# How do I delete a row in a numpy array which contains a zero? [duplicate]

I'm trying to write a function to delete all rows in which have a zero value in. This is not from my code, but an example of the idea I am using:

``````import numpy as np
a=np.array(([7,1,2,8],[4,0,3,2],[5,8,3,6],[4,3,2,0]))
b=[]

for i in range(len(a)):
for j in range (len(a[i])):
if a[i][j]==0:
b.append(i)

print 'b=', b
for zero_row in b:
x=np.delete(a,zero_row, 0)

print 'a=',a
``````

and this is my output:

``````b= [1, 3]
a= [[7 1 2 8]
[4 0 3 2]
[5 8 3 6]
[4 3 2 0]]
``````

How do I get rid of the rows with the index in b? Sorry, I'm fairly new to this any help would be really appreciated.

• Just one comment. That piece of example code you posted loops over `b` to delete individual rows. That's not needed at all. `a = np.delete(a, b, axis=0)` works like a charm (`axis` specified to make it more evident what we're doing) Feb 6, 2014 at 11:24

I'm trying to write a function to delete all rows in which have a zero value in.

You don't need to write a function for that, it can be done in a single expression:

``````>>> a[np.all(a != 0, axis=1)]
array([[7, 1, 2, 8],
[5, 8, 3, 6]])
``````

Read as: select from `a` all rows that are entirely non-zero.

• is there a way to do this for a 1D array? would you just leave out the axis specification? i.e. b[np.all(b != 0, )] where b is a 1d array Aug 23, 2013 at 9:39
• `b = b[b!=0]` removes the `0`'s in `b`. It is called boolean indexing. Aug 23, 2013 at 11:33
• What if one wants to remove all columns containing "2"? `a[np.all(a !=2, axis=0)]` does not work as expected. I had to resort to manipulating the transpose instead. Any suggestion? Apr 10, 2014 at 13:51
• @user1211129 I think transposing and later transposing back is the sensible thing to do. Apr 10, 2014 at 14:15

Looks like `np.delete` does't change the array, just returns a new array, so

``````x = np.delete(a,zero_row, 0)
``````

try

``````a = np.delete(a,zero_row, 0)
``````
• ah that was stupid, probably to early in the morning. However I did change this and got ValueError:invalid entry thanks for the quick response Aug 23, 2013 at 8:12

I think I have found the answer:

as @tuxcanfly said I changed x to a. Also I have now removed the for loop as it removed the row with index 2 for some reason.

Instead I now just chose to delete the rows using b as the delete function with use the elements in the list to remove the row with that index.

the new code:

``````import numpy as np
a=np.array(([7,1,2,8],[4,0,3,2],[5,8,3,6],[4,3,2,0]))
b=[]

for i in range(len(a)):
for j in range (len(a[i])):
if a[i][j]==0:
b.append(i)
print 'b=',b
for zero_row in b:
a=np.delete(a,b, 0)

print 'a=',a
``````

and the output:

``````b= [1, 3]
a= [[7 1 2 8]
[5 8 3 6]]
``````

I think this helps readability (and allows you to loop once, not twice):

``````#!/usr/bin/env python

import numpy as np
a = np.array(([7,1,2,8], [4,0,3,2], [5,8,3,6], [4,3,2,0]))
b = None

for row in a:
if 0 not in row:
b = np.vstack((b, row)) if b is not None else row

a = b
print 'a = ', a
``````

In this version, you loop over each row and test for 0's membership in the row. If the row does not contain a zero, you attempt to use np.vstack to append the row to an array called b. If b has not yet been assigned to, it is initialized to the current row.