# Selecting rows from numpy ndarray

I want to select only certain rows from a numpy array based on the value in the second column. For example, this test array has integers from 1 to 10 in second column.

>>> test = numpy.array([numpy.arange(100), numpy.random.randint(1, 11, 100)]).transpose()
>>> test[:10, :]
array([[ 0,  6],
[ 1,  7],
[ 2, 10],
[ 3,  4],
[ 4,  1],
[ 5, 10],
[ 6,  6],
[ 7,  4],
[ 8,  6],
[ 9,  7]])


If I wanted only rows where the second value is 4, it is easy.

>>> test[test[:, 1] == 4]
array([[ 3,  4],
[ 7,  4],
[16,  4],
...
[81,  4],
[83,  4],
[88,  4]])


But how do I achieve the same result when there is more than one wanted value. The wanted list can be of arbitrary length. For example, I may want all rows where the second column is either 2, 4 or 6.

>>> wanted = [2, 4, 6]


The only way I have come up with is to use list comprehension and then convert this back into an array and seems too convoluted, although it works.

>>> test[numpy.array([test[x, 1] in wanted for x in range(len(test))])]
array([[ 0,  6],
[ 3,  4],
[ 6,  6],
...
[90,  2],
[91,  6],
[92,  2]])


Is there a better way to do this in numpy itself that I am missing?

-

test[numpy.logical_or.reduce([test[:,1] == x for x in wanted])]


The result should be faster than the original version since numpy's doing the inner loops instead of python.

-
This solution goes through the array len(wanted) times. It is usually faster to go through the array in a single pass. –  EOL Dec 26 '09 at 11:04
Thanks Amnon. This is the solution that I decided to accept. I think it is clear to understand and is about 20 x faster than my original solution. –  Raja Selvaraj Dec 26 '09 at 12:01

The following solution should be faster than Amnon's solution as wanted gets larger:

wanted_set = set(wanted)  # Much faster look up than with lists, for larger lists

@numpy.vectorize
def selected(elmt): return elmt in wanted_set  # Or: selected = wanted_set.__contains__

print test[selected(test[:, 1])]


In fact, it has the advantage of searching through the test array only once (instead of len(wanted) times). It also uses Python's built-in fast element look up in sets, which are much faster for this than lists. It is also fast because it uses Numpy's fast loops. You also get the optimization of the in operator: once a wanted element matches, the remaining elements do not have to be tested (as opposed to the "logical or" approach of Amnon, were all the elements in wanted are tested no matter what).

Alternatively, you could use the following one-liner, which also goes through your array only once:

test[numpy.apply_along_axis(lambda x: x[1] in wanted, 1, test)]


This is much much slower, though, as this extracts the element in the second column at each iteration (instead of doing is in one pass, as in the first solution of this answer).

-
These solutions call python for every element instead of using numpy's comparison. According to my tests, your first solution is faster than mine for len(wanted)=50 but slower for len(wanted)=5. –  Amnon Dec 26 '09 at 11:10
EOL, many thanks for your time and effort. Your explanations were clear. I chose to use Amnon's solution because for my usual scenario (len(test) about 1000 and len(wanted) about 3-5), that was faster than your first solution. The speed difference is not huge, but I also found it clearer. But it was good to be reminded of numpy's vectorize and I am sure I will find a use for it soon. –  Raja Selvaraj Dec 26 '09 at 12:04
@Amnon: Good point, and interesting results. Thanks! –  EOL Dec 26 '09 at 22:55
wanted = (2,4,6)