Questions tagged [automatic-differentiation]

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.

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Obtaining code for analytic derivative on Matlab

I have one big analytical function myfunc.m for which I need to obtain the derivative in code format d_myfunc_dx.m. The problem constraints is that I need to produce code that I can refactor, so I can ...
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CasADi: define symbolic expression from elements of symbolic matrix expression

Related to this question, is it possible to define a symbolic expression in CasADi (using Python wrapper) which depends on only part of a symbolic matrix expression X = MX.sym('X', 5)? For example, I'...
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Restricting function signatures while using ForwardDiff in Julia

I am trying to use ForwardDiff in a library where almost all functions are restricted to only take in Floats. I want to generalise these function signatures so that ForwardDiff can be used while still ...
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Computational graph vs (computer algebra) symbolic expression

I was reading Baydin et al, Automatic Differentiation in Machine Learning: a Survey, 2018 (Arxiv), which differentiates between symbolic differentiation and automatic differentiation (AD). It then ...
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Difference between symbolic differentiation and automatic differentiation?

I just cannot seem to understand the difference. For me it looks like both just go through an expression and apply the chain rule.. What am I missing?
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how does the pytorch autograd work?

I submitted this as an issue to cycleGAN pytorch implementation, but since nobody replied me there, i will ask again here. I'm mainly puzzled by the fact that multiple forward passes was called ...
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when need to delete t.watch(x) using [with tf.GradientTape() as t]?

I saw t.watch(x) when using with tf.GradientTape() as t(https://www.tensorflow.org/tutorials/eager/automatic_differentiation) But there aren't t.watch(x) in https://www.tensorflow.org/tutorials/eager/...
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How to get access to the partial derivatives of output with respect to inputs in deep learning model?

I want to create my own loss function in keras, which contains derivatives. For example, def my_loss(x): def y_loss(y_true,y_pred): res = K.gradients(y_pred,x) return res ...
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why Automatic differentiation and gradient tape need to use context manager?

Context managers can change two two related operations into one.For example: with open('some_file', 'w') as opened_file: opened_file.write('Hola!') The above code is equivalent to: file = open('...
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Direct access to the automatic differentiation inside pyomo

Is it possible to directly access the automatic differentiation module coming with pyomo? By that, I mean, could I compute derivatives of any objective function (defined or not inside pyomo's ...
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Ipopt automatic differentiation

According to the ipopt website automatic differentiation is possible with ADOL-C and CppAD. I would like to know which tool I should prefer and what the major differences are. Also a speed comparison ...
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Ranges with Dual Numbers

I am having an issue dealing with Dual numbers inside of ranges. Specifically: using ForwardDiff: Dual t = Dual.((0.0,10.0),0) (t[1]:1/60:t[2])[end] The issue seems to be that [end] uses last which ...
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Is there a way to stop Fortran compiler from checking if negative arguments are passed to SQRT function?

I am trying to use a third party automatic differentiation module, ADF95, which uses the expression -sqrt(asin(-1.0_dpr)) to return a Not-a-Number (NaN) in specific cases, where dpr is defined using ...
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ForwardDiff.jl and ReverseDiff.jl error message related to ::getfield()

I am attempting to use the ForwardDiff.jl and / or ReverseDiff.jl libraries for computing the gradient in an optimization problem. Both of these packages give me an error message related to ::...
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Update step in PyTorch implementation of Newton's method

I'm trying to get some insight into how PyTorch works by implementing Newton's method for solving x = cos(x). Here's a version that works: x = Variable(DoubleTensor([1]), requires_grad=True) for i ...
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How do I calculate computational complexity of automatic differentiation?

I'm using autogrid implemented in Pytorch to train a Neural Network and I need to calculate the computational complexity of the whole algorithm. Where do I find a complete calculation of computational ...
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Hessian of a black box function that uses Pytorch

First of all I am very new to Python and machine learning, so please excuse my ignorance on what might be a very basic issue; I do appreciate any input on this question! I have a very complicated ...
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Automatic Differentiation with CoDiPack

The following code: #include <codi.hpp> ... codi::RealForward Gcodi[l]; for (int p = 0; p < l; p++) { ... double a = Gcodi[p]; } gives me the compilation error: nnBFAD.cpp: In ...
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How does tensorflow handle non differentiable nodes during gradient calculation?

I understood the concept of automatic differentiation, but couldn't find any explanation how tensorflow calculates the error gradient for non differentiable functions as for example tf.where in my ...
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Deriving symbolic derivative from automatic differentiation

Is it possible to derive symbolic derivative or symbolic differentiation from automatic differentiation? I'm wondering if I can derive it by tracing gradient graph generated by Tensorboard. I tried ...
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What does the parameter retain_graph mean in the Variable's backward() method?

I'm going through the neural transfer pytorch tutorial and am confused about the use of retain_variable(deprecated, now referred to as retain_graph). The code example show: class ContentLoss(nn....
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Using automatic differentiation on a function that makes use of a preallocated array in Julia

My long subject title pretty much covers it. I have managed to isolate my much bigger problem in the following contrived example below. I cannot figure out where the problem exactly is, though I ...
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Why don't C++ compilers do better constant folding?

I'm investigating ways to speed up a large section of C++ code, which has automatic derivatives for computing jacobians. This involves doing some amount of work in the actual residuals, but the ...
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Tensorflow: Differentiable Primitives

I was under the impression that all tensorflow primitives are differentiable. Under this "illusion" I wrote this function in the hopes that tensorflow will just automatically differentiate it and I ...
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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 * sympy.Matrix([[...
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C++ reverse automatic differentiation with graph

I'm trying to make a reverse mode automatic differentiation in C++. The idea I came up with is that each variable that results of an operation on one or two other variables, is going to save the ...
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Do gradients flow through operations performed on TensorFlow variables across session.run calls? Persistent graphs?

