示例#1
0
    'yars_revenge', 'zaxxon'
]
atari_deterministic_v4 = {
    e: "{}".format(lower_under_to_upper(e) + 'Deterministic-v4')
    for e in gym_atari_envs
}
atari_no_frameskip_v4 = {
    e: "{}".format(lower_under_to_upper(e) + 'NoFrameskip-v4')
    for e in gym_atari_envs
}

# default atari schedule used in the DeepMind papers
atari_schedule = ScheduleParameters()
atari_schedule.improve_steps = EnvironmentSteps(50000000)
atari_schedule.steps_between_evaluation_periods = EnvironmentSteps(250000)
atari_schedule.evaluation_steps = EnvironmentSteps(135000)
atari_schedule.heatup_steps = EnvironmentSteps(1)


class MaxOverFramesAndFrameskipEnvWrapper(gym.Wrapper):
    def __init__(self, env, frameskip=4, max_over_num_frames=2):
        super().__init__(env)
        self.max_over_num_frames = max_over_num_frames
        self.observations_stack = []
        self.frameskip = frameskip
        self.first_frame_to_max_over = self.frameskip - self.max_over_num_frames

    def reset(self):
        return self.env.reset()

    def step(self, action):
示例#2
0
from rl_coach.filters.observation.observation_to_uint8_filter import ObservationToUInt8Filter
from rl_coach.filters.observation.observation_clipping_filter import ObservationClippingFilter

from rl_coach.graph_managers.basic_rl_graph_manager import BasicRLGraphManager
from rl_coach.graph_managers.graph_manager import ScheduleParameters
from rl_coach.schedules import LinearSchedule

from rl_coach.base_parameters import DistributedCoachSynchronizationType, EmbedderScheme
####################
# Graph Scheduling #
####################

schedule_params = ScheduleParameters()
schedule_params.improve_steps = TrainingSteps(10000000)
schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
schedule_params.evaluation_steps = EnvironmentEpisodes(5)
schedule_params.heatup_steps = EnvironmentSteps(0)

#########
# Agent #
#########
agent_params = ClippedPPOAgentParameters()
agent_params.network_wrappers['main'].input_embedders_parameters = {
    'STEREO_CAMERAS':
    InputEmbedderParameters(
        scheme=[Conv2d(32, 8, 4),
                Conv2d(32, 4, 2),
                Conv2d(64, 4, 2)],
        activation_function='relu',
        dropout_rate=0.3),
    'LIDAR':
def get_graph_manager(**hp_dict):
    ####################
    # All Default Parameters #
    ####################
    params = {}
    params["batch_size"] = int(hp_dict.get("batch_size", 64))
    params["num_epochs"] = int(hp_dict.get("num_epochs", 10))
    params["stack_size"] = int(hp_dict.get("stack_size", 1))
    params["lr"] = float(hp_dict.get("lr", 0.0003))
    params["exploration_type"] = (hp_dict.get("exploration_type",
                                              "huber")).lower()
    params["e_greedy_value"] = float(hp_dict.get("e_greedy_value", .05))
    params["epsilon_steps"] = int(hp_dict.get("epsilon_steps", 10000))
    params["beta_entropy"] = float(hp_dict.get("beta_entropy", .01))
    params["discount_factor"] = float(hp_dict.get("discount_factor", .999))
    params["loss_type"] = hp_dict.get("loss_type",
                                      "Mean squared error").lower()
    params["num_episodes_between_training"] = int(
        hp_dict.get("num_episodes_between_training", 20))
    params["term_cond_max_episodes"] = int(
        hp_dict.get("term_cond_max_episodes", 100000))
    params["term_cond_avg_score"] = float(
        hp_dict.get("term_cond_avg_score", 100000))

    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(
        params["term_cond_max_episodes"])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    agent_params = ClippedPPOAgentParameters()

    agent_params.network_wrappers['main'].learning_rate = params["lr"]
    agent_params.network_wrappers['main'].input_embedders_parameters[
        'observation'].activation_function = 'relu'
    agent_params.network_wrappers[
        'main'].middleware_parameters.activation_function = 'relu'
    agent_params.network_wrappers['main'].batch_size = params["batch_size"]
    agent_params.network_wrappers['main'].optimizer_epsilon = 1e-5
    agent_params.network_wrappers['main'].adam_optimizer_beta2 = 0.999

    if params["loss_type"] == "huber":
        agent_params.network_wrappers[
            'main'].replace_mse_with_huber_loss = True

    agent_params.algorithm.clip_likelihood_ratio_using_epsilon = 0.2
    agent_params.algorithm.clipping_decay_schedule = LinearSchedule(
        1.0, 0, 1000000)
    agent_params.algorithm.beta_entropy = params["beta_entropy"]
    agent_params.algorithm.gae_lambda = 0.95
    agent_params.algorithm.discount = params["discount_factor"]
    agent_params.algorithm.optimization_epochs = params["num_epochs"]
    agent_params.algorithm.estimate_state_value_using_gae = True
    agent_params.algorithm.num_steps_between_copying_online_weights_to_target = EnvironmentEpisodes(
        params["num_episodes_between_training"])
    agent_params.algorithm.num_consecutive_playing_steps = EnvironmentEpisodes(
        params["num_episodes_between_training"])

    agent_params.algorithm.distributed_coach_synchronization_type = DistributedCoachSynchronizationType.SYNC

    if params["exploration_type"] == "categorical":
        agent_params.exploration = CategoricalParameters()
    else:
        agent_params.exploration = EGreedyParameters()
        agent_params.exploration.epsilon_schedule = LinearSchedule(
            1.0, params["e_greedy_value"], params["epsilon_steps"])

