I have the following code, which does not compile: import Numeric.AD data Trainable a b = forall n . Floating n => Trainable ([n] -> a -> b) (a -> b -> [n] -> n) ...
I want to use the ad automatic differentiation package for learning neural network weights in Haskell. I have found some functions that might just have what I need, however I can't figure out what ...
I'm having little success wrapping my head around the basic plumbing of the types involved in the ad package. For example, the following works perfectly: import Numeric.AD ex :: Num a => [a] ...
I'm trying to work with Numeric.AD and a custom Expr type. I wish to calculate the symbolic gradient of user inputted expression. The first trial with a constant expression works nicely: calcGrad0 ...
The closest-related implementation in Haskell I have seen is the forward mode at http://hackage.haskell.org/packages/archive/fad/1.0/doc/html/Numeric-FAD.html. The closest related related research ...