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I have setup some code like this:

import pandas as pd
import numpy as np
arrays = [['bar', 'bar', 'baz', 'baz', 'foo', 'foo', 'qux', 'qux'],
          ['one', 'two', 'one', 'two', 'one', 'two', 'one', 'two'],
          ['aaa', 'bbb', 'ccc', 'ccc', 'ddd', 'eee', 'eee', 'eee' ]]
tuples = zip(*arrays)
index = pd.MultiIndex.from_tuples(tuples, names=['A', 'B', 'C'])
df = pd.DataFrame(np.random.randn(8, 4), index=index)

df
Out[161]: 
                    0         1         2         3
A   B   C                                          
bar one aaa  0.682220 -0.598889 -0.600635 -0.488069
    two bbb -0.134557  1.614224 -0.191303  0.073813
baz one ccc -1.006877 -0.137264 -0.319274  1.465952
    two ccc  0.107222  0.358468  0.165108 -0.258715
foo one ddd  0.360562  1.759095 -1.385394 -0.646850
    two eee -1.113520  0.221483  2.226704 -0.994636
qux one eee -0.609271 -0.888330  0.824189  1.772536
    two eee -0.008346 -0.688091  0.263303  1.242485

I want find matching rows based on combinations of criteria with the groups A, B and C.

e.g. in sql terms: select * where A in ('foo', 'qux') and C='eee'

Can I acheive this with ix? e.g. something like:

df.ix(['foo', 'qux'],:,'eee')

What is the idomatic way of achieving this for very large datasets?

(I'm currently using pandas 0.7 but can upgrade if absolutely necessary)

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This breaks my head.... the closest I can get is df.ix['foo':'qux'].xs('eee', level='C') –  herrfz Mar 20 '13 at 10:50
    
...or maybe df.ix[['foo','qux']].xs('eee', level='C') –  herrfz Mar 20 '13 at 11:36

2 Answers 2

I will write a function to do this kind of thing generically:

import numpy as np
def ms(df, *args):
    idx = df.index
    for i, values in enumerate(args):
        if values is not None:
            if np.isscalar(values):
                values = [values]
            idx = idx.reindex(values, level=i)[0]
    return df.ix[idx]

Then you can do it very easily:

ms(df, ['foo', 'qux'], None, "eee")
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This is really great. Thank you. What does ms stand for? How do you feel about changing if not isinstance(values, (tuple, list)) to if isinstance(values, basestring)? –  unutbu Mar 20 '13 at 13:35
1  
ms is MultIndexSelect. Because values in Index maybe be int, float or datetime, it't not generically to check basestring only. I think it's better to use not isinstance(values, collections.Iterable), since Pandas can convert iterable objects to Index. –  HYRY Mar 20 '13 at 14:01
    
Since str is also Iterable, I changed it to use numpy.isscalar(values) –  HYRY Mar 20 '13 at 14:22
    
In this case is using reindex equivalent to using xs? –  Pablojim Mar 20 '13 at 14:56
    
How do you feel about return df.reindex(idx) instead of return df.ix[idx]? –  unutbu Mar 20 '13 at 18:20

As of Pandas 0.14, you can pass a tuple of selectors to df.loc to slice a MultiIndex:

In [782]: df.loc[(['foo','qux'], slice(None), 'eee'), :]
Out[782]: 
                    0         1         2         3
A   B   C                                          
foo two eee  1.615853 -1.327626  0.772608 -0.406398
qux one eee  0.472890  0.746417  0.095389 -1.446869
    two eee  0.711915  0.228739  1.763126  0.558106
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