Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

Say I have a numpy array

a = np.array([[a11 a12 a13],
          [a21 a22 a23],
          [a31 a32 a33]])

I want to return the following result:

np.array([[a11/a1 a12/a1 a13/a1],
          [a21/a2 a22/a2 a23/a2],
          [a31/a3 a32/a3 a33/a3]])


  a1 = np.sqrt(a11**2 + a12**2 + a13**2)
  a2 = np.sqrt(a21**2 + a22**2 + a23**2)
  a3 = np.sqrt(a31**2 + a32**2 + a33**2)

In other words, I want to divide each element of the array by the norm of the row it belongs to.

I have written some code which does this, but it is frankly horrible - I am looping through rows of the array, which I know is not what numpy as designed for. I have a feeling the same could be achieved by using two numpy library calls which I just don't know.

Another thing I thought of is:


but I'm not sure if this is a particularly efficient way. Any advice?

share|improve this question

1 Answer 1

import numpy as np

a = np.array([[11, 12, 13],
          [21, 22, 23],
          [31, 32, 33]], float)

a / np.sum(a**2, 1, keepdims=True)**0.5
share|improve this answer
Need sqrt not sum, sqrt doesn't seem to have a convenient axis or keepdims command. –  user1654183 Jan 25 '14 at 23:27
I modified the answer, just add **0.5. –  HYRY Jan 25 '14 at 23:37
Very nice solution! Thanks –  user1654183 Jan 26 '14 at 0:19

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.