# Subsampling/averaging over a numpy array

I have a numpy array with floats.

What I would like to have (if it is not already existing) is a function that gives me a new array of the average of every x points in the given array, like sub sampling (and opposite of interpolation(?)).

E.g. sub_sample(numpy.array([1, 2, 3, 4, 5, 6]), 2) gives [1.5, 3.5, 5.5]

E.g. Leftovers can be removed, e.g. sub_sample(numpy.array([1, 2, 3, 4, 5]), 2) gives [1.5, 3.5]

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Using NumPy routines you could try something like

``````import numpy

x = numpy.array([1, 2, 3, 4, 5, 6])

numpy.mean(x.reshape(-1, 2), 1) # Prints array([ 1.5,  3.5,  5.5])
``````

and just replace the `2` in the `reshape` call with the number of items you want to average over.

Edit: This assumes that `n` divides into the length of `x`. You'll need to include some checks if you are going to turn this into a general function. Perhaps something like this:

``````def average(arr, n):
end =  n * int(len(arr)/n)
return numpy.mean(arr[:end].reshape(-1, n), 1)
``````

This function in action:

``````>>> x = numpy.array([1, 2, 3, 4, 5, 6])
>>> average(x, 2)
array([ 1.5,  3.5,  5.5])

>>> x = numpy.array([1, 2, 3, 4, 5, 6, 7])
>>> average(x, 2)
array([ 1.5,  3.5,  5.5])
``````
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This one works fine, except when the window size (2 in example above) is not a multiplication of the length of the array but I can make sure this is. Thanks! – Michel Keijzers Jun 1 '12 at 9:46
@MichelKeijzers Just hand a think about that, see my edit. – Chris Jun 1 '12 at 9:49
thanks ... yes that was exactly what I also was thinking about. – Michel Keijzers Jun 1 '12 at 9:54
Is there an easy way to generalize this to downsampling a single axis, in a multidimensional array? e.g. average an array of shape [8,4] down to [4,4] ? – DilithiumMatrix Jul 24 '13 at 4:23
Could you provide a solution where i could enter a floating downsampling rate. E.g 2.7 – maniac Dec 2 '15 at 23:22
``````def subsample(data, sample_size):
samples = list(zip(*[iter(data)]*sample_size))   # use 3 for triplets, etc.
return map(lambda x:sum(x)/float(len(x)), samples)

l = [1, 2, 3, 4, 5, 6]

print subsample(l, 2)
print subsample(l, 3)
print subsample(l, 5)
``````

Gives:

``````[1.5, 3.5, 5.5]
[2.0, 5.0]
[3.0]
``````
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Thank you I will try it, however I hope there will be a numpy function because they tend to be around 10 times faster as most similar Python function. – Michel Keijzers Jun 1 '12 at 9:39