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We currently have some tips for how to improve performance of a Turing.jl model.
However, these are more "tips & tricks" rather than a good introduction on how to a) benchmark and profile a model, b) which AD backend to choose, and c) how to write models in a way to make them more efficient.
We currently have some tips for how to improve performance of a Turing.jl model.
However, these are more "tips & tricks" rather than a good introduction on how to a) benchmark and profile a model, b) which AD backend to choose, and c) how to write models in a way to make them more efficient.
So, IMO, there are a few things we should do:
[ ] Offer functionality to automatically make some choices for the user. Ref: Automate choice of AD backend #2417performance_hints(model)
. Ref: Performance hints #2416The text was updated successfully, but these errors were encountered: