Also known as algorithmic differentiation, short AD. Techniques that take a procedure evaluating a numerical function and transform it into a procedure that additionally evaluates directional derivatives, gradients, higher order derivatives.

learn more… | top users | synonyms

0
votes
0answers
65 views

Hamiltonian mechanics-based physics engine

I am trying to implement a physics engine based around hamiltonian mechanics. Facing several problems, such as to Differentiate the H function Partially evaluate a partial derivative of the H ...
1
vote
1answer
44 views

Numeric.AD - type variable escaping its scope

I'm trying to use automatic differentiation in Haskell for a nonlinear control problem, but have some problems getting it to work. I basically have a cost function, which should be optimized given an ...
0
votes
1answer
32 views

Change fortran compile order in NetBeans 8

I'm working in NetBeans 8 on CentOS 7 to change some old fortran code to replace numerical differentiation with automatic differentiation using OpenAD. OpenAD takes an annotated fortran function as ...
9
votes
0answers
89 views

How to get more performance out of automatic differentiation?

I am having a hard time optimizing a program that is relying on ads conjugateGradientDescent function for most of it's work. Basically my code is a translation of an old papers code that is written ...
5
votes
1answer
108 views

How to do automatic differentiation on hmatrix?

Sooooo ... as it turns out going from fake matrices to hmatrix datatypes turns out to be nontrivial :) Preamble for reference: {-# LANGUAGE RankNTypes #-} {-# LANGUAGE ParallelListComp #-} {-# ...
2
votes
1answer
107 views

How to do automatic differentiation on complex datatypes?

Given a very simple Matrix definition based on Vector: import Numeric.AD import qualified Data.Vector as V newtype Mat a = Mat { unMat :: V.Vector a } scale' f = Mat . V.map (*f) . unMat add' a b = ...
0
votes
1answer
162 views

How does theano implement computing every function's gradient?

I have a question about Theano's implementation. How the theano get the gradient of every loss function by the following function(T.grad)? Thank you for your help. gparams = T.grad(cost, ...
0
votes
1answer
152 views

Does Theano support variable split?

In my Theano program, I want to split the tensor matrix into two parts, with each of them making different contributions to the error function. Can anyone tell me whether automatic differentiation ...
2
votes
1answer
300 views

how is backpropagation the same (or not) as reverse automatic differentiation?

The Wikipedia page for backpropagation has this claim: The backpropagation algorithm for calculating a gradient has been rediscovered a number of times, and is a special case of a more general ...
2
votes
3answers
201 views

Optimization issue, Nonlinear: automatic analytical jacobian / Hessian from objecitve and constraints in R?

In R, is it possible to find the jacobian/Hessian/sparsity pattern analytically when you provide just the objective function and constraints for an optimization problem? AMPL does this, and from ...
1
vote
2answers
5k views

Java - Computation of Derivations with Apache Commons Mathematic Library

I have a problem in using the apache commons math library. I just want to create functions like f(x) = 4x^2 + 2x and I want to compute the derivative of this function --> f'(x) = 8x + 2 I read the ...
3
votes
1answer
190 views

Avoid sorting args in Python module Sympy

I am currently developing a differential operator for sympy that can be placed in matricial form. In this case the order of the args list when creating a Mul object is very important to guarantee that ...
2
votes
4answers
1k views

Differential Operator usable in Matrix form, in Python module Sympy

We need two matrices of differential operators [B] and [C] such as: B = sympy.Matrix([[ D(x), D(y) ], [ D(y), D(x) ]]) C = sympy.Matrix([[ D(x), D(y) ]]) ans = B * ...
2
votes
1answer
232 views

Haskell can't deduce type equality

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) ...
2
votes
1answer
241 views

Haskell ad package

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 ...
0
votes
1answer
113 views

Automatic probability densities

I have found automatic differentiation to be extremely useful when writing mathematical software. I now have to work with random variables and functions of the random variables, and it seems to me ...
5
votes
1answer
198 views

Acceptable types in Numeric.AD functions

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] ...
7
votes
2answers
171 views

Numeric.AD and typing problem

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 ...
11
votes
6answers
2k views

Automatic differentiation library in Scheme / Common Lisp / Clojure

I've heard that one of McCarthy's original motivations for inventing Lisp was to write a system for automatic differentiation. Despite this, my Google searches haven't yielded any libraries/macros for ...
0
votes
1answer
5k views

Runge-Kutta (RK4) for system of differential equations in Java

This quation is mostly a result of this thread: Differential Equations in Java. Basically, I've tried to follow Jason S. advise and to implement numerical solutions to differential equations via ...
0
votes
2answers
2k views

Automatic Differentiation in C# and F#

I am having a problem getting Automatic Differentiation to work between C# and F#. In C# I have a function that takes a double and returns a double, say: private double Price(double yield) { ...
10
votes
4answers
2k views

Is there any working implementation of reverse mode automatic differentiation for Haskell?

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 ...
4
votes
3answers
529 views

Derivative of a Higher-Order Function

This is in the context of Automatic Differentiation - what would such a system do with a function like map, or filter - or even one of the SKI Combinators? Example: I have the following function: ...