# avarage of a number of arrays with numpy without considering zero values

I am working on numpy and I have a number of arrays with the same size and shape like: a= [153 186 0 258] b=[156 136 156 0] c=[193 150 950 757] I want to have average of the arrays, but I want the program to ignore the zero values in the computation. So, the resulting array for this example will be: d=[167.333 157.333 553 507.5] this is the result of this computation: d=[(153+156+193)/3 (186+136+150)/3 (156+950)/2 (258+757)/2]. Is it possible to do that?

-

>>> import numpy as np
>>> a = np.array([153, 186, 0, 258])
>>> b = np.array([156, 136, 156, 0])
>>> c = np.array([193, 150, 950, 757])
>>> [np.mean([x for x in s if x]) for s in np.c_[a, b, c]]
[167.33333333333334, 157.33333333333334, 553.0, 507.5]

Or maybe a nicer alternative:

>>> A = np.vstack([a,b,c])
>>> np.average(A, axis=0, weights=A.astype(bool))
array([ 167.33333333,  157.33333333,  553.        ,  507.5       ])
-
+1 on the alternative –  JoshAdel Nov 8 '12 at 3:40
Great! Thank you. –  f.ashouri Nov 8 '12 at 3:50
My arrays are 1200*1200 and I tried to simplify it in the question. It seems that it doesn't work for arrays that have more than one row. How can I do this? –  f.ashouri Nov 8 '12 at 10:43
Assuming you want your output to be (1200, 1200) shape aswell, use np.dstack instead and average along the depth axis. If you want the output shape to be (1200,) then I can see no reason why vstack wouldn't still work.. –  wim Nov 8 '12 at 11:26
Great answer! I used np.ma.average() as a robust solution to handle cases where the sum of all values is zero. –  Jason Nov 8 '13 at 15:25