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Inconsistent inference results between PyTorch and converted TensorRT model using with Silu operator #902

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Thrsu opened this issue Nov 28, 2023 · 0 comments

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@Thrsu
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Thrsu commented Nov 28, 2023

Description:

I'm experiencing a discrepancy between the inference results of PyTorch model and the TensorRT model obtained by converting it using the torch2trt tool.

Reproduce

This issue can be reproduced by the following script:

import torch
from torch.nn import Module
from torch2trt import torch2trt

input_data = torch.randn([6, 8], dtype=torch.float32).cuda()
class silu(Module):
    def forward(self, *args):
        return torch.nn.functional.silu(args[0], inplace=True,)
model = silu().float().eval().cuda()
model_trt = torch2trt(model, [input_data])

output = model(input_data)
output_trt = model_trt(input_data)
print(torch.max(torch.abs(output - output_trt)))

The output is:

tensor(0.2602, device='cuda:0')

Environment

  • torch: 2.1.1
  • torch2trt: 0.4.0
  • tensorrt: 8.6.1
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