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Loss=nan when training transformertrainer #68

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@HenryLhc

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@HenryLhc

I used the codes in the jupyter notebook provided by @MarcusLoppe in the discussion section, and have successfully succeeded trained the autoencoder with a loss of 0.6. However, when I tried to proceed to the next section, the training loss remained high, before a few steps later it showed nan. Is this due to some problems in data augmentation or the data itself is not suitable for this method? As I'm using scanned meshes of concrete aggregates instead of the artificially built meshes.

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