Say you have this MultiIndex-ed DataFrame:

df = pd.DataFrame({'co':['DE','DE','FR','FR'],
df = df.set_index(['co','tp'])

Which looks like this:

           area  count
co tp
DE Lake      10      7
   Forest    20      5
FR Lake      30      2
   Forest    40      3

I would like to retrieve the unique values per index level. This can be accomplished using

df.index.levels[0]  # returns ['DE', 'FR]
df.index.levels[1]  # returns ['Lake', 'Forest']

What I would really like to do, is to retrieve these lists by addressing the levels by their name, i.e. 'co' and 'tp'. The shortest two ways I could find looks like this:

list(set(df.index.get_level_values('co')))  # returns ['DE', 'FR']
df.index.levels[df.index.names.index('co')]  # returns ['DE', 'FR']

But non of them are very elegant. Is there a shorter way?


Pandas 0.23.0 finally introduced a much cleaner solution to this problem: the level argument to Index.unique():

In [3]: df.index.unique(level='co')
Out[3]: Index(['DE', 'FR'], dtype='object', name='co')

This is now the recommended solution. It is far more efficient because it avoids creating a complete representation of the level values in memory, and re-scanning it.


I guess u want unique values in a certain level (and by level names) of a multiindex. I usually do the following, which is a bit long.

In [11]: df.index.get_level_values('co').unique()
Out[11]: array(['DE', 'FR'], dtype=object)
  • 5
    This is very inefficient, though, as this information of uniqueness is already explicitly stored in the index, so the second of your options, @ojdo, seems to me still to be the best. The use of unique is hundreds of times slower on my data: timeit df.index.get_level_values(level='co').unique() gives: 1000 loops, best of 3: 851 µs per loop, while timeit df.index.levels[df.index.names.index('co')] gives: 100000 loops, best of 3: 3.08 µs per loop Jan 30 '15 at 14:00
  • 13
    @Robert Muil - The problem with that is that index.levels does NOT return updated contents if any rows or columns have been deleted and this is not considered a bug because that's not the approved use of MultiIndexes (github.com/pydata/pandas/issues/3686). The valid API access for the current contents of a MultiIndex is indeed get_level_values. It's tricky for anybody who's used to single Index uniqueness. May 16 '15 at 17:34
  • Just a question, really, but why does indices = df.index.get_level_values('lat').unique() return the values sorted in reverse? indices[0] Out[102]: 89.875 vs. ind2 = df.index.levels[df.index.names.index('lat')] which give ind2[0] Out[104]: -89.875... Sorry for hijacking, just found this behavior curious. Can also confirm unique is much slower.
    – John
    Oct 20 '15 at 22:23

An alternative approach is to find the number of levels by calling df.index.levels[level_index] where level_index can be inferred from df.index.names.index(level_name). In the above example level_name = 'co'.

The proposed answer by @Happy001 computes the unique which may be computationally intensive.

  • This won't work in general (e.g. on sliced dataframes, where some levels are unused) Feb 6 '18 at 17:07

If you're going to do the level lookup repeatedly, you could create a map of your index level names to level unique values with:

df_level_value_map = {
    name: level 
    for name, level in zip(df.index.names, df.index.levels)

But this is not in any way more efficient (or shorter) than your original attempts if you're only going to do this lookup once.

I really wish there was a method on indexes that returned such a dictionary (or series?) with a name like:


Where the levels parameter can limit the map to a subset of the existing levels. I could do without the parameter if it could be a property like:


If you already know the index names, is it not straightforward to simply do: df['co'].unique() ?

  • 2
    You cannot directly access an index using the bracket operator. In the above example, df['co'] gives a KeyError.
    – ojdo
    Aug 5 '19 at 8:04

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