# Grouping 2D numpy array in average

I am trying to group a numpy array into smaller size by taking average of the elements. Such as take average foreach 5x5 sub-arrays in a 100x100 array to create a 20x20 size array. As I have a huge data need to manipulate, is that an efficient way to do that?

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I have tried this for smaller array, so test it with yours:

``````import numpy as np

Nbig = 100
Nsmall = 20
big = np.arange(Nbig * Nbig).reshape([Nbig, Nbig]) # 100x100

small = big.reshape([Nsmall, Nbig/Nsmall, Nsmall, Nbig/Nsmall]).mean(3).mean(1)
``````

An example with 6x6 -> 3x3:

``````Nbig = 6
Nsmall = 3
big = np.arange(36).reshape([6,6])
array([[ 0,  1,  2,  3,  4,  5],
[ 6,  7,  8,  9, 10, 11],
[12, 13, 14, 15, 16, 17],
[18, 19, 20, 21, 22, 23],
[24, 25, 26, 27, 28, 29],
[30, 31, 32, 33, 34, 35]])

small = big.reshape([Nsmall, Nbig/Nsmall, Nsmall, Nbig/Nsmall]).mean(3).mean(1)

array([[  3.5,   5.5,   7.5],
[ 15.5,  17.5,  19.5],
[ 27.5,  29.5,  31.5]])
``````
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This is pretty straightforward, although I feel like it could be faster:

``````from __future__ import division
import numpy as np
Norig = 100
Ndown = 20
step = Norig//Ndown
assert step == Norig/Ndown # ensure Ndown is an integer factor of Norig
x = np.arange(Norig*Norig).reshape((Norig,Norig)) #for testing
y = np.empty((Ndown,Ndown)) # for testing
for yr,xr in enumerate(np.arange(0,Norig,step)):
for yc,xc in enumerate(np.arange(0,Norig,step)):
y[yr,yc] = np.mean(x[xr:xr+step,xc:xc+step])
``````

You might also find scipy.signal.decimate interesting. It applies a more sophisticated low-pass filter than simple averaging before downsampling the data, although you'd have to decimate one axis, then the other.

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Average a 2D array over subarrays of size NxN:

``````height, width = data.shape
data = average(split(average(split(data, width // N, axis=1), axis=-1), height // N, axis=1), axis=-1)
``````
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Nice one! Just a clarification that average and split are numpy funtions. – MonkeyButter Nov 23 '15 at 6:17