    ###############
    # Environment #
    ###############
    SilverstoneInputFilter = InputFilter(is_a_reference_filter=True)
    SilverstoneInputFilter.add_observation_filter('observation',
                                                  'to_grayscale',
                                                  ObservationRGBToYFilter())
    SilverstoneInputFilter.add_observation_filter(
        'observation', 'to_uint8', ObservationToUInt8Filter(0, 255))
    SilverstoneInputFilter.add_observation_filter(
        'observation', 'stacking',
        ObservationStackingFilter(params["stack_size"]))

    env_params = GymVectorEnvironment()
    env_params.default_input_filter = SilverstoneInputFilter
    env_params.level = 'SilverstoneRacetrack-Discrete-v0'

    vis_params = VisualizationParameters()
    vis_params.dump_mp4 = False

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 1000

    graph_manager = BasicRLGraphManager(
        agent_params=agent_params,
        env_params=env_params,
        schedule_params=schedule_params,
        vis_params=vis_params,
        preset_validation_params=preset_validation_params)
    return graph_manager, params_json
示例#4
0
from rl_coach.agents.rainbow_dqn_agent import RainbowDQNAgentParameters
from rl_coach.base_parameters import VisualizationParameters, PresetValidationParameters
from rl_coach.core_types import EnvironmentSteps, RunPhase
from rl_coach.environments.environment import MaxDumpMethod, SelectedPhaseOnlyDumpMethod, SingleLevelSelection
from rl_coach.environments.gym_environment import Atari, atari_deterministic_v4
from rl_coach.graph_managers.basic_rl_graph_manager import BasicRLGraphManager
from rl_coach.graph_managers.graph_manager import ScheduleParameters
from rl_coach.schedules import LinearSchedule

####################
# Graph Scheduling #
####################
schedule_params = ScheduleParameters()
schedule_params.improve_steps = EnvironmentSteps(50000000)
schedule_params.steps_between_evaluation_periods = EnvironmentSteps(1000000)
schedule_params.evaluation_steps = EnvironmentSteps(125000)
schedule_params.heatup_steps = EnvironmentSteps(20000)

#########
# Agent #
#########
agent_params = RainbowDQNAgentParameters()

agent_params.network_wrappers['main'].learning_rate = 0.0000625
agent_params.network_wrappers['main'].optimizer_epsilon = 1.5e-4
agent_params.algorithm.num_steps_between_copying_online_weights_to_target = EnvironmentSteps(
    32000 // 4)  # 32k frames
agent_params.memory.beta = LinearSchedule(
    0.4, 1, 12500000)  # 12.5M training iterations = 50M steps = 200M frames
agent_params.memory.alpha = 0.5
from rl_coach.base_parameters import VisualizationParameters, PresetValidationParameters, DistributedCoachSynchronizationType
from rl_coach.core_types import TrainingSteps, EnvironmentEpisodes, EnvironmentSteps, RunPhase
from rl_coach.environments.gym_environment import GymVectorEnvironment, mujoco_v2
from rl_coach.exploration_policies.e_greedy import EGreedyParameters
from rl_coach.graph_managers.basic_rl_graph_manager import BasicRLGraphManager
from rl_coach.graph_managers.graph_manager import ScheduleParameters
from rl_coach.schedules import LinearSchedule

####################
# Graph Scheduling #
####################

schedule_params = ScheduleParameters()
schedule_params.improve_steps = TrainingSteps(int(5e5))
schedule_params.steps_between_evaluation_periods = EnvironmentSteps(50000)
schedule_params.evaluation_steps = EnvironmentEpisodes(5)
schedule_params.heatup_steps = EnvironmentSteps(150000)

#########
# Agent #
#########
agent_params = ClippedPPOAgentParameters()

agent_params.network_wrappers['main'].learning_rate = 0.0003
agent_params.network_wrappers['main'].input_embedders_parameters['observation'].activation_function = 'tanh'
agent_params.network_wrappers['main'].input_embedders_parameters['observation'].scheme = [Dense(64)]
agent_params.network_wrappers['main'].middleware_parameters.scheme = [Dense(64)]
agent_params.network_wrappers['main'].middleware_parameters.activation_function = 'tanh'
agent_params.network_wrappers['main'].batch_size = 64
agent_params.network_wrappers['main'].optimizer_epsilon = 1e-5
agent_params.network_wrappers['main'].adam_optimizer_beta2 = 0.999
def get_graph_manager(hp_dict,
                      agent_list,
                      run_phase_subject,
                      enable_domain_randomization=False,
                      done_condition=any):
    ####################
    # All Default Parameters #
    ####################
    params = {}
    params["batch_size"] = int(hp_dict.get("batch_size", 64))
    params["num_epochs"] = int(hp_dict.get("num_epochs", 10))
    params["stack_size"] = int(hp_dict.get("stack_size", 1))
    params["lr"] = float(hp_dict.get("lr", 0.0003))
    params["exploration_type"] = (hp_dict.get("exploration_type",
                                              "categorical")).lower()
    params["e_greedy_value"] = float(hp_dict.get("e_greedy_value", .05))
    params["epsilon_steps"] = int(hp_dict.get("epsilon_steps", 10000))
    params["beta_entropy"] = float(hp_dict.get("beta_entropy", .01))
    params["discount_factor"] = float(hp_dict.get("discount_factor", .999))
    params["loss_type"] = hp_dict.get("loss_type",
                                      "Mean squared error").lower()
    params["num_episodes_between_training"] = int(
        hp_dict.get("num_episodes_between_training", 20))
    params["term_cond_max_episodes"] = int(
        hp_dict.get("term_cond_max_episodes", 100000))
    params["term_cond_avg_score"] = float(
        hp_dict.get("term_cond_avg_score", 100000))

