Add different swish implementations#88
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lukemelas merged 1 commit intolukemelas:masterfrom Oct 15, 2019
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@qubvel thanks for function! I've tried to implement this in our repo: https://github.com/ultralytics/yolov3, but get worse results (lower mAP and higher loss) when compared to a default Swish() class. Do you know why this might be? See ultralytics/yolov3#441 (comment) |
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@qubvel If i train with Memory efficient swish, and exporting model.pt with model.set_swish(memory_efficient=False) + torch.jit.trace(model, example), will it hurt the score? |
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Add different swish implementations:
torch.jit/torch.onnxx * torch.sigmoid(x))torch.jit/torch.onnxDefault: memory efficient
Model swish implementation can be changed by
.set_swish(memory_efficient=False/True)method