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I know there is a method for python list to return the first index of something

l = list(1,2,3)
>>>  1

Is there something like that for numpy arrays?

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If it makes you feel better, you can assume that you're implicitly saying thanks every time you post a question. There is no need to spell it out, and there really isn't any reason to put it back in years later. See… – BoltClock Mar 12 '15 at 14:42
up vote 200 down vote accepted

Yes, here is the answer given a Numpy array, array, and a value, item, to search for.

itemindex = numpy.where(array==item)

The result is a tuple with first all the row indices, then all the column indices.

For example if array is two dimensions and it contained your item at two locations then


would be equal to your item and so would



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If you are looking for the first row in which an item exists in the first column, this works (although it will throw an index error if none exist) rows, columns = np.where(array==item); first_idx = sorted([r for r, c in zip(rows, columns) if c == 0])[0] – BrT Jan 15 '13 at 13:44
Also have a look at this question:… – Brian Larsen Jun 19 '14 at 18:58
What if you want it to stop searching after finding the first value? I don't think where() is comparable to find() – Michael Clerx Nov 20 '14 at 19:12
Ah! If you're interested in performance, check out the answer to this question:… – Michael Clerx Nov 20 '14 at 19:17

If you need the index of the first occurrence of only one value, you can use nonzero (or where, which amounts to the same thing in this case):

>>> t = array([1, 1, 1, 2, 2, 3, 8, 3, 8, 8])
>>> nonzero(t == 8)
(array([6, 8, 9]),)
>>> nonzero(t == 8)[0][0]

If you need the first index of each of many values, you could obviously do the same as above repeatedly, but there is a trick that may be faster. The following finds the indices of the first element of each subsequence:

>>> nonzero(r_[1, diff(t)[:-1]])
(array([0, 3, 5, 6, 7, 8]),)

Notice that it finds the beginning of both subsequence of 3s and both subsequences of 8s:

[1, 1, 1, 2, 2, 3, 8, 3, 8, 8]

So it's slightly different than finding the first occurrence of each value. In your program, you may be able to work with a sorted version of t to get what you want:

>>> st = sorted(t)
>>> nonzero(r_[1, diff(st)[:-1]])
(array([0, 3, 5, 7]),)
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Could you please explain what r_ is? – Geoff Mar 23 '11 at 18:55
@Geoff, r_ concatenates; or, more precisely, it translates slice objects to concatenation along each axis. I could have used hstack instead; that may have been less confusing. See the documentation for more information about r_. There is also a c_. – Vebjorn Ljosa Mar 24 '11 at 19:58
+1, nice one! (vs NP.where) your solution is a lot simpler (and probably faster) in the case where it's only the first occurrence of a given value in a 1D array that we need – doug Feb 14 '14 at 1:33
The latter case (finding the first index of all values) is given by vals, locs = np.unique(t, return_index=True) – askewchan Nov 2 '15 at 15:39

If you're going to use this as an index into something else, you can use boolean indices if the arrays are broadcastable; you don't need explicit indices. The absolute simplest way to do this is to simply index based on a truth value.

other_array[first_array == item]

Any boolean operation works:

a = numpy.arange(100)
other_array[first_array > 50]

The nonzero method takes booleans, too:

index = numpy.nonzero(first_array == item)[0][0]

The two zeros are for the tuple of indices (assuming first_array is 1D) and then the first item in the array of indices.

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to index on any criteria, you can so something like the following:

In [1]: from numpy import *
In [2]: x = arange(125).reshape((5,5,5))
In [3]: y = indices(x.shape)
In [4]: locs = y[:,x >= 120] # put whatever you want in place of x >= 120
In [5]: pts = hsplit(locs, len(locs[0]))
In [6]: for pt in pts:
   .....:         print(', '.join(str(p[0]) for p in pt))
4, 4, 0
4, 4, 1
4, 4, 2
4, 4, 3
4, 4, 4

[edit] and here's a quick function to do what list.index() does, except doesn't raise an exception if it's not found. beware -- this is probably very slow on large arrays. you can probably monkeypatch this on to arrays if you'd rather use it as a method.

def ndindex(ndarray, item):
    if len(ndarray.shape) == 1:
            return [ndarray.tolist().index(item)]
        for i, subarray in enumerate(ndarray):
                return [i] + ndindex(subarray, item)
In [1]: ndindex(x, 103)
Out[1]: [4, 0, 3]
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you can also convert a Numpy array to list in the air and get its index . for example

l = [1,2,3,4,5] #python list
a = numpy.array(l) #numpy array
i = a.tolist().index(2) # i will return index of 2
print i

Will print 1.

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There are lots of operations in numpy that could perhaps be put together to accomplish this. This will return indices of elements equal to item:

numpy.nonzero(array - item)

You could then take the first elements of the lists to get a single element.

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wouldn't that give the indices of all elements that are not equal to item? – Autoplectic Jan 11 '09 at 2:06
Yeah, this is close, but gives the not equals... – Alex Jan 11 '09 at 3:28

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