    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(
        params["term_cond_max_episodes"])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    trainable_agents_list = list()
    non_trainable_agents_list = list()

    for agent in agent_list:
        agent_params = DeepRacerAgentParams()
        if agent.network_settings:
            agent_params.env_agent = agent
            agent_params.network_wrappers['main'].learning_rate = params["lr"]

            agent_params.network_wrappers['main'].input_embedders_parameters = \
                create_input_embedder(agent.network_settings['input_embedders'],
                                      agent.network_settings['embedder_type'],
                                      agent.network_settings['activation_function'])
            agent_params.network_wrappers['main'].middleware_parameters = \
                create_middle_embedder(agent.network_settings['middleware_embedders'],
                                       agent.network_settings['embedder_type'],
                                       agent.network_settings['activation_function'])

            input_filter = InputFilter(is_a_reference_filter=True)
            for observation in agent.network_settings['input_embedders'].keys(
            ):
                if observation == Input.LEFT_CAMERA.value or observation == Input.CAMERA.value or\
                observation == Input.OBSERVATION.value:
                    input_filter.add_observation_filter(
                        observation, 'to_grayscale', ObservationRGBToYFilter())
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))
                    input_filter.add_observation_filter(
                        observation, 'stacking', ObservationStackingFilter(1))

                if observation == Input.STEREO.value:
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))

                if observation == Input.LIDAR.value:
                    input_filter.add_observation_filter(
                        observation, 'clipping',
                        ObservationClippingFilter(0.15, 1.0))
                if observation == Input.SECTOR_LIDAR.value:
                    input_filter.add_observation_filter(
                        observation, 'binary', ObservationBinarySectorFilter())
            agent_params.input_filter = input_filter()

            agent_params.network_wrappers['main'].batch_size = params[
                "batch_size"]
            agent_params.network_wrappers['main'].optimizer_epsilon = 1e-5
            agent_params.network_wrappers['main'].adam_optimizer_beta2 = 0.999

            if params["loss_type"] == "huber":
                agent_params.network_wrappers[
                    'main'].replace_mse_with_huber_loss = True

            agent_params.algorithm.clip_likelihood_ratio_using_epsilon = 0.2
            agent_params.algorithm.clipping_decay_schedule = LinearSchedule(
                1.0, 0, 1000000)
            agent_params.algorithm.beta_entropy = params["beta_entropy"]
            agent_params.algorithm.gae_lambda = 0.95
            agent_params.algorithm.discount = params["discount_factor"]
            agent_params.algorithm.optimization_epochs = params["num_epochs"]
            agent_params.algorithm.estimate_state_value_using_gae = True
            agent_params.algorithm.num_steps_between_copying_online_weights_to_target = \
                EnvironmentEpisodes(params["num_episodes_between_training"])
            agent_params.algorithm.num_consecutive_playing_steps = \
                EnvironmentEpisodes(params["num_episodes_between_training"])

            agent_params.algorithm.distributed_coach_synchronization_type = \
                DistributedCoachSynchronizationType.SYNC

            if params["exploration_type"] == "categorical":
                agent_params.exploration = CategoricalParameters()
            else:
                agent_params.exploration = EGreedyParameters()
                agent_params.exploration.epsilon_schedule = LinearSchedule(
                    1.0, params["e_greedy_value"], params["epsilon_steps"])

            trainable_agents_list.append(agent_params)
        else:
            non_trainable_agents_list.append(agent)

    ###############
    # Environment #
    ###############
    env_params = DeepRacerRacetrackEnvParameters()
    env_params.agents_params = trainable_agents_list
    env_params.non_trainable_agents = non_trainable_agents_list
    env_params.level = 'DeepRacerRacetrackEnv-v0'
    env_params.run_phase_subject = run_phase_subject
    env_params.enable_domain_randomization = enable_domain_randomization
    env_params.done_condition = done_condition
    vis_params = VisualizationParameters()
    vis_params.dump_mp4 = False

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 10000

    graph_manager = MultiAgentGraphManager(
        agents_params=trainable_agents_list,
        env_params=env_params,
        schedule_params=schedule_params,
        vis_params=vis_params,
        preset_validation_params=preset_validation_params,
        done_condition=done_condition)
    return graph_manager, params_json
示例#7
0
###############
env_params = GymVectorEnvironment(level='coinche-v1')

####################
# Graph Scheduling #
####################
num_round_improve_steps = 100
num_round_heatup = 50
num_round_training = 50000
num_round_evaluation = 500

schedule_params = ScheduleParameters()
schedule_params.improve_steps = EnvironmentEpisodes(num_round_improve_steps)
schedule_params.heatup_steps = EnvironmentEpisodes(num_round_heatup)
schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(num_round_training)
schedule_params.evaluation_steps = EnvironmentEpisodes(num_round_evaluation)


