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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:

df['a','c']

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']
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3 Answers

up vote 19 down vote accepted

Try using xs to be very precise:

In [5]: df.xs('a', level=0)
Out[5]: 
        value1  value2
group2                
c          1.1     7.1
c          2.0     8.0
d          3.0     9.0

In [6]: df.xs('c', level='group2')
Out[6]: 
        value1  value2
group1                
a          1.1     7.1
a          2.0     8.0
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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
1  
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
    
df.index behaves like a tuple list here. So you iterate through the tuples, discarding group 2 (you assign the first element of each tuple to "group1" and the second to "group2" but only use "group1") and checking whether the first element of the tuple is in the list ['a', 'b', 'c']. This creates a boolean mask which is then used for the subsetting. –  Arthur G Aug 14 '12 at 15:14
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Syntax like the following will work:

df.ix['a']
df.ix['a'].ix['c']

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:

df.swaplevel(0,1).ix['c']

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

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1  
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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Given the demonstrated use of df.xs() method. It might be worth re-visiting the definition ch5 - pg 128 - table 5.6 of the o'reilly book in subsequent editions. Likewise pdf docs. Just to flesh out the functionality more clearly.

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