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In a low-level function that is called many times, I need to do the equivalent of python's list.index, but with a numpy array. The function needs to return when it finds the first value, and raise ValueError otherwise. Something like:

>>> a = np.array([1, 2, 3])
>>> np_index(a, 1)
0
>>> np_index(a, 10)
Traceback (most recent call last):    
  File "<stdin>", line 1, in <module>
ValueError: 10 not in array

I want to avoid a Python loop if possible. np.where isn't an option as it always iterates through the entire array; I need something that stops once the first index is found.


EDIT: Some more specific information related to the problem.

  • About 90% of the time, the index I'm searching for is in the first 1/4 to 1/2 of the array. So there's potentially a factor of 2-4 speedup at stake here. The other 10% of the time the value is not in the array at all.

  • I've profiled things already, and the call to np.where is the bottleneck, taking up at least 50% of the total runtime.

  • It is not essential that it raise a ValueError; it just has to return something that obviously indicates that the value isn't in the array.

I will probably code up a solution in Cython, as suggested.

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So you have a numpy array or what? –  Felix Kling Feb 23 '11 at 22:34
    
Yes; I edited the question to clarify. –  lothario Feb 23 '11 at 22:41
1  
Have you profiled your code so you really know that where is the bottleneck. You may show that part of your code. AFAIK functionality you are looking for does not exists in numpy. Thanks –  eat Feb 24 '11 at 7:09
    
I concur with @eat. I don't think there is a method in numpy to do what you're asking, especially returning the ValueError. If you want to avoid python loops, I would say you should code your own function in cython, which should be fast and do exactly what you want. I also agree that you should profile your code and see that using nonzero or where and then finding the min index is actually the bottleneck in your code. Instead, if you call the function many times, the issue should be that you figure out if you can use numpy to avoid many calls when a single array operation might work. –  JoshAdel Feb 24 '11 at 13:32
    
You do posses then a quite unique situation. I never faced any serious performance problems with where in numpy nor find in matlab. (although just some times plain logical indexing is enough for the job) I won't expect any major improvements from cython, unless you'll cook up a very case specific solution (as your case may be). However, care still to show us your current code around the bottleneck? Thanks –  eat Feb 24 '11 at 19:19
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3 Answers 3

See my comment on the OP's question for caveats, but in general, I would do the following:

import numpy as np
a = np.array([1, 2, 3])
np.min(np.nonzero(a == 2)[0])

if the value you are looking for is not in the array, you'll get a ValueError due to:

ValueError: zero-size array to ufunc.reduce without identity

because you are trying to take the min value of an empty array.

I would profile this code and see if it is an actual bottleneck, because in general when numpy searches through an entire array using a built-in function rather than an explicit python loop, it is relatively fast. An insistence on halting the search when it finds the first value may be functionally irrelevant.

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The closest thing I could find to what you're asking for is nonzero. It may sound odd, but the documentation makes it look like it might have the desired result.

http://www.scipy.org/Numpy_Example_List_With_Doc#nonzero

Specifically this part:

a.nonzero()

Return the indices of the elements that are non-zero.

Refer to numpy.nonzero for full documentation.

See Also

numpy.nonzero : equivalent function

>>> from numpy import *
>>> y = array([1,3,5,7])
>>> indices = (y >= 5).nonzero()
>>> y[indices]
array([5, 7])
>>> nonzero(y)                                # function also exists
(array([0, 1, 2, 3]),)

Where (http://www.scipy.org/Numpy_Example_List_With_Doc#where) may also be of interest to you.

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Thanks, but the y >= 5 and nonzero(y) hit every array element -- I'm looking for a function that returns as soon as it finds the first index. –  lothario Feb 24 '11 at 2:50
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NumPy's searchsorted is very similar to lists's index, except that it requires a sorted array and behaves more numerically. The big differences are that you don't need to have an exact match, and you can search starting from either the left or right sides. See the following examples to get an idea how it works:

import numpy as np
a = np.array([10, 20, 30])

a.searchsorted(-99) == a.searchsorted(0) == a.searchsorted(10)
# returns index 0 for value 10

a.searchsorted(20.1) == a.searchsorted(29.9) == a.searchsorted(30)
# returns index 2 for value 30

a.searchsorted(30.1) == a.searchsorted(99) == a.searchsorted(np.nan)
# returns index 3 for undefined value

With the last case, where an index of 3 is returned, you can handle this as you like. I gather from the name and intention of the function that it stops after finding the first suitable index.

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I don't know if it can be used this way. It relies on a binary search and the OP doesn't specify that his array is already sorted. –  codewarrior Aug 24 '11 at 9:24
    
list.index relies on a sorted array, and the "binary search" part of the documentation is just a warning for those that mix data types (i.e., a = np.array([2.1, 3.1, 4.1], dtype=np.float16); a.searchsorted(np.float32(3.1)) returns 2, not 1 as expected) –  Mike T Aug 24 '11 at 10:16
    
list.index does not rely on a sorted array. –  codewarrior Aug 24 '11 at 12:15
    
Oh right, list.index returns the first index (if any). Yes, this solution only works on sorted arrays. –  Mike T Aug 24 '11 at 13:00
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