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I am looking for a numpy function to find the indices at which certain values are found within a vector (xs). The values are given in another array (ys). The returned indices must follow the order of ys.

In code, I want to replace the list comprehension below by a numpy function.

>> import numpy as np
>> xs = np.asarray([45, 67, 32, 52, 94, 64, 21])
>> ys = np.asarray([67, 94])
>> ndx = np.asarray([np.nonzero(xs == y)[0][0] for y in ys]) # <---- This line
>> print(ndx)
[1 4]

Is there a fast way?


share|improve this question
Will ys be very long? – kennytm Mar 5 '12 at 12:27
up vote 18 down vote accepted

For big arrays xs and ys, you would need to change the basic approach for this to become fast. If you are fine with sorting xs, then an easy option is to use numpy.searchsorted():

ndx = numpy.searchsorted(xs, ys)

If it is important to keep the original order of xs, you can use this approach, too, but you need to remember the original indices:

orig_indices = xs.argsort()
ndx = orig_indices[numpy.searchsorted(xs[orig_indices], ys)]
share|improve this answer
if you don't need to keep track of what elements where found and which ones where not you can filter the output to get rid of all the indexes beyond limits: ndx = [ e for e in np.searchsorted(xs,ys) if e<len(xs) ] – Picarus Mar 27 '14 at 14:17

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