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I know that I can get the unique values of a DataFrame by resetting the index but is there a way to avoid this step and get the unique values directly?

Given I have:

 A B     
 0 one  3
 1 one  2
 2 two  1

I can do:

df = df.reset_index()
uniq_b = df.B.unique()
df = df.set_index(['A','B'])

Is there a way built in pandas to do this?

share|improve this question
i don't understand your example. uniq_b is not being used? – K.-Michael Aye Dec 18 '12 at 5:23
ah, i think i get it. you only wanted to 'know' the unique values of B. ok. – K.-Michael Aye Dec 18 '12 at 5:27
If it's possible seth, I think you should consider changing the accepted answer to 8one6. – KobeJohn Feb 25 at 4:40
up vote 16 down vote accepted

One way is to use index.levels:

In [11]: df
A B     
0 one  3
1 one  2
2 two  1

In [12]: df.index.levels[1]
Out[12]: Index([one, two], dtype=object)
share|improve this answer
Works for me. Thanks! – seth Dec 15 '12 at 1:52
This is a good answer, but it has some very odd behavior in a few specific cases. Have a look at my answer below for a way to avoid those issues. – 8one6 Jan 16 '15 at 21:18
This does not work for me. Index does not have attribute levels anymore. Is this a update? – eleijonmarck May 23 '15 at 11:43
@eleijonmarck only a multiindex has a levels attribute. Is that your issue ? – Andy Hayden May 23 '15 at 16:46

Andy Hayden's answer (index.levels[blah]) is great for some scenarios, but can lead to odd behavior in others. My understanding is that Pandas goes to great lengths to "reuse" indices when possible to avoid having the indices of lots of similarly-indexed DataFrames taking up space in memory. As a result, I've found the following annoying behavior:

import pandas as pd
import numpy as np


idx = pd.MultiIndex.from_product([['John', 'Josh', 'Alex'], list('abcde')], 
                                 names=['Person', 'Letter'])
large = pd.DataFrame(data=np.random.randn(15, 2), 
                     columns=['one', 'two'])
small = large.loc[['Jo'==d[0:2] for d in large.index.get_level_values('Person')]]

print small.index.levels[0]
print large.index.levels[0]

Which outputs

Index([u'Alex', u'John', u'Josh'], dtype='object')
Index([u'Alex', u'John', u'Josh'], dtype='object')

rather than the expected

Index([u'John', u'Josh'], dtype='object')
Index([u'Alex', u'John', u'Josh'], dtype='object')

As one person pointed out on the other thread, one idiom that seems very natural and works properly would be:


I hope this helps someone else dodge the super-unexpected behavior that I ran into.

share|improve this answer
FWIW, this is the expected behavior if trying to mimic R. In R the levels of factor variables (which look a lot like indices in pandas) do not change upon subsetting. One must explicitly reindex to shrink the possible levels. – Chris Warth Apr 18 at 23:08

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