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- import time
-
-
- def evaluation_fn(step, width, height):
- return (0.1 + width * step / 100) ** (-1) + height * 0.1
-
-
- def easy_objective(config):
- from ray import tune
-
- # Hyperparameters
- width, height = config["width"], config["height"]
-
- for step in range(config["steps"]):
- # Iterative training function - can be any 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)
- time.sleep(0.1)
-
-
- def test_blendsearch_tune(smoke_test=True):
- try:
- from ray import tune
- from ray.tune.suggest import ConcurrencyLimiter
- from ray.tune.schedulers import AsyncHyperBandScheduler
- from ray.tune.suggest.flaml import BlendSearch
- except ImportError:
- print("ray[tune] is not installed, skipping test")
- return
- import numpy as np
-
- algo = BlendSearch()
- algo = ConcurrencyLimiter(algo, max_concurrent=4)
- scheduler = AsyncHyperBandScheduler()
- analysis = tune.run(
- easy_objective,
- metric="mean_loss",
- mode="min",
- search_alg=algo,
- scheduler=scheduler,
- num_samples=10 if smoke_test else 100,
- config={
- "steps": 100,
- "width": tune.uniform(0, 20),
- "height": tune.uniform(-100, 100),
- # This is an ignored parameter.
- "activation": tune.choice(["relu", "tanh"]),
- "test4": np.zeros((3, 1)),
- },
- )
-
- print("Best hyperparameters found were: ", analysis.best_config)
-
-
- if __name__ == "__main__":
- test_blendsearch_tune(False)
|