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from easydict import EasyDict |
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env_name = 'Hopper-v3' |
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if env_name == 'Hopper-v3': |
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action_space_size = 3 |
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observation_shape = 11 |
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elif env_name in ['HalfCheetah-v3', 'Walker2d-v3']: |
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action_space_size = 6 |
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observation_shape = 17 |
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elif env_name == 'Ant-v3': |
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action_space_size = 8 |
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observation_shape = 111 |
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elif env_name == 'Humanoid-v3': |
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action_space_size = 17 |
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observation_shape = 376 |
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ignore_done = False |
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if env_name == 'HalfCheetah-v3': |
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ignore_done = True |
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collector_env_num = 8 |
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n_episode = 8 |
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evaluator_env_num = 3 |
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continuous_action_space = False |
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K = 20 |
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num_simulations = 50 |
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update_per_collect = 200 |
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batch_size = 256 |
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max_env_step = int(3e6) |
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reanalyze_ratio = 0. |
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each_dim_disc_size = 5 |
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policy_entropy_loss_weight = 0.005 |
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mujoco_disc_sampled_efficientzero_config = dict( |
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exp_name= |
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f'data_sez_ctree/{env_name[:-3]}_bin-{each_dim_disc_size}_sampled_efficientzero_ns{num_simulations}_upc{update_per_collect}_rr{reanalyze_ratio}_pelw{policy_entropy_loss_weight}_seed0', |
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env=dict( |
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env_name=env_name, |
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action_clip=True, |
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continuous=False, |
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manually_discretization=False, |
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collector_env_num=collector_env_num, |
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evaluator_env_num=evaluator_env_num, |
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n_evaluator_episode=evaluator_env_num, |
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manager=dict(shared_memory=False, ), |
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each_dim_disc_size=each_dim_disc_size, |
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), |
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policy=dict( |
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model=dict( |
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observation_shape=observation_shape, |
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action_space_size=int(each_dim_disc_size ** action_space_size), |
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continuous_action_space=continuous_action_space, |
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num_of_sampled_actions=K, |
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model_type='mlp', |
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lstm_hidden_size=256, |
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latent_state_dim=256, |
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self_supervised_learning_loss=True, |
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res_connection_in_dynamics=True, |
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), |
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cuda=True, |
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policy_entropy_loss_weight=policy_entropy_loss_weight, |
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ignore_done=ignore_done, |
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env_type='not_board_games', |
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game_segment_length=200, |
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update_per_collect=update_per_collect, |
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batch_size=batch_size, |
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discount_factor=0.99, |
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optim_type='AdamW', |
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lr_piecewise_constant_decay=False, |
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learning_rate=0.003, |
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num_simulations=num_simulations, |
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reanalyze_ratio=reanalyze_ratio, |
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n_episode=n_episode, |
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eval_freq=int(2e3), |
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replay_buffer_size=int(1e6), |
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collector_env_num=collector_env_num, |
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evaluator_env_num=evaluator_env_num, |
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), |
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) |
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mujoco_disc_sampled_efficientzero_config = EasyDict(mujoco_disc_sampled_efficientzero_config) |
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main_config = mujoco_disc_sampled_efficientzero_config |
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mujoco_disc_sampled_efficientzero_create_config = dict( |
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env=dict( |
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type='mujoco_disc_lightzero', |
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import_names=['zoo.mujoco.envs.mujoco_disc_lightzero_env'], |
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), |
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env_manager=dict(type='subprocess'), |
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policy=dict( |
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type='sampled_efficientzero', |
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import_names=['lzero.policy.sampled_efficientzero'], |
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), |
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) |
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mujoco_disc_sampled_efficientzero_create_config = EasyDict(mujoco_disc_sampled_efficientzero_create_config) |
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create_config = mujoco_disc_sampled_efficientzero_create_config |
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if __name__ == "__main__": |
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from lzero.entry import train_muzero |
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train_muzero([main_config, create_config], seed=0, max_env_step=max_env_step) |