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446 行
22 KiB
446 行
22 KiB
# # Unity ML Agents
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# ## ML-Agent Learning (PPO)
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# Contains an implementation of PPO as described [here](https://arxiv.org/abs/1707.06347).
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import logging
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import os
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import numpy as np
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import tensorflow as tf
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from unityagents import AllBrainInfo
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from unitytrainers.buffer import Buffer
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from unitytrainers.ppo.models import PPOModel
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from unitytrainers.trainer import UnityTrainerException, Trainer
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logger = logging.getLogger("unityagents")
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class PPOTrainer(Trainer):
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"""The PPOTrainer is an implementation of the PPO algorythm."""
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def __init__(self, sess, env, brain_name, trainer_parameters, training, seed):
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"""
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Responsible for collecting experiences and training PPO model.
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:param sess: Tensorflow session.
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:param env: The UnityEnvironment.
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:param trainer_parameters: The parameters for the trainer (dictionary).
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:param training: Whether the trainer is set for training.
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"""
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self.param_keys = ['batch_size', 'beta', 'buffer_size', 'epsilon', 'gamma', 'hidden_units', 'lambd',
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'learning_rate',
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'max_steps', 'normalize', 'num_epoch', 'num_layers', 'time_horizon', 'sequence_length',
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'summary_freq',
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'use_recurrent', 'graph_scope', 'summary_path', 'memory_size']
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for k in self.param_keys:
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if k not in trainer_parameters:
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raise UnityTrainerException("The hyperparameter {0} could not be found for the PPO trainer of "
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"brain {1}.".format(k, brain_name))
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super(PPOTrainer, self).__init__(sess, env, brain_name, trainer_parameters, training)
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self.use_recurrent = trainer_parameters["use_recurrent"]
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self.sequence_length = 1
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self.m_size = None
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if self.use_recurrent:
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self.m_size = trainer_parameters["memory_size"]
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self.sequence_length = trainer_parameters["sequence_length"]
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if self.use_recurrent:
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if self.m_size == 0:
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raise UnityTrainerException("The memory size for brain {0} is 0 even though the trainer uses recurrent."
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.format(brain_name))
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elif self.m_size % 4 != 0:
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raise UnityTrainerException("The memory size for brain {0} is {1} but it must be divisible by 4."
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.format(brain_name, self.m_size))
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self.variable_scope = trainer_parameters['graph_scope']
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with tf.variable_scope(self.variable_scope):
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tf.set_random_seed(seed)
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self.model = PPOModel(env.brains[brain_name],
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lr=float(trainer_parameters['learning_rate']),
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h_size=int(trainer_parameters['hidden_units']),
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epsilon=float(trainer_parameters['epsilon']),
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beta=float(trainer_parameters['beta']),
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max_step=float(trainer_parameters['max_steps']),
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normalize=trainer_parameters['normalize'],
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use_recurrent=trainer_parameters['use_recurrent'],
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num_layers=int(trainer_parameters['num_layers']),
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m_size=self.m_size)
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stats = {'cumulative_reward': [], 'episode_length': [], 'value_estimate': [],
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'entropy': [], 'value_loss': [], 'policy_loss': [], 'learning_rate': []}
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self.stats = stats
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self.training_buffer = Buffer()
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self.cumulative_rewards = {}
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self.episode_steps = {}
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self.is_continuous = (env.brains[brain_name].vector_action_space_type == "continuous")
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self.use_observations = (env.brains[brain_name].number_visual_observations > 0)
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self.use_states = (env.brains[brain_name].vector_observation_space_size > 0)
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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.summary_writer = tf.summary.FileWriter(self.summary_path)
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def __str__(self):
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return '''Hypermarameters for the PPO Trainer of brain {0}: \n{1}'''.format(
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self.brain_name, '\n'.join(['\t{0}:\t{1}'.format(x, self.trainer_parameters[x]) for x in self.param_keys]))
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@property
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def parameters(self):
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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 graph_scope(self):
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"""
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Returns the graph scope of the trainer.
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"""
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return self.variable_scope
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@property
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def get_max_steps(self):
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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):
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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.sess.run(self.model.global_step)
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@property
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def get_last_reward(self):
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"""
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Returns the last reward the trainer has had
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:return: the new last reward
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"""
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return self.sess.run(self.model.last_reward)
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def increment_step(self):
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"""
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Increment the step count of the trainer
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"""
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self.sess.run(self.model.increment_step)
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def update_last_reward(self):
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"""
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Updates the last reward
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"""
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if len(self.stats['cumulative_reward']) > 0:
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mean_reward = np.mean(self.stats['cumulative_reward'])
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self.sess.run(self.model.update_reward, feed_dict={self.model.new_reward: mean_reward})
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def running_average(self, data, steps, running_mean, running_variance):
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"""
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Computes new running mean and variances.
