# Numpy.array indexing question

I am trying to create a 'mask' of a numpy.array by specifying certain criteria. Python even has nice syntax for something like this:

``````>> A = numpy.array([1,2,3,4,5])
>> A > 3
array([False, False, False, True, True])
``````

But if I have a list of criteria instead of a range:

``````>> A = numpy.array([1,2,3,4,5])
>> crit = [1,3,5]
``````

I can't do this:

``````>> A in crit
``````

I have to do something based on list comprehensions, like this:

``````>> [a in crit for a in A]
array([True, False, True, False, True])
``````

Which is correct.

Now, the problem is that I am working with large arrays and the above code is very slow. Is there a more natural way of doing this operation that might speed it up?

EDIT: I was able to get a small speedup by making crit into a set.

EDIT2: For those who are interested:

Jouni's approach: 1000 loops, best of 3: 102 µs per loop

numpy.in1d: 1000 loops, best of 3: 1.33 ms per loop

EDIT3: Just tested again with B = randint(10,size=100)

Jouni's approach: 1000 loops, best of 3: 2.96 ms per loop

numpy.in1d: 1000 loops, best of 3: 1.34 ms per loop

Conclusion: Use numpy.in1d() unless B is very small.

-

I think that the numpy function `in1d` is what you are looking for:

``````>>> A = numpy.array([1,2,3,4,5])
>>> B = [1,3,5]
>>> numpy.in1d(A,crit)
array([ True, False,  True, False,  True], dtype=bool)
``````

as stated in its docstring, "`in1d(a, b)` is roughly equivalent to `np.array([item in b for item in a])`"

Admittedly, I haven't done any speed tests, but it sounds like what you are looking for.

Another faster way

Here's another way to do it which is faster. Sort the B array first(containing the elements you are looking to find in A), turn it into a numpy array, and then do:

``````B[B.searchsorted(A)] == A
``````

though if you have elements in A that are larger than the largest in B, you will need to do:

``````inds = B.searchsorted(A)
inds[inds == len(B)] = 0
``````

It may not be faster for small arrays (especially for B being small), but before long it will definitely be faster. Why? Because this is a O(N log M) algorithm, where N is the number of elements in A and M is the number of elements in M, putting together a bunch of individual masks is O(N * M). I tested it with N = 10000 and M = 14 and it was already faster. Anyway, just thought that you might like to know, especially if you are truly planning on using this on very large arrays.

-
looks like a recent addition to numpy (wasn't in version 1.3) –  Paul Oct 21 '10 at 19:36
You are right. I only tested on B having a length of 3. If B is also large, numpy.in1d() definitely scales a lot better. –  aduric Oct 22 '10 at 14:07
@aduric and my second method is even faster than in1d. –  Justin Peel Oct 22 '10 at 15:46

Combine several comparisons with "or":

``````A = randint(10,size=10000)
mask = (A == 1) | (A == 3) | (A == 5)
``````

Or if you have a list B and want to create the mask dynamically:

``````B = [1, 3, 5]
``````
-
just wondering why or how to anticipate when `numpy` will naturally do this `ufunc` enabled element-wise logical operation? When doing logical operations `numpy` sometimes throws back an exception: `ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all().` –  dtlussier Oct 21 '10 at 18:35
this is certainly the fastest approach, albeit, not the cleanest one. –  aduric Oct 21 '10 at 20:41

Create a mask and use the compress function of the numpy array. It should be much faster. If you have a complex criteria, remember to construct it based on math of the arrays.

``````a = numpy.array([3,1,2,4,5])
``````

or

``````a = numpy.random.random_integers(1,5,100000)
c=a.compress((a<=4)*(a>=2)) ## numbers between n<=4 and n>=2
d=a.compress(~((a<=4)*(a>=2))) ## numbers either n>4 or n<2
``````

Ok, if you want a mask that has all a in [1,3,5] you can do something like

``````a = numpy.random.random_integers(1,5,100000)
``````a = numpy.random.random_integers(1,5,100000)