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I have DataFrame with MultiIndex columns that looks like this:

# sample data
col = pd.MultiIndex.from_arrays([['one', 'one', 'one', 'two', 'two', 'two'],
                                ['a', 'b', 'c', 'a', 'b', 'c']])
data = pd.DataFrame(np.random.randn(4, 6), columns=col)
data

sample data

What is the proper, simple way of selecting only specific columns (e.g. ['a', 'c'], not a range) from the second level?

Currently I am doing it like this:

import itertools
tuples = [i for i in itertools.product(['one', 'two'], ['a', 'c'])]
new_index = pd.MultiIndex.from_tuples(tuples)
print(new_index)
data.reindex_axis(new_index, axis=1)

expected result

It doesn't feel like a good solution, however, because I have to bust out itertools, build another MultiIndex by hand and then reindex (and my actual code is even messier, since the column lists aren't so simple to fetch). I am pretty sure there has to be some ix or xs way of doing this, but everything I tried resulted in errors.

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Have you tried using dictionaries? –  darmat Aug 27 '13 at 16:01
    
Not, I haven't. You mean to more quickly construct the MultiIndex? If so, that's not the point - I would like to avoid it and index directly with something like data.xs(['a', 'c'], axis=1, level=1) –  kermit666 Aug 27 '13 at 16:04
    
let's suppose this: –  darmat Aug 27 '13 at 16:05
    
Is there a reason you have that level as the second and not the first level? –  BrenBarn Aug 27 '13 at 16:06
    
It's more intuitive to me visually for the kind of data I have. Also, I wanted to learn how to do it generically - for an arbitrary level. –  kermit666 Aug 28 '13 at 9:39

2 Answers 2

up vote 2 down vote accepted

It's not great, but maybe:

>>> data
        one                           two                    
          a         b         c         a         b         c
0 -0.927134 -1.204302  0.711426  0.854065 -0.608661  1.140052
1 -0.690745  0.517359 -0.631856  0.178464 -0.312543 -0.418541
2  1.086432  0.194193  0.808235 -0.418109  1.055057  1.886883
3 -0.373822 -0.012812  1.329105  1.774723 -2.229428 -0.617690
>>> data.ix[:,data.columns.get_level_values(1).isin({"a", "c"})]
        one                 two          
          a         c         a         c
0 -0.927134  0.711426  0.854065  1.140052
1 -0.690745 -0.631856  0.178464 -0.418541
2  1.086432  0.808235 -0.418109  1.886883
3 -0.373822  1.329105  1.774723 -0.617690

would work?

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Actually I think this is the optimal way of filtering out a list of labels in an arbitrary level of MultiIndex without creating all the tuples. I would just use loc for clarity. –  Viktor Kerkez Aug 27 '13 at 16:55

You can use either, loc or ix I'll show an example with loc:

data.loc[:, [('one', 'a'), ('one', 'c'), ('two', 'a'), ('two', 'c')]]

When you have a MultiIndexed DataFrame, and you want to filter out only some of the columns, you have to pass a list of tuples that match those columns. So the itertools approach was pretty much OK, but you don't have to create a new MultiIndex:

data.loc[:, list(itertools.product(['one', 'two'], ['a', 'c']))]
share|improve this answer
    
Thanks, that's also a good solution! –  kermit666 Aug 28 '13 at 9:46

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