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:param data: New piece of data.
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:param steps: Total number of data so far.
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:param running_mean: TF op corresponding to stored running mean.
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:param running_variance: TF op corresponding to stored running variance.
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:return: New mean and variance values.
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"""
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mean, var = self.sess.run([running_mean, running_variance])
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current_x = np.mean(data, axis=0)
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new_mean = mean + (current_x - mean) / (steps + 1)
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new_variance = var + (current_x - new_mean) * (current_x - mean)
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return new_mean, new_variance
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def take_action(self, all_brain_info: AllBrainInfo):
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"""
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Decides actions given state/observation information, and takes them in environment.
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:param all_brain_info: A dictionary of brain names and BrainInfo from environment.
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:return: a tuple containing action, memories, values and an object
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to be passed to add experiences
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"""
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steps = self.get_step
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curr_brain_info = all_brain_info[self.brain_name]
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if len(curr_brain_info.agents) == 0:
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return [], [], [], None
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feed_dict = {self.model.batch_size: len(curr_brain_info.vector_observations), self.model.sequence_length: 1}
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run_list = [self.model.output, self.model.all_probs, self.model.value, self.model.entropy,
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self.model.learning_rate]
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if self.is_continuous:
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run_list.append(self.model.epsilon)
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elif self.use_recurrent:
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feed_dict[self.model.prev_action] = np.reshape(curr_brain_info.previous_vector_actions, [-1])
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if self.use_observations:
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for i, _ in enumerate(curr_brain_info.visual_observations):
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feed_dict[self.model.visual_in[i]] = curr_brain_info.visual_observations[i]
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if self.use_states:
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feed_dict[self.model.vector_in] = curr_brain_info.vector_observations
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if self.use_recurrent:
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if curr_brain_info.memories.shape[1] == 0:
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curr_brain_info.memories = np.zeros((len(curr_brain_info.agents), self.m_size))
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feed_dict[self.model.memory_in] = curr_brain_info.memories
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run_list += [self.model.memory_out]
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if (self.is_training and self.brain.vector_observation_space_type == "continuous" and
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self.use_states and self.trainer_parameters['normalize']):
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new_mean, new_variance = self.running_average(
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curr_brain_info.vector_observations, steps, self.model.running_mean, self.model.running_variance)
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feed_dict[self.model.new_mean] = new_mean
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feed_dict[self.model.new_variance] = new_variance
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run_list = run_list + [self.model.update_mean, self.model.update_variance]
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values = self.sess.run(run_list, feed_dict=feed_dict)
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run_out = dict(zip(run_list, values))
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self.stats['value_estimate'].append(run_out[self.model.value].mean())
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self.stats['entropy'].append(run_out[self.model.entropy].mean())
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self.stats['learning_rate'].append(run_out[self.model.learning_rate])
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if self.use_recurrent:
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return (run_out[self.model.output],
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run_out[self.model.memory_out],
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[str(v) for v in run_out[self.model.value]],
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run_out)
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else:
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return (run_out[self.model.output],
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None,
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[str(v) for v in run_out[self.model.value]],
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run_out)
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def add_experiences(self, curr_all_info: AllBrainInfo, next_all_info: AllBrainInfo, take_action_outputs):
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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 take action method.
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"""
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curr_info = curr_all_info[self.brain_name]
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next_info = next_all_info[self.brain_name]
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for agent_id in curr_info.agents:
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self.training_buffer[agent_id].last_brain_info = curr_info
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self.training_buffer[agent_id].last_take_action_outputs = take_action_outputs
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for agent_id in next_info.agents:
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stored_info = self.training_buffer[agent_id].last_brain_info
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stored_take_action_outputs = self.training_buffer[agent_id].last_take_action_outputs
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if stored_info is None:
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continue
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else:
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idx = stored_info.agents.index(agent_id)
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next_idx = next_info.agents.index(agent_id)
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if not stored_info.local_done[idx]:
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if self.use_observations:
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for i, _ in enumerate(stored_info.visual_observations):
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self.training_buffer[agent_id]['observations%d' % i].append(stored_info.visual_observations[i][idx])
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if self.use_states:
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self.training_buffer[agent_id]['states'].append(stored_info.vector_observations[idx])
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if self.use_recurrent:
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if stored_info.memories.shape[1] == 0:
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stored_info.memories = np.zeros((len(stored_info.agents), self.m_size))
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self.training_buffer[agent_id]['memory'].append(stored_info.memories[idx])
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if self.is_continuous:
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epsi = stored_take_action_outputs[self.model.epsilon]
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self.training_buffer[agent_id]['epsilons'].append(epsi[idx])
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actions = stored_take_action_outputs[self.model.output]
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a_dist = stored_take_action_outputs[self.model.all_probs]
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value = stored_take_action_outputs[self.model.value]
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self.training_buffer[agent_id]['actions'].append(actions[idx])
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self.training_buffer[agent_id]['prev_action'].append(stored_info.previous_vector_actions[idx])
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self.training_buffer[agent_id]['masks'].append(1.0)
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self.training_buffer[agent_id]['rewards'].append(next_info.rewards[next_idx])
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self.training_buffer[agent_id]['action_probs'].append(a_dist[idx])
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self.training_buffer[agent_id]['value_estimates'].append(value[idx][0])
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if agent_id not in self.cumulative_rewards:
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self.cumulative_rewards[agent_id] = 0
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self.cumulative_rewards[agent_id] += next_info.rewards[next_idx]
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if agent_id not in self.episode_steps:
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self.episode_steps[agent_id] = 0
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self.episode_steps[agent_id] += 1
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def process_experiences(self, all_info: AllBrainInfo):
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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 all_info: Dictionary of all current brains and corresponding BrainInfo.
