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I have a multilevel dataframe df :

>>> df
                   sales     cash
STK_ID RPT_Date                  
000568 20120630   51.926   42.845
       20120930   80.093   57.488
000596 20120630   22.278   18.247
       20120930   32.585   26.177
000799 20120630    9.291    6.513
       20120930   14.784    8.157

And I want to get the value list of sub_level index 'STK_ID' , which will return a list of ['000568','000596','000799'].
Is there any direct function to do this (without using reset_index and getting the column value)?

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1 Answer 1

up vote 6 down vote accepted

You are looking for index.levels:

In [10]: df1.index.levels
[Index(['000568', '000596', '000799'], dtype=object),
 Int64Index([20120630, 20120930], dtype=int64)]

In [11]: df1.index.levels[0]
Out[11]: Index(['000568','000596','000799'], dtype=object)

Note you can see the index names:

In [12]: df1.index.names
Out[12]: ['STK_ID', 'RPT_Date']

These are discussed in the docs here.

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thanks. Pandas has many magic functions. –  bigbug Jan 22 '13 at 7:48
i aslo found 'df.index.get_level_values('STK_ID')' , it can keep the value order while 'df.index.levels[0]' output the sorted list –  bigbug Jan 23 '13 at 14:40
@bigbug You're right, you could use df.index.get_level_values('STK_ID').unique() == df.index.levels[0] but levels is stored as is, so it should be faster to access :) –  Andy Hayden Jan 23 '13 at 19:07
It's all subjective, but in my quick %timeit benchmark df.index.levels[df.index.names.index(level_name)] got 6.69 µs per loop where df.index.get_level_values(level_name).unique() got 128 ms per loop. Thus grabbing the index levels directly is over 19000X faster for my case. (my DataFrame has ~5 million rows which I assume takes time to parse in the unique() method) –  flutefreak7 Feb 9 at 15:40
@flutefreak7 it's always worth doing the timings :) - the reason is this is so much faster is: df.index.get_level_values(level_name) has to be constructed (from levels) then unique applied so it's at least O(2n) in number of rows... compared to IIUC O(1). –  Andy Hayden Feb 9 at 23:23

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