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DDPG Critic Head Bug Fix (#344)
* A bug fix for DDPG, where the update to the policy network was based on the sum of the critic's Q predictions on the batch instead of their mean
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@@ -23,7 +23,7 @@ import numpy as np
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from rl_coach.agents.actor_critic_agent import ActorCriticAgent
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from rl_coach.agents.agent import Agent
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from rl_coach.architectures.embedder_parameters import InputEmbedderParameters
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from rl_coach.architectures.head_parameters import DDPGActorHeadParameters, VHeadParameters
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from rl_coach.architectures.head_parameters import DDPGActorHeadParameters, DDPGVHeadParameters
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from rl_coach.architectures.middleware_parameters import FCMiddlewareParameters
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from rl_coach.base_parameters import NetworkParameters, AlgorithmParameters, \
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AgentParameters, EmbedderScheme
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@@ -39,8 +39,10 @@ class DDPGCriticNetworkParameters(NetworkParameters):
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self.input_embedders_parameters = {'observation': InputEmbedderParameters(batchnorm=True),
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'action': InputEmbedderParameters(scheme=EmbedderScheme.Shallow)}
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self.middleware_parameters = FCMiddlewareParameters()
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self.heads_parameters = [VHeadParameters()]
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self.heads_parameters = [DDPGVHeadParameters()]
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self.optimizer_type = 'Adam'
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self.adam_optimizer_beta2 = 0.999
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self.optimizer_epsilon = 1e-8
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self.batch_size = 64
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self.async_training = False
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self.learning_rate = 0.001
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@@ -56,6 +58,8 @@ class DDPGActorNetworkParameters(NetworkParameters):
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self.middleware_parameters = FCMiddlewareParameters(batchnorm=True)
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self.heads_parameters = [DDPGActorHeadParameters()]
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self.optimizer_type = 'Adam'
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self.adam_optimizer_beta2 = 0.999
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self.optimizer_epsilon = 1e-8
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self.batch_size = 64
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self.async_training = False
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self.learning_rate = 0.0001
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@@ -140,7 +144,7 @@ class DDPGAgent(ActorCriticAgent):
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critic_inputs = copy.copy(batch.next_states(critic_keys))
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critic_inputs['action'] = next_actions
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q_st_plus_1 = critic.target_network.predict(critic_inputs)
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q_st_plus_1 = critic.target_network.predict(critic_inputs)[0]
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# calculate the bootstrapped TD targets while discounting terminal states according to
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# use_non_zero_discount_for_terminal_states
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@@ -160,7 +164,7 @@ class DDPGAgent(ActorCriticAgent):
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critic_inputs = copy.copy(batch.states(critic_keys))
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critic_inputs['action'] = actions_mean
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action_gradients = critic.online_network.predict(critic_inputs,
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outputs=critic.online_network.gradients_wrt_inputs[0]['action'])
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outputs=critic.online_network.gradients_wrt_inputs[1]['action'])
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# train the critic
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critic_inputs = copy.copy(batch.states(critic_keys))
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@@ -57,6 +57,17 @@ class VHeadParameters(HeadParameters):
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self.initializer = initializer
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class DDPGVHeadParameters(HeadParameters):
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def __init__(self, activation_function: str ='relu', name: str='ddpg_v_head_params',
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num_output_head_copies: int = 1, rescale_gradient_from_head_by_factor: float = 1.0,
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loss_weight: float = 1.0, dense_layer=None, initializer='normalized_columns'):
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super().__init__(parameterized_class_name="DDPGVHead", activation_function=activation_function, name=name,
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dense_layer=dense_layer, num_output_head_copies=num_output_head_copies,
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rescale_gradient_from_head_by_factor=rescale_gradient_from_head_by_factor,
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loss_weight=loss_weight)
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self.initializer = initializer
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class CategoricalQHeadParameters(HeadParameters):
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def __init__(self, activation_function: str ='relu', name: str='categorical_q_head_params',
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num_output_head_copies: int = 1, rescale_gradient_from_head_by_factor: float = 1.0,
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@@ -16,6 +16,7 @@ from .sac_head import SACPolicyHead
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from .sac_q_head import SACQHead
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from .classification_head import ClassificationHead
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from .cil_head import RegressionHead
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from .ddpg_v_head import DDPGVHead
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__all__ = [
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'CategoricalQHead',
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@@ -35,5 +36,6 @@ __all__ = [
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'SACPolicyHead',
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'SACQHead',
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'ClassificationHead',
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'RegressionHead'
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'RegressionHead',
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'DDPGVHead'
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]
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@@ -0,0 +1,39 @@
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#
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# Copyright (c) 2017 Intel Corporation
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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#
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import tensorflow as tf
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from rl_coach.architectures.tensorflow_components.heads import VHead
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from rl_coach.architectures.tensorflow_components.layers import Dense
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from rl_coach.base_parameters import AgentParameters
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from rl_coach.spaces import SpacesDefinition
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class DDPGVHead(VHead):
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def __init__(self, agent_parameters: AgentParameters, spaces: SpacesDefinition, network_name: str,
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head_idx: int = 0, loss_weight: float = 1., is_local: bool = True, activation_function: str='relu',
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dense_layer=Dense, initializer='normalized_columns'):
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super().__init__(agent_parameters, spaces, network_name, head_idx, loss_weight, is_local, activation_function,
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dense_layer=dense_layer, initializer=initializer)
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def _build_module(self, input_layer):
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super()._build_module(input_layer)
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self.output = [self.output, tf.reduce_mean(self.output)]
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def __str__(self):
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result = [
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"Dense (num outputs = 1)"
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]
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return '\n'.join(result)
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