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Hello guys,
just like the Glove, I created a dictionary of all the possible words. with keys as words and values as 768 embedding vector for BERT.
But when I use this dictionary and train the model, the loss is getting nan in 1st epoch only.
How to handle this problem?
what are the possible reasons for getting a loss 'nan'?
Is this a good approach, to make a dictionary of embedding vectors?
The text was updated successfully, but these errors were encountered:
Hello guys,
just like the Glove, I created a dictionary of all the possible words. with keys as words and values as 768 embedding vector for BERT.
But when I use this dictionary and train the model, the loss is getting nan in 1st epoch only.
The text was updated successfully, but these errors were encountered: