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How would I perform a case insensitive pandas.concat?

df1 = pd.DataFrame({"a":[1,2,3]},index=["a","b","c"])
df2 = pd.DataFrame({"b":[1,2,3]},index=["a","b","c"])
df1a = pd.DataFrame({"A":[1,2,3]},index=["A","B","C"])

pd.concat([df1, df2],axis=1)
   a  b
a  1  1
b  2  2
c  3  3

but this does not work:

pd.concat([df1, df1a],axis=1)

    a   A
A NaN   1
B NaN   2
C NaN   3
a   1 NaN
b   2 NaN
c   3 NaN

Is there an easy way to do this?

I have the same question for concat on a Series.

This works for a DataFrame:

pd.DataFrame([11,21,31],index=pd.MultiIndex.from_tuples([("A",x) for x in ["a","B","c"]])).rename(str.lower)

but this does not work for a Series:

pd.Series([11,21,31],index=pd.MultiIndex.from_tuples([("A",x) for x in ["a","B","c"]])).rename(str.lower)
TypeError: descriptor 'lower' requires a 'str' object but received a 'tuple'

For renaming, DataFrames use:

def rename_axis(self, mapper, axis=1):
        index = self.axes[axis]
        if isinstance(index, MultiIndex):
            new_axis = MultiIndex.from_tuples([tuple(mapper(y) for y in x) for x in index], names=index.names)
            new_axis = Index([mapper(x) for x in index], name=index.name)

whereas when renaming Series:

result.index = Index([mapper_f(x) for x in self.index], name=self.index.name)

so my updated question is how to perform the rename/case insensitive concat with a Series?

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2 Answers 2

You can do this via rename:

pd.concat([df1, df1a.rename(index=str.lower)], axis=1)


If you want to do this with a MultiIndexed Series you'll need to set it manually, for now. There's a bug report over at pandas GitHub repo waiting to be fixed (thanks @ViktorKerkez).

s.index = pd.MultiIndex.from_tuples(s.index.map(lambda x: tuple(map(str.lower, x))))

You can replace str.lower with whatever function you want to use to rename your index.

Note that you cannot use reindex in general here, because it tries to find values with the renamed index and thus it will return nan values, unless your rename results in no changes to the original index.

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I am posting some code to original question. –  Alex Rothberg Aug 19 '13 at 5:24
@PhillipCloud's code works perfectly fine. Can you explain a little bit better what are you trying to achieve? Update your question with the desired result. –  Viktor Kerkez Aug 19 '13 at 11:35
@ViktorKerkez Question Updated. I added some clarification that PhillipCloud's answer works for DataFrames but not for Series. –  Alex Rothberg Aug 19 '13 at 13:20
One option would be to convert the Series to a DataFrame, rename the index and then convert back to a Series. This solution appears to work but is a bit clumsy. –  Alex Rothberg Aug 19 '13 at 13:21
Hmm yes, this is inconsistent behavior. rename on MultiIndexed series passes tuples to the rename mapper instead of strings. :-/ Maybe a bug? –  Viktor Kerkez Aug 19 '13 at 13:32

For the MultiIndexed Series objects, if this is not a bug, you can do:

s.index = pd.MultiIndex.from_tuples(
              s.index.map(lambda x: tuple(map(str.lower, x)))
share|improve this answer
I do think that the behavior should be cleaned up such that calling s.rename on a MultiIndexed Series works the same as on a DataFrame. –  Alex Rothberg Aug 19 '13 at 13:54
I fully agree with you. –  Viktor Kerkez Aug 19 '13 at 14:02
Definitely a bug with frames: github.com/pydata/pandas/issues/4160. Not sure about the Series case. –  Phillip Cloud Aug 19 '13 at 14:37
@PhillipCloud What exactly is the bug with DataFrames? DataFrames seem to work fine for me. –  Alex Rothberg Aug 19 '13 at 14:44
@PhillipCloud Yup, DataFrames work just fine. –  Viktor Kerkez Aug 19 '13 at 14:49

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