# find nearest value in numpy array

is there a numpy-thonic way, e.g. function, to find the 'nearest value' in an array? example:

``````np.find_nearest( array, value )
``````

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``````import numpy as np
def find_nearest(array,value):
idx = (np.abs(array-value)).argmin()
return array[idx]

array = np.random.random(10)
print(array)
# [ 0.21069679  0.61290182  0.63425412  0.84635244  0.91599191  0.00213826
#   0.17104965  0.56874386  0.57319379  0.28719469]

value = 0.5

print(find_nearest(array, value))
# 0.568743859261
``````
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+1: Tidy answer :-) –  Jon Cage Apr 2 '10 at 12:02
I would suggest the more direct `return np.abs(array-value).min()`. In fact, there is no need for any index, when the nearest element is what is looked for. –  EOL Apr 2 '10 at 14:42
@EOL: `return np.abs(array-value).min()` gives the wrong answer. This gives you the min of the absolute value distance, and somehow we need to return the actual array value. We could add `value` and come close, but the absolute value throws a wrench into things... –  unutbu Apr 2 '10 at 18:51
@~unutbu You're right, my bad. I can't think of anything better than your solution! –  EOL Apr 3 '10 at 23:07

With slight modification, the answer above works with arrays of arbitrary dimension (1d, 2d, 3d, ...):

``````def find_nearest(a, a0):
"Element in nd array `a` closest to the scalar value `a0`"
idx = np.abs(a - a0).argmin()
return a.flat[idx]
``````

Or, written as a single line:

``````a.flat[np.abs(a - a0).argmin()]
``````
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The "flat" bit isn't necessary. `a[np.abs(a-a0).argmin)]` works fine. –  Max Shron Dec 11 '13 at 14:20
Actually, that still only works for one dimension, since argmin() gives multiple results per column / dimension. Also I had a typo. This works, at least for 2 dimensions: `a[np.sum(np.square(np.abs(a-a0)),1).argmin()]`. –  Max Shron Dec 11 '13 at 20:52
So, it does not work for higher dimensions, and the answer should be deleted (or modified to reflect this) –  Hugues Fontenelle Jul 8 at 11:57

Here's an extension to find the nearest vector in an array of vectors.

``````import numpy as np

def find_nearest_vector(array, value):
idx = np.array([np.linalg.norm(x+y) for (x,y) in array-value]).argmin()
return array[idx]

A = np.random.random((10,2))*100
""" A = array([[ 34.19762933,  43.14534123],
[ 48.79558706,  47.79243283],
[ 38.42774411,  84.87155478],
[ 63.64371943,  50.7722317 ],
[ 73.56362857,  27.87895698],
[ 96.67790593,  77.76150486],
[ 68.86202147,  21.38735169],
[  5.21796467,  59.17051276],
[ 82.92389467,  99.90387851],
[  6.76626539,  30.50661753]])"""
pt = [6, 30]
print find_nearest_vector(A,pt)
# array([  6.76626539,  30.50661753])
``````
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Here's a version that will handle a non-scalar "values" array:

``````import numpy as np

def find_nearest(array, values):
indices = np.abs(np.subtract.outer(array, values)).argmin(0)
return array[index]
``````

Or a version that returns a numeric type (e.g. int, float) if the input is scalar:

``````def find_nearest(array, values):
values = np.atleast_1d(values)
indices = np.abs(np.subtract.outer(array, values)).argmin(0)
out = array[indices]
return out if len(out) > 1 else out[0]
``````
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IF your array is sorted and is very large, this is a much faster solution:

``````def find_nearest(array,value):
idx = np.searchsorted(array, value, side="left")
if math.fabs(value - array[idx-1]) < math.fabs(value - array[idx]):
return array[idx-1]
else:
return array[idx]
``````

This scales to very large arrays. You can easily modify the above to sort in the method if you can't assume that the array is already sorted. It’s overkill for small arrays, but once they get large this is much faster.

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If you don't want to use numpy this will do it:

``````def find_nearest(array, value):
n = [abs(i-value) for i in array]
idx = n.index(min(n))
return array[idx]
``````
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