# Copyright The PyTorch Lightning team. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. r""" Early Stopping ^^^^^^^^^^^^^^ Monitor a metric and stop training when it stops improving. """ import logging from typing import Any, Dict, Optional, Tuple import numpy as np import torch from pytorch_lightning.callbacks.base import Callback from pytorch_lightning.utilities import rank_zero_warn from pytorch_lightning.utilities.exceptions import MisconfigurationException log = logging.getLogger(__name__) class EarlyStopping(Callback): r""" Monitor a metric and stop training when it stops improving. Args: monitor: quantity to be monitored. min_delta: minimum change in the monitored quantity to qualify as an improvement, i.e. an absolute change of less than `min_delta`, will count as no improvement. patience: number of validation checks with no improvement after which training will be stopped. Under the default configuration, one validation check happens after every training epoch. However, the frequency of validation can be modified by setting various parameters on the ``Trainer``, for example ``check_val_every_n_epoch`` and ``val_check_interval``. .. note:: It must be noted that the patience parameter counts the number of validation checks with no improvement, and not the number of training epochs. Therefore, with parameters ``check_val_every_n_epoch=10`` and ``patience=3``, the trainer will perform at least 40 training epochs before being stopped. verbose: verbosity mode. mode: one of ``'min'``, ``'max'``. In ``'min'`` mode, training will stop when the quantity monitored has stopped decreasing and in ``'max'`` mode it will stop when the quantity monitored has stopped increasing. strict: whether to crash the training if `monitor` is not found in the validation metrics. check_finite: When set ``True``, stops training when the monitor becomes NaN or infinite. stopping_threshold: Stop training immediately once the monitored quantity reaches this threshold. divergence_threshold: Stop training as soon as the monitored quantity becomes worse than this threshold. Raises: MisconfigurationException: If ``mode`` is none of ``"min"`` or ``"max"``. RuntimeError: If the metric ``monitor`` is not available. Example:: >>> from pytorch_lightning import Trainer >>> from pytorch_lightning.callbacks import EarlyStopping >>> early_stopping = EarlyStopping('val_loss') >>> trainer = Trainer(callbacks=[early_stopping]) """ mode_dict = { 'min': torch.lt, 'max': torch.gt, } order_dict = { 'min': "<", 'max': ">", } def __init__( self, monitor: str = 'early_stop_on', min_delta: float = 0.0, patience: int = 3, verbose: bool = False, mode: str = 'min', strict: bool = True, check_finite: bool = True, stopping_threshold: Optional[float] = None, divergence_threshold: Optional[float] = None, ): super().__init__() self.monitor = monitor self.min_delta = min_delta self.patience = patience self.verbose = verbose self.mode = mode self.strict = strict self.check_finite = check_finite self.stopping_threshold = stopping_threshold self.divergence_threshold = divergence_threshold self.wait_count = 0 self.stopped_epoch = 0 if self.mode not in self.mode_dict: raise MisconfigurationException(f"`mode` can be {', '.join(self.mode_dict.keys())}, got {self.mode}") self.min_delta *= 1 if self.monitor_op == torch.gt else -1 torch_inf = torch.tensor(np.Inf) self.best_score = torch_inf if self.monitor_op == torch.lt else -torch_inf def _validate_condition_metric(self, logs): monitor_val = logs.get(self.monitor) error_msg = ( f'Early stopping conditioned on metric `{self.monitor}` which is not available.' ' Pass in or modify your `EarlyStopping` callback to use any of the following:' f' `{"`, `".join(list(logs.keys()))}`' ) if monitor_val is None: if self.strict: raise RuntimeError(error_msg) if self.verbose > 0: rank_zero_warn(error_msg, RuntimeWarning) return False return True @property def monitor_op(self): return self.mode_dict[self.mode] def on_save_checkpoint(self, trainer, pl_module, checkpoint: Dict[str, Any]) -> Dict[str, Any]: return { 'wait_count': self.wait_count, 'stopped_epoch': self.stopped_epoch, 'best_score': self.best_score, 'patience': self.patience } def on_load_checkpoint(self, callback_state: Dict[str, Any]): self.wait_count = callback_state['wait_count'] self.stopped_epoch = callback_state['stopped_epoch'] self.best_score = callback_state['best_score'] self.patience = callback_state['patience'] def on_validation_end(self, trainer, pl_module): from pytorch_lightning.trainer.states import TrainerState if trainer.state != TrainerState.FITTING or trainer.sanity_checking: return self._run_early_stopping_check(trainer) def _run_early_stopping_check(self, trainer): """ Checks whether the early stopping condition is met and if so tells the trainer to stop the training. """ logs = trainer.callback_metrics if ( trainer.fast_dev_run # disable early_stopping with fast_dev_run or not self._validate_condition_metric(logs) # short circuit if metric not present ): return # short circuit if metric not present current = logs.get(self.monitor) # when in dev debugging trainer.dev_debugger.track_early_stopping_history(self, current) should_stop, reason = self._evalute_stopping_criteria(current) # stop every ddp process if any world process decides to stop should_stop = trainer.training_type_plugin.reduce_boolean_decision(should_stop) trainer.should_stop = trainer.should_stop or should_stop if should_stop: self.stopped_epoch = trainer.current_epoch if reason: log.info(f"[{trainer.global_rank}] {reason}") def _evalute_stopping_criteria(self, current: torch.Tensor) -> Tuple[bool, str]: should_stop = False reason = None if self.check_finite and not torch.isfinite(current): should_stop = True reason = ( f"Monitored metric {self.monitor} = {current} is not finite." f" Previous best value was {self.best_score:.3f}. Signaling Trainer to stop." ) elif self.stopping_threshold is not None and self.monitor_op(current, self.stopping_threshold): should_stop = True reason = ( "Stopping threshold reached:" f" {self.monitor} = {current} {self.order_dict[self.mode]} {self.stopping_threshold}." " Signaling Trainer to stop." ) elif self.divergence_threshold is not None and self.monitor_op(-current, -self.divergence_threshold): should_stop = True reason = ( "Divergence threshold reached:" f" {self.monitor} = {current} {self.order_dict[self.mode]} {self.divergence_threshold}." " Signaling Trainer to stop." ) elif self.monitor_op(current - self.min_delta, self.best_score): should_stop = False self.best_score = current self.wait_count = 0 else: self.wait_count += 1 if self.wait_count >= self.patience: should_stop = True reason = ( f"Monitored metric {self.monitor} did not improve in the last {self.wait_count} epochs." f" Best score: {self.best_score:.3f}. Signaling Trainer to stop." ) return should_stop, reason