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"""
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info = all_info[self.brain_name]
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for l in range(len(info.agents)):
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agent_actions = self.training_buffer[info.agents[l]]['actions']
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if ((info.local_done[l] or len(agent_actions) > self.trainer_parameters['time_horizon'])
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and len(agent_actions) > 0):
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if info.local_done[l] and not info.max_reached[l]:
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value_next = 0.0
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else:
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feed_dict = {self.model.batch_size: len(info.vector_observations), self.model.sequence_length: 1}
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if self.use_observations:
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for i in range(len(info.visual_observations)):
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feed_dict[self.model.visual_in[i]] = info.visual_observations[i]
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if self.use_states:
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feed_dict[self.model.vector_in] = info.vector_observations
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if self.use_recurrent:
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if info.memories.shape[1] == 0:
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info.memories = np.zeros((len(info.vector_observations), self.m_size))
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feed_dict[self.model.memory_in] = info.memories
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if not self.is_continuous and self.use_recurrent:
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feed_dict[self.model.prev_action] = np.reshape(info.previous_vector_actions, [-1])
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value_next = self.sess.run(self.model.value, feed_dict)[l]
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agent_id = info.agents[l]
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self.training_buffer[agent_id]['advantages'].set(
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get_gae(
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rewards=self.training_buffer[agent_id]['rewards'].get_batch(),
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value_estimates=self.training_buffer[agent_id]['value_estimates'].get_batch(),
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value_next=value_next,
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gamma=self.trainer_parameters['gamma'],
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lambd=self.trainer_parameters['lambd'])
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)
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self.training_buffer[agent_id]['discounted_returns'].set(
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self.training_buffer[agent_id]['advantages'].get_batch()
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+ self.training_buffer[agent_id]['value_estimates'].get_batch())
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self.training_buffer.append_update_buffer(agent_id,
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batch_size=None, training_length=self.sequence_length)
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self.training_buffer[agent_id].reset_agent()
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if info.local_done[l]:
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self.stats['cumulative_reward'].append(self.cumulative_rewards[agent_id])
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self.stats['episode_length'].append(self.episode_steps[agent_id])
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self.cumulative_rewards[agent_id] = 0
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self.episode_steps[agent_id] = 0
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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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self.training_buffer.reset_all()
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for agent_id in self.cumulative_rewards:
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self.cumulative_rewards[agent_id] = 0
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for agent_id in self.episode_steps:
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self.episode_steps[agent_id] = 0
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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 whether or not update_model() can be run
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"""
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return len(self.training_buffer.update_buffer['actions']) > \
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max(int(self.trainer_parameters['buffer_size'] / self.sequence_length), 1)
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def update_model(self):
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"""
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Uses training_buffer to update model.
