# Find Indices Of Columns Having Some Nonzero Element In A 2d array

I have a numpy array with dim (157,1944).

I want to get indices of columns that have a Nonzero element in any row.

example: `[[0,0,3,4], [0,0,1,1]]` ----> `[2,3]`

If you look each row, there is a Non Zero element in columns [2, 3]

So if I have

`[[0,1,3,4], [0,0,1,1]]`

I should get `[1,2,3]` because column index 0 has no Nonzero elements in any row.

• So, the second row doesn't have any unique index that are non-zeros for that case? Could you add another not so simple case like let's say `[[0,0,3,4],[0,0,1,1]],[2,0,0,3],[0,3,1,3]]` and list down its expected output? – Divakar Mar 26 '16 at 9:57
• yes. In your case I will get [0,1,2,3] – Jasper Bernales Mar 26 '16 at 10:00
• I am not clear on how you have arrived at `[0,1,2,3]`. Could you clarify? Please edit the question to list all these down. – Divakar Mar 26 '16 at 10:02
• @Divakar IIUC, it is `[0, 1, 2, 3]` because each of these indices has some row where there's a nonzero element. – Ami Tavory Mar 26 '16 at 10:05
• @AmiTavory Yeah that's what I could guess from the expected output, but let's get the clarification from OP. Also that term `unique` isn't fitting well I think. – Divakar Mar 26 '16 at 10:08

``````import numpy as np
a = np.array([[0,0,3,4], [0,0,1,1]])
``````

then

``````>>> np.nonzero(np.all(a != 0, axis=0))
array([2, 3])
``````

are the indices of the columns for which none of the rows are nonzero, and

``````>>> np.nonzero(np.any(a != 0, axis=0))
array([2, 3])
``````

are the indices of the columns for which not all of the rows are zero (it happens to be the same for the example you gave).