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Multi-Modality

LocalSoftmax

Local Softmax parallelize the softmax computation by splitting the tensor into smaller sub-tensors and applying the softmax function on each of these smaller tensors independently. In other words, we want to compute a "local" softmax on each chunk of the tensor, instead of on the entire tensor.

Appreciation

  • Lucidrains
  • Agorians

Install

pip install local-sfmx

Usage

import torch
from local_sfmx import local_softmax

tensor = torch.rand(10, 5)
result = local_softmax(tensor, 2)
print(result)

Algorithm

function LocalSoftmax(tensor, num_chunks): split tensors into num_chunks smaller tensors for each smaller tensor: apply standard softmax concatenate the results return concatenated tensor

License

MIT