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"""
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num_epoch = self.trainer_parameters['num_epoch']
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n_sequences = max(int(self.trainer_parameters['batch_size'] / self.sequence_length), 1)
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total_v, total_p = 0, 0
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advantages = self.training_buffer.update_buffer['advantages'].get_batch()
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self.training_buffer.update_buffer['advantages'].set(
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(advantages - advantages.mean()) / (advantages.std() + 1e-10))
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for k in range(num_epoch):
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self.training_buffer.update_buffer.shuffle()
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for l in range(len(self.training_buffer.update_buffer['actions']) // n_sequences):
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start = l * n_sequences
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end = (l + 1) * n_sequences
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_buffer = self.training_buffer.update_buffer
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feed_dict = {self.model.batch_size: n_sequences,
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self.model.sequence_length: self.sequence_length,
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self.model.mask_input: np.array(_buffer['masks'][start:end]).reshape(
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[-1]),
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self.model.returns_holder: np.array(_buffer['discounted_returns'][start:end]).reshape(
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[-1]),
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self.model.old_value: np.array(_buffer['value_estimates'][start:end]).reshape([-1]),
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self.model.advantage: np.array(_buffer['advantages'][start:end]).reshape([-1, 1]),
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self.model.all_old_probs: np.array(
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_buffer['action_probs'][start:end]).reshape([-1, self.brain.vector_action_space_size])}
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if self.is_continuous:
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feed_dict[self.model.epsilon] = np.array(
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_buffer['epsilons'][start:end]).reshape([-1, self.brain.vector_action_space_size])
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else:
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feed_dict[self.model.action_holder] = np.array(
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_buffer['actions'][start:end]).reshape([-1])
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if self.use_recurrent:
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feed_dict[self.model.prev_action] = np.array(
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_buffer['prev_action'][start:end]).reshape([-1])
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if self.use_states:
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if self.brain.vector_observation_space_type == "continuous":
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feed_dict[self.model.vector_in] = np.array(
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_buffer['states'][start:end]).reshape(
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[-1, self.brain.vector_observation_space_size * self.brain.num_stacked_vector_observations])
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else:
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feed_dict[self.model.vector_in] = np.array(
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_buffer['states'][start:end]).reshape([-1, self.brain.num_stacked_vector_observations])
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if self.use_observations:
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for i, _ in enumerate(self.model.visual_in):
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_obs = np.array(_buffer['observations%d' % i][start:end])
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(_batch, _seq, _w, _h, _c) = _obs.shape
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feed_dict[self.model.visual_in[i]] = _obs.reshape([-1, _w, _h, _c])
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if self.use_recurrent:
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feed_dict[self.model.memory_in] = np.array(_buffer['memory'][start:end])[:, 0, :]
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v_loss, p_loss, _ = self.sess.run(
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[self.model.value_loss, self.model.policy_loss,
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self.model.update_batch], feed_dict=feed_dict)
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total_v += v_loss
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total_p += p_loss
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self.stats['value_loss'].append(total_v)
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self.stats['policy_loss'].append(total_p)
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self.training_buffer.reset_update_buffer()
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def write_summary(self, lesson_number):
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"""
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Saves training statistics to Tensorboard.
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:param lesson_number: The lesson the trainer is at.
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"""
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if (self.get_step % self.trainer_parameters['summary_freq'] == 0 and self.get_step != 0 and
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self.is_training and self.get_step <= self.get_max_steps):
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steps = self.get_step
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if len(self.stats['cumulative_reward']) > 0:
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mean_reward = np.mean(self.stats['cumulative_reward'])
|
|
logger.info(" {}: Step: {}. Mean Reward: {:0.3f}. Std of Reward: {:0.3f}."
|
|
.format(self.brain_name, steps, mean_reward, np.std(self.stats['cumulative_reward'])))
|
|
summary = tf.Summary()
|
|
for key in self.stats:
|
|
if len(self.stats[key]) > 0:
|
|
stat_mean = float(np.mean(self.stats[key]))
|
|
summary.value.add(tag='Info/{}'.format(key), simple_value=stat_mean)
|
|
self.stats[key] = []
|
|
summary.value.add(tag='Info/Lesson', simple_value=lesson_number)
|
|
self.summary_writer.add_summary(summary, steps)
|
|
self.summary_writer.flush()
|
|
|
|
|
|
def discount_rewards(r, gamma=0.99, value_next=0.0):
|
|
"""
|
|
Computes discounted sum of future rewards for use in updating value estimate.
|
|
:param r: List of rewards.
|
|
:param gamma: Discount factor.
|
|
:param value_next: T+1 value estimate for returns calculation.
|
|
:return: discounted sum of future rewards as list.
|
|
"""
|
|
discounted_r = np.zeros_like(r)
|
|
running_add = value_next
|
|
for t in reversed(range(0, r.size)):
|
|
running_add = running_add * gamma + r[t]
|
|
discounted_r[t] = running_add
|
|
return discounted_r
|
|
|
|
|
|
def get_gae(rewards, value_estimates, value_next=0.0, gamma=0.99, lambd=0.95):
|
|
"""
|
|
Computes generalized advantage estimate for use in updating policy.
|
|
:param rewards: list of rewards for time-steps t to T.
|
|
:param value_next: Value estimate for time-step T+1.
|
|
:param value_estimates: list of value estimates for time-steps t to T.
|
|
:param gamma: Discount factor.
|
|
:param lambd: GAE weighing factor.
|
|
:return: list of advantage estimates for time-steps t to T.
|
|
"""
|
|
value_estimates = np.asarray(value_estimates.tolist() + [value_next])
|
|
delta_t = rewards + gamma * value_estimates[1:] - value_estimates[:-1]
|
|
advantage = discount_rewards(r=delta_t, gamma=gamma * lambd)
|
|
return advantage
|