Automatic Differentiation #439
JonathanWenger
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Tensor library with multiple backends from developers close to Tübingen: |
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How can we support or include automatic differentiation into ProbNum ?
There are potentially 3 scenarios:
ad 1)
Write code using autodiff structures (tensors).
Advantages:
Disadvantages:
ad 2)
Implement the backward pass for every probabilistic numerical method.
Advantages:
Disadvantages
ad 3)
Write an interface (kernel?) for arbitrary automatic differentiation frameworks.
Advantages:
Disadvantages:
TODO:
.backward()
method for pytorch and tensorflowOther
autograd
,pytorch
andtensorflow
: https://github.com/geomstats/geomstatsBeta Was this translation helpful? Give feedback.
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