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I would like to make a nice function to aggregate data among an array (it's a numpy record array, but it does not change anything)

you have an array of data that you want to aggregate among one axis: for example an array of dtype=[(name, (np.str_,8), (job, (np.str_,8), (income, np.uint32)] and you want to have the mean income per job

I did this function, and in the example it should be called as aggregate(data,'job','income',mean)

def aggregate(data, key, value, func):

    data_per_key = {}

    for k,v in zip(data[key], data[value]):

        if k not in data_per_key.keys():



    return [(k,func(data_per_key[k])) for k in data_per_key.keys()]

the problem is that I find it not very nice I would like to have it in one line: do you have any ideas?

Thanks for your answer Louis

PS: I would like to keep the func in the call so that you can also ask for median, minimum...

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I don't know numpy, but your dtype does seem to have a problem with the brackets.. –  int3 Dec 1 '09 at 22:27
The parenthesis don't match. Makes for some extra confusion. –  Skylar Saveland Dec 1 '09 at 22:51
I don't understand your comment that you "would like to have it in one line". When you call the function, that will be one line. Does it matter how many lines the function itself has? Anyway, I think your best bet is to use defaultdict as the answers say. –  steveha Dec 1 '09 at 23:51
soory for the mismatch, I changed the names and types to be explicit and forgot some brackets... in 1 line as in the matplotlib.mlab answer –  Louis Dec 2 '09 at 20:14
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4 Answers

Your if k not in data_per_key.keys() could be rewritten as if k not in data_per_key, but you can do even better with defaultdict. Here's a version that uses defaultdict to get rid of the existence check:

import collections

def aggregate(data, key, value, func):
    data_per_key = collections.defaultdict(list)
    for k,v in zip(data[key], data[value]):

    return [(k,func(data_per_key[k])) for k in data_per_key.keys()]
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I'd change the last line to return [(k,f(v)) for k,v in data_per_key.items()] –  gnibbler Dec 1 '09 at 23:09
That's a good call, but I was trying to highlight the defaultdict stuff by making that the only change. Your return is definitely better, though. –  Hank Gay Dec 2 '09 at 11:54
thanks for the defaultdict trick! and also for the final iteration –  Louis Dec 2 '09 at 20:12
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Perhaps the function you are seeking is matplotlib.mlab.rec_groupby:

import matplotlib.mlab

    dtype=[('name', np.str_,8), ('job', np.str_,8), ('income', np.uint32)])

result=matplotlib.mlab.rec_groupby(data, ('job',), (('income',np.mean,'avg_income'),))


('Digger', 4.0)
('Planter', 2.5)
('Waterer', 3.0)

matplotlib.mlab.rec_groupby returns a recarray:

# [('job', '|S7'), ('avg_income', '<f8')]

You may also be interested in checking out pandas, which has even more versatile facilities for handling group-by operations.

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that's exactly what I was looking for: the job done in one line! Moreover it's returning directly an array! Perfect! –  Louis Dec 2 '09 at 20:11
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Here is a recipe which emulates the functionality of matlabs accumarray quite well. It uses pythons iterators quite nicely, nevertheless, performancewise it sucks compared to the matlab implementation. As I had the same problem, I had written an implementation using scipy.weave. You can find it here: https://github.com/ml31415/accumarray

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should help to make it a little prettier, more pythonic, more efficient possibly. I'll come back later to check on your progress. Maybe you can edit the function with this in mind? Also see the next couple of sections.

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