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What I want to do is generate a numpy array that is the cumulative sum of another numpy array given a certain window.

For example, given an array [1,2,3,4,5,6,7,8,9,10,11,12] let's say I want a cumulative sum with a window of 3. What I want as out put would be [1,3,6,9,12,15,18,21,24,27,30,33]. I have a relatively large numpy array and would like to do a cumulative sum with a window of 400.

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4 Answers 4

up vote 1 down vote accepted
In [42]: lis=[1,2,3,4,5,6,7,8,9,10,11,12]

In [43]: w=3       #window size

In [44]: [sum(lis[i-(w-1):i+1]) if i>(w-1) else sum(lis[:i+1])  for i in range(len(lis))]
Out[44]: [1, 3, 6, 9, 12, 15, 18, 21, 24, 27, 30, 33]

In [45]: w=4

In [46]: [sum(lis[i-(w-1):i+1]) if i>(w-1) else sum(lis[:i+1])  for i in range(len(lis))]
Out[46]: [1, 3, 6, 10, 14, 18, 22, 26, 30, 34, 38, 42]

for python 2.4 or less, change the ternary operator:

(falseValue, trueValue)[condition] instead of trueValue if condition else falseValue

[(sum(lis[:i+1]),sum(lis[i-(w-1):i+1]))[i>(w-1)]  for i in range(len(lis))]
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weird I am getting a syntax error in python 2.4 –  user1440194 Oct 3 '12 at 13:55
1  
@user1440194: you shouldn't be using Python 2.4 anymore. It's ancient. Even 2.5 has reached end of life and is no longer getting security updates. –  larsmans Oct 3 '12 at 13:55
1  
@Ashwini Chaudhary, Shouldn't you better use itertools.accumlate()? –  LarsVegas Oct 3 '12 at 13:58
    
@larsvegas accumulate() is introduced in python 3.2, I am on python 2.6 and OP is using python 2.4. –  Ashwini Chaudhary Oct 3 '12 at 14:03
    
@user1440194 can you post the traceback of syntaxError you're getting? –  Ashwini Chaudhary Oct 3 '12 at 14:04

Here is perhaps a simpler answer, based on subtracting shifted cumsums.

>>> a = np.array([1,2,3,4,5,6,7,8,9,10,11,12])
>>> b = a.cumsum()
>>> b[3:] = b[3:] - a.cumsum()[:-3]
>>> b
array([ 1,  3,  6,  9, 12, 15, 18, 21, 24, 27, 30, 33])
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For others who may read these answers: This is the canonical way to do this in numpy, for whatever it's worth. If speed matters, it's much faster than any of the other solutions. You're fundamentally doing many fewer calculations that explicitly re-calculating sum for each window. –  Joe Kington Apr 9 at 14:41

seberg's answer is better and more general than mine, but note that you need to zero-pad your samples to get the result you want.

import numpy as np
from numpy.lib.stride_tricks import as_strided as ast
samples = 100
window = 3
padding = np.zeros(window - 1)
# zero-pad your samples
a = np.concatenate([padding,np.arange(1,samples + 1)])
newshape = (len(a) - window,window)
newstrides = a.strides * 2
# this gets you a sliding window of size 3, with a step of 1
strided = ast(a,shape = newshape,strides = newstrides)
# get your moving sum
strided.sum(1)
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You should likely use numpy, unless you really don't care about speed (though I would prefere it anyways). So you could use convolve or stride_tricks based approaches (these are not obvious, but solve these things nicely).

For example given a function like this (you can find more and fancier versions too):

def embed(array, dim, lag=1):
    """Create an embedding of array given a resulting dimension and lag.
    The array will be raveled before embedding.
    """
    array = np.asarray(array)
    array = array.ravel()
    new = np.lib.stride_tricks.as_strided(array,
                                     (len(array)-dim*lag+lag, dim),
                                     (array.strides[0], array.strides[0]*lag))
    return new

You can do:

embedded = embed(array, 400)
result = embedded.sum(1)

Which is memory efficient (the embedding or whatever you call it, does only create a view) and fast. The other approach of course would be to use convolve:

np.convolve(array, np.ones(400), mode='valid')

I don't know if you want the non full windows too, this would be the same as using mode='full' (default) for the convolve. For the other approach, that would have to be handled some other way.

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