Quentin Gallouédec
Initial commit
bbe00b8
raw
history blame contribute delete
No virus
40 kB
{
"policy_class": {
":type:": "<class 'abc.ABCMeta'>",
":serialized:": "gAWVKgAAAAAAAACMGHNiM19jb250cmliLnRxYy5wb2xpY2llc5SMCVRRQ1BvbGljeZSTlC4=",
"__module__": "sb3_contrib.tqc.policies",
"__doc__": "\n Policy class (with both actor and critic) for TQC.\n\n :param observation_space: Observation space\n :param action_space: Action space\n :param lr_schedule: Learning rate schedule (could be constant)\n :param net_arch: The specification of the policy and value networks.\n :param activation_fn: Activation function\n :param use_sde: Whether to use State Dependent Exploration or not\n :param log_std_init: Initial value for the log standard deviation\n :param use_expln: Use ``expln()`` function instead of ``exp()`` when using gSDE to ensure\n a positive standard deviation (cf paper). It allows to keep variance\n above zero and prevent it from growing too fast. In practice, ``exp()`` is usually enough.\n :param clip_mean: Clip the mean output when using gSDE to avoid numerical instability.\n :param features_extractor_class: Features extractor to use.\n :param features_extractor_kwargs: Keyword arguments\n to pass to the feature extractor.\n :param normalize_images: Whether to normalize images or not,\n dividing by 255.0 (True by default)\n :param optimizer_class: The optimizer to use,\n ``th.optim.Adam`` by default\n :param optimizer_kwargs: Additional keyword arguments,\n excluding the learning rate, to pass to the optimizer\n :param n_quantiles: Number of quantiles for the critic.\n :param n_critics: Number of critic networks to create.\n :param share_features_extractor: Whether to share or not the features extractor\n between the actor and the critic (this saves computation time)\n ",
"__init__": "<function TQCPolicy.__init__ at 0x7f291a526670>",
"_build": "<function TQCPolicy._build at 0x7f291a526700>",
"_get_constructor_parameters": "<function TQCPolicy._get_constructor_parameters at 0x7f291a526790>",
"reset_noise": "<function TQCPolicy.reset_noise at 0x7f291a526820>",
"make_actor": "<function TQCPolicy.make_actor at 0x7f291a5268b0>",
"make_critic": "<function TQCPolicy.make_critic at 0x7f291a526940>",
"forward": "<function TQCPolicy.forward at 0x7f291a5269d0>",
"_predict": "<function TQCPolicy._predict at 0x7f291a526a60>",
"set_training_mode": "<function TQCPolicy.set_training_mode at 0x7f291a526af0>",
"__abstractmethods__": "frozenset()",
"_abc_impl": "<_abc._abc_data object at 0x7f291a523e40>"
},
"verbose": 1,
"policy_kwargs": {
"use_sde": false
},
"observation_space": {
":type:": "<class 'gym.spaces.box.Box'>",
":serialized:": "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",
"dtype": "float64",
"_shape": [
376
],
"low": "[-inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf\n -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf -inf]",
"high": "[inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf\n inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf inf]",
"bounded_below": "[False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False]",
"bounded_above": "[False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False False False False False False False False False\n False False False False]",
"_np_random": null
},
"action_space": {
":type:": "<class 'gym.spaces.box.Box'>",
":serialized:": "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",
"dtype": "float32",
"_shape": [
17
],
"low": "[-0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4 -0.4\n -0.4 -0.4 -0.4]",
"high": "[0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4 0.4]",
