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We should experiment with using tape based autodiff instead of the dynamic graph approach for building a DAG of gradients.
There's a great example at https://rufflewind.com/2016-12-30/reverse-mode-automatic-differentiation
The text was updated successfully, but these errors were encountered:
gmodena
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We should experiment with using tape based autodiff instead of the dynamic graph approach for building a DAG of gradients.
There's a great example at https://rufflewind.com/2016-12-30/reverse-mode-automatic-differentiation
The text was updated successfully, but these errors were encountered: