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I'm suspicious that this is trivial, but I yet to discover the incantation that will let me select rows from a Pandas dataframe based on the values of a hierarchical key. So, for example, imagine we have the following dataframe:

import pandas
df = pandas.DataFrame({'group1': ['a','a','a','b','b','b'],
                       'group2': ['c','c','d','d','d','e'],
                       'value1': [1.1,2,3,4,5,6],
                       'value2': [7.1,8,9,10,11,12]
df = df.set_index(['group1', 'group2'])

df looks as we would expect:

enter image description here

If df were not indexed on group1 I could do the following:

df['group1' == 'a']

But that fails on this dataframe with an index. So maybe I should think of this like a Pandas series with a hierarchical index:


Nope. That fails as well.

So how do I select out all the rows where:

  1. group1 == 'a'
  2. group1 == 'a' & group2 == 'c'
  3. group2 == 'c'
  4. group1 in ['a','b','c']
share|improve this question
up vote 40 down vote accepted

Try using xs to be very precise:

In [5]: df.xs('a', level=0)
        value1  value2
c          1.1     7.1
c          2.0     8.0
d          3.0     9.0

In [6]: df.xs('c', level='group2')
        value1  value2
a          1.1     7.1
a          2.0     8.0
share|improve this answer
I knew there had to be a more simple idiom. Thanks! – JD Long Aug 13 '12 at 21:40
what about group1 in ['a','b','c'] – Daniel Velkov Aug 14 '12 at 4:01
df[[group1 in ['a', 'b', 'c'] for group1, group2 in df.index]] – Wouter Overmeire Aug 14 '12 at 7:14
@lodagro that absolutely works, but I have no idea why. Can you explain how [group1 in ['a', 'b', 'c'] for group1, group2 in df.index] works? – JD Long Aug 14 '12 at 13:54
Technique used is boolean indexing (see also…). Arthur explained how i created the boolean index, as he indicated there are other ways to create the True/False iterable. But in the end it comes down to boolean indexing for part #4 of your question. Note that Arthur opened an issue on GitHub with a request to simplify this use case (see – Wouter Overmeire Aug 14 '12 at 19:06

Syntax like the following will work:


since group1 and group2 are indices. Please forgive my previous attempt!

To get at the second index only, I think you have to swap indices:


But I'm sure Wes will correct me if I'm wrong.

share|improve this answer
That won't work, because 'group1' == 'a' is simply False, so this is just df.ix[False], or df.ix[0]. As a result, df.ix['group1'=='a'] will be exactly the same as df.ix['group2'=='d']. – DSM Aug 13 '12 at 20:28
Ah, I see. Never mind. – Chris Fonnesbeck Aug 13 '12 at 20:30
We're close... but something's not quite right. When I do df.ix['group2'=='d'] I only get one record back... and it's the first record, not one where group2==d. – JD Long Aug 13 '12 at 20:32
@JDLong: it's the first record because 'group2' == 'd' is False, which is 0. Every one of these comparisons is evaluated first, and so it's .ix[0], .ix[0,0], and .ix[0] again. – DSM Aug 13 '12 at 20:33
ok.. that makes sense. thanks DSM – JD Long Aug 13 '12 at 20:34

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