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"""Objectives to compute loss and value targets. |
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Implements Actor Critic, PCL (vanilla PCL, Unified PCL, Trust PCL), and TRPO. |
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""" |
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import tensorflow as tf |
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import numpy as np |
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class Objective(object): |
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def __init__(self, learning_rate, clip_norm): |
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self.learning_rate = learning_rate |
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self.clip_norm = clip_norm |
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def get_optimizer(self, learning_rate): |
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"""Optimizer for gradient descent ops.""" |
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return tf.train.AdamOptimizer(learning_rate=learning_rate, |
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epsilon=2e-4) |
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def training_ops(self, loss, learning_rate=None): |
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"""Gradient ops.""" |
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opt = self.get_optimizer(learning_rate) |
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params = tf.trainable_variables() |
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grads = tf.gradients(loss, params) |
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if self.clip_norm: |
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grads, global_norm = tf.clip_by_global_norm(grads, self.clip_norm) |
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tf.summary.scalar('grad_global_norm', global_norm) |
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return opt.apply_gradients(zip(grads, params)) |
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def get(self, rewards, pads, values, final_values, |
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log_probs, prev_log_probs, target_log_probs, |
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entropies, logits, |
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target_values, final_target_values): |
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"""Get objective calculations.""" |
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raise NotImplementedError() |
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def discounted_future_sum(values, discount, rollout): |
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"""Discounted future sum of time-major values.""" |
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discount_filter = tf.reshape( |
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discount ** tf.range(float(rollout)), [-1, 1, 1]) |
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expanded_values = tf.concat( |
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[values, tf.zeros([rollout - 1, tf.shape(values)[1]])], 0) |
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conv_values = tf.transpose(tf.squeeze(tf.nn.conv1d( |
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tf.expand_dims(tf.transpose(expanded_values), -1), discount_filter, |
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stride=1, padding='VALID'), -1)) |
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return conv_values |
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def discounted_two_sided_sum(values, discount, rollout): |
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"""Discounted two-sided sum of time-major values.""" |
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roll = float(rollout) |
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discount_filter = tf.reshape( |
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discount ** tf.abs(tf.range(-roll + 1, roll)), [-1, 1, 1]) |
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expanded_values = tf.concat( |
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[tf.zeros([rollout - 1, tf.shape(values)[1]]), values, |
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tf.zeros([rollout - 1, tf.shape(values)[1]])], 0) |
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conv_values = tf.transpose(tf.squeeze(tf.nn.conv1d( |
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tf.expand_dims(tf.transpose(expanded_values), -1), discount_filter, |
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stride=1, padding='VALID'), -1)) |
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return conv_values |
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def shift_values(values, discount, rollout, final_values=0.0): |
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"""Shift values up by some amount of time. |
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Those values that shift from a value beyond the last value |
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are calculated using final_values. |
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""" |
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roll_range = tf.cumsum(tf.ones_like(values[:rollout, :]), 0, |
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exclusive=True, reverse=True) |
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final_pad = tf.expand_dims(final_values, 0) * discount ** roll_range |
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return tf.concat([discount ** rollout * values[rollout:, :], |
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final_pad], 0) |
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class ActorCritic(Objective): |
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"""Standard Actor-Critic.""" |
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def __init__(self, learning_rate, clip_norm=5, |
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policy_weight=1.0, critic_weight=0.1, |
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tau=0.1, gamma=1.0, rollout=10, |
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eps_lambda=0.0, clip_adv=None, |
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use_target_values=False): |
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super(ActorCritic, self).__init__(learning_rate, clip_norm=clip_norm) |
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self.policy_weight = policy_weight |
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self.critic_weight = critic_weight |
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self.tau = tau |
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self.gamma = gamma |
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self.rollout = rollout |
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self.clip_adv = clip_adv |
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self.eps_lambda = tf.get_variable( |
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'eps_lambda', [], initializer=tf.constant_initializer(eps_lambda), |
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trainable=False) |
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self.new_eps_lambda = tf.placeholder(tf.float32, []) |
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self.assign_eps_lambda = self.eps_lambda.assign( |
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0.99 * self.eps_lambda + 0.01 * self.new_eps_lambda) |
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self.use_target_values = use_target_values |
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def get(self, rewards, pads, values, final_values, |
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log_probs, prev_log_probs, target_log_probs, |
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entropies, logits, |
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target_values, final_target_values): |
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not_pad = 1 - pads |
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batch_size = tf.shape(rewards)[1] |
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entropy = not_pad * sum(entropies) |
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rewards = not_pad * rewards |
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value_estimates = not_pad * values |
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log_probs = not_pad * sum(log_probs) |
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target_values = not_pad * tf.stop_gradient(target_values) |
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final_target_values = tf.stop_gradient(final_target_values) |
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sum_rewards = discounted_future_sum(rewards, self.gamma, self.rollout) |
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if self.use_target_values: |
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last_values = shift_values( |
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target_values, self.gamma, self.rollout, |
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final_target_values) |
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else: |
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last_values = shift_values(value_estimates, self.gamma, self.rollout, |
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final_values) |
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future_values = sum_rewards + last_values |
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baseline_values = value_estimates |
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adv = tf.stop_gradient(-baseline_values + future_values) |
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if self.clip_adv: |
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adv = tf.minimum(self.clip_adv, tf.maximum(-self.clip_adv, adv)) |
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policy_loss = -adv * log_probs |
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critic_loss = -adv * baseline_values |
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regularizer = -self.tau * entropy |
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policy_loss = tf.reduce_mean( |
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tf.reduce_sum(policy_loss * not_pad, 0)) |
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critic_loss = tf.reduce_mean( |
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tf.reduce_sum(critic_loss * not_pad, 0)) |
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regularizer = tf.reduce_mean( |
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tf.reduce_sum(regularizer * not_pad, 0)) |
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loss = (self.policy_weight * policy_loss + |
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self.critic_weight * critic_loss + regularizer) |
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raw_loss = tf.reduce_mean( |
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tf.reduce_sum(not_pad * policy_loss, 0)) |
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gradient_ops = self.training_ops( |
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loss, learning_rate=self.learning_rate) |
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tf.summary.histogram('log_probs', tf.reduce_sum(log_probs, 0)) |
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tf.summary.histogram('rewards', tf.reduce_sum(rewards, 0)) |
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tf.summary.scalar('avg_rewards', |
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tf.reduce_mean(tf.reduce_sum(rewards, 0))) |
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tf.summary.scalar('policy_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('critic_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('loss', loss) |
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tf.summary.scalar('raw_loss', raw_loss) |
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return (loss, raw_loss, future_values, |
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gradient_ops, tf.summary.merge_all()) |
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class PCL(ActorCritic): |
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"""PCL implementation. |
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Implements vanilla PCL, Unified PCL, and Trust PCL depending |
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on provided inputs. |
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""" |
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def get(self, rewards, pads, values, final_values, |
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log_probs, prev_log_probs, target_log_probs, |
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entropies, logits, |
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target_values, final_target_values): |
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not_pad = 1 - pads |
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batch_size = tf.shape(rewards)[1] |
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rewards = not_pad * rewards |
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value_estimates = not_pad * values |
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log_probs = not_pad * sum(log_probs) |
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target_log_probs = not_pad * tf.stop_gradient(sum(target_log_probs)) |
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relative_log_probs = not_pad * (log_probs - target_log_probs) |
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target_values = not_pad * tf.stop_gradient(target_values) |
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final_target_values = tf.stop_gradient(final_target_values) |
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not_pad = tf.concat([tf.ones([self.rollout - 1, batch_size]), |
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not_pad], 0) |
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rewards = tf.concat([tf.zeros([self.rollout - 1, batch_size]), |
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rewards], 0) |
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value_estimates = tf.concat( |
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[self.gamma ** tf.expand_dims( |
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tf.range(float(self.rollout - 1), 0, -1), 1) * |
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tf.ones([self.rollout - 1, batch_size]) * |
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value_estimates[0:1, :], |
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value_estimates], 0) |
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log_probs = tf.concat([tf.zeros([self.rollout - 1, batch_size]), |
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log_probs], 0) |
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prev_log_probs = tf.concat([tf.zeros([self.rollout - 1, batch_size]), |
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prev_log_probs], 0) |
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relative_log_probs = tf.concat([tf.zeros([self.rollout - 1, batch_size]), |
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relative_log_probs], 0) |
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target_values = tf.concat( |
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[self.gamma ** tf.expand_dims( |
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tf.range(float(self.rollout - 1), 0, -1), 1) * |
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tf.ones([self.rollout - 1, batch_size]) * |
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target_values[0:1, :], |
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target_values], 0) |
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sum_rewards = discounted_future_sum(rewards, self.gamma, self.rollout) |
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sum_log_probs = discounted_future_sum(log_probs, self.gamma, self.rollout) |
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sum_prev_log_probs = discounted_future_sum(prev_log_probs, self.gamma, self.rollout) |
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sum_relative_log_probs = discounted_future_sum( |
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relative_log_probs, self.gamma, self.rollout) |
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if self.use_target_values: |
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last_values = shift_values( |
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target_values, self.gamma, self.rollout, |
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final_target_values) |
