Skip to content

I have a question about LSQ , LSQ+ model device embedding  #13

@minkyukang707

Description

@minkyukang707

I've tried to convert LSQ, LSQ+ model to ONNX model but I got a runtime error

This is the code what I tried to run

import torch
from brevitas.export import export_onnx_qcdq

export_onnx_qcdq(quantized_model, torch.randn(2048,52).cuda(), export_path='lsq+_.onnx')

here is the error message that I got from converting LSQ+ model to onnx
First error line
"name": "RuntimeError",
"message": "ONNX export failed: Couldn't export Python operator ALSQPlus\n\nDefined at:\ne:\LSQplus-master\LSQplus-master\quantization\lsqplus_quantize_V2.py(154):

Last error lines
e:\LSQplus-master\LSQplus-master\quantization\lsqplus_quantize_V2.py:154:0\n %onnx::Gemm_67 : Float(*, , strides=[16, 1], requires_grad=0, device=cuda:0) = ^WLSQPlus(0.007394637578467616, -128, 127, False)(%model_fp32.output.0.weight, %model_fp32.output.0.weight_quantizer.s) # e:\LSQplus-master\LSQplus-master\quantization\lsqplus_quantize_V2.py:221:0\n %68 : Float(, *, strides=[9, 1], requires_grad=0, device=cuda:0) = onnx::Gemm[alpha=1., beta=1., transB=1](%onnx::Gemm_66, %onnx::Gemm_67, %model_fp32.output.0.bias) # e:\LSQplus-master\LSQplus-master\quantization\lsqplus_quantize_V2.py:319:0\n return (%68)\n"
}

Have you ever tried this before? or It isn't supported from onnx itself? I wonder about it

Metadata

Metadata

Assignees

No one assigned

    Labels

    No labels
    No labels

    Projects

    No projects

    Milestone

    No milestone

    Relationships

    None yet

    Development

    No branches or pull requests

    Issue actions