#1595: test to make sure that the loaded agent trains + remove unnecessary files + fixing agent save output name
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@@ -40,17 +40,42 @@ def copy_session_asset(asset_path: Union[str, Path]) -> str:
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def test_load_sb3_session():
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"""Test that loading an SB3 agent works."""
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expected_learn_mean_reward_per_episode = {
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10: 0,
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11: -0.008037109374999995,
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12: -0.007978515624999988,
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13: -0.008191406249999991,
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14: -0.00817578124999999,
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15: -0.008085937499999998,
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16: -0.007837890624999982,
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17: -0.007798828124999992,
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18: -0.007777343749999998,
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19: -0.007958984374999988,
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20: -0.0077499999999999835,
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}
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test_path = copy_session_asset(TEST_ASSETS_ROOT / "example_sb3_agent_session")
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loaded_agent = SB3Agent(session_path=test_path)
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# loaded agent should have the same UUID as the previous agent
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assert loaded_agent.uuid == "8c196c83-b77d-4ef7-af4b-0a3ada30221c"
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assert loaded_agent.uuid == "301874d3-2e14-43c2-ba7f-e2b03ad05dde"
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assert loaded_agent._training_config.agent_framework == AgentFramework.SB3.name
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assert loaded_agent._training_config.agent_identifier == AgentIdentifier.PPO.name
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assert loaded_agent._training_config.deterministic
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assert loaded_agent._training_config.seed == 12345
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assert str(loaded_agent.session_path) == str(test_path)
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# run another learn session
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loaded_agent.learn()
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learn_mean_rewards = av_rewards_dict(
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loaded_agent.learning_path / f"average_reward_per_episode_{loaded_agent.timestamp_str}.csv"
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)
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# run is seeded so should have the expected learn value
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assert learn_mean_rewards == expected_learn_mean_reward_per_episode
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# run an evaluation
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loaded_agent.evaluate()
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@@ -63,38 +88,12 @@ def test_load_sb3_session():
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assert len(set(eval_mean_reward.values())) == 1
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# the evaluation should be the same as a previous run
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assert next(iter(set(eval_mean_reward.values()))) == -0.009857999999999992
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assert next(iter(set(eval_mean_reward.values()))) == -0.009896484374999988
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# delete the test directory
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shutil.rmtree(test_path)
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def test_load_rllib_session():
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"""Test that loading an RLlib agent works."""
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# test_path = copy_session_asset(TEST_ASSETS_ROOT)
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#
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# loaded_agent = RLlibAgent(session_path=test_path)
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#
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# # loaded agent should have the same UUID as the previous agent
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# assert loaded_agent.uuid == "58c7e648-c784-44e8-bec0-a1db95898270"
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# assert loaded_agent._training_config.agent_framework == AgentFramework.SB3.name
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# assert loaded_agent._training_config.agent_identifier == AgentIdentifier.PPO.name
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# assert loaded_agent._training_config.deterministic
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# assert str(loaded_agent.session_path) == str(test_path)
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#
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# # run an evaluation
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# loaded_agent.evaluate()
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#
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# # load the evaluation average reward csv file
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# eval_mean_reward = av_rewards_dict(
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# loaded_agent.evaluation_path / f"average_reward_per_episode_{loaded_agent.timestamp_str}.csv"
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# )
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#
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# # the agent config ran the evaluation in deterministic mode, so should have the same reward value
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# assert len(set(eval_mean_reward.values())) == 1
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#
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# # the evaluation should be the same as a previous run
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# assert next(iter(set(eval_mean_reward.values()))) == -0.00011132812500000003
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#
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# # delete the test directory
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# shutil.rmtree(test_path)
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def test_load_primaite_session():
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"""Test that loading a Primaite session works."""
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pass
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