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else: |
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last_values = shift_values(value_estimates, self.gamma, self.rollout, |
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final_values) |
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future_values = ( |
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- self.tau * sum_log_probs |
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- self.eps_lambda * sum_relative_log_probs |
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+ sum_rewards + last_values) |
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baseline_values = value_estimates |
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adv = tf.stop_gradient(-baseline_values + future_values) |
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if self.clip_adv: |
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adv = tf.minimum(self.clip_adv, tf.maximum(-self.clip_adv, adv)) |
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policy_loss = -adv * sum_log_probs |
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critic_loss = -adv * (baseline_values - last_values) |
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policy_loss = tf.reduce_mean( |
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tf.reduce_sum(policy_loss * not_pad, 0)) |
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critic_loss = tf.reduce_mean( |
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tf.reduce_sum(critic_loss * not_pad, 0)) |
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loss = (self.policy_weight * policy_loss + |
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self.critic_weight * critic_loss) |
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raw_loss = tf.reduce_mean( |
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tf.reduce_sum(not_pad * adv * (-baseline_values + future_values), 0)) |
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gradient_ops = self.training_ops( |
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loss, learning_rate=self.learning_rate) |
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tf.summary.histogram('log_probs', tf.reduce_sum(log_probs, 0)) |
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tf.summary.histogram('rewards', tf.reduce_sum(rewards, 0)) |
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tf.summary.histogram('future_values', future_values) |
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tf.summary.histogram('baseline_values', baseline_values) |
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tf.summary.histogram('advantages', adv) |
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tf.summary.scalar('avg_rewards', |
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tf.reduce_mean(tf.reduce_sum(rewards, 0))) |
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tf.summary.scalar('policy_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('critic_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('loss', loss) |
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tf.summary.scalar('raw_loss', tf.reduce_mean(raw_loss)) |
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tf.summary.scalar('eps_lambda', self.eps_lambda) |
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return (loss, raw_loss, |
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future_values[self.rollout - 1:, :], |
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gradient_ops, tf.summary.merge_all()) |
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class TRPO(ActorCritic): |
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"""TRPO.""" |
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def get(self, rewards, pads, values, final_values, |
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log_probs, prev_log_probs, target_log_probs, |
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entropies, logits, |
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target_values, final_target_values): |
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not_pad = 1 - pads |
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batch_size = tf.shape(rewards)[1] |
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rewards = not_pad * rewards |
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value_estimates = not_pad * values |
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log_probs = not_pad * sum(log_probs) |
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prev_log_probs = not_pad * prev_log_probs |
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target_values = not_pad * tf.stop_gradient(target_values) |
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final_target_values = tf.stop_gradient(final_target_values) |
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sum_rewards = discounted_future_sum(rewards, self.gamma, self.rollout) |
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if self.use_target_values: |
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last_values = shift_values( |
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target_values, self.gamma, self.rollout, |
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final_target_values) |
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else: |
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last_values = shift_values(value_estimates, self.gamma, self.rollout, |
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final_values) |
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future_values = sum_rewards + last_values |
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baseline_values = value_estimates |
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adv = tf.stop_gradient(-baseline_values + future_values) |
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if self.clip_adv: |
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adv = tf.minimum(self.clip_adv, tf.maximum(-self.clip_adv, adv)) |
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policy_loss = -adv * tf.exp(log_probs - prev_log_probs) |
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critic_loss = -adv * baseline_values |
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policy_loss = tf.reduce_mean( |
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tf.reduce_sum(policy_loss * not_pad, 0)) |
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critic_loss = tf.reduce_mean( |
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tf.reduce_sum(critic_loss * not_pad, 0)) |
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raw_loss = policy_loss |
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if self.policy_weight == 0: |
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policy_loss = 0.0 |
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elif self.critic_weight == 0: |
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critic_loss = 0.0 |
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loss = (self.policy_weight * policy_loss + |
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self.critic_weight * critic_loss) |
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gradient_ops = self.training_ops( |
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loss, learning_rate=self.learning_rate) |
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tf.summary.histogram('log_probs', tf.reduce_sum(log_probs, 0)) |
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tf.summary.histogram('rewards', tf.reduce_sum(rewards, 0)) |
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tf.summary.scalar('avg_rewards', |
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tf.reduce_mean(tf.reduce_sum(rewards, 0))) |
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tf.summary.scalar('policy_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('critic_loss', |
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tf.reduce_mean(tf.reduce_sum(not_pad * policy_loss))) |
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tf.summary.scalar('loss', loss) |
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tf.summary.scalar('raw_loss', raw_loss) |
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return (loss, raw_loss, future_values, |
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gradient_ops, tf.summary.merge_all()) |
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