# Decrease array size by averaging adjacent values with numpy

I have a large array of thousands of vals in numpy. I want to decrease its size by averaging adjacent values. For example:

``````a = [2,3,4,8,9,10]
#average down to 2 values here
a = [3,9]
#it averaged 2,3,4 and 8,9,10 together
``````

So, basically, I have n number of elements in array, and I want to tell it to average down to X number of values, and it averages like above.

Is there some way to do that with numpy (already using it for other things, so I'd like to stick with it).

• I was going to propose `reshape` and then `mean`, but that would be the same as the accepted answer to this question. Would that work for your purposes?
– DSM
Oct 29, 2014 at 18:56
• Dear Adam, I hope you found the answers given below to be helpful. Please accept one of the many answers given if you found them useful. =) Nov 28, 2018 at 4:25

## 4 Answers

Using `reshape` and `mean`, you can average every `m` adjacent values of an 1D-array of size `N*m`, with `N` being any positive integer number. For example:

``````import numpy as np

m = 3
a = np.array([2, 3, 4, 8, 9, 10])
b = a.reshape(-1, m).mean(axis=1)
#array([3., 9.])
``````

1)`a.reshape(-1, m)` will create a 2D image of the array without copying data:

``````array([[ 2,  3,  4],
[ 8,  9, 10]])
``````

2)taking the mean in the second axis (`axis=1`) will then calculate the mean value of each row, resulting in:

``````array([3., 9.])
``````

Try this:

``````n_averaged_elements = 3
averaged_array = []
a = np.array([ 2,  3,  4,  8,  9, 10])
for i in range(0, len(a), n_averaged_elements):
slice_from_index = i
slice_to_index = slice_from_index + n_averaged_elements
averaged_array.append(np.mean(a[slice_from_index:slice_to_index]))

>>>> averaged_array
>>>> [3.0, 9.0]
``````

Looks like a simple non-overlapping moving window average to me, how about:

``````In [3]:

import numpy as np
a = np.array([2,3,4,8,9,10])
window_sz = 3
a[:len(a)/window_sz*window_sz].reshape(-1,window_sz).mean(1)
#you want to be sure your array can be reshaped properly, so the [:len(a)/window_sz*window_sz] part
Out[3]:
array([ 3.,  9.])
``````

In this example, I presume that `a` is the 1D numpy array that needs to be averaged. In the method that I give below, we first find the factors of the length of this array `a`. And, then we choose the an appropriate factor as the step size to average the array with.

Here is the code.

``````import numpy as np
from functools import reduce

''' Function to find factors of a given number 'n' '''
def factors(n):
return list(set(reduce(list.__add__,
([i, n//i] for i in range(1, int(n**0.5) + 1) if n % i == 0))))

a = [2,3,4,8,9,10]  #Given array.

'''fac: list of factors of length of a.
In this example, len(a) = 6. So, fac = [1, 2, 3, 6] '''
fac = factors(len(a))

'''step: choose an appropriate step size from the list 'fac'.
In this example, we choose one of the middle numbers in fac
(3). '''
step = fac[int( len(fac)/3 )+1]

'''avg: initialize an empty array. '''
avg = np.array([])
for i in range(0, len(a), step):
avg = np.append( avg, np.mean(a[i:i+step]) ) #append averaged values to `avg`

print avg  #Prints the final result

[3.0, 9.0]
``````