36 lines
1.1 KiB
YAML
36 lines
1.1 KiB
YAML
# @OldAPIStack
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# You can expect ~20 reward within 1.1m timesteps / 2.1 hours on a K80 GPU
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pong-deterministic-dqn:
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env: ale_py:ALE/Pong-v5
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run: DQN
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stop:
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env_runners/episode_return_mean: 20
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time_total_s: 7200
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config:
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# Works for both torch and tf.
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framework: torch
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# Make analogous to old v4 + NoFrameskip.
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env_config:
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frameskip: 1
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full_action_space: false
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repeat_action_probability: 0.0
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num_gpus: 1
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gamma: 0.99
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lr: .0001
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replay_buffer_config:
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type: MultiAgentPrioritizedReplayBuffer
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capacity: 50000
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num_steps_sampled_before_learning_starts: 10000
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rollout_fragment_length: 4
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train_batch_size: 32
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exploration_config:
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epsilon_timesteps: 200000
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final_epsilon: .01
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model:
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grayscale: True
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zero_mean: False
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dim: 42
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# we should set compress_observations to True because few machines
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# would be able to contain the replay buffers in memory otherwise
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compress_observations: True
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