Upload PPO LunarLander-v3 trained agent
Browse files- README.md +1 -1
- config.json +1 -1
- ppo-LunarLander-v3.zip +2 -2
- ppo-LunarLander-v3/data +29 -41
- ppo-LunarLander-v3/policy.optimizer.pth +2 -2
- ppo-LunarLander-v3/policy.pth +1 -1
- results.json +1 -1
README.md
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type: LunarLander-v3
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metrics:
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- type: mean_reward
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value:
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name: mean_reward
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verified: false
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---
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type: LunarLander-v3
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metrics:
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- type: mean_reward
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value: -522.40 +/- 112.89
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name: mean_reward
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verified: false
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---
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config.json
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{"policy_class": {":type:": "<class 'abc.ABCMeta'>", ":serialized:": "gAWVOwAAAAAAAACMIXN0YWJsZV9iYXNlbGluZXMzLmNvbW1vbi5wb2xpY2llc5SMEUFjdG9yQ3JpdGljUG9saWN5lJOULg==", "__module__": "stable_baselines3.common.policies", "__doc__": "\n Policy class for actor-critic algorithms (has both policy and value prediction).\n Used by A2C, PPO and the likes.\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 ortho_init: Whether to use or not orthogonal initialization\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 full_std: Whether to use (n_features x n_actions) parameters\n for the std instead of only (n_features,) when using gSDE\n :param use_expln: Use ``expln()`` function instead of ``exp()`` 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 squash_output: Whether to squash the output using a tanh function,\n this allows to ensure boundaries when using gSDE.\n :param features_extractor_class: Features extractor to use.\n :param features_extractor_kwargs: Keyword arguments\n to pass to the features extractor.\n :param share_features_extractor: If True, the features extractor is shared between the policy and value networks.\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 ", "__init__": "<function ActorCriticPolicy.__init__ at 0x7efe3fc271a0>", "_get_constructor_parameters": "<function ActorCriticPolicy._get_constructor_parameters at 0x7efe3fc27240>", "reset_noise": "<function ActorCriticPolicy.reset_noise at 0x7efe3fc272e0>", "_build_mlp_extractor": "<function ActorCriticPolicy._build_mlp_extractor at 0x7efe3fc27380>", "_build": "<function ActorCriticPolicy._build at 0x7efe3fc27420>", "forward": "<function ActorCriticPolicy.forward at 0x7efe3fc274c0>", "extract_features": "<function ActorCriticPolicy.extract_features at 0x7efe3fc27560>", "_get_action_dist_from_latent": "<function ActorCriticPolicy._get_action_dist_from_latent at 0x7efe3fc27600>", "_predict": "<function ActorCriticPolicy._predict at 0x7efe3fc276a0>", "evaluate_actions": "<function ActorCriticPolicy.evaluate_actions at 0x7efe3fc27740>", "get_distribution": "<function ActorCriticPolicy.get_distribution at 0x7efe3fc277e0>", "predict_values": "<function ActorCriticPolicy.predict_values at 0x7efe3fc27880>", "__abstractmethods__": "frozenset()", "_abc_impl": "<_abc._abc_data object at 0x7efe3fc295c0>"}, "verbose": 1, "policy_kwargs": {}, "num_timesteps": 1000448, "_total_timesteps": 1000000, "_num_timesteps_at_start": 0, "seed": null, 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policy and value function training but not action selection.\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 gae_lambda: Factor for trade-off of bias vs variance for Generalized Advantage Estimator\n Equivalent to classic advantage when set to 1.\n :param gamma: Discount factor\n :param n_envs: Number of parallel environments\n ", "__init__": "<function RolloutBuffer.__init__ at 0x7efe4a9919e0>", "reset": "<function RolloutBuffer.reset at 0x7efe4a991a80>", "compute_returns_and_advantage": "<function RolloutBuffer.compute_returns_and_advantage at 0x7efe4a991b20>", "add": "<function RolloutBuffer.add at 0x7efe4a991bc0>", "get": "<function RolloutBuffer.get at 0x7efe4a991c60>", "_get_samples": "<function RolloutBuffer._get_samples at 0x7efe4a991d00>", "__abstractmethods__": "frozenset()", "_abc_impl": "<_abc._abc_data object at 0x7efe4a994380>"}, 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