My understanding is that TensorFlow variables don't do this — is there a way to maintain a partially computed graph persistently across session.run calls? partial_run stores a partially computed ...
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How to implement automatic differentiation in Haskell?

So I have a Dual number class: data Dual a = !a :+ !a instance [safe] Eq a => Eq (Dual a) instance [safe] RealFloat a => Floating (Dual a) instance [safe] RealFloat a => Fractional (Dual a) ...
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Python: differentiation on point-wise defined expression?

I have a point-wise defined function. It originates from a deposit situation where you each month deposit 1k USD with 5% interest which you plot with Numpy. There are multiple ways to compute the ...
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grad_outputs in Chainer vs grad in Tensorflow for backward function

I want to translate some custom operation with self-defined gradient from Chainer to Tensorflow. The forward pass is relatively straightforward, I already have it. But for the backward pass, I can ...
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Julia ReverseDiff: how to take a gradient w.r.t. only a subset of inputs?

In my data flow, I'm querying a small subset of a database, using those results to construct about a dozen arrays, and then, given some parameter values, computing a likelihood value. Then repeating ...
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finite difference derivative array valued functions

Suppose I have the following code import numpy as np f = lambda x,y: (np.sum(x) + np.sum(y))**2 x = np.array([1,2,3]) y = np.array([4,5,6]) df_dx df_dy df2_dx2 df2_dxdy ... is there a fast way to ...
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Breaking TensorFlow gradient calculation into two (or more) parts

Is it possible to use TensorFlow's tf.gradients() function in parts, that is - calculate the gradient from of loss w.r.t some tensor, and of that tensor w.r.t the weight, and then multiply them to get ...
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Partial Derivative using Autograd

I have a function that takes in a multivariate argument x. Here x = [x1,x2,x3]. Let's say my function looks like: f(x,T) = np.dot(x,T) + np.exp(np.dot(x,T) where T is a constant. I am interested in ...
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Is Julia ForwardDiff applicable to very comprehensive function involving ODE integration and nested automatic differentiation?

I need to estimate parameters of continuous-discrete nonlinear stochastic dynamic system using Kalman filtering techniques. I'm going to use Julia ode45() from ODE and implement Extended Kalman ...
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Haskell Linear + AD, implementing Metric for Forward?

I'm trying to use diff from the ad package on a function Quaternion a -> Quaternion a or more generally Metric a => a -> a relying on quadrance. I'm not sure what the best way to go about ...
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Where is Wengert List in TensorFlow?

TensorFlow use reverse-mode automatic differentiation(reverse mode AD), as shown in https://github.com/tensorflow/tensorflow/issues/675. Reverse mode AD need a data structure called a Wengert List - ...
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Automatic Differentiation in Julia: Hessian from ReverseDiffSparse

How can I evaluate the Hessian of a function in Julia using automatic differentiation (preferably using ReverseDiffSparse)? In the following example, I can compute and evaluate the gradient at a point ...
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Tensorflow: running same computational graph with different random samples efficiently

In Tensorflow, the computational graph can be made to depend on random variables. In scenarios where the random variable represents a single sample from a distribution, it can be of interest to ...
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How can I differentiate a function of a function?

I am trying to differentiate z(x) w.r.t. x using the ad library, where I know y(x) and z(y). If I cannot analytically find z(x), how can I perform the differentiation? In other words, I am trying to ...
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pyadolc installation: avoiding “ImportError: No module named _adolc”

I am running Ubuntu 16.04. After getting the requirements and following the pyadolc installation steps here, I appended /home/my-name/pyadolc to the PYTHONPATH variable in my ~/.profile file. Now, ...
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If i can compute the gradient and Hessian, will Newtons method significantly outperform BFGS/L-BFGS?

I have 3-parameter estimation problem (so dimension is low and memory not a problem) where the objective function and gradients+hessians are slow to evaluate, as it is a result of a Monte Carlo ...
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Why is a function type required to be “wrapped” for the type checker to be satisfied?

The following program type-checks: {-# LANGUAGE RankNTypes #-} import Numeric.AD (grad) newtype Fun = Fun (forall a. Num a => [a] -> a) test1 [u, v] = (v - (u * u * u)) test2 [u, v] = ((u * ...
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Combining Eigen and CppAD

I want to use automatic differentiation mechanism provided by CppAD inside Eigen linear algebra. An example type is Eigen::Matrix< CppAD::AD,-1,-1>. As CppAD::AD is a custom numeric type the ...
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How to properly match types when using Numeric.AD in Haskell?

I'm trying to implement Newton–Raphson root-finding algorithm using the ad package, but I can't properly match function types. I know there's a proper answer to a similar question, which was answered ...
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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 ...
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Computational Efficiency of Forward Mode Automatic vs Numeric vs Symbolic Differentiation

I am trying to solve a problem of finding the roots of a function using the Newton-Raphson (NR) method in the C language. The functions in which I would like to find the roots are mostly polynomial ...
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AD Reflection - How does it work?

I have seen the ad package and i understand how it does automatic differentiation by providing a different instance of the class Floating and then implementing the rules of derivatives. But in the ...
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Understanding higher order automatic differentiation

Having recently just finished my own basic reverse mode AD for machine learning purposes, I find myself wanting to learn about the field, but I've hit a hardness wall with higher order methods. The ...
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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 ...