I'm having trouble applying a regex function a column in a python dataframe. Here is the head of my dataframe:

               Name   Season          School   G    MP  FGA  3P  3PA    3P%
 74       Joe Dumars  1982-83   McNeese State  29   NaN  487   5    8  0.625   
 84      Sam Vincent  1982-83  Michigan State  30  1066  401   5   11  0.455   
 176  Gerald Wilkins  1982-83     Chattanooga  30   820  350   0    2  0.000   
 177  Gerald Wilkins  1983-84     Chattanooga  23   737  297   3   10  0.300   
 243    Delaney Rudd  1982-83     Wake Forest  32  1004  324  13   29  0.448  

I thought I had a pretty good grasp of applying functions to Dataframes, so maybe my Regex skills are lacking.

Here is what I put together:

import re

def split_it(year):
    return re.findall('(\d\d\d\d)', year)

 df['Season2'] = df['Season'].apply(split_it(x))

TypeError: expected string or buffer

Output would be a column called Season2 that contains the year before the hyphen. I'm sure theres an easier way to do it without regex, but more importantly, i'm trying to figure out what I did wrong

Thanks for any help in advance.

6 Answers 6


When I try (a variant of) your code I get NameError: name 'x' is not defined-- which it isn't.

You could use either

df['Season2'] = df['Season'].apply(split_it)


df['Season2'] = df['Season'].apply(lambda x: split_it(x))

but the second one is just a longer and slower way to write the first one, so there's not much point (unless you have other arguments to handle, which we don't here.) Your function will return a list, though:

>>> df["Season"].apply(split_it)
74     [1982]
84     [1982]
176    [1982]
177    [1983]
243    [1982]
Name: Season, dtype: object

although you could easily change that. FWIW, I'd use vectorized string operations and do something like

>>> df["Season"].str[:4].astype(int)
74     1982
84     1982
176    1982
177    1983
243    1982
Name: Season, dtype: int64


>>> df["Season"].str.split("-").str[0].astype(int)
74     1982
84     1982
176    1982
177    1983
243    1982
Name: Season, dtype: int64
  • 2
    realized i asked the question wrong and had what you gave me. my error was coming b/c i had NaN values in the year further down the dataframe. I found that out by trying df["Season"].str.split("-").str[0].astype(int). Thanks anyways though, really appreciate it
    – itjcms18
    Aug 13, 2014 at 19:15
  • when I want to lowercase the values, df['Season2'] = df['Season'].apply(lower()) doesn't work, I have to use lambda
    – CN_Cabbage
    May 10, 2022 at 6:08

You can simply use str.extract


Here you locate \d{4}-\d{2} (for example 1982-83) but only extracts the captured group between parenthesis \d{4} (for example 1982)

  • 1
    Is case there are more than one matches, is there a way to separate the matches with a , ?
    – Marrluxia
    Jul 22, 2022 at 8:37

The asked problem can be solved by writing the following code :

import re
def split_it(year):
    x = re.findall('([\d]{4})', year)
    if x :

df['Season2'] = df['Season'].apply(split_it)

You were facing this problem as some rows didn't had year in the string


you can use pandas native function to do it too.

check this page for the pandas functions that accepts regular expression. for your case, you can do


I had the exact same issue. Thanks for the answers @DSM. FYI @itjcms, you can improve the function by removing the repetition of the '\d\d\d\d'.

def split_it(year):  
    return re.findall('(\d\d\d\d)', year)


def split_it(year):
    return re.findall('(\d{4})', year)

I'd extract with:


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