79

Say you have this MultiIndex-ed DataFrame:

df = pd.DataFrame({'co':['DE','DE','FR','FR'],
                   'tp':['Lake','Forest','Lake','Forest'],
                   'area':[10,20,30,40],
                   'count':[7,5,2,3]})
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?

0
86

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.

52

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)
3
  • 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
5

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.

1
  • This won't work in general (e.g. on sliced dataframes, where some levels are unused) Feb 6 '18 at 17:07
2

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)
}
df_level_value_map['']

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:

df.index.get_level_map(levels={...})

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:

df.index.level_map
-3

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

1
  • 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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