I'm indexing a large multi-index Pandas df using df.loc[(key1, key2)]. Sometimes I get a series back (as expected), but other times I get a dataframe. I'm trying to isolate the cases which cause the latter, but so far all I can see is that it's correlated with getting a PerformanceWarning: indexing past lexsort depth may impact performance warning.

I'd like to reproduce it to post here, but I can't generate another case that gives me the same warning. Here's my attempt:

def random_dates(start, end, n=10):
    start_u = start.value//10**9
    end_u = end.value//10**9
    return pd.to_datetime(np.random.randint(start_u, end_u, n), unit='s')

df = pd.DataFrame(np.random.random(3255000).reshape(465000,7))  # same shape as my data
df['date'] = random_dates(pd.to_datetime('1990-01-01'), pd.to_datetime('2018-01-01'), 465000)
df = df.set_index([0, 'date'])
df = df.sort_values(by=[3])  # unsort indices, just in case
> 0
> False
df.loc[(0.9987185534991936, pd.to_datetime('2012-04-16 07:04:34'))]
# no warning

So my question is: what causes this warning? How do I artificially induce it?


4 Answers 4


TL;DR: your index is unsorted and this severely impacts performance.

Sort your DataFrame's index using df.sort_index() to address the warning and improve performance.

I've actually written about this in detail in my writeup: Select rows in pandas MultiIndex DataFrame (under "Question 3").

To reproduce,

mux = pd.MultiIndex.from_arrays([
], names=['one', 'two'])

df = pd.DataFrame({'col': np.arange(len(mux))}, mux)

one two     
a   t      0
    u      1
    v      2
    w      3
b   t      4
    u      5
    v      6
    w      7
    t      8
c   u      9
    v     10
d   w     11
    t     12
    u     13
    v     14
    w     15

You'll notice that the second level is not properly sorted.

Now, try to index a specific cross section:

df.loc[pd.IndexSlice[('c', 'u')]]
PerformanceWarning: indexing past lexsort depth may impact performance.
  # encoding: utf-8

one two     
c   u      9

You'll see the same behaviour with xs:

df.xs(('c', 'u'), axis=0)
PerformanceWarning: indexing past lexsort depth may impact performance.

one two     
c   u      9

The docs, backed by this timing test I once did seem to suggest that handling un-sorted indexes imposes a slowdown—Indexing is O(N) time when it could/should be O(1).

If you sort the index before slicing, you'll notice the difference:

df2 = df.sort_index()
df2.loc[pd.IndexSlice[('c', 'u')]]

one two     
c   u      9

%timeit df.loc[pd.IndexSlice[('c', 'u')]]
%timeit df2.loc[pd.IndexSlice[('c', 'u')]]

802 µs ± 12.1 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
648 µs ± 20.3 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

Finally, if you want to know whether the index is sorted or not, check with MultiIndex.is_lexsorted.

# False

# True

As for your question on how to induce this behaviour, simply permuting the indices should suffice. This works if your index is unique:

df2 = df.loc[pd.MultiIndex.from_tuples(np.random.permutation(df2.index))]

If your index is not unique, add a cumcounted level first,

    df.groupby(level=list(range(len(df.index.levels)))).cumcount(), append=True) 
df2 = df.loc[pd.MultiIndex.from_tuples(np.random.permutation(df2.index))]
df2 = df2.reset_index(level=-1, drop=True)
  • 2
    Superb answer (as always!) Only thing I'm still not quite sure about is under what conditions locing one row would return a series rather than a df (which was what originally led me to this). With my data, loc returns a series, but always returns a df using your examples. Feb 5, 2019 at 11:42
  • 7
    @JoshFriedlander Aha, I figured it out. The problem is that df has duplicate index entries! Try this: df[~df.index.duplicated()].loc[('c', 'u')]. Hope that explains it. If the index contains duplicate entries, the default behaviour is to return a DataFrame with all rows matching that index value. If only one row matches it, the result will be a DataFrame with a single row. Feb 5, 2019 at 12:11
  • 1
    Yes, that seems to be correct! Definitely bounty-worthy :) Feb 5, 2019 at 12:38
  • 2
    @JoshFriedlander thanks! Tiny thing though, it would've been better to wait out the 6 days for the bounty period before awarding it. In that time both the question and the answers are usually seen by a lot of folks and upvoted. ;) Feb 5, 2019 at 19:31
  • 4
    I was having poor performance with a multiindexed ~30M rows df. After the index sorting the performance boost has been dramatic. Thank you!
    – jarandaf
    Jan 10, 2020 at 11:43

According to pandas advanced indexing (Sorting a Multiindex)

On higher dimensional objects, you can sort any of the other axes by level if they have a MultiIndex

And also:

Indexing will work even if the data are not sorted, but will be rather inefficient (and show a PerformanceWarning). It will also return a copy of the data rather than a view:

According to them, you may need to ensure that indices are sorted properly.


Series vs. dataframe output: I also had the same problem that sometimes the output of df.loc[(index1, index2)] was a series and sometimes a dataframe. I found that this was caused by duplicated indices. If the dataframe had some duplicated indices, the output of df.loc[(index1, index2)] is a dataframe otherwise a series.

  • Yes, @cs95 said this to me in the comments below their answer Mar 9, 2022 at 10:13

On my case, PerformanceWarning: indexing past lexsort depth may impact performance is for duplicate index on df.

Case: Trying to read a excel file with pandas in a loop for each sheetname

In the sheet with duplicate index gives: PerformanceWarning: indexing past lexsort depth may impact performance

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