multiplied token embeddings by sqrt of embedding dimension#2661
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Ildar-Gaisin wants to merge 1 commit intod2l-ai:masterfrom
Open
multiplied token embeddings by sqrt of embedding dimension#2661Ildar-Gaisin wants to merge 1 commit intod2l-ai:masterfrom
Ildar-Gaisin wants to merge 1 commit intod2l-ai:masterfrom
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…ming with segment/positional embeddings
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Description of changes:
In the BERT Encoder model, the token embeddings should be mulitplied by the square root of the embedding dimension before being summed up with segment embeddings and positional embeddings. If I am not mistaken, the original BERT model should do this multiplication, however I could not find the place where they do it in their github https://github.com/google-research/bert.
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