#!/usr/bin/env python import argparse import time from typing import Any, Dict from ray import tune from ray.tune.schedulers import AsyncHyperBandScheduler def evaluation_fn(step, width, height) -> float: # simulate model evaluation time.sleep(0.1) return (0.1 + width * step / 100) ** (-1) + height * 0.1 def easy_objective(config: Dict[str, Any]) -> None: # Config contains the hyperparameters to tune width, height = config["width"], config["height"] for step in range(config["steps"]): # Iterative training function - can be an arbitrary training procedure intermediate_score = evaluation_fn(step, width, height) # Feed the score back back to Tune. tune.report({"iterations": step, "mean_loss": intermediate_score}) if __name__ == "__main__": parser = argparse.ArgumentParser(description="AsyncHyperBand optimization example") parser.add_argument( "--smoke-test", action="store_true", help="Finish quickly for testing" ) args, _ = parser.parse_known_args() # AsyncHyperBand enables aggressive early stopping of poorly performing trials scheduler = AsyncHyperBandScheduler( grace_period=5, # Minimum training iterations before stopping max_t=100, # Maximum training iterations ) tuner = tune.Tuner( tune.with_resources(easy_objective, {"cpu": 1, "gpu": 0}), run_config=tune.RunConfig( name="asynchyperband_test", stop={"training_iteration": 1 if args.smoke_test else 9999}, verbose=1, ), tune_config=tune.TuneConfig( metric="mean_loss", mode="min", scheduler=scheduler, num_samples=20, # Number of trials to run ), param_space={ "steps": 100, "width": tune.uniform(10, 100), "height": tune.uniform(0, 100), }, ) # Run the hyperparameter optimization results = tuner.fit() print(f"Best hyperparameters found: {results.get_best_result().config}")