402

If I've got a multi-level column index:

>>> cols = pd.MultiIndex.from_tuples([("a", "b"), ("a", "c")])
>>> pd.DataFrame([[1,2], [3,4]], columns=cols)
    a
   ---+--
    b | c
--+---+--
0 | 1 | 2
1 | 3 | 4

How can I drop the "a" level of that index, so I end up with:

    b | c
--+---+--
0 | 1 | 2
1 | 3 | 4
2
  • 6
    It would be nice to have a DataFrame method that does that for both index and columns. Either of dropping or selecting index levels.
    – Soerendip
    May 24, 2018 at 17:56
  • 1
    @Sören Check out stackoverflow.com/a/56080234/3198568. droplevel works can work on either multilevel indexes or columns through the parameter axis.
    – irene
    Apr 23, 2020 at 7:35

8 Answers 8

476

You can use MultiIndex.droplevel:

>>> cols = pd.MultiIndex.from_tuples([("a", "b"), ("a", "c")])
>>> df = pd.DataFrame([[1,2], [3,4]], columns=cols)
>>> df
   a   
   b  c
0  1  2
1  3  4

[2 rows x 2 columns]
>>> df.columns = df.columns.droplevel()
>>> df
   b  c
0  1  2
1  3  4

[2 rows x 2 columns]
5
  • 96
    It's probably best to explicitly say which level is being dropped. Levels are 0-indexed beginning from the top. >>> df.columns = df.columns.droplevel(0)
    – Ted Petrou
    Dec 2, 2016 at 2:44
  • 13
    If the index you are trying to drop is on the left (row) side and not the top (column) side, you can change "columns" to "index" and use the same method: >>> df.index = df.index.droplevel(1)
    – Idodo
    Nov 28, 2018 at 12:13
  • 9
    In Panda version 0.23.4, df.columns.droplevel() is no longer available.
    – yoonghm
    Dec 2, 2018 at 14:28
  • 15
    @yoonghm It is there, you are probably just calling it on columns that don't have a multi-index Dec 18, 2018 at 14:59
  • 1
    I had three levels deep and wanted to drop down to just the middle level. I found that dropping the lowest (level [2]) and then the highest (level [0]) worked best. >>>df.columns = df.columns.droplevel(2) >>>df.columns = df.columns.droplevel(0)
    – Kyle C
    Feb 5, 2019 at 18:36
133

As of Pandas 0.24.0, we can now use DataFrame.droplevel():

cols = pd.MultiIndex.from_tuples([("a", "b"), ("a", "c")])
df = pd.DataFrame([[1,2], [3,4]], columns=cols)

df.droplevel(0, axis=1) 

#   b  c
#0  1  2
#1  3  4

This is very useful if you want to keep your DataFrame method-chain rolling.

3
  • 4
    This is the "purest" solution in that a new DataFrame is returned rather than have it modified "in place".
    – EliadL
    May 10, 2020 at 9:37
  • 5
    df.droplevel(0, axis='columns') is even more explicit and easy to understand
    – Guy
    Jan 19, 2021 at 12:37
  • I will come here forever, because I always forget to set axis=1.
    – igorkf
    Aug 10, 2021 at 14:33
111

Another way to drop the index is to use a list comprehension:

df.columns = [col[1] for col in df.columns]

   b  c
0  1  2
1  3  4

This strategy is also useful if you want to combine the names from both levels like in the example below where the bottom level contains two 'y's:

cols = pd.MultiIndex.from_tuples([("A", "x"), ("A", "y"), ("B", "y")])
df = pd.DataFrame([[1,2, 8 ], [3,4, 9]], columns=cols)

   A     B
   x  y  y
0  1  2  8
1  3  4  9

Dropping the top level would leave two columns with the index 'y'. That can be avoided by joining the names with the list comprehension.

df.columns = ['_'.join(col) for col in df.columns]

    A_x A_y B_y
0   1   2   8
1   3   4   9

That's a problem I had after doing a groupby and it took a while to find this other question that solved it. I adapted that solution to the specific case here.

3
  • 4
    [col[1] for col in df.columns] is more directly df.columns.get_level_values(1). Aug 8, 2018 at 15:37
  • 4
    Had a similar need wherein some columns had empty level values. Used the following: [col[0] if col[1] == '' else col[1] for col in df.columns]
    – Logan
    Oct 7, 2018 at 0:30
  • 1
    That's awesome. I was needing an easy way to bind level + columns. Thank you.
    – igorkf
    Dec 23, 2022 at 23:25
54

Another way to do this is to reassign df based on a cross section of df, using the .xs method.

>>> df

    a
    b   c
0   1   2
1   3   4

>>> df = df.xs('a', axis=1, drop_level=True)

    # 'a' : key on which to get cross section
    # axis=1 : get cross section of column
    # drop_level=True : returns cross section without the multilevel index

>>> df

    b   c
0   1   2
1   3   4
3
  • 2
    This only works whenever there is a single label for an entire column level.
    – Ted Petrou
    Nov 3, 2017 at 16:23
  • 1
    Does not work when you want to drop the second level.
    – Soerendip
    Apr 26, 2018 at 21:08
  • 1
    This is a nice solution if you want to slice and drop for the same level. If you wanted to slice on the second level (say b) then drop that level and be left with the first level (a), the following would work: df = df.xs('b', axis=1, level=1, drop_level=True) Jun 5, 2018 at 17:07
20

A small trick using sum with level=1(work when level=1 is all unique)

df.sum(level=1,axis=1)
Out[202]: 
   b  c
0  1  2
1  3  4

More common solution get_level_values

df.columns=df.columns.get_level_values(1)
df
Out[206]: 
   b  c
0  1  2
1  3  4
18

You could also achieve that by renaming the columns:

df.columns = ['a', 'b']

This involves a manual step but could be an option especially if you would eventually rename your data frame.

1
  • This is essentially what Mint's first answer does. Now, there is also no need to specify the list of names (which is generally tedious), as it is given to you by df.columns.get_level_values(1). Aug 8, 2018 at 15:59
8

I have struggled with this problem since I don’t know why my droplevel() function does not work. Work through several and learn that ‘a’ in your table is columns name and ‘b’, ‘c’ are index. Do like this will help

df.columns.name = None
df.reset_index() #make index become label
2
  • 1
    This does not reproduce the desired output at all. Aug 8, 2018 at 16:02
  • 1
    Based on the date this was posted, drop level might not have been included in your version of Pandas (it was added to the stable version, 24.0, on January 2019)
    – LinkBerest
    Jul 30, 2019 at 4:28
0
new_columns_cdnr = []
for column in list(df.columns):
    new = [x for x in list(column) if not 'unnamed' in x.lower()]
    new_columns_cdnr.append(new[-1])
df.columns = new_columns_cdnr

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