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I am translating a Matlab function to Python. Unfortunately I am not a Matlab expert and it is hard for me to understand some lines, e. g. this one:

a = [[0, 1]; [2, 3]]
bsxfun(@rdivide, sqrt(a), a)

I did not really understand it yet, but I think this line does

r / a

for each row r of sqrt(a) (or is it each column?) and r / sqrt(a) can usually be translated to numpy as

numpy.linalg.solve(sqrt(a).T, r.T).T

The problem with this is: Matlab says the result is

       NaN   1.00000
   0.70711   0.57735

and numpy says it is

[ 1.  0.]
[ 0.55051026  1.41421356]

which was generated by

for i in range(2): print linalg.solve(sqrt(a).T, a[i, :].T).T

Where is the error? The matrices sqrt(a) and a are just examples. You can replace them by any other matrix. I am just trying to understand what bsxfun does with rdivide.

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The matlab code is exactly equivalent to sqrt(a) ./ a, i.e. it divide each element of sqrt(a) by the corresponding element of a (it is also equivalent to 1./sqrt(a)). –  Chris Taylor Sep 17 '12 at 7:21
OK, so the author of the Matlab function wasn't a Matlab expert either. :D –  alfa Sep 17 '12 at 7:24
What if the second matrix would be a vector, e. g. [1, 2]? –  alfa Sep 17 '12 at 7:31
stackoverflow.com/questions/5382654/matlabs-bsxfun-code bsxfun resizes the matrices, plus it saves computational time and memory –  Hugues Fontenelle Sep 17 '12 at 7:36
The / operator in Matlab is right matrix division, i.e. A/B is equivalent to A * inv(B). If you want element-wise division you need A./B. –  Chris Taylor Sep 17 '12 at 8:19

1 Answer 1

up vote 1 down vote accepted
>>> import numpy as np
>>> a = np.array([[0,1],[2,3]])
>>> a
array([[0, 1],
       [2, 3]])
>>> b = np.sqrt(a)
>>> b/a
Warning: invalid value encountered in divide
array([[        nan,  1.        ],
       [ 0.70710678,  0.57735027]])

Since you need an element-wise division, not matrix multiplication by the inverse, numpy.linalg is not what you want.

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