reza-aditya commited on
Commit
8f7a51a
1 Parent(s): 48aaebf

Initial commit

Browse files
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results.json CHANGED
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- {"mean_reward": 125.0, "std_reward": 114.97825881443848, "is_deterministic": false, "n_eval_episodes": 10, "eval_datetime": "2022-11-12T04:18:37.886318"}
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