I'm writing a moving average function that uses the convolve function in numpy, which should be equivalent to a (weighted moving average). When my weights are all equal (as in a simple arithmatic average), it works fine:

data = numpy.arange(1,11)
numdays = 5
w = [1.0/numdays]*numdays


array([ 3.,  4.,  5.,  6.,  7.,  8.])

However, when I try to use a weighted average

w = numpy.cumsum(numpy.ones(numdays,dtype=float),axis=0); w = w/numpy.sum(w)

instead of the (for the same data) 3.667,4.667,5.667,6.667,... I expect, I get

array([ 2.33333333,  3.33333333,  4.33333333,  5.33333333,  6.33333333,

If I remove the 'valid' flag, I don't even see the correct values. I would really like to use convolve for the WMA as well as MA as it makes the code cleaner (same code, different weights) and otherwise I think I'll have to loop through all the data and take slices.

Any ideas about this behavior?

1 Answer 1


What you want is np.correlate in a convolution the second argument is inverted basically, so that your expected result would be with np.convolve(data, w[::-1], 'valid').

  • 1
    thanks I see. And I also did not know that [::-1] will reverse an array/list. That is extremely useful information!
    – Dr. Andrew
    Oct 10, 2012 at 11:59
  • 2
    As a mere comment, np.cumsum(np.ones(numdays,dtype=float),axis=0) is a very complex way to get np.arange(numdays)+1. or np.np.arange(1., numdays+1.). Jul 21, 2016 at 12:42

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