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I wanted to know if there is a way to bypass the constraint of the number of input and output features of the Block Sparse Layer being a multiple of a value of the block size. Like is there a generic implementation possible? Something like https://github.com/rain-neuromorphics/SparseLinear which can have any number of input and output features.
I would love to know if there is a way to make it possible?
Thanks
The text was updated successfully, but these errors were encountered:
shreyanshs
changed the title
Anyway to bypass constraint of input and output features to be a multiple of block size
Any way to bypass constraint of input and output features to be a multiple of block size
Nov 26, 2020
Hi,
I wanted to know if there is a way to bypass the constraint of the number of input and output features of the Block Sparse Layer being a multiple of a value of the block size. Like is there a generic implementation possible? Something like https://github.com/rain-neuromorphics/SparseLinear which can have any number of input and output features.
I would love to know if there is a way to make it possible?
Thanks
The text was updated successfully, but these errors were encountered: