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.

  • 4
    does df.index.map(foo) work? – HYRY Nov 17 '13 at 0:45
  • It "works", but it returns a numpy array rather than a Pandas Series. – Alex Rothberg Nov 17 '13 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) – Roman Pekar Nov 17 '13 at 1:48
  • It totally depends what the function is... – Andy Hayden Nov 17 '13 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 Jul 14 '14 at 16:20

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 Nov 2 '16 at 16:13
  • 3
    A bit shorter way df.index.map(str.lower) – Zero Dec 31 '16 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 Jan 1 '17 at 19:30

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})
  • 1
    Using for loops in the pandas/numpy echo-system is highly discouraged. It is very memory inefficient and easily crashes with larger datasets. – firelynx Oct 26 '15 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.

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