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Upload A2C PandaReach (VecEnv + VecNormalize)

Browse files
README.md CHANGED
@@ -16,7 +16,7 @@ model-index:
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  type: PandaReachJointsDense-v3
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  metrics:
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  - type: mean_reward
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- value: -4.07 +/- 3.51
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  name: mean_reward
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  verified: false
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  ---
 
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  type: PandaReachJointsDense-v3
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  metrics:
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  - type: mean_reward
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  name: mean_reward
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  verified: false
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  ---
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results.json CHANGED
@@ -1 +1 @@
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- {"mean_reward": -4.0672464, "std_reward": 3.5099164293492007, "is_deterministic": true, "n_eval_episodes": 10, "eval_datetime": "2026-03-01T02:33:46.581382"}
 
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+ {"mean_reward": -7.727921200000002, "std_reward": 5.32886649071387, "is_deterministic": true, "n_eval_episodes": 10, "eval_datetime": "2026-03-01T05:36:47.634036"}