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GPU:enter image description here TPU: enter image description here

I've initialized same model and trained 1 epoch, but it's prediction result differs between GPU and TPU. The loss of train dataset diverges (NaN) on TPU, while it converges on GPU.

GPU:

model = deblurnet()
model.compile(optimizer="adam",
              loss="categorical_crossentropy",
              metrics=["accuracy"])
model.fit(train_ds, epochs=1)
output = model.predict(input)

TPU:

with tpu_strategy.scope():
    model = deblurnet()
    model.compile(optimizer="adam",
                  loss="categorical_crossentropy",
                  metrics=["accuracy"])
model.fit(train_ds, epochs=1)
output = model.predict(input)

model code: https://gist.github.com/yuntan/8198f80593b6897844236c5a5a7b07da

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  • Try increasing your batch_size if it's small, with a small batch size, batch normalization can be unstable. – Gagik Jan 16 at 0:25

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