,
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self.brain_name,
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self.dict_to_str(self.trainer_parameters, 0),
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)
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@property
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def parameters(self) -> Dict[str, Any]:
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"""
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Returns the trainer parameters of the trainer.
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"""
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return self.trainer_parameters
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@property
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def get_max_steps(self) -> float:
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"""
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Returns the maximum number of steps. Is used to know when the trainer should be stopped.
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:return: The maximum number of steps of the trainer
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"""
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return float(self.trainer_parameters["max_steps"])
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@property
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def get_step(self) -> int:
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"""
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Returns the number of steps the trainer has performed
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:return: the step count of the trainer
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"""
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return self.step
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@property
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def reward_buffer(self) -> Deque[float]:
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"""
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Returns the reward buffer. The reward buffer contains the cumulative
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rewards of the most recent episodes completed by agents using this
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trainer.
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:return: the reward buffer.
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"""
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return self._reward_buffer
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def increment_step(self, n_steps: int) -> None:
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"""
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Increment the step count of the trainer
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:param n_steps: number of steps to increment the step count by
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"""
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self.step = self.policy.increment_step(n_steps)
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def save_model(self) -> None:
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"""
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Saves the model
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"""
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self.policy.save_model(self.get_step)
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def export_model(self) -> None:
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"""
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Exports the model
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"""
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self.policy.export_model()
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def write_training_metrics(self) -> None:
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"""
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Write training metrics to a CSV file
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:return:
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"""
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self.trainer_metrics.write_training_metrics()
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def write_summary(
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self, global_step: int, delta_train_start: float, lesson_num: int = 0
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) -> None:
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"""
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Saves training statistics to Tensorboard.
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:param delta_train_start: Time elapsed since training started.
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:param lesson_num: Current lesson number in curriculum.
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:param global_step: The number of steps the simulation has been going for
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"""
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if (
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global_step % self.trainer_parameters["summary_freq"] == 0
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and global_step != 0
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):
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is_training = (
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"Training."
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if self.is_training and self.get_step <= self.get_max_steps
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else "Not Training."
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)
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step = min(self.get_step, self.get_max_steps)
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if len(self.stats["Environment/Cumulative Reward"]) > 0:
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mean_reward = np.mean(self.stats["Environment/Cumulative Reward"])
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LOGGER.info(
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" {}: {}: Step: {}. "
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"Time Elapsed: {:0.3f} s "
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"Mean "
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"Reward: {:0.3f}"
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". Std of Reward: {:0.3f}. {}".format(
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self.run_id,
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self.brain_name,
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step,
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delta_train_start,
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mean_reward,
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np.std(self.stats["Environment/Cumulative Reward"]),
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is_training,
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)
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)
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set_gauge(f"{self.brain_name}.mean_reward", mean_reward)
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else:
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LOGGER.info(
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" {}: {}: Step: {}. No episode was completed since last summary. {}".format(
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self.run_id, self.brain_name, step, is_training
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)
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)
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summary = tf.Summary()
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for key in self.stats:
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if len(self.stats[key]) > 0:
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stat_mean = float(np.mean(self.stats[key]))
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summary.value.add(tag="{}".format(key), simple_value=stat_mean)
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self.stats[key] = []
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summary.value.add(tag="Environment/Lesson", simple_value=lesson_num)
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self.summary_writer.add_summary(summary, step)
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self.summary_writer.flush()
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def write_tensorboard_text(self, key: str, input_dict: Dict[str, Any]) -> None:
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"""
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Saves text to Tensorboard.
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Note: Only works on tensorflow r1.2 or above.
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:param key: The name of the text.
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:param input_dict: A dictionary that will be displayed in a table on Tensorboard.
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"""
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try:
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with tf.Session() as sess:
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s_op = tf.summary.text(
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key,
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tf.convert_to_tensor(
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([[str(x), str(input_dict[x])] for x in input_dict])
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),
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)
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s = sess.run(s_op)
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self.summary_writer.add_summary(s, self.get_step)
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except Exception:
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LOGGER.info(
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"Cannot write text summary for Tensorboard. Tensorflow version must be r1.2 or above."
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)
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pass
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def add_experiences(
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self,
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curr_all_info: AllBrainInfo,
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next_all_info: AllBrainInfo,
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take_action_outputs: ActionInfoOutputs,
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) -> None:
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"""
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Adds experiences to each agent's experience history.
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:param curr_all_info: Dictionary of all current brains and corresponding BrainInfo.
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:param next_all_info: Dictionary of all current brains and corresponding BrainInfo.
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:param take_action_outputs: The outputs of the Policy's get_action method.
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"""
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raise UnityTrainerException("The add_experiences method was not implemented.")
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def process_experiences(
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self, current_info: AllBrainInfo, next_info: AllBrainInfo
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) -> None:
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"""
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Checks agent histories for processing condition, and processes them as necessary.
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Processing involves calculating value and advantage targets for model updating step.
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:param current_info: Dictionary of all current-step brains and corresponding BrainInfo.
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:param next_info: Dictionary of all next-step brains and corresponding BrainInfo.
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"""
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raise UnityTrainerException(
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"The process_experiences method was not implemented."
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)
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def end_episode(self):
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"""
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A signal that the Episode has ended. The buffer must be reset.
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Get only called when the academy resets.
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"""
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raise UnityTrainerException("The end_episode method was not implemented.")
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def is_ready_update(self):
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"""
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Returns whether or not the trainer has enough elements to run update model
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:return: A boolean corresponding to wether or not update_model() can be run
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"""
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raise UnityTrainerException("The is_ready_update method was not implemented.")
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def update_policy(self):
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"""
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Uses demonstration_buffer to update model.
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"""
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raise UnityTrainerException("The update_model method was not implemented.")
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