# Python numpy averaging

Averaging a table like this is not a problem

``````table = [[1,2,3,0],[1,2,3,0],[1,2,3,4]]
``````

You can

``````print numpy.average(table,axis=0)
``````

But what if i have uneven sequences like:

``````table = [[1,2,3],[1,2,3],[1,2,3,4]]
``````

Then the result should be:

``````1,2,3,4
``````

As the element containing number 4 only occurs once. and 4/1 = 4. But numpy will not allow this.

``````ValueError: setting an array element with a sequence.
``````
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Where does your data come from, and why aren't the sub-lists the same length? –  Karl Knechtel Nov 12 '11 at 18:49
genomic data, different gene lengths –  Jasper Nov 12 '11 at 18:52
This probably isn't a good question, but -- do you have to use numpy? –  Matt Fenwick Nov 12 '11 at 19:01

You could feed the data into a numpy masked array, then compute the means with `np.ma.mean`:

``````import numpy as np
import itertools
data=[[1,2,3],[1,2,3],[1,2,3,4]]

rows=len(data)
cols=max(len(row) for row in data)
arr=np.ma.zeros((rows,cols))
for i,row in enumerate(data):
arr[i,:len(row)]=row

print(arr.mean(axis=0))
``````

yields

``````[1.0 2.0 3.0 4.0]
``````

Elements of the array get unmasked (i.e. `arr.mask[i,j]=False`) when a value is assigned. Note the resultant mask below:

``````In [162]: arr
Out[162]:
[[1.0 2.0 3.0 --]
[1.0 2.0 3.0 --]
[1.0 2.0 3.0 4.0]],
[[False False False  True]
[False False False  True]
[False False False False]],
fill_value = 1e+20)
``````

If your data is rather short, yosukesabai's method or a pure Python solution is likely to be faster than what I show above. Only invest in making a masked array if the data is very large and you have enough numpy operations to perform on the array to make the initial cost of setting up the array worth it.

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This looks neat! –  yosukesabai Nov 12 '11 at 19:19
@yosukesabai: Thanks. I like your method too. Please undelete it :) –  unutbu Nov 12 '11 at 19:21
undeleted. interesting to know about setup cost, which I often forget. –  yosukesabai Nov 12 '11 at 19:27

The only workaround i can think of is to use itertools and temporary list, not very beautiful.

``````import numpy as np
from itertools import izip_longest
table = [[1,2,3],[1,2,3],[1,2,3,4]]

for row in izip_longest(*table):
print np.average([x for x in row if x is not None])
``````

This yields

``````1.0
2.0
3.0
4.0
``````
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