Shortcuts

Source code for ignite.handlers.early_stopping

import logging

from ignite.engine import Engine


[docs]class EarlyStopping: """EarlyStopping handler can be used to stop the training if no improvement after a given number of events. Args: patience (int): Number of events to wait if no improvement and then stop the training. score_function (callable): It should be a function taking a single argument, an :class:`~ignite.engine.Engine` object, and return a score `float`. An improvement is considered if the score is higher. trainer (Engine): trainer engine to stop the run if no improvement. min_delta (float, optional): A minimum increase in the score to qualify as an improvement, i.e. an increase of less than or equal to `min_delta`, will count as no improvement. cumulative_delta (bool, optional): It True, `min_delta` defines an increase since the last `patience` reset, otherwise, it defines an increase after the last event. Default value is False. Examples: .. code-block:: python from ignite.engine import Engine, Events from ignite.handlers import EarlyStopping def score_function(engine): val_loss = engine.state.metrics['nll'] return -val_loss handler = EarlyStopping(patience=10, score_function=score_function, trainer=trainer) # Note: the handler is attached to an *Evaluator* (runs one epoch on validation dataset). evaluator.add_event_handler(Events.COMPLETED, handler) """ def __init__(self, patience, score_function, trainer, min_delta=0., cumulative_delta=False): if not callable(score_function): raise TypeError("Argument score_function should be a function.") if patience < 1: raise ValueError("Argument patience should be positive integer.") if min_delta < 0.: raise ValueError("Argument min_delta should not be a negative number.") if not isinstance(trainer, Engine): raise TypeError("Argument trainer should be an instance of Engine.") self.score_function = score_function self.patience = patience self.min_delta = min_delta self.cumulative_delta = cumulative_delta self.trainer = trainer self.counter = 0 self.best_score = None self.logger = logging.getLogger(__name__ + "." + self.__class__.__name__) def __call__(self, engine): score = self.score_function(engine) if self.best_score is None: self.best_score = score elif score <= self.best_score + self.min_delta: if not self.cumulative_delta and score > self.best_score: self.best_score = score self.counter += 1 self.logger.debug("EarlyStopping: %i / %i" % (self.counter, self.patience)) if self.counter >= self.patience: self.logger.info("EarlyStopping: Stop training") self.trainer.terminate() else: self.best_score = score self.counter = 0

© Copyright 2024, PyTorch-Ignite Contributors. Last updated on 04/17/2024, 8:17:28 PM.

Built with Sphinx using a theme provided by Read the Docs.