Source code for torchbearer.callbacks.terminate_on_nan

from __future__ import print_function
import torchbearer

from torchbearer.callbacks import Callback

import math


[docs]class TerminateOnNaN(Callback): """Callback which montiors the given metric and halts training if its value is nan or inf. Args: monitor (str): The name of the metric to monitor State Requirements: - :attr:`torchbearer.state.METRICS`: Metrics should be a dict containing at least the key `monitor` """ def __init__(self, monitor='running_loss'): super(TerminateOnNaN, self).__init__() self._monitor = monitor def _check(self, state): if self._monitor in state[torchbearer.METRICS]: value = state[torchbearer.METRICS][self._monitor] if value is not None: if math.isnan(value) or math.isinf(value): print('Invalid ' + self._monitor + ', terminating') state[torchbearer.STOP_TRAINING] = True
[docs] def on_step_training(self, state): self._check(state)
[docs] def on_end_epoch(self, state): self._check(state)
[docs] def on_step_validation(self, state): self._check(state)