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I have a set of DataFrames with numeric values and partly overlapping indices. I would like to merge them an take the mean if an index occurs in more than one DataFrame.

import pandas as pd
import numpy as np

df1 = pd.DataFrame([1,2,3], columns=['col'], index=['a','b','c'])
df2 = pd.DataFrame([4,5,6], columns=['col'], index=['b','c','d'])

This gives me two DataFrames:

   col            col
a    1        b     4
b    2        c     5
c    3        d     6

Now I would like to merge the DataFrames and take the mean for each index (if applicable, i.e. if it occurs more than once).

Should look like this:

a     1
b     3
c     4
d     6

Can I do this with some advanced merging/joining?

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2 Answers 2

up vote 6 down vote accepted

something like this:

df3 = pd.concat((df1, df2))

#    col
# a    1
# b    3
# c    4
# d    6

or other way around, as in @unutbu answer:

pd.concat((df1, df2), axis=1).mean(axis=1)
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Thanks, that was fast. Pandas is so amazingly simple. – Martin Preusse Oct 21 '13 at 9:13
In [22]: pd.merge(df1, df2, left_index=True, right_index=True, how='outer').mean(axis=1)
a    1
b    3
c    4
d    6
dtype: float64

Regarding Roman's question, I find IPython's %timeit command a convenient way to benchmark code:

In [28]: %timeit df3 = pd.concat((df1, df2)); df3.groupby(df3.index).mean()
1000 loops, best of 3: 617 µs per loop

In [29]: %timeit pd.merge(df1, df2, left_index=True, right_index=True, how='outer').mean(axis=1)
1000 loops, best of 3: 577 µs per loop

In [39]: %timeit pd.concat((df1, df2), axis=1).mean(axis=1)
1000 loops, best of 3: 524 µs per loop

In this case, pd.concat(...).mean(...) turns out to be a bit faster. But really we should test bigger dataframes to get a more meaningful benchmark.

By the way, if you do not want to install IPython, equivalent benchmarks can be run using Python's timeit module. It just takes a bit more setup. The docs has some examples showing how to do this.

Note that if df1 or df2 were to have duplicate entries in its index, for example like this:

N = 1000
df1 = pd.DataFrame([1,2,3]*N, columns=['col'], index=['a','b','c']*N)
df2 = pd.DataFrame([4,5,6]*N, columns=['col'], index=['b','c','d']*N)

then these three answers give different results:

In [56]: df3 = pd.concat((df1, df2)); df3.groupby(df3.index).mean()
a    1
b    3
c    4
d    6

pd.merge probably does not give the kind of answer you want:

In [58]: len(pd.merge(df1, df2, left_index=True, right_index=True, how='outer').mean(axis=1))
Out[58]: 2002000

While pd.concat((df1, df2), axis=1) raises a ValueError:

In [48]: pd.concat((df1, df2), axis=1)
ValueError: cannot reindex from a duplicate axis
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+1 I'm still learning Pandas. Which of the 2 solutions will be faster? – Roman Pekar Oct 21 '13 at 9:08
Good question ;) I'll try both on some larger data. First answer wins though. – Martin Preusse Oct 21 '13 at 9:12
@unutbu thanks for benchmarking answers, I definitely need more practice on Pandas and Data Analysis, though.. – Roman Pekar Oct 21 '13 at 9:16
One small thing: If I had more columns in the DataFrames, how would I define that I want to merge and average 'col' and do another/no operation on the others? – Martin Preusse Oct 21 '13 at 9:21
@MartinPreusse: You could apply any of the above methods to the Series df1['col'] and df2['col']. For example, @Roman's answer would look like this: pd.concat((df1['col'], df2['col']), axis=1).mean(axis=1). – unutbu Oct 21 '13 at 9:29

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