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- # Copyright 2021 Tencent
- # SPDX-License-Identifier: BSD-3-Clause
-
- import torch
- import torch.nn as nn
- import torch.nn.functional as F
-
- class Model(nn.Module):
- def __init__(self):
- super(Model, self).__init__()
-
- def forward(self, x, y, w):
- x = F.upsample_nearest(x, size=(12,12))
- x = F.upsample_nearest(x, scale_factor=2)
-
- y = F.upsample_nearest(y, size=(8,10,9))
- y = F.upsample_nearest(y, scale_factor=3)
-
- w = F.upsample_nearest(w, scale_factor=(2.976744,2.976744))
- return x, y, w
-
- def test():
- net = Model()
- net.eval()
-
- torch.manual_seed(0)
- x = torch.rand(1, 12, 24, 64)
- y = torch.rand(1, 4, 10, 24, 32)
- w = torch.rand(1, 8, 86, 86)
-
- a = net(x, y, w)
-
- # export torchscript
- mod = torch.jit.trace(net, (x, y, w))
- mod.save("test_F_upsample_nearest.pt")
-
- # torchscript to pnnx
- import os
- os.system("../src/pnnx test_F_upsample_nearest.pt inputshape=[1,12,24,64],[1,4,10,24,32],[1,8,86,86]")
-
- # pnnx inference
- import test_F_upsample_nearest_pnnx
- b = test_F_upsample_nearest_pnnx.test_inference()
-
- for a0, b0 in zip(a, b):
- if not torch.equal(a0, b0):
- return False
- return True
-
- if __name__ == "__main__":
- if test():
- exit(0)
- else:
- exit(1)
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