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EarlyStopping

class lightning.pytorch.callbacks.EarlyStopping(monitor, min_delta=0.0, patience=3, verbose=False, mode='min', strict=True, check_finite=True, stopping_threshold=None, divergence_threshold=None, check_on_train_epoch_end=None, log_rank_zero_only=False)[source]

Bases: Callback

Monitor a metric and stop training when it stops improving.

Parameters:
  • monitor (str) – quantity to be monitored.

  • min_delta (float) – minimum change in the monitored quantity to qualify as an improvement, i.e. an absolute change of less than or equal to min_delta, will count as no improvement.

  • patience (int) –

    number of checks with no improvement after which training will be stopped. Under the default configuration, one 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 (bool) – verbosity mode.

  • mode (str) – 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 (bool) – whether to crash the training if monitor is not found in the validation metrics.

  • check_finite (bool) – When set True, stops training when the monitor becomes NaN or infinite.

  • stopping_threshold (Optional[float]) – Stop training immediately once the monitored quantity reaches this threshold.

  • divergence_threshold (Optional[float]) – Stop training as soon as the monitored quantity becomes worse than this threshold.

  • check_on_train_epoch_end (Optional[bool]) – whether to run early stopping at the end of the training epoch. If this is False, then the check runs at the end of the validation.

  • log_rank_zero_only (bool) – When set True, logs the status of the early stopping callback only for rank 0 process.

Raises:
  • MisconfigurationException – If mode is none of "min" or "max".

  • RuntimeError – If the metric monitor is not available.

Example:

>>> from lightning.pytorch import Trainer
>>> from lightning.pytorch.callbacks import EarlyStopping
>>> early_stopping = EarlyStopping('val_loss')
>>> trainer = Trainer(callbacks=[early_stopping])

Tip

Saving and restoring multiple early stopping callbacks at the same time is supported under variation in the following arguments:

monitor, mode

Read more: Persisting Callback State

load_state_dict(state_dict)[source]

Called when loading a checkpoint, implement to reload callback state given callback’s state_dict.

Parameters:

state_dict (Dict[str, Any]) – the callback state returned by state_dict.

Return type:

None

on_train_epoch_end(trainer, pl_module)[source]

Called when the train epoch ends.

To access all batch outputs at the end of the epoch, you can cache step outputs as an attribute of the lightning.pytorch.core.LightningModule and access them in this hook:

class MyLightningModule(L.LightningModule):
    def __init__(self):
        super().__init__()
        self.training_step_outputs = []

    def training_step(self):
        loss = ...
        self.training_step_outputs.append(loss)
        return loss


class MyCallback(L.Callback):
    def on_train_epoch_end(self, trainer, pl_module):
        # do something with all training_step outputs, for example:
        epoch_mean = torch.stack(pl_module.training_step_outputs).mean()
        pl_module.log("training_epoch_mean", epoch_mean)
        # free up the memory
        pl_module.training_step_outputs.clear()
Return type:

None

on_validation_end(trainer, pl_module)[source]

Called when the validation loop ends.

Return type:

None

setup(trainer, pl_module, stage)[source]

Called when fit, validate, test, predict, or tune begins.

Return type:

None

state_dict()[source]

Called when saving a checkpoint, implement to generate callback’s state_dict.

Return type:

Dict[str, Any]

Returns:

A dictionary containing callback state.

property state_key: str

Identifier for the state of the callback.

Used to store and retrieve a callback’s state from the checkpoint dictionary by checkpoint["callbacks"][state_key]. Implementations of a callback need to provide a unique state key if 1) the callback has state and 2) it is desired to maintain the state of multiple instances of that callback.