# Politique d'exploration
agent_params.exploration.noise_schedule = LinearSchedule(1, 0.001, 50000)
# agent_params.exploration.noise_schedule = PieceWiseSchedule([(LinearSchedule(1, 0.01, 300), 300),
#                                                              (LinearSchedule(0.1, 0.005, 6000), 6000)])
# agent_params.exploration.noise_schedule = ExponentialSchedule(1, 0.05, 0.99)
print(agent_params.exploration)
print(agent_params.exploration.noise_schedule)

########################
# Create Graph Manager #
########################
# BasicRLGraphManager, créé un uniquement LevelManager entre l'Agent et l'Environnement
graph_manager = BasicRLGraphManager(agent_params=agent_params,
from rl_coach.agents.ddqn_bcq_agent import DDQNBCQAgentParameters

from rl_coach.agents.ddqn_bcq_agent import KNNParameters,NNImitationModelParameters

DATASET_SIZE = 100000


####################
# Graph Scheduling #
####################

schedule_params = ScheduleParameters()
# schedule_params.improve_steps = TrainingSteps(10000000000)
schedule_params.improve_steps = TrainingSteps(400)      # 400 epochs
schedule_params.steps_between_evaluation_periods = TrainingSteps(1)
schedule_params.evaluation_steps = EnvironmentEpisodes(10)
schedule_params.heatup_steps = EnvironmentSteps(DATASET_SIZE)

#########
# Agent #
#########

agent_params = DDQNBCQAgentParameters()
agent_params.network_wrappers['main'].batch_size = 128
# TODO cross-DL framework abstraction for a constant initializer?
agent_params.network_wrappers['main'].heads_parameters = [QHeadParameters(output_bias_initializer=tf.constant_initializer(-100))]

agent_params.algorithm.num_steps_between_copying_online_weights_to_target = TrainingSteps(100)
# agent_params.algorithm.num_steps_between_copying_online_weights_to_target = TrainingSteps(500)
agent_params.algorithm.discount = 0.99
示例#9
0
from rl_coach.exploration_policies.truncated_normal import TruncatedNormalParameters
from rl_coach.schedules import ConstantSchedule, PieceWiseSchedule, ExponentialSchedule
from rl_coach.memories.memory import MemoryGranularity
from rl_coach.base_parameters import EmbedderScheme
from rl_coach.architectures.tensorflow_components.layers import Dense
from rl_coach.filters.filter import InputFilter, OutputFilter

steps_per_episode = 13

####################
# Block Scheduling #
####################
schedule_params = ScheduleParameters()
schedule_params.improve_steps = EnvironmentEpisodes(400)
schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(3) #3)  # Neta: (1000)
schedule_params.evaluation_steps = EnvironmentEpisodes(1) #1)  # Neta: 0
schedule_params.heatup_steps = EnvironmentEpisodes(100) #120*steps_per_episode) # Neta (2)

#####################
# DDPG Agent Params #
#####################
agent_params = DDPGAgentParameters()
agent_params.network_wrappers['actor'].input_embedders_parameters['observation'].scheme = [Dense(300)]
agent_params.network_wrappers['actor'].middleware_parameters.scheme = [Dense(300)]
agent_params.network_wrappers['critic'].input_embedders_parameters['observation'].scheme = [Dense(300)]
agent_params.network_wrappers['critic'].middleware_parameters.scheme = [Dense(300)]
agent_params.network_wrappers['critic'].input_embedders_parameters['action'].scheme = EmbedderScheme.Empty
agent_params.network_wrappers['actor'].heads_parameters[0].activation_function = 'sigmoid'
# agent_params.network_wrappers['critic'].clip_gradients = 100
# agent_params.network_wrappers['actor'].clip_gradients = 100
def get_graph_manager(**hp_dict):
    ####################
    # All Default Parameters #
    ####################
    params = {}
    params["batch_size"] = int(hp_dict.get("batch_size", 64))
    params["num_epochs"] = int(hp_dict.get("num_epochs", 10))
    params["stack_size"] = int(hp_dict.get("stack_size", 1))
    params["lr"] = float(hp_dict.get("lr", 0.0003))
    params["exploration_type"] = (hp_dict.get("exploration_type", "huber")).lower()
    params["e_greedy_value"] = float(hp_dict.get("e_greedy_value", .05))
    params["epsilon_steps"] = int(hp_dict.get("epsilon_steps", 10000))
    params["beta_entropy"] = float(hp_dict.get("beta_entropy", .01))
    params["discount_factor"] = float(hp_dict.get("discount_factor", .999))
    params["loss_type"] = hp_dict.get("loss_type", "Mean squared error").lower()
    params["num_episodes_between_training"] = int(hp_dict.get("num_episodes_between_training", 20))
    params["term_cond_max_episodes"] = int(hp_dict.get("term_cond_max_episodes", 100000))
    params["term_cond_avg_score"] = float(hp_dict.get("term_cond_avg_score", 100000))