"bounded_below": "[ True True True True True True True True True True True True\n True True True True True]",
"bounded_above": "[ True True True True True True True True True True True True\n True True True True True]",
"_np_random": "RandomState(MT19937)"
},
"n_envs": 1,
"num_timesteps": 2000000,
"_total_timesteps": 2000000,
"_num_timesteps_at_start": 0,
"seed": 0,
"action_noise": null,
"start_time": 1676140536462889720,
"learning_rate": 0.0003,
"tensorboard_log": "runs/Humanoid-v3__tqc__2048752035__1676140532/Humanoid-v3",
"lr_schedule": {
":type:": "<class 'function'>",
":serialized:": "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"
},
"_last_obs": null,
"_last_episode_starts": {
":type:": "<class 'numpy.ndarray'>",
":serialized:": "gAWVdAAAAAAAAACMEm51bXB5LmNvcmUubnVtZXJpY5SMC19mcm9tYnVmZmVylJOUKJYBAAAAAAAAAAGUjAVudW1weZSMBWR0eXBllJOUjAJiMZSJiIeUUpQoSwOMAXyUTk5OSv////9K/////0sAdJRiSwGFlIwBQ5R0lFKULg=="
},
"_last_original_obs": {
":type:": "<class 'numpy.ndarray'>",
":serialized:": "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"
},
"_episode_num": 4401,
"use_sde": false,
"sde_sample_freq": -1,
"_current_progress_remaining": 0.0,
"ep_info_buffer": {
":type:": "<class 'collections.deque'>",
":serialized:": "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"
},
"ep_success_buffer": {
":type:": "<class 'collections.deque'>",
":serialized:": "gAWVIAAAAAAAAACMC2NvbGxlY3Rpb25zlIwFZGVxdWWUk5QpS2SGlFKULg=="
},
"_n_updates": 1990000,
"buffer_size": 1,
"batch_size": 256,
"learning_starts": 10000,
"tau": 0.005,
"gamma": 0.99,
"gradient_steps": 1,
"optimize_memory_usage": false,
"replay_buffer_class": {
":type:": "<class 'abc.ABCMeta'>",
":serialized:": "gAWVNQAAAAAAAACMIHN0YWJsZV9iYXNlbGluZXMzLmNvbW1vbi5idWZmZXJzlIwMUmVwbGF5QnVmZmVylJOULg==",
"__module__": "stable_baselines3.common.buffers",
"__doc__": "\n Replay buffer used in off-policy algorithms like SAC/TD3.\n\n :param buffer_size: Max number of element in the buffer\n :param observation_space: Observation space\n :param action_space: Action space\n :param device: PyTorch device\n :param n_envs: Number of parallel environments\n :param optimize_memory_usage: Enable a memory efficient variant\n of the replay buffer which reduces by almost a factor two the memory used,\n at a cost of more complexity.\n See https://github.com/DLR-RM/stable-baselines3/issues/37#issuecomment-637501195\n and https://github.com/DLR-RM/stable-baselines3/pull/28#issuecomment-637559274\n Cannot be used in combination with handle_timeout_termination.\n :param handle_timeout_termination: Handle timeout termination (due to timelimit)\n separately and treat the task as infinite horizon task.\n https://github.com/DLR-RM/stable-baselines3/issues/284\n ",
"__init__": "<function ReplayBuffer.__init__ at 0x7f291a9ae5e0>",
"add": "<function ReplayBuffer.add at 0x7f291a9ae670>",
"sample": "<function ReplayBuffer.sample at 0x7f291a9ae700>",
"_get_samples": "<function ReplayBuffer._get_samples at 0x7f291a9ae790>",
"__abstractmethods__": "frozenset()",
"_abc_impl": "<_abc._abc_data object at 0x7f291a9a8480>"
},
"replay_buffer_kwargs": {},
"train_freq": {
":type:": "<class 'stable_baselines3.common.type_aliases.TrainFreq'>",
":serialized:": "gAWVYQAAAAAAAACMJXN0YWJsZV9iYXNlbGluZXMzLmNvbW1vbi50eXBlX2FsaWFzZXOUjAlUcmFpbkZyZXGUk5RLAWgAjBJUcmFpbkZyZXF1ZW5jeVVuaXSUk5SMBHN0ZXCUhZRSlIaUgZQu"
},
"use_sde_at_warmup": false,
"target_entropy": -17.0,
"ent_coef": "auto",
"target_update_interval": 1,
"top_quantiles_to_drop_per_net": 2,
"batch_norm_stats": [],
"batch_norm_stats_target": []
}