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I have two series s1 and s2 in pandas/python and want to compute the intersection i.e. where all of the values of the series are common.

How would I use the concat function to do this? I have been trying to work it out but have been unable to (I don't want to compute the intersection on the indices of s1 and S2, but on the values).

Thanks in advance.

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3 Answers 3

up vote 5 down vote accepted

Place both series in the python set container. See documentation: http://docs.python.org/2/library/sets.html

then use the set intersection method.

s1.intersection(s2) and then transform back to list if needed.

Just noticed pandas in the tag. Can translate back to that.


should to the trick, except if the index data is also important to you

Have added the list(....) to translate the set before going to pd.Series Pandas does not accept a set as direct input for a Series.

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also, you can use & operator for set intersection. –  Andy Hayden Aug 6 '13 at 12:20
Actually, you can't just apply Series to a set (which is annoying) TypeError: Set value is unordered, seems unnecessary restriction/not very duck. –  Andy Hayden Aug 6 '13 at 13:22
Mmm. used same logic while ago, but I probably moved it to list 1st... short calc so performance was not a major constraint. What it the syntax for using the & operator to do the set? –  Joop Aug 6 '13 at 13:31
set(s1) & set(s2) :) –  Andy Hayden Aug 6 '13 at 13:40
ahh.. thought the & was in pandas –  Joop Aug 6 '13 at 13:49

If you are using Panda's, I assume you are also using NumPy. Numpy has a function intersect1d that will work with a Pandas' series.


pd.Series(np.intersect1d(pd.Series([1,2,3,5,42]), pd.Series([4,5,6,20,42])))

will return a Series with the values 5 and 42.

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FYI This is orders of magnitude slower that set. :( –  Andy Hayden Aug 6 '13 at 12:56
For shame. @AndyHayden Is there a reason we can't add set ops to Series objects? –  Phillip Cloud Aug 6 '13 at 14:53
Thanks, @AndyHayden. I had just naively assumed numpy would have faster ops on arrays. A quick %timeit test shows you to be mostly correct. My method had an average of 775 us per loop on two Series of 100 randomly generated elements whereas @joop's method had 120 us per loop. However, for larger data sets, this relationship is reversed. On two sets of 100000 elements, my method showed 1.32 ms per loop and @joop's method showed 14.9 ms per loop. –  jbn Aug 6 '13 at 15:53
very interesting, fyi @cpcloud opened an issue here github.com/pydata/pandas/issues/4480 –  Andy Hayden Aug 6 '13 at 15:55
@jbn see my answer for how to get the numpy solution with comparable timing for short series as well. –  eldad-a Jan 16 '14 at 23:34


s1 = pd.Series([4,5,6,20,42])
s2 = pd.Series([1,2,3,5,42])


10000 loops, best of 3: 57.7 µs per loop

1000 loops, best of 3: 659 µs per loop

10000 loops, best of 3: 64.7 µs per loop

So the numpy solution can be comparable to the set solution even for small series, if one uses the values explicitely.

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redid test with newest numpy(1.8.1) and pandas (0.14.1) looks like your second example is now comparible in timeing to others. With larger data your last method is a clear winner 3 times faster than others –  Joop Aug 13 '14 at 8:50
good to know, thanks for the update! –  eldad-a Aug 13 '14 at 8:53

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