    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(params["term_cond_max_episodes"])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    agent_params = ClippedPPOAgentParameters()

    agent_params.network_wrappers['main'].learning_rate = params["lr"]
    agent_params.network_wrappers['main'].input_embedders_parameters['observation'].activation_function = 'relu'
    agent_params.network_wrappers['main'].middleware_parameters.activation_function = 'relu'
    agent_params.network_wrappers['main'].batch_size = params["batch_size"]
    agent_params.network_wrappers['main'].optimizer_epsilon = 1e-5
    agent_params.network_wrappers['main'].adam_optimizer_beta2 = 0.999

    if params["loss_type"] == "huber":
        agent_params.network_wrappers['main'].replace_mse_with_huber_loss = True

    agent_params.algorithm.clip_likelihood_ratio_using_epsilon = 0.2
    agent_params.algorithm.clipping_decay_schedule = LinearSchedule(1.0, 0, 1000000)
    agent_params.algorithm.beta_entropy = params["beta_entropy"]
    agent_params.algorithm.gae_lambda = 0.95
    agent_params.algorithm.discount = params["discount_factor"]
    agent_params.algorithm.optimization_epochs = params["num_epochs"]
    agent_params.algorithm.estimate_state_value_using_gae = True
    agent_params.algorithm.num_steps_between_copying_online_weights_to_target = EnvironmentEpisodes(
        params["num_episodes_between_training"])
    agent_params.algorithm.num_consecutive_playing_steps = EnvironmentEpisodes(params["num_episodes_between_training"])

    agent_params.algorithm.distributed_coach_synchronization_type = DistributedCoachSynchronizationType.SYNC

    if params["exploration_type"] == "categorical":
        agent_params.exploration = CategoricalParameters()
    else:
        agent_params.exploration = EGreedyParameters()
        agent_params.exploration.epsilon_schedule = LinearSchedule(1.0,
                                                                   params["e_greedy_value"],
                                                                   params["epsilon_steps"])

    ###############
    # Environment #
    ###############
    SilverstoneInputFilter = InputFilter(is_a_reference_filter=True)
    SilverstoneInputFilter.add_observation_filter('observation', 'to_grayscale', ObservationRGBToYFilter())
    SilverstoneInputFilter.add_observation_filter('observation', 'to_uint8', ObservationToUInt8Filter(0, 255))
    SilverstoneInputFilter.add_observation_filter('observation', 'stacking',
                                                  ObservationStackingFilter(params["stack_size"]))

    env_params = GymVectorEnvironment()
    env_params.default_input_filter = SilverstoneInputFilter
    env_params.level = 'SilverstoneRacetrack-Discrete-v0'

    vis_params = VisualizationParameters()
    vis_params.dump_mp4 = False

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 1000

    graph_manager = BasicRLGraphManager(agent_params=agent_params, env_params=env_params,
                                        schedule_params=schedule_params, vis_params=vis_params,
                                        preset_validation_params=preset_validation_params)
    return graph_manager, params_json
示例#11
0
def get_graph_manager(**hp_dict):
    ####################
    # All Default Parameters #
    ####################
    params = {}
    params["batch_size"] = int(hp_dict.get("batch_size", 64))
    params["num_epochs"] = int(hp_dict.get("num_epochs", 10))
    params["stack_size"] = int(hp_dict.get("stack_size", 1))
    params["lr"] = float(hp_dict.get("lr", 0.0003))
    params["lr_decay_rate"] = float(hp_dict.get("lr_decay_rate", 0))
    params["lr_decay_steps"] = float(hp_dict.get("lr_decay_steps", 0))
    params["exploration_type"] = (hp_dict.get("exploration_type", "categorical")).lower()
    params["e_greedy_value"] = float(hp_dict.get("e_greedy_value", .05))
    params["epsilon_steps"] = int(hp_dict.get("epsilon_steps", 10000))
    params["beta_entropy"] = float(hp_dict.get("beta_entropy", .01))
    params["discount_factor"] = float(hp_dict.get("discount_factor", .999))
    params["loss_type"] = hp_dict.get("loss_type", "Mean squared error").lower()
    params["num_episodes_between_training"] = int(hp_dict.get("num_episodes_between_training", 20))
    params["term_cond_max_episodes"] = int(hp_dict.get("term_cond_max_episodes", 100000))
    params["term_cond_avg_score"] = float(hp_dict.get("term_cond_avg_score", 100000))
    params["tensorboard"] = hp_dict.get("tensorboard", False)
    params["dump_mp4"] = hp_dict.get("dump_mp4", False)
    params["dump_gifs"] = hp_dict.get("dump_gifs", False)

    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(params["term_cond_max_episodes"])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    agent_params = ClippedPPOAgentParameters()

    agent_params.network_wrappers['main'].learning_rate = params["lr"]
    agent_params.network_wrappers['main'].learning_rate_decay_rate = params["lr_decay_rate"]
    agent_params.network_wrappers['main'].learning_rate_decay_steps = params["lr_decay_steps"]
    agent_params.network_wrappers['main'].input_embedders_parameters['observation'].activation_function = 'relu'
    # Replace the default CNN with single layer Conv2d(32, 3, 1)
#   agent_params.network_wrappers['main'].input_embedders_parameters['observation'].scheme = EmbedderScheme.Shallow

