mindformers.wrapper.MFTrainOneStepCell

class mindformers.wrapper.MFTrainOneStepCell(network, optimizer, use_clip_grad=False, max_grad_norm=1.0, scale_sense=1.0, **kwargs)[源代码]

TrainOneStep For MindFormer. Network training with loss scaling, grad clip, gradient accumulation, exponential moving average and so on.

This is a training step with loss scaling. It takes a network, an optimizer and a scale update Cell(or a Tensor) as args. The loss scale value can be updated in both host side or device side. If you want to update it on host side, using a value of Tensor type as scale_sense, otherwise, using a Cell instance for updating loss scale as scale_sense.

Args:

network (Cell): The training network. The network only supports single output. optimizer (Cell): Optimizer for updating the network parameters. use_clip_grad (bool): Whether to use the gradient clipping function. Default: False. max_grad_norm (float): Maximum gradient value. Default: 1.0. scale_sense (Union[Tensor, Cell]): If this value is a Cell, it will be called by MFTrainOneStepCell

to update loss scale. If this value is a Tensor, the loss scale can be modified by set_sense_scale, the shape should be \(()\) or \((1,)\).

Inputs:
  • (*inputs) (Tuple(Tensor)) - Tuple of input tensors with shape \((N, \ldots)\).

Outputs:

Tuple of 3 Tensor, the loss, overflow flag and current loss scale value.

  • loss (Tensor) - A scalar, the loss value.

  • overflow (Tensor) - A scalar, whether overflow occur or not, the type is bool.

  • loss scale (Tensor) - The loss scale value, the shape is \(()\) or \((1,)\).

Raises:

TypeError: If scale_sense is neither Cell nor Tensor. ValueError: If shape of scale_sense is neither (1,) nor ().