MedianStoppingPolicy Class
Defines an early termination policy based on a running average of the primary metric of all runs.
Constructor
MedianStoppingPolicy(*, delay_evaluation: int = 0, evaluation_interval: int = 1)
Keyword-Only Parameters
Name | Description |
---|---|
delay_evaluation
|
Number of intervals by which to delay the first evaluation. Defaults to 0. |
evaluation_interval
|
Interval (number of runs) between policy evaluations. Defaults to 1. Default value: 1
|
Examples
Configuring an early termination policy for a hyperparameter sweep job using MedianStoppingPolicy
from azure.ai.ml import command
job = command(
inputs=dict(kernel="linear", penalty=1.0),
compute=cpu_cluster,
environment=f"{job_env.name}:{job_env.version}",
code="./scripts",
command="python scripts/train.py --kernel $kernel --penalty $penalty",
experiment_name="sklearn-iris-flowers",
)
# we can reuse an existing Command Job as a function that we can apply inputs to for the sweep configurations
from azure.ai.ml.sweep import MedianStoppingPolicy, Uniform
job_for_sweep = job(
kernel=Uniform(min_value=0.0005, max_value=0.005),
penalty=Uniform(min_value=0.9, max_value=0.99),
)
sweep_job = job_for_sweep.sweep(
sampling_algorithm="random",
primary_metric="best_val_acc",
goal="Maximize",
max_total_trials=8,
max_concurrent_trials=4,
early_termination_policy=MedianStoppingPolicy(delay_evaluation=5, evaluation_interval=2),
)
Collaborer avec nous sur GitHub
La source de ce contenu se trouve sur GitHub, où vous pouvez également créer et examiner les problèmes et les demandes de tirage. Pour plus d’informations, consultez notre guide du contributeur.
Azure SDK for Python