# Calculating gradient with NumPy

I really can not understand what numpy.gradient function does and how to use it for computation of multivariable function gradient.

For example, I have such a function:

``````def func(q, chi, delta):
return q * chi * delta
``````

I need to compute it's 3-dim gradient (in other words, I want to compute partial derivatives with respect to all variables (q, chi, delta)).

How can I calculate this gradient using NumPy?

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## 3 Answers

The problem is, that numpy can't give you the derivatives directly and you have two options:

With NUMPY

What you essentially have to do, is to define a grid in three dimension and to evaluate the function on this grid. Afterwards you feed this table of function values to `numpy.gradient` to get an array with the numerical derivative for every dimension (variable).

Example from here:

``````from numpy import *

x,y,z = mgrid[-100:101:25., -100:101:25., -100:101:25.]

V = 2*x**2 + 3*y**2 - 4*z # just a random function for the potential

Ex,Ey,Ez = gradient(V)
``````

Without NUMPY

You could also calculate the derivative yourself by using the centered difference quotient.

This is essentially, what `numpy.gradient` is doing for every point of your predefined grid.

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Thanks,Stefan! In fact I understand how to compute derivatives manualy (without any framework), but I was not able to understand how np.gradient works. Previously I'd used for this purpose combination of C++ with gsl, but this approach requires too much coding. –  Mikhail Elizarev Apr 19 '13 at 12:44
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Numpy and Scipy are for numerical calculations. Since you want to calculate the gradient of an analytical function, you have to use the Sympy package which supports symbolic mathematics. Differentiation is explained here (you can actually use it in the web console in the left bottom corner).

You can install Sympy under Ubuntu with

``````sudo apt-get install python-sympy
``````

or under any Linux distribution with pip

``````sudo pip install sympy
``````
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Also `theano` can compute the gradient automatically

http://deeplearning.net/software/theano/tutorial/gradients.html

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