71 lines
2.2 KiB
Python
71 lines
2.2 KiB
Python
"""Example showing how to define a custom LoggerCallback for an RLlib Algorithm.
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The script uses a custom ``LoggerCallback`` passed via ``RunConfig(callbacks=[...])``.
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Below examples include:
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- Defining a custom logger callback (by sub-classing ``LoggerCallback``).
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How to run this script
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----------------------
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`python [script file name].py`
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Results to expect
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-----------------
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You should see log lines similar to the following in your console output. Note that
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these logged lines will mix with the ones produced by Tune's default ProgressReporter.
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ABC Avg-return: 20.609375; pi-loss: -0.02921550187703246
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ABC Avg-return: 32.28688524590164; pi-loss: -0.023369029412534572
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ABC Avg-return: 51.92; pi-loss: -0.017113141975661456
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ABC Avg-return: 76.16; pi-loss: -0.01305474770361625
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ABC Avg-return: 100.54; pi-loss: -0.007665307738129169
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ABC Avg-return: 132.33; pi-loss: -0.005010405003325517
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ABC Avg-return: 169.65; pi-loss: -0.008397869592997183
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ABC Avg-return: 203.17; pi-loss: -0.005611495616764371
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"""
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from ray import tune
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from ray.rllib.algorithms.ppo import PPOConfig
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from ray.rllib.core import DEFAULT_MODULE_ID
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from ray.rllib.utils.metrics import (
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ENV_RUNNER_RESULTS,
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EPISODE_RETURN_MEAN,
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LEARNER_RESULTS,
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)
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from ray.tune.logger import LoggerCallback
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class MyPrintLoggerCallback(LoggerCallback):
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"""Logs results by simply printing out a summary."""
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def __init__(self, prefix="ABC"):
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self.prefix = prefix
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def log_trial_result(self, iteration, trial, result):
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mean_return = result[ENV_RUNNER_RESULTS][EPISODE_RETURN_MEAN]
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pi_loss = result[LEARNER_RESULTS][DEFAULT_MODULE_ID]["policy_loss"]
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print(f"{self.prefix} Avg-return: {mean_return} pi-loss: {pi_loss}")
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if __name__ == "__main__":
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config = PPOConfig().environment("CartPole-v1")
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stop = {f"{ENV_RUNNER_RESULTS}/{EPISODE_RETURN_MEAN}": 200.0}
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# Run the actual experiment (using Tune).
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results = tune.Tuner(
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config.algo_class,
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param_space=config,
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run_config=tune.RunConfig(
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stop=stop,
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verbose=2,
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# Plugin our own logger callback.
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callbacks=[
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MyPrintLoggerCallback(prefix="ABC"),
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],
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),
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).fit()
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