dlconv inference with int8

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David Eriksson
David Eriksson on 5 Mar 2024
Answered: Avadhoot on 13 Mar 2024
Hi, is there a way to run inference (forward pass) with dlconv with int8 in the activations and float with the weights? Is it possible to make a CUDA model that I can run from matlab? Maybe as a mex function? Best, David

Answers (1)

Avadhoot
Avadhoot on 13 Mar 2024
Hi David,
From your question, I infer that you are trying to pass int8 activations to the "dlconv" function with floating point weights. This will not work because the "dlconv" function is designed to work with only floating point data types (single or double). So the int8 inputs must be converted to floating point numbers before passing them to the "dlconv" function.
A computationally intensive workaround is to implement the convolution operation manually in a custom CUDA kernel and then writing a MEX function to interface it with MATLAB. After that you can call the MEX function normally in MATLAB and pass the int8 data to it and it will handle the invocation of the CUDA kernel. Using this approach, you can use int8 activations in your convolution operation. This operation will entirely bypass "dlconv" as you will be writing a custom CUDA kernel to implement the convolution operation.
I hope this helps.

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