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We initialize a numpy array with zeros as bellow:

np.zeros((N,N+1))

But how do we check whether all elements in a given n*n numpy array matrix is zero.
The method just need to return a True if all the values are indeed zero.

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3 Answers 3

up vote 3 down vote accepted

Check out numpy.count_nonzero.

>>> np.count_nonzero(np.eye(4))
4
>>> np.count_nonzero([[0,1,7,0,0],[3,0,0,2,19]])
5
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You'd want not np.count_nonzero(np.eye(4)) to return True only if all the values are 0. –  J. Martinot-Lagarde Aug 23 '13 at 12:20

I'd use np.all here, if you have an array a:

>>> np.all(a==0)
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I like that this answer checks for non zero values as well. For example, one can check whether all elements in an array are the same by doing np.all(a==a[0]). Thanks a lot! –  gns-ank Mar 21 at 0:02

The other answers posted here will work, but the clearest and most efficient function to use is numpy.any():

>>> all_zeros = not numpy.any()
  • This is preferred over numpy.all(a==0) because it uses less RAM. (It does not require the temporary array created by the a==0 term.)
  • Also, it is faster than numpy.count_nonzero(a) because it can return immediately when the first nonzero element has been found.
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