# Numpy: find first index of value fast

How can I find the index of the first occurrence of a number in a Numpy array? Speed is important to me. I am not interested in the following answers because they scan the whole array and don't stop when they find the first occurrence:

``````itemindex = numpy.where(array==item)[0][0]
nonzero(array == item)[0][0]
``````

Note 1: none of the answers from that question seem relevant Python: Numpy array help. Is there a function to return the index of something in an array?

Note 2: using a C-compiled method is preferred to a Python loop.

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There is a feature request for this scheduled for Numpy 2.0.0: https://github.com/numpy/numpy/issues/2269

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Link is dead :( –  Medeiros Oct 12 '13 at 0:07
@Medeiros, thanks, it was updated. –  cyborg Nov 23 '13 at 21:35

I think you have hit a problem where a different method and some a priori knowledge of the array would really help. The kind of thing where you have a X probability of finding your answer in the first Y percent of the data. The splitting up the problem with the hope of getting lucky then doing this in python with a nested list comprehension or something.

Writing a C function to do this brute force isn't too hard using ctypes either.

The C code I hacked together (index.c):

``````long index(long val, long *data, long length){
long ans, i;
for(i=0;i<length;i++){
if (data[i] == val)
return(i);
}
return(-999);
}
``````

and the python:

``````# to compile (mac)
# gcc -shared index.c -o index.dylib
import ctypes
lib = ctypes.CDLL('index.dylib')
lib.index.restype = ctypes.c_long
lib.index.argtypes = (ctypes.c_long, ctypes.POINTER(ctypes.c_long), ctypes.c_long)

import numpy as np
np.random.seed(8675309)
a = np.random.random_integers(0, 100, 10000)
print lib.index(57, a.ctypes.data_as(ctypes.POINTER(ctypes.c_long)), len(a))
``````

and I get 92.

Wrap up the python into a proper function and there you go.

The C version is a lot (~20x) faster for this seed (warning I am not good with timeit)

``````import timeit
t = timeit.Timer('np.where(a==57)[0][0]', 'import numpy as np; np.random.seed(1); a = np.random.random_integers(0, 1000000, 10000000)')
t.timeit(100)/100
# 0.09761879920959472
t2 = timeit.Timer('lib.index(57, a.ctypes.data_as(ctypes.POINTER(ctypes.c_long)), len(a))', 'import numpy as np; np.random.seed(1); a = np.random.random_integers(0, 1000000, 10000000); import ctypes; lib = ctypes.CDLL("index.dylib"); lib.index.restype = ctypes.c_long; lib.index.argtypes = (ctypes.c_long, ctypes.POINTER(ctypes.c_long), ctypes.c_long) ')
t2.timeit(100)/100
# 0.005288000106811523
``````
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If the array is doubles (remember python floats are C doubles by default) then you have to think a bit harder as == is not really safe or what you want for floating point values. Also don't forget that it is a really good idea when using ctypes to type your numpy arrays. –  Brian Larsen Oct 6 '11 at 17:02
Thanks @Brian Larsen . I might give it a try. I think it's a trivial feature request for the next numpy revision. –  cyborg Oct 12 '11 at 7:08
I agree with the feature request idea, that is clearly the best way. –  Brian Larsen Oct 12 '11 at 15:30

You can convert a boolean array to a Python string using `array.tostring()` and then using the find() method:

``````(array==item).tostring().find('\x01')
``````

This does involve copying the data, though, since Python strings need to be immutable. An advantage is that you can also search for e.g. a rising edge by finding `\x00\x01`

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You can use `numpy.argmax(array==item)`. This works because the max of array==item is True or 1, and returns the first index where this occurs.

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`numpy.argmax`, like `numpy.where`, scan the whole array. I am looking for a function that stops when it finds the item. –  cyborg Oct 3 '11 at 20:13
It must scan the whole array to make sure it returns the maximum (even if it returns just the first index). –  cyborg Oct 5 '11 at 9:39

If your list is sorted, you can achieve very quick search of index with the 'bisect' package. It's O(log(n)) instead of O(n).

``````bisect.bisect(a, x)
``````

finds x in the array a, definitely quicker in the sorted case than any C-routine going through all the first elements (for long enough lists).

It's good to know sometimes.

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`>>> cond = "import numpy as np;a = np.arange(40)"` `timeit("np.searchsorted(a, 39)", cond)` works for 3.47867107391 seconds. `timeit("bisect.bisect(a, 39)", cond2)` works for 7.0661458969116 seconds. It looks like `numpy.searchsorted` is better for sorted arrays (at least for ints). –  Boris Tsema Mar 3 '14 at 12:17

In case of sorted arrays `np.searchsorted` works.

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If array don't has this item at all array length will be returned. –  Boris Tsema Mar 3 '14 at 12:23

As far as I know only np.any and np.all on boolean arrays are short-circuited.

In your case, numpy has to go through the entire array twice, once to create the boolean condition and a second time to find the indices.

My recommendation in this case would be to use cython. I think it should be easy to adjust an example for this case, especially if you don't need much flexibility for different dtypes and shapes.

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I needed this for my job so I taught myself Python and Numpy's C interface and wrote my own. http://pastebin.com/GtcXuLyd It's only for 1-D arrays, but works for most data types (int, float, or strings) and testing has shown it is again about 20 times faster than the expected approach in pure Python-numpy.

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You can covert your array into a `list` and use it's `index()` method:

``````i = list(array).index(item)
``````

As far as I'm aware, this is a C compiled method.

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this is likely to be many times slower than just taking the first result from np.where –  cwa Dec 24 '12 at 17:43
very true.. I used `timeit()` on an array of 10000 integers -- converting to a list was about 100 times slower! I had forgotten that the underlying data structure for a numpy array is very different from a list.. –  drevicko Jan 2 '13 at 0:58

You can get a read-write buffer on an numpy array using `.data` attribute. Iterate over that, but you will need to know if your data is row or column major (use the `ndarray.shape` and `numpy.unravel_index` to convert the flat index back to an index tuple).

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Are you suggesting I use python iterations and not a ufunc? Is that more efficient than numpy.where? –  cyborg Oct 3 '11 at 9:37
I'm not sure, I didn't even know about ufuncs. Sounds like you already know more than me! –  wim Oct 3 '11 at 9:41

Just a note that if you are doing a sequence of searches, the performance gain from doing something clever like converting to string, might be lost in the outer loop if the search dimension isn't big enough. See how the performance of iterating find1 that uses the string conversion trick proposed above and find2 that uses argmax along the inner axis (plus an adjustment to ensure a non-match returns as -1)

``````import numpy,time
def find1(arr,value):
return (arr==value).tostring().find('\x01')

def find2(arr,value): #find value over inner most axis, and return array of indices to the match
b = arr==value
return b.argmax(axis=-1) - ~(b.any())

for size in [(1,100000000),(10000,10000),(1000000,100),(10000000,10)]:
print(size)
values = numpy.random.choice([0,0,0,0,0,0,0,1],size=size)
v = values>0

t=time.time()
numpy.apply_along_axis(find1,-1,v,1)
print('find1',time.time()-t)

t=time.time()
find2(v,1)
print('find2',time.time()-t)
``````

outputs

``````(1, 100000000)
('find1', 0.25300002098083496)
('find2', 0.2780001163482666)
(10000, 10000)
('find1', 0.46200013160705566)
('find2', 0.27300000190734863)
(1000000, 100)
('find1', 20.98099994659424)
('find2', 0.3040001392364502)
(10000000, 10)
('find1', 206.7590000629425)
('find2', 0.4830000400543213)
``````

That said, a find written in C would be at least a little faster than either of these approaches

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