base_IIXIV / fla /modules /l2warp.py
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import torch
class L2Wrap(torch.autograd.Function):
r"""
This class of penalty prevents the model from becoming overconfident,
thereby mitigating precision loss in BF16.
This version is memory-optimized by not storing the full logits tensor.
"""
@staticmethod
def forward(ctx, loss, logits, l2_penalty_factor=1e-4):
"""
Forward pass for L2 penalty.
Args:
loss (torch.Tensor): The loss tensor.
logits (torch.Tensor): Shape[B, T, V] The logits tensor.
l2_penalty_factor (float): The factor for L2 penalty.
"""
maxx, ids = torch.max(logits, dim=-1, keepdim=True)
ctx.logits_shape = logits.shape
factor = l2_penalty_factor / (logits.shape[0] * logits.shape[1])
maxx = maxx * factor
ctx.save_for_backward(maxx, ids)
return loss
@staticmethod
def backward(ctx, grad_output):
maxx, ids = ctx.saved_tensors
glogits = torch.zeros(ctx.logits_shape, device=grad_output.device,
dtype=grad_output.dtype)
glogits.scatter_(-1, ids, maxx)
return grad_output, glogits, None
l2_warp = L2Wrap.apply