Comments (3)
Thanks for the feedback. I can look into making this more clear. Just to make sure I understand you correctly, you mean using the term "stride" in general when creating the targets is confusing? I.e., the 2nd figure is ok, but for the first figure, you'd suggest not using the word stride to distinguish this approach from the one shown in the 2nd figure?
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Yes!This way I won't be confused about the stride
parameter in codes.
from llms-from-scratch.
Makes sense! I updated it. Thanks again for the feedback.
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