@hackage backprop0.0.1.0

Heterogeneous, type-safe automatic backpropagation in Haskell

backprop

Build Status

Literate Haskell Tutorial/Demo on MNIST data set (and PDF rendering)

Automatic heterogeneous back-propagation that can be used either implicitly (in the style of the ad library) or using explicit graphs built in monadic style. Implements reverse-mode automatic differentiation. Differs from ad by offering full heterogeneity -- each intermediate step and the resulting value can have different types. Mostly intended for usage with tensor manipulation libraries to implement automatic back-propagation for gradient descent and other optimization techniques.

Documentation is currently rendered on github pages!

MNIST Digit Classifier Example

Tutorial and example on training on the MNIST data set available here as a literate haskell file, or rendered here as a PDF! Read this first!

Brief example

The quick example below describes the running of a neural network with one hidden layer to calculate its squared error with respect to target targ, which is parameterized by two weight matrices and two bias vectors. Vector/matrix types are from the hmatrix package.

logistic :: Floating a => a -> a
logistic x = 1 / (1 + exp (-x))

matVec
    :: (KnownNat m, KnownNat n)
    => Op '[ L m n, R n ] (R m)

neuralNetImplicit
      :: (KnownNat m, KnownNat n, KnownNat o)
      => R m
      -> BPOpI s '[ L n m, R n, L o n, R o ] (R o)
neuralNetImplicit inp = \(w1 :< b1 :< w2 :< b2 :< Ø) ->
    let z = logistic (liftB2 matVec w1 x + b1)
    in  logistic (liftB2 matVec w2 z + b2)
  where
    x = constRef inp

neuralNetExplicit
      :: (KnownNat m, KnownNat n, KnownNat o)
      => R m
      -> BPOp s '[ L n m, R n, L o n, R o ] (R o)
neuralNetExplicit inp = withInps $ \(w1 :< b1 :< w2 :< b2 :< Ø) -> do
    y1  <- matVec ~$ (w1 :< x1 :< Ø)
    let x2 = logistic (y1 + b1)
    y2  <- matVec ~$ (w2 :< x2 :< Ø)
    return $ logistic (y2 + b2)
  where
    x1 = constVar inp

Now neuralNetExplicit and neuralNetImplicit can be "run" with the input vectors and parameters (a L n m, R n, L o n, and R o) and calculate the output of the neural net.

runNet
    :: (KnownNat m, KnownNat n, KnownNat o)
    => R m
    -> Tuple '[ L n m, R n, L o n, R o ]
    -> R o
runNet inp = evalBPOp (neuralNetExplicit inp)

But, in defining neuralNet, we also generated a graph that backprop can use to do back-propagation, too!

dot :: KnownNat n
    => Op '[ R n  , R n ] Double

netGrad
    :: forall m n o. (KnownNat m, KnownNat n, KnownNat o)
    => R m
    -> R o
    -> Tuple '[ L n m, R n, L o n, R o ]
    -> Tuple '[ L n m, R n, L o n, R o ]
netGrad inp targ params = gradBPOp opError params
  where
    -- calculate squared error, in *explicit* style
    opError :: BPOp s '[ L n m, R n, L o n, R o ] Double
    opError = do
        res <- neuralNetExplicit inp
        err <- bindRef (res - t)
        dot ~$ (err :< err :< Ø)
      where
        t = constRef targ

The result is the gradient of the input tuple's components, with respect to the Double result of opError (the squared error). We can then use this gradient to do gradient descent.

For a more fleshed out example, see the MNIST tutorial (also rendered as a pdf)

Todo

  1. Actual profiling and benchmarking, to gauge how much overhead this library adds over "manual" back-propagation.

    Ideally this can be brought down to 0?

  2. Some simple performance and API tweaks that are probably possible now and would clearly benefit: (if you want to contribute)

    a. Providing optimized Num/Fractional/Floating instances for BVal by supplying known gradients directly instead of relying on ad.

    b. Switch from ST s to IO, and use unsafePerformIO to automatically bind BVals (like ad does) when using liftB. This might remove some overhead during graph building, and, from an API standpoint, remove the need for explicit binding.

    c. Switch from STRefs/IORefs to Array. (This one I'm unclear if it would help any)

  3. Benchmark against competing back-propagation libraries like ad, and auto-differentiating tensor libraries like grenade

  4. Explore opportunities for parallelization. There are some naive ways of directly parallelizing right now, but potential overhead should be investigated.

  5. Some open questions:

    a. Is it possible to offer pattern matching on sum types/with different constructors for implicit-graph backprop? It's possible for explicit-graph versions already, with choicesVar, but not yet with the implicit-graph interface. Could be similar to an "Applicative vs. Monad" issue where you can only have pre-determined fixed computation paths when using Applicative, but I'm not sure. Still, it would be nice, because if this was possible, we could possibly do away with explicit-graph mode completely.

    b. Though we already have sum type support with explicit-graph mode, we can't support GADTs yet. It'd be nice to see if this is possible, because a lot of dependently typed neural network stuff is made much simpler with GADTs.