What is the best way to apply a function over the index of a Pandas DataFrame? Currently I am using this verbose approach:

pd.DataFrame({"Month": df.reset_index().Date.apply(foo)})

where Date is the name of the index and foo is the name of the function that I am applying.

  • 7
    does df.index.map(foo) work?
    – HYRY
    Commented Nov 17, 2013 at 0:45
  • 1
    It "works", but it returns a numpy array rather than a Pandas Series. Commented Nov 17, 2013 at 1:00
  • 1
    what's your final goal? you can pass array to DataFrame constructor. Or do something like pd.Series(df.index).apply(foo) Commented Nov 17, 2013 at 1:48
  • It totally depends what the function is... Commented Nov 17, 2013 at 3:51
  • 1
    Following from @HYRY if you just want to modify the index of an existing DataFrame you can do df.index = df.index.map(foo)
    – Ben
    Commented Jul 14, 2014 at 16:20

4 Answers 4


As already suggested by HYRY in the comments, Series.map is the way to go here. Just set the index to the resulting series.

Simple example:

df = pd.DataFrame({'d': [1, 2, 3]}, index=['FOO', 'BAR', 'BAZ'])
FOO     1
BAR     2
BAZ     3

df.index = df.index.map(str.lower)
foo     1
bar     2
baz     3

Index != Series

As pointed out by @OP. the df.index.map(str.lower) call returns a numpy array. This is because dataframe indices are based on numpy arrays, not Series.

The only way of making the index into a Series is to create a Series from it.



The Index class now subclasses the StringAccessorMixin, which means that you can do the above operation as follows


This still produces an Index object, not a Series.

  • 1
    With a multi-index, you can use slicing if you want to use both items in your function, e.g. x[0] and x[1].
    – Elliott
    Commented Nov 2, 2016 at 16:13
  • 3
    A bit shorter way df.index.map(str.lower)
    – Zero
    Commented Dec 31, 2016 at 10:33
  • 1
    @JohnGalt Thanks for pointing it out. It's not only shorter, but faster, since str.lower is a compiled cython function and the lambda function I wrote is not.
    – firelynx
    Commented Jan 1, 2017 at 19:30
  • how does that modify if the function I want to apply needs some argument? e.g. I have a float index and I want to round each value to 2 decimal places Commented May 3, 2022 at 7:00

You can convert an index using its to_series() method, and then either apply or map, according to your needs.

ret = df.index.map(foo)                # Returns pd.Index
ret = df.index.to_series().map(foo)    # Returns pd.Series
ret = df.index.to_series().apply(foo)  # Returns pd.Series

All of the above can be assigned directly to a new or existing column of df:

df["column"] = ret

Just for completeness: pd.Index.map, pd.Series.map and pd.Series.apply all operate element-wise. I often use map to apply lookups represented by dicts or pd.Series. apply is more generic because you can pass any function along with additional args or kwargs. The differences between apply and map are further discussed in this SO thread. I don't know why pd.Index.apply was omitted.

  • thank you for your detailed response, the third option got me out of a hole. Commented Dec 13, 2021 at 9:27
  • 2
    I found the 3rd example useful, as the index is preserved in the Series that is returned.
    – kristianp
    Commented Aug 2, 2022 at 23:58

Assuming that you want to make a column in you're current DataFrame by applying your function "foo" to the index. You could write...

df['Month'] = df.index.map(foo)

To generate the series alone you could instead do ...

pd.Series({x: foo(x) for x in foo.index})
  • 2
    Using for loops in the pandas/numpy echo-system is highly discouraged. It is very memory inefficient and easily crashes with larger datasets.
    – firelynx
    Commented Oct 26, 2015 at 14:38

A lot of answers are returning the Index as an array, which loses information about the index name etc (though you could do pd.Series(index.map(myfunc), name=index.name)). It also won't work for a MultiIndex.

The way that I worked with this is to use "rename":

mix = pd.MultiIndex.from_tuples([[1, 'hi'], [2, 'there'], [3, 'dude']], names=['num', 'name'])
data = np.random.randn(3)
df = pd.Series(data, index=mix)
num  name 
1    hi       1.249914
2    there   -0.414358
3    dude     0.987852
dtype: float64

# Define a few dictionaries to denote the mapping
rename_dict = {i: i*100 for i in df.index.get_level_values('num')}
rename_dict.update({i: i+'_yeah!' for i in df.index.get_level_values('name')})
df = df.rename(index=rename_dict)
num  name       
100  hi_yeah!       1.249914
200  there_yeah!   -0.414358
300  dude_yeah!     0.987852
dtype: float64

The only trick with this is that your index needs to have unique labels b/w different multiindex levels, but maybe someone more clever than me knows how to get around that. For my purposes this works 95% of the time.

  • 1
    rename has a level argument (nowadays?). So this removes the ambiguity: df.rename(index=rename_dict0, level=0).rename(index=rename_dict1, level=1). Commented Jan 8, 2023 at 20:32

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