Assuming I have a numpy array like: [1,2,3,4,5,6] and another array: [0,0,1,2,2,1] I want to sum the items in the first array by group (the second array) and obtain ngroups results in group number order (in this case the result would be [3, 9, 9]). How do I do this in numpy?

There's more than one way to do this, but here's one way:
You can vectorize things so that there's no for loop at all, but I'd recommend against it. It becomes unreadable, and will require a couple of 2D temporary arrays, which could require large amounts of memory if you have a lot of data. Edit: Here's one way you could entirely vectorize. Keep in mind that this may (and likely will) be slower than the version above. (And there may be a better way to vectorize this, but it's late and I'm tired, so this is just the first thing to pop into my head...) However, keep in mind that this is a bad example... You're really better off (both in terms of speed and readability) with the loop above...



I tried scripts from everyone and my considerations are: Joe: Will only work if you have few groups. kevpie: Too slow because of loops (this is not pythonic way) Bi_Rico and Sven: perform good, but will only work for Int32 (if the sum goes over 2^32/2 it will fail) Alex: is the fastest one, good for sum. But if you want more flexibility and the possibility to group by other statistics use SciPy:
This is good because you have many statistics to group (sum, mean, variance, ...). 


The numpy function
The ith element of the output is the sum of all the Hope that helps. 


I know this question is pretty old, but I thought I'd through in my two cents. This is a vectorized method of doing this sum based on the implementation of numpy.unique. According to my timings it is up to 500 times faster than the loop method and up to 100 times faster than the histogram method.



If the groups are indexed by consecutive integers, you can abuse the
This will avoid any Python loops. 


A pure python implementation:


