Assume we have a data frame in Python Pandas that looks like this:

df = pd.DataFrame({'vals': [1, 2, 3, 4], 'ids': [u'aball', u'bball', u'cnut', u'fball']})

Or, in table form:

ids    vals
aball   1
bball   2
cnut    3
fball   4

How do I filter rows which contain the key word "ball?" For example, the output should be:

ids    vals
aball   1
bball   2
fball   4

4 Answers 4

In [3]: df[df['ids'].str.contains("ball")]
     ids  vals
0  aball     1
1  bball     2
3  fball     4
  • 25
    How would you invert this to find all the rows that did not contain the string? Commented Mar 1, 2017 at 9:50
  • 101
    @user4896331 - df[~df['ids'].str.contains("ball")], ~ negates the condition
    – Amit
    Commented Mar 1, 2017 at 12:57
  • If it was a specific word, to negate, could you also use: df = df[df.id != "ball"]
    – Brian
    Commented Apr 26, 2017 at 17:59
  • @Brian - Yes, in the above df you can try df = df[df.ids != "aball"] to see it in action.
    – Amit
    Commented Apr 27, 2017 at 2:03
  • @Amit: I need to access columns by id instead of name. However trying str gives me an error [AttributeError: 'DataFrame' object has no attribute 'str'] Does new pandas not support it or is it because of number based access? Commented Oct 23, 2017 at 10:01
df[df['ids'].str.contains('ball', na = False)] # valid for (at least) pandas version 0.17.1

Step-by-step explanation (from inner to outer):

  • df['ids'] selects the ids column of the data frame (technically, the object df['ids'] is of type pandas.Series)
  • df['ids'].str allows us to apply vectorized string methods (e.g., lower, contains) to the Series
  • df['ids'].str.contains('ball') checks each element of the Series as to whether the element value has the string 'ball' as a substring. The result is a Series of Booleans indicating True or False about the existence of a 'ball' substring.
  • df[df['ids'].str.contains('ball')] applies the Boolean 'mask' to the dataframe and returns a view containing appropriate records.
  • na = False removes NA / NaN values from consideration; otherwise a ValueError may be returned.
  