Lecture 2.4: Automatic Differentiation (DLVU)
In the final video of this lecture, we look at how to make the computer maintain a computation graph for us, so that all we have to do is define operations and define the forward pass.
lecturer: Peter Bloem
course site: https://dlvu.github.io
Видео Lecture 2.4: Automatic Differentiation (DLVU) канала DLVU
lecturer: Peter Bloem
course site: https://dlvu.github.io
Видео Lecture 2.4: Automatic Differentiation (DLVU) канала DLVU
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