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# Find multiple values within a Numpy array

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?

Thanks

-
Will `ys` be very long? – kennytm Mar 5 '12 at 12:27

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()`:

``````xs.sort()
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)]
``````
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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