# Finding the intersection between two series in Pandas

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).

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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.

``````pd.Series(list(set(s1).intersection(set(s2))))
``````

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.

Example:

``````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

Setup:

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

Timings:

``````%%timeit
pd.Series(list(set(s1).intersection(set(s2))))
10000 loops, best of 3: 57.7 µs per loop

%%timeit
pd.Series(np.intersect1d(s1,s2))
1000 loops, best of 3: 659 µs per loop

%%timeit
pd.Series(np.intersect1d(s1.values,s2.values))
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