# Calculate mean across dimension in a 2D array

I have an array a like this:

a = [[40, 10], [50, 11]]

I need to calculate the mean for each dimension separately, the result should be this:

[45, 10.5]

45 being the mean of a[*][0] and 10.5 the mean of a[*][1].

What is the most elegant way of solving this without using a loop?

a.mean() takes an axis argument:

In [1]: import numpy as np

In [2]: a = np.array([[40, 10], [50, 11]])

In [3]: a.mean(axis=1)     # to take the mean of each row
Out[3]: array([ 25. ,  30.5])

In [4]: a.mean(axis=0)     # to take the mean of each col
Out[4]: array([ 45. ,  10.5])

Or, as a standalone function:

In [5]: np.mean(a, axis=1)
Out[5]: array([ 25. ,  30.5])

The reason your slicing wasn't working is because this is the syntax for slicing:

In [6]: a[:,0].mean() # first column
Out[6]: 45.0

In [7]: a[:,1].mean() # second column
Out[7]: 10.5
• thanks for your quick response. What does In [n]: means? is this part of the code? Apr 4, 2013 at 19:31
• I'm using numpy, so line 2 and 3 works great, but with axis=0 instead of axis=1 Apr 4, 2013 at 19:32
• @otmezger axis=0 is on the next line. I edited to show more info, refresh, perhaps? Apr 4, 2013 at 19:34
• @otmezger You're welcome. Take note that many numpy array methods take an axis argument just like this. Apr 4, 2013 at 19:38
• @askewchan: what does mean = np.mean(a, axis=(0,2,3)) mean? knowing that the input tensor (a) is of shape (batch,channel,width,height) ? Jan 12, 2017 at 11:14

Here is a non-numpy solution:

>>> a = [[40, 10], [50, 11]]
>>> [float(sum(l))/len(l) for l in zip(*a)]
[45.0, 10.5]

If you do this a lot, NumPy is the way to go.

If for some reason you can't use NumPy:

>>> map(lambda x:sum(x)/float(len(x)), zip(*a))
[45.0, 10.5]