Source code for ignite.metrics.loss
from typing import Callable, Optional, Sequence, Union
import torch
from ignite.exceptions import NotComputableError
from ignite.metrics.metric import Metric, reinit__is_reduced, sync_all_reduce
__all__ = ["Loss"]
[docs]class Loss(Metric):
"""
Calculates the average loss according to the passed loss_fn.
Args:
loss_fn (callable): a callable taking a prediction tensor, a target
tensor, optionally other arguments, and returns the average loss
over all observations in the batch.
output_transform (callable): a callable that is used to transform the
:class:`~ignite.engine.engine.Engine`'s ``process_function``'s output into the
form expected by the metric.
This can be useful if, for example, you have a multi-output model and
you want to compute the metric with respect to one of the outputs.
The output is expected to be a tuple `(prediction, target)` or
(prediction, target, kwargs) where kwargs is a dictionary of extra
keywords arguments. If extra keywords arguments are provided they are passed to `loss_fn`.
batch_size (callable): a callable taking a target tensor that returns the
first dimension size (usually the batch size).
device (str of torch.device, optional): unused argument.
"""
_required_output_keys = None
def __init__(
self,
loss_fn: Callable,
output_transform: Callable = lambda x: x,
batch_size: Callable = lambda x: len(x),
device: Optional[Union[str, torch.device]] = None,
):
super(Loss, self).__init__(output_transform, device=device)
self._loss_fn = loss_fn
self._batch_size = batch_size
@reinit__is_reduced
def reset(self) -> None:
self._sum = 0
self._num_examples = 0
@reinit__is_reduced
def update(self, output: Sequence[Union[torch.Tensor, dict]]) -> None:
if len(output) == 2:
y_pred, y = output
kwargs = {}
else:
y_pred, y, kwargs = output
average_loss = self._loss_fn(y_pred, y, **kwargs)
if len(average_loss.shape) != 0:
raise ValueError("loss_fn did not return the average loss.")
n = self._batch_size(y)
self._sum += average_loss.item() * n
self._num_examples += n
@sync_all_reduce("_sum", "_num_examples")
def compute(self) -> None:
if self._num_examples == 0:
raise NotComputableError("Loss must have at least one example before it can be computed.")
return self._sum / self._num_examples