I have a DataFrame with a MultiIndex created after some grouping:

import numpy as np
import pandas as p
from numpy.random import randn

df = p.DataFrame({
    'A' : ['a1', 'a1', 'a2', 'a3']
  , 'B' : ['b1', 'b2', 'b3', 'b4']
  , 'Vals' : randn(4)
}).groupby(['A', 'B']).sum()


Output>            Vals
Output> A  B           
Output> a1 b1 -1.632460
Output>    b2  0.596027
Output> a2 b3 -0.619130
Output> a3 b4 -0.002009

How do I prepend a level to the MultiIndex so that I turn it into something like:

Output>                       Vals
Output> FirstLevel A  B           
Output> Foo        a1 b1 -1.632460
Output>               b2  0.596027
Output>            a2 b3 -0.619130
Output>            a3 b4 -0.002009

A nice way to do this in one line using pandas.concat():

import pandas as pd

pd.concat([df], keys=['Foo'], names=['Firstlevel'])

This can be generalized to many data frames, see the docs.

  • 18
    This is especially nice for adding a level to the columns by adding axis=1, since the df.columns doesn't have the "set_index" method like the index, which always bugs me. – Rutger Kassies Feb 10 '17 at 12:32
  • This should be the solution, thank you – jlandercy Dec 1 '17 at 14:11
  • 2
    This is nice because it also works for pd.Series objects, whereas the currently accepted answer (from 2013) does not. – John Jan 11 '18 at 12:03
  • 1
    Not working anymore. TypeError: unhashable type: 'list' – cduguet Nov 11 '18 at 16:27
  • 2
    It took me a while to realize that if you have more than one key for FirstLevel as in ['Foo', 'Bar'] the first argument will also need to have the corresponding length, i.e., [df] * len(['Foo', 'Bar'])! – mrclng Dec 13 '18 at 12:59

You can first add it as a normal column and then append it to the current index, so:

df['Firstlevel'] = 'Foo'
df.set_index('Firstlevel', append=True, inplace=True)

And change the order if needed with:

df.reorder_levels(['Firstlevel', 'A', 'B'])

Which results in:

Firstlevel A  B           
Foo        a1 b1  0.871563
              b2  0.494001
           a2 b3 -0.167811
           a3 b4 -1.353409
  • 2
    If you do this with a dataframe with a MultiIndex column index, it adds levels, which probably doesn't matter in most cases, but might, if you're relying on the metadata for something else. – naught101 Jan 18 '17 at 3:04

I think this is a more general solution:

# Convert index to dataframe
old_idx = df.index.to_frame()

# Insert new level at specified location
old_idx.insert(0, 'new_level_name', new_level_values)

# Convert back to MultiIndex
df.index = pandas.MultiIndex.from_frame(old_idx)

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