#   agent_params.network_wrappers['main'].input_embedders_parameters['observation'].dropout_rate = 0.3
    agent_params.network_wrappers['main'].middleware_parameters.activation_function = 'relu'
#   agent_params.network_wrappers['main'].middleware_parameters.scheme = MiddlewareScheme.Shallow
#   agent_params.network_wrappers['main'].middleware_parameters.dropout_rate = 0.3
    agent_params.network_wrappers['main'].batch_size = params["batch_size"]
    agent_params.network_wrappers['main'].optimizer_epsilon = 1e-5
    agent_params.network_wrappers['main'].adam_optimizer_beta2 = 0.999
#   agent_params.network_wrappers['main'].l2_regularization = 2e-5

    if params["loss_type"] == "huber":
        agent_params.network_wrappers['main'].replace_mse_with_huber_loss = True

    agent_params.algorithm.clip_likelihood_ratio_using_epsilon = 0.2
    agent_params.algorithm.clipping_decay_schedule = LinearSchedule(1.0, 0, 1000000)
    agent_params.algorithm.beta_entropy = params["beta_entropy"]
    agent_params.algorithm.gae_lambda = 0.95
    agent_params.algorithm.discount = params["discount_factor"]
    agent_params.algorithm.optimization_epochs = params["num_epochs"]
    agent_params.algorithm.estimate_state_value_using_gae = True
    agent_params.algorithm.num_steps_between_copying_online_weights_to_target = EnvironmentEpisodes(
        params["num_episodes_between_training"])
    agent_params.algorithm.num_consecutive_playing_steps = EnvironmentEpisodes(params["num_episodes_between_training"])

    agent_params.algorithm.distributed_coach_synchronization_type = DistributedCoachSynchronizationType.SYNC

    if params["exploration_type"] == "categorical":
        agent_params.exploration = CategoricalParameters()
    else:
        agent_params.exploration = EGreedyParameters()
        agent_params.exploration.epsilon_schedule = LinearSchedule(1.0,
                                                                   params["e_greedy_value"],
                                                                   params["epsilon_steps"])

    ###############
    # Environment #
    ###############
    DeepRacerInputFilter = InputFilter(is_a_reference_filter=True)
    # Add an observation image pertubation for many aspects
#   DeepRacerInputFilter.add_observation_filter('observation', 'perturb_color', ObservationColorPerturbation(0.2))
    # Rescale to much smaller input when using shallow networks to avoid OOM
#   DeepRacerInputFilter.add_observation_filter('observation', 'rescaling',
#                                           ObservationRescaleToSizeFilter(ImageObservationSpace(np.array([84, 84, 3]),
#                                                                                            high=255)))
    DeepRacerInputFilter.add_observation_filter('observation', 'to_grayscale', ObservationRGBToYFilter())
    DeepRacerInputFilter.add_observation_filter('observation', 'to_uint8', ObservationToUInt8Filter(0, 255))
    DeepRacerInputFilter.add_observation_filter('observation', 'stacking',
                                                  ObservationStackingFilter(params["stack_size"]))

    env_params = GymVectorEnvironment()
    env_params.default_input_filter = DeepRacerInputFilter
    env_params.level = 'DeepRacerRacetrackCustomActionSpaceEnv-v0'

    vis_params = VisualizationParameters()
    vis_params.tensorboard = params["tensorboard"]
    vis_params.dump_mp4 = params["dump_mp4"]
    vis_params.dump_gifs = params["dump_gifs"]
    # AlwaysDumpFilter, MaxDumpFilter, EveryNEpisodesDumpFilter, SelectedPhaseOnlyDumpFilter
    vis_params.video_dump_filters = [AlwaysDumpFilter()]

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 10000

    graph_manager = BasicRLGraphManager(agent_params=agent_params, env_params=env_params,
                                        schedule_params=schedule_params, vis_params=vis_params,
                                        preset_validation_params=preset_validation_params)
    return graph_manager, params_json
import os
from rl_coach.base_parameters import TaskParameters
from rl_coach.core_types import EnvironmentSteps
from rl_coach.graph_managers.basic_rl_graph_manager import BasicRLGraphManager
from rl_coach.graph_managers.graph_manager import ScheduleParameters
from rl_coach.agents.ddqn_agent import DDQNAgentParameters
from rl_coach.environments.gym_environment import GymVectorEnvironment
from rl_coach.schedules import LinearSchedule

####################
# Graph Scheduling #
####################
schedule = ScheduleParameters()
schedule.improve_steps = EnvironmentSteps(2000)
schedule.steps_between_evaluation_periods = EnvironmentSteps(1000)
schedule.evaluation_steps = EnvironmentSteps(1000)
schedule.heatup_steps = EnvironmentSteps(0)

#########
# Agent #
#########
agent_params = DDQNAgentParameters()
agent_params.network_wrappers['main'].learning_rate = 0.025
agent_params.exploration.epsilon_schedule = LinearSchedule(1, 0, 500)

###############
# Environment #
###############

level = 'gym_dynamic_multi_armed_bandit.envs:BasicEnv2'
env_params = GymVectorEnvironment(level)
示例#13
0
def train_using_experience_agent(env_params, n_epochs, dataset_size):
    tf.reset_default_graph(
    )  # just to clean things up; only needed for the tutorial

    # Experience Generating Agent parameters
    experience_generating_agent_params = DDQNAgentParameters()
    # schedule parameters
    experience_generating_schedule_params = ScheduleParameters()
    experience_generating_schedule_params.heatup_steps = EnvironmentSteps(1000)
    experience_generating_schedule_params.improve_steps = TrainingSteps(
        dataset_size -
        experience_generating_schedule_params.heatup_steps.num_steps)
    experience_generating_schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(
        10)
    experience_generating_schedule_params.evaluation_steps = EnvironmentEpisodes(
        1)

