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I am looking to speed up the following piece of code:

NNlist=[np.unique(i) for i in NNlist] 

where NNlist is a list of np.arrays with duplicated entries.

Thanks :)

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Is the original NNlist actually a multi dimensional numpy array ? (and why would you then want the result to be a Python list?) –  Jon Clements Dec 3 '12 at 17:45
    
Actually NNlist is a list of np.arrays because it is created using append (the size is not know a priori). However, at this point I found that creating a list or a np.array does not matter –  bios Dec 3 '12 at 17:48
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map(np.unique, NNlist) might be a good place to start. –  Will Dec 3 '12 at 17:52

2 Answers 2

numpy.unique is already pretty optimized, you're not likely get get much of a speedup over what you already have unless you know something else about the underlying data. For example if the data is all small integers you might be able to use numpy.bincout or if the unique values in each of the arrays are mostly the same there might be some optimization that could be done over the whole list of arrays.

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Here are some benchmarks:

In [72]: ar_list = [np.random.randint(0, 100, 1000) for _ in range(100)]

In [73]: %timeit map(np.unique, ar_list)
100 loops, best of 3: 4.9 ms per loop

In [74]: %timeit [np.unique(ar) for ar in ar_list]
100 loops, best of 3: 4.9 ms per loop

In [75]: %timeit [pd.unique(ar) for ar in ar_list] # using pandas
100 loops, best of 3: 2.25 ms per loop

So pandas.unique seems to be faster than numpy.unique. However the docstring mentions that the values are "not necessarily sorted", which (partly) explains, that it is faster. Using a list comprehension or map doesn't give a difference in this example.

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