# Using MultiIndex on DataFrame

This is follow-up question to the answer for this question:

pandas performance issue - need help to optimize

The following suggestion works:

df = DataFrame(np.arange(20).reshape(5,4))
df2 = df.set_index(keys=[0,1,2])
df2.ix[(4,5,6)]


for using a MultiIndex

So I created a file sample_data.csv that looks like this:

col1,col2,year,amount
111111,3.5,2012,700
111112,3.5,2011,600
222221,4.0,2012,222
...


I then ran the following:

import numpy as np
import pandas as pd
sd2=sd.set_index(keys=['col2','year'])
sd2.ix[(4.0,2012)]


But this produces the following error: IndexError: index out of bounds

Any ideas why it works in the former case but not the latter? This is what the error looks like:

IndexError                                Traceback (most recent call last)
<ipython-input-19-1d72a961db95> in <module>()
----> 1 sd2.ix[(4.0,2012)]

/Library/Python/2.7/site-packages/pandas-0.8.1-py2.7-macosx-10.7-intel.egg/pandas/core/indexing.pyc in __getitem__(self, key)
31                 pass
32
---> 33             return self._getitem_tuple(key)
34         else:
35             return self._getitem_axis(key, axis=0)

-
For me your code works. Which version of pandas are you using? –  joris Feb 7 at 12:42
It works for me as well (in Pd 10.0). You can also skip the set_index step if you use: pd.read_csv('sample_data.csv', index_col=['col2','year']) –  Rutger Kassies Feb 7 at 12:53
pandas-0.8.1. Is that why its failing ? –  femibyte Feb 7 at 13:18
It could be a bug in pandas-0.8.1, I don't know. Anyway, if it is possible, you better upgrade your version (pandas is still evolving rapidly, also a lot new features) –  joris Feb 7 at 13:35
I switched to using pandas 10 and I still get the same error. Are you using the same as expression as I am using above i.e. sd2.ix[(4.0,2012)] –  femibyte Feb 7 at 23:25

To show it works for me (pandas 0.10.1):

In [1]: from StringIO import StringIO
In [2]: import numpy as np
In [3]: import pandas as pd
In [4]: s = StringIO("""col1,col2,year,amount
...: 111111,3.5,2012,700
...: 111112,3.5,2011,600
...: 222221,4.0,2012,222""")

In [6]: sd2=sd.set_index(keys=['col2','year'])
In [7]: sd2.ix[(4.0,2012)]
Out[7]:
col1       222221
amount        222
Name: (4.0, 2012)


However, if I add a row with a duplicate index, I also get the same error:

In [8]: s = StringIO("""col1,col2,year,amount
...: 111111,3.5,2012,700
...: 111112,3.5,2011,600
...: 222221,4.0,2012,222
...: 222221,4.0,2012,223""")

In [10]: sd2=sd.set_index(keys=['col2','year'])
In [11]: sd2.ix[(4.0,2012)]
---------------------------------------------------------------------------
IndexError                                Traceback (most recent call last)
<ipython-input-7-1b787a1d99df> in <module>()
----> 1 sd2.ix[(4.0,2012)]

C:\Python27\lib\site-packages\pandas\core\indexing.pyc in __getitem__(self, key)
32                 pass
33
---> 34             return self._getitem_tuple(key)
35         else:
36             return self._getitem_axis(key, axis=0)

...

IndexError: index out of bounds


Is it possible that you have duplicate values in ('col1', 'year')?

I don't know if it is a bug or just a constraint on the MultiIndex (but in that case, the error message could be more clear I think). But you can remove duplicate values before setting the index as follows:

In [21]: sd=pd.read_csv(s)

In [22]: sd = sd.drop_duplicates(['col2', 'year'])

In [23]: sd2=sd.set_index(keys=['col2','year'])

In [24]: sd2.ix[(4.0,2012)]
Out[24]:
col1       222221
amount        222
Name: (4.0, 2012)

-
Yes, that was the issue, thanks a lot for the insight. I was going to use a MultiIndex as a more efficient means of selecting rows of a DataFrame based on multiple columns(see stackoverflow.com/questions/14737566/…), but since the index has to be unique I can't use this approach. –  femibyte Feb 8 at 9:47