# remove zeros from nparray efficiently

In the moment I am using this method:

``````data = np.array([[0, 0, 0, 0, 1, 2, 3, 4, 5, 0, 6, 0, 0], [0, 0, 0, 0, 1, 2,3, 4, 5, 0, 6, 0, 0]])
index = 0
idx = []
for img in range(len(data)):
img_raw = np.any(data[img])
if img_raw == 0.0:
idx.append(index)
index+=1
data = np.delete(data, idx, axis=0)
``````

Does somebody know a better method?

• Since your whole array contains solely zeros, you can just do `data = np.array([])`. Sep 23, 2017 at 20:33
• What's the desired result? A copy-n-paste of your code doesn't change `data`. `idx` is empty. It almost looks like you want to delete rows that are entirely zeros. `np.delete(data, [0,1,2,3,9,11,12], axis=1)` would remove selected columns. Sep 23, 2017 at 21:24

Whatever `data` is, Daniel answers for 1d-arrays, which appears to be sufficient in your case. If your `data` array is 2d, things become little bit more complicated since you cannot remove your 0s without altering the dimensions of your array. In this case, you may use mask-arrays to remove non-wanted values from your considerations, e.g.

``````import numpy as np
print(ma_data)
``````

Any calculation, say mean, std, and so on, don't consider masked values.

• Note that despite altering dimensions, @Daniel's answer does succeed in removing zeros in 2d and higher cases
– Eric
Sep 24, 2017 at 7:42

Use logical indexing:

``````data = np.zeros(500)
data = data[data!=0]
``````
• takes 4 sekonds
– user8580127
Sep 23, 2017 at 21:07