191 lines
5.6 KiB
Python
191 lines
5.6 KiB
Python
import json
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import os
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import pickle
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import tempfile
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import time
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from collections import Counter
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import numpy as np
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from ray import tune
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from ray._private.test_utils import safe_write_to_results_json
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from ray.tune import Checkpoint
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from ray.tune.callback import Callback
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class ProgressCallback(Callback):
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def __init__(self):
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self.last_update = 0
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self.update_interval = 60
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def on_step_end(self, iteration, trials, **kwargs):
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if time.time() - self.last_update > self.update_interval:
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now = time.time()
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result = {
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"last_update": now,
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"iteration": iteration,
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"trial_states": dict(Counter([trial.status for trial in trials])),
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}
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safe_write_to_results_json(result, "/tmp/release_test_out.json")
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self.last_update = now
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class TestDurableTrainable(tune.Trainable):
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def __init__(self, *args, **kwargs):
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self.setup_env()
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super(TestDurableTrainable, self).__init__(*args, **kwargs)
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def setup_env(self):
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pass
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def setup(self, config):
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self._num_iters = int(config["num_iters"])
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self._sleep_time = config["sleep_time"]
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self._score = config["score"]
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self._checkpoint_iters = config["checkpoint_iters"]
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self._checkpoint_size_b = config["checkpoint_size_b"]
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self._checkpoint_num_items = self._checkpoint_size_b // 8 # np.float64
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self._iter = 0
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def step(self):
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if self._iter > 0:
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time.sleep(self._sleep_time)
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res = dict(score=self._iter + self._score)
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if self._iter >= self._num_iters:
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res["done"] = True
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self._iter += 1
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return res
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def save_checkpoint(self, tmp_checkpoint_dir):
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checkpoint_file = os.path.join(tmp_checkpoint_dir, "bogus.ckpt")
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checkpoint_data = np.random.uniform(0, 1, size=self._checkpoint_num_items)
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with open(checkpoint_file, "wb") as fp:
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pickle.dump(checkpoint_data, fp)
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def load_checkpoint(self, checkpoint):
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pass
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def function_trainable(config):
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num_iters = int(config["num_iters"])
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sleep_time = config["sleep_time"]
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score = config["score"]
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checkpoint_iters = config["checkpoint_iters"]
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checkpoint_size_b = config["checkpoint_size_b"]
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checkpoint_num_items = checkpoint_size_b // 8 # np.float64
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checkpoint_num_files = config["checkpoint_num_files"]
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for i in range(num_iters):
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metrics = {"score": i + score}
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if (
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checkpoint_iters >= 0
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and checkpoint_size_b > 0
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and i % checkpoint_iters == 0
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):
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with tempfile.TemporaryDirectory() as tmpdir:
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for i in range(checkpoint_num_files):
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checkpoint_file = os.path.join(tmpdir, f"bogus_{i}.ckpt")
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checkpoint_data = np.random.uniform(0, 1, size=checkpoint_num_items)
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with open(checkpoint_file, "wb") as fp:
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pickle.dump(checkpoint_data, fp)
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tune.report(metrics, checkpoint=Checkpoint.from_directory(tmpdir))
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else:
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tune.report(metrics)
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time.sleep(sleep_time)
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def timed_tune_run(
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name: str,
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num_samples: int,
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results_per_second: int = 1,
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trial_length_s: int = 1,
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max_runtime: int = 300,
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checkpoint_freq_s: int = -1,
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checkpoint_size_b: int = 0,
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checkpoint_num_files: int = 1,
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**tune_kwargs,
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) -> bool:
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durable = (
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"storage_path" in tune_kwargs
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and tune_kwargs["storage_path"]
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and (
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tune_kwargs["storage_path"].startswith("s3://")
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or tune_kwargs["storage_path"].startswith("gs://")
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)
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)
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sleep_time = 1.0 / results_per_second
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num_iters = int(trial_length_s / sleep_time)
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checkpoint_iters = -1
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if checkpoint_freq_s >= 0:
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checkpoint_iters = int(checkpoint_freq_s / sleep_time)
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config = {
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"score": tune.uniform(0.0, 1.0),
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"num_iters": num_iters,
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"sleep_time": sleep_time,
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"checkpoint_iters": checkpoint_iters,
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"checkpoint_size_b": checkpoint_size_b,
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"checkpoint_num_files": checkpoint_num_files,
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}
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print(f"Starting benchmark with config: {config}")
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run_kwargs = {"reuse_actors": True, "verbose": 2}
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run_kwargs.update(tune_kwargs)
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_train = function_trainable
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if durable:
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_train = TestDurableTrainable
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run_kwargs["checkpoint_freq"] = checkpoint_iters
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start_time = time.monotonic()
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analysis = tune.run(
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_train,
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config=config,
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num_samples=num_samples,
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raise_on_failed_trial=False,
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**run_kwargs,
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)
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time_taken = time.monotonic() - start_time
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result = {
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"time_taken": time_taken,
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"trial_states": dict(Counter([trial.status for trial in analysis.trials])),
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"last_update": time.time(),
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}
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test_output_json = os.environ.get("TEST_OUTPUT_JSON", "/tmp/tune_test.json")
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with open(test_output_json, "wt") as f:
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json.dump(result, f)
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success = time_taken <= max_runtime
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if not success:
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print(
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f"The {name} test took {time_taken:.2f} seconds, but should not "
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f"have exceeded {max_runtime:.2f} seconds. Test failed. \n\n"
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f"--- FAILED: {name.upper()} ::: "
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f"{time_taken:.2f} > {max_runtime:.2f} ---"
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)
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else:
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print(
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f"The {name} test took {time_taken:.2f} seconds, which "
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f"is below the budget of {max_runtime:.2f} seconds. "
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f"Test successful. \n\n"
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f"--- PASSED: {name.upper()} ::: "
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f"{time_taken:.2f} <= {max_runtime:.2f} ---"
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)
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return success
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