# Numpy: find the the non-intersecting values of two arrays

This may be a simple question, but I can't seem to find the answer.

If I have two numpy arrays and want to find the the non-intersecting values, how do I do it?

Here's a short example of what I can't figure out.

``````a = ['Brian', 'Steve', 'Andrew', 'Craig']
b = ['Andrew','Steve']
``````

I want to find the non-intersecting values. In this case I want my output to be:

``````['Brian','Craig']
``````

The opposite what I want is done with this:

``````c=np.intersect1d(a,b)
``````

which returns

``````['Andrew' 'Steve']
``````

any help would be greatly appreciated, thanks

-
`set(a) ^ set(b)` – dawg Aug 9 '14 at 18:23

Given that none of the objects shown in your question are Numpy arrays, you don't need Numpy to achieve this:

``````c = list(set(a).symmetric_difference(b))
``````

If you have to have a Numpy array as the output, it's trivial to create one:

``````c = np.array(set(a).symmetric_difference(b))
``````

(This assumes that the order in which elements appear in `c` does not matter. If it does, you need to state what the expected order is.)

P.S. There is also a pure Numpy solution, but personally I find it hard to read:

``````c = np.setdiff1d(np.union1d(a, b), np.intersect1d(a, b))
``````
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Would the downvoter care to comment? – NPE Aug 9 '14 at 17:14
The asker tagged the question numpy, so I thought there should be some explanation about why not to use numpy directly. – simonzack Aug 9 '14 at 17:16
@simonzack: There is an explantation in the answer (which is: because it's not needed). Besides, the answer explicitly provides a way to construct a numpy array with the result. – NPE Aug 9 '14 at 17:17
Fair enough I've retracted my downvote. – simonzack Aug 9 '14 at 17:20
@simonzack: why would you care whether a correct answer does or does not explicitly "use" numpy, in particular, when it works with numpy arrays? – jolvi Aug 9 '14 at 17:30

You can use `setxor1d`. According to the documentation:

Find the set exclusive-or of two arrays.
Return the sorted, unique values that are in only one (not both) of the input arrays.

Usage is as follows:

``````import numpy

a = ['Brian', 'Steve', 'Andrew', 'Craig']
b = ['Andrew','Steve']

c = numpy.setxor1d(a, b)
``````

Executing this will result in `c` having a value of `array(['Brian', 'Craig'])`.

-
``````import numpy as np

a = np.array(['Brian', 'Steve', 'Andrew', 'Craig'])
b = np.array(['Andrew','Steve'])
``````

you can use

``````set(a) - set(b)
``````

Output:

``````set(['Brian', 'Craig'])
``````

Note: set operation returns unique values

-

This should do it for python arrays

``````c=[x for x in a if x not in b]+[x for x in b if x not in a]
``````

It first collects all the elements from a that are not in b and then adds all those elements from b that are not in a. This way you get all elements that are in a or b, but not in both.

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Currently, this is listed as low quality answer. Perhaps you can improve it by explaining what does this code do (just a little bit is ok!) – Andrew T. Aug 9 '14 at 17:27
thx for the advice @Andrew T – supinf Aug 9 '14 at 17:44