    # DQN params
    experience_generating_agent_params.algorithm.num_steps_between_copying_online_weights_to_target = EnvironmentSteps(
        100)
    experience_generating_agent_params.algorithm.discount = 0.99
    experience_generating_agent_params.algorithm.num_consecutive_playing_steps = EnvironmentSteps(
        1)

    # NN configuration
    experience_generating_agent_params.network_wrappers[
        'main'].learning_rate = 0.0001
    experience_generating_agent_params.network_wrappers[
        'main'].batch_size = 128
    experience_generating_agent_params.network_wrappers[
        'main'].replace_mse_with_huber_loss = False
    experience_generating_agent_params.network_wrappers['main'].heads_parameters = \
        [QHeadParameters(output_bias_initializer=tf.constant_initializer(-100))]
    # experience_generating_agent_params.network_wrappers['main'].heads_parameters = \
    #     [QHeadParameters(output_bias_initializer=tf.constant_initializer(0))]

    # ER size
    experience_generating_agent_params.memory = EpisodicExperienceReplayParameters(
    )
    experience_generating_agent_params.memory.max_size = \
        (MemoryGranularity.Transitions,
         experience_generating_schedule_params.heatup_steps.num_steps +
         experience_generating_schedule_params.improve_steps.num_steps)

    # E-Greedy schedule
    experience_generating_agent_params.exploration.epsilon_schedule = LinearSchedule(
        1.0, 0.01, DATASET_SIZE)
    experience_generating_agent_params.exploration.evaluation_epsilon = 0

    schedule_params = set_schedule_params(n_epochs, dataset_size)
    # set the agent params as before
    # agent_params = set_agent_params(DDQNAgentParameters)
    agent_params = set_agent_params(DDQNBCQAgentParameters)
    agent_params.algorithm.action_drop_method_parameters = NNImitationModelParameters(
    )

    # 50 epochs of training (the entire dataset is used each epoch)
    # schedule_params.improve_steps = TrainingSteps(50)

    graph_manager = BatchRLGraphManager(
        agent_params=agent_params,
        experience_generating_agent_params=experience_generating_agent_params,
        experience_generating_schedule_params=
        experience_generating_schedule_params,
        env_params=env_params,
        schedule_params=schedule_params,
        vis_params=VisualizationParameters(
            dump_signals_to_csv_every_x_episodes=1),
        reward_model_num_epochs=30,
        train_to_eval_ratio=0.5)
    graph_manager.create_graph(task_parameters)
    graph_manager.improve()
    return
示例#14
0
def get_graph_manager(hp_dict,
                      agent_list,
                      run_phase_subject,
                      enable_domain_randomization=False,
                      done_condition=any,
                      run_type=str(RunType.ROLLOUT_WORKER),
                      pause_physics=None,
                      unpause_physics=None):
    ####################
    # Hyperparameters #
    ####################
    training_algorithm = agent_list[
        0].ctrl.model_metadata.training_algorithm if agent_list else None
    params = get_updated_hyper_parameters(hp_dict, training_algorithm)
    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(
        params[HyperParameterKeys.TERMINATION_CONDITION_MAX_EPISODES.value])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    trainable_agents_list = list()
    non_trainable_agents_list = list()

    for agent in agent_list:
        if agent.network_settings:
            if TrainingAlgorithm.SAC.value == training_algorithm:
                agent_params = get_sac_params(DeepRacerSACAgentParams(), agent,
                                              params, run_type)
            else:
                agent_params = get_clipped_ppo_params(
                    DeepRacerClippedPPOAgentParams(), agent, params)
            agent_params.env_agent = agent
            input_filter = InputFilter(is_a_reference_filter=True)
            for observation in agent.network_settings['input_embedders'].keys(
            ):
                if observation == Input.LEFT_CAMERA.value or observation == Input.CAMERA.value or\
                observation == Input.OBSERVATION.value:
                    input_filter.add_observation_filter(
                        observation, 'to_grayscale', ObservationRGBToYFilter())
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))
                    input_filter.add_observation_filter(
                        observation, 'stacking', ObservationStackingFilter(1))

                if observation == Input.STEREO.value:
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))

                if observation == Input.LIDAR.value:
                    input_filter.add_observation_filter(
                        observation, 'clipping',
                        ObservationClippingFilter(0.15, 1.0))
                if observation == Input.SECTOR_LIDAR.value:
                    input_filter.add_observation_filter(
                        observation, 'binary', ObservationBinarySectorFilter())
            agent_params.input_filter = input_filter()
            trainable_agents_list.append(agent_params)
        else:
            non_trainable_agents_list.append(agent)

    ###############
    # Environment #
    ###############
    env_params = DeepRacerRacetrackEnvParameters()
    env_params.agents_params = trainable_agents_list
    env_params.non_trainable_agents = non_trainable_agents_list
    env_params.level = 'DeepRacerRacetrackEnv-v0'
    env_params.run_phase_subject = run_phase_subject
    env_params.enable_domain_randomization = enable_domain_randomization
    env_params.done_condition = done_condition
    env_params.pause_physics = pause_physics
    env_params.unpause_physics = unpause_physics
    vis_params = VisualizationParameters()
    vis_params.dump_mp4 = False

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 10000

    graph_manager = MultiAgentGraphManager(
        agents_params=trainable_agents_list,
        env_params=env_params,
        schedule_params=schedule_params,
        vis_params=vis_params,
        preset_validation_params=preset_validation_params,
        done_condition=done_condition)
    return graph_manager, params_json
示例#15
0
def get_graph_manager(hp_dict,
                      agent_list,
                      run_phase_subject,
                      enable_domain_randomization=False,
                      done_condition=any,
                      run_type=str(RunType.ROLLOUT_WORKER),
                      pause_physics=None,
                      unpause_physics=None):
    ####################
    # Hyperparameters #
    ####################
    # Note: The following three line hard-coded to pick the first agent's trainig algorithm
    # and dump the hyper parameters for the particular training algorithm into json
    # for training jobs (so that the console display the training hyperparameters correctly)
    # since right now, we only support training one model at a time.
    # TODO: clean these lines up when we support multi-agent training.
    training_algorithm = agent_list[
        0].ctrl.model_metadata.training_algorithm if agent_list else None
    params = get_updated_hyper_parameters(hp_dict, training_algorithm)
    params_json = json.dumps(params, indent=2, sort_keys=True)
    print("Using the following hyper-parameters", params_json, sep='\n')

    ####################
    # Graph Scheduling #
    ####################
    schedule_params = ScheduleParameters()
    schedule_params.improve_steps = TrainingSteps(
        params[HyperParameterKeys.TERMINATION_CONDITION_MAX_EPISODES.value])
    schedule_params.steps_between_evaluation_periods = EnvironmentEpisodes(40)
    schedule_params.evaluation_steps = EnvironmentEpisodes(5)
    schedule_params.heatup_steps = EnvironmentSteps(0)

    #########
    # Agent #
    #########
    trainable_agents_list = list()
    non_trainable_agents_list = list()

    for agent in agent_list:
        if agent.network_settings:
            training_algorithm = agent.ctrl.model_metadata.training_algorithm
            params = get_updated_hyper_parameters(hp_dict, training_algorithm)
            if TrainingAlgorithm.SAC.value == training_algorithm:
                agent_params = get_sac_params(DeepRacerSACAgentParams(), agent,
                                              params, run_type)
            else:
                agent_params = get_clipped_ppo_params(
                    DeepRacerClippedPPOAgentParams(), agent, params)
            agent_params.env_agent = agent
            input_filter = InputFilter(is_a_reference_filter=True)
            for observation in agent.network_settings['input_embedders'].keys(
            ):
                if observation == Input.LEFT_CAMERA.value or observation == Input.CAMERA.value or \
                        observation == Input.OBSERVATION.value:
                    input_filter.add_observation_filter(
                        observation, 'to_grayscale', ObservationRGBToYFilter())
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))
                    input_filter.add_observation_filter(
                        observation, 'stacking', ObservationStackingFilter(1))

                if observation == Input.STEREO.value:
                    input_filter.add_observation_filter(
                        observation, 'to_uint8',
                        ObservationToUInt8Filter(0, 255))

                if observation == Input.LIDAR.value:
                    input_filter.add_observation_filter(
                        observation, 'clipping',
                        ObservationClippingFilter(0.15, 1.0))
                if observation == Input.SECTOR_LIDAR.value:
                    sector_binary_filter = ObservationSectorDiscretizeFilter(
                        num_sectors=NUMBER_OF_LIDAR_SECTORS,
                        num_values_per_sector=1,
                        clipping_dist=SECTOR_LIDAR_CLIPPING_DIST)
                    input_filter.add_observation_filter(
                        observation, 'binary', sector_binary_filter)
                if observation == Input.DISCRETIZED_SECTOR_LIDAR.value:
                    num_sectors = agent.ctrl.model_metadata.lidar_num_sectors
                    num_values_per_sector = agent.ctrl.model_metadata.lidar_num_values_per_sector
                    clipping_dist = agent.ctrl.model_metadata.lidar_clipping_dist

                    sector_discretize_filter = ObservationSectorDiscretizeFilter(
                        num_sectors=num_sectors,
                        num_values_per_sector=num_values_per_sector,
                        clipping_dist=clipping_dist)
                    input_filter.add_observation_filter(
                        observation, 'discrete', sector_discretize_filter)
            agent_params.input_filter = input_filter()
            trainable_agents_list.append(agent_params)
        else:
            non_trainable_agents_list.append(agent)

    ###############
    # Environment #
    ###############
    env_params = DeepRacerRacetrackEnvParameters()
    env_params.agents_params = trainable_agents_list
    env_params.non_trainable_agents = non_trainable_agents_list
    env_params.level = 'DeepRacerRacetrackEnv-v0'
    env_params.run_phase_subject = run_phase_subject
    env_params.enable_domain_randomization = enable_domain_randomization
    env_params.done_condition = done_condition
    env_params.pause_physics = pause_physics
    env_params.unpause_physics = unpause_physics
    vis_params = VisualizationParameters()
    vis_params.dump_mp4 = False

    ########
    # Test #
    ########
    preset_validation_params = PresetValidationParameters()
    preset_validation_params.test = True
    preset_validation_params.min_reward_threshold = 400
    preset_validation_params.max_episodes_to_achieve_reward = 10000

    graph_manager = MultiAgentGraphManager(
        agents_params=trainable_agents_list,
        env_params=env_params,
        schedule_params=schedule_params,
        vis_params=vis_params,
        preset_validation_params=preset_validation_params,
        done_condition=done_condition)
    return graph_manager, params_json