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

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

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

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

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

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

6 Answers 6


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

import pandas as pd

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

An even shorter way:

pd.concat({'Foo': df}, names=['Firstlevel'])

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

  • 48
    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. Feb 10, 2017 at 12:32
  • 3
    This is nice because it also works for pd.Series objects, whereas the currently accepted answer (from 2013) does not.
    – John
    Jan 11, 2018 at 12:03
  • 1
    Not working anymore. TypeError: unhashable type: 'list'
    – cduguet
    Nov 11, 2018 at 16:27
  • 7
    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, 2018 at 12:59
  • 4
    The downside of this approach is that it creates a copy of the entire DataFrame.
    – normanius
    Oct 4, 2021 at 16:10

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


Even shorter solution (saves the reordering of levels):

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

Or alternatively (use axis=1 for columns):

df = pd.concat([df], keys=["Firstlevel"], axis=0)
  • 3
    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, 2017 at 3:04
  • 2
    This works only for the row index, but not for the column index.
    – normanius
    Oct 4, 2021 at 16:19
  • Yeah what's the best way to do this with a column multiindex - just transpose?
    – Marses
    Oct 8, 2021 at 7:23

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)

Some advantages over the other answers:

  • The new level can be added at any location, not just the top.
  • It is purely a manipulation on the index and doesn't require manipulating the data, like the concatenation trick.
  • It doesn't require adding a column as an intermediate step, which can break multi-level column indexes.
  • 2
    I really like this answer. It is very flexible and straightforward to do any kind of MultiIndex manipulation. And of course, this method can be applied to MultiIndex columns as well df.columns.to_frame()
    – wisbucky
    Sep 16, 2021 at 4:23
  • Nice, this reads easy and is super generalizable. Apr 29, 2022 at 4:33

I made a little function out of cxrodgers answer, which IMHO is the best solution since it works purely on an index, independent of any data frame or series.

There is one fix I added: the to_frame() method will invent new names for index levels that don't have one. As such the new index will have names that don't exist in the old index. I added some code to revert this name-change.

Below is the code, I've used it myself for a while and it seems to work fine. If you find any issues or edge cases, I'd be much obliged to adjust my answer.

import pandas as pd

def _handle_insert_loc(loc: int, n: int) -> int:
    Computes the insert index from the right if loc is negative for a given size of n.
    return n + loc + 1 if loc < 0 else loc

def add_index_level(old_index: pd.Index, value: Any, name: str = None, loc: int = 0) -> pd.MultiIndex:
    Expand a (multi)index by adding a level to it.

    :param old_index: The index to expand
    :param name: The name of the new index level
    :param value: Scalar or list-like, the values of the new index level
    :param loc: Where to insert the level in the index, 0 is at the front, negative values count back from the rear end
    :return: A new multi-index with the new level added
    loc = _handle_insert_loc(loc, len(old_index.names))
    old_index_df = old_index.to_frame()
    old_index_df.insert(loc, name, value)
    new_index_names = list(old_index.names)  # sometimes new index level names are invented when converting to a df,
    new_index_names.insert(loc, name)        # here the original names are reconstructed
    new_index = pd.MultiIndex.from_frame(old_index_df, names=new_index_names)
    return new_index

It passed the following unittest code:

import unittest

import numpy as np
import pandas as pd

class TestPandaStuff(unittest.TestCase):

    def test_add_index_level(self):
        df = pd.DataFrame(data=np.random.normal(size=(6, 3)))
        i1 = add_index_level(df.index, "foo")

        # it does not invent new index names where there are missing
        self.assertEqual([None, None], i1.names)

        # the new level values are added
        self.assertTrue(np.all(i1.get_level_values(0) == "foo"))
        self.assertTrue(np.all(i1.get_level_values(1) == df.index))

        # it does not invent new index names where there are missing
        i2 = add_index_level(i1, ["x", "y"]*3, name="xy", loc=2)
        i3 = add_index_level(i2, ["a", "b", "c"]*2, name="abc", loc=-1)
        self.assertEqual([None, None, "xy", "abc"], i3.names)

        # the new level values are added
        self.assertTrue(np.all(i3.get_level_values(0) == "foo"))
        self.assertTrue(np.all(i3.get_level_values(1) == df.index))
        self.assertTrue(np.all(i3.get_level_values(2) == ["x", "y"]*3))
        self.assertTrue(np.all(i3.get_level_values(3) == ["a", "b", "c"]*2))

        # df.index = i3
        # print()
        # print(df)

Another answer using from_tuples(). This generalizes this previous answer.

key = "Foo"
name = "First"
# If df.index.nlevels > 1:
df.index = pd.MultiIndex.from_tuples(((key, *item) for item in df.index),
# If df.index.nlevels == 1:
# df.index = pd.MultiIndex.from_tuples(((key, item) for item in df.index),
#                                      names=[name]+df.index.names)

I like this approach because

  • it only modifies the index (no unnecessary copy action of the body)
  • it works for both axes (row and column indices)
  • it still can be written as a one-liner

Wrapping the above in a function makes it easier to switch between row and column indexes, and between single-level and multi-level indexes:

def prepend_index_level(index, key, name=None):
    names = index.names
    if index.nlevels==1:
        # Sequence of tuples
        index = ((item,) for item in index)

    tuples_gen = ((key,)+item for item in index)
    return pd.MultiIndex.from_tuples(tuples_gen, names=[name]+names)

df.index = prepend_index_level(df.index, key="Foo", name="First")
df.columns = prepend_index_level(df.columns, key="Bar", name="Top")

# Top               Bar
#                  Vals
# First A  B
# Foo   a1 b1 -0.446066
#          b2 -0.248027
#       a2 b3  0.522357
#       a3 b4  0.404048

Finally, the above can be further generalized by inserting the key at any index level:

def insert_index_level(index, key, name=None, level=0):
    def insert_(pos, seq, value):
        seq = list(seq)
        seq.insert(pos, value)
        return tuple(seq)

    names = insert_(level, index.names, name)
    if index.nlevels==1:
        # Sequence of tuples.
        index = ((item,) for item in index)
    tuples_gen = (insert_(level, item, key) for item in index)
    return pd.MultiIndex.from_tuples(tuples_gen, names=names)

df.index = insert_index_level(df.index, key="Foo", name="Last", level=2)
df.columns = insert_index_level(df.columns, key="Bar", name="Top", level=0)

# Top              Bar
#                 Vals
# A  B  Last
# a1 b1 Foo  -0.595949
#    b2 Foo  -1.621233
# a2 b3 Foo  -0.748917
# a3 b4 Foo   2.147814

How about building it from scratch with pandas.MultiIndex.from_tuples?

df.index = p.MultiIndex.from_tuples(
    [(nl, A, B) for nl, (A, B) in
        zip(['Foo'] * len(df), df.index)],
    names=['FirstLevel', 'A', 'B'])

Similarly to cxrodger's solution, this is a flexible method and avoids modifying the underlying array for the dataframe.

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