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I want to do the following operation. But It likes the histogram operation.

maxIndex = 6    
dst  =zeros((1,6))
a    =array([1,2,3,4,7,0,3,4,5,7])

a's length == index's length,

for i in (a.size):
    dst[index[i]] = dst[index[i]] + a[i]

How can I do this more pythonic. and more efficiently

share|improve this question
possible duplicate of Assigning identical array indices at once in Python/Numpy – Ophion Aug 30 '13 at 12:54
The 1D case was just asked here. – Ophion Aug 30 '13 at 12:55
This question appears to belong on codereview.stackexchange.org – David Pope Mar 2 '14 at 0:10
up vote 4 down vote accepted

If I understand correctly, I think you are looking for numpy.bincount:

dst = numpy.bincount(index, weights=a, minlength=maxIndex)

This give me array([ 0., 6., 0., 11., 3., 16.]) as the output. If you don't want to calculate maxIndex by hand, you can omit minlength parameter from the function call and numpy will return an appropriately-sized array for you.

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minlength should be set to maxIndex to match OP's output. – kennytm Aug 30 '13 at 8:05
@KennyTM I think you're right. I wasn't sure what maxIndex was doing in his question. What the OP probably really wants is the default behavior, without the minlength parameter since that will return an array with a non-zero last element... – Alok Singhal Aug 30 '13 at 8:06
very nice. That's what i want – Samuel Aug 30 '13 at 8:13

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