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NumPy: calculate averages with NaNs removed

I have several identically-shaped numpy arrays. I want to take their pointwise average with a small twist: a np.nan value should be ignored in the averaging. In other words, average(np.array([1,2,3]), np.array([5,np.nan,7]), np.array([np.nan, 4, 2]) should equal np.array([3,3,4]).

Of course, I can do that by iterating through the elements within each numpy array, but I was hoping to avoid it. Is there a better way to implement this function?

(Python 3, but I doubt it matters.)

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marked as duplicate by Blair, ekhumoro, max, Eric, Don Roby Dec 10 '12 at 2:26

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

What you want has been answered here: stackoverflow.com/questions/5480694/… –  HerrKaputt Dec 9 '12 at 23:07
@HerrKaputt Sorry, it sure has... I somehow convinced myself that nobody would have been trying to do this, and so I didn't do a careful search for existing questions :( –  max Dec 10 '12 at 0:44
No need to apologize! In fact, I don't think hayden's answer (using nanmean) was mentioned in that other link... –  HerrKaputt Dec 10 '12 at 9:38

2 Answers 2

up vote 4 down vote accepted

You can use scipy.stat's nanmean:

import numpy as np
from scipy.stats import nanmean
s = np.array([[1.0, 2.0, 3.0], [5.0, np.nan, 7.0], [np.nan, 4.0, 2.0]])

In [4]: nanmean(s)
Out[4]: array([ 3.,  3.,  4.])

@Dougal points out in the comments that the bottleneck package, which has significantly faster implementations of several numpy/scipy functions, includes an nanmean.

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Note that the bottleneck package has bottleneck.nanmean, which runs 10-30 times faster in their tests than does scipy.stats.nanmean. –  Dougal Dec 9 '12 at 23:13
@Dougal good to know! –  Andy Hayden Dec 9 '12 at 23:15

You can also convert the array to a masked array (masking all the NaNs with fix_invalid) and perform your operations there:

new_array = np.ma.fix_invalid(my_array)
print np.mean(new_array)

If it's just for the average, then the suggested nanmean by @hayden is about 4x faster. But if you want to do other operations on the array, it's a better bet to use masked arrays instead.

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