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If I have this numpy array:

>>> a
array([[ 1,  2,  3],
       [ 4,  4,  6],
       [ 4, 10,  9]])

What's the fastest way to select out of it all the rows where a condition holds true of at least N many elements?

For example select all the rows where at least two numbers are evenly divisible by 2.

The solution I came up with is:

@ find rows where 2 or more elements are evenly divisible by two
N = 2  
a[where(array(map(lambda x: sum(x), a % 2 == 0)) >= N)]

An alternative solution using apply_along_axis is:

a[where(sum(numpy.apply_along_axis(lambda x: x % 2 == 0, 1, a), axis=1) >= 2)]

Is there a more elegant/faster way in numpy/scipy than these? If not, which of the above two is best?

share|improve this question
up vote 3 down vote accepted

I'd probably do

In [29]: timeit a[(a % 2 == 0).sum(axis=1) >= 2]
10000 loops, best of 3: 29.5 us per loop

which works because True/False have integer values of 1/0. For comparison:

In [30]: timeit a[where(array(map(lambda x: sum(x), a % 2 == 0)) >= N)]
10000 loops, best of 3: 72 us per loop

In [31]: timeit a[where(sum(apply_along_axis(lambda x: x % 2 == 0, 1, a), axis=1) >= 2)]
1000 loops, best of 3: 220 us per loop

Note that using lambdas costs you a lot of the benefits of using numpy in the first place, and lambda x: sum(x) is simply a more verbose and slower way of writing sum here anyway.

Also note that if the array were large, it'd probably be more efficient to use a method which could short-circuit rather than the above.

share|improve this answer
    
I have the same problem and the matrix is large. What method can do short circuit? – Wai Yip Tung Nov 23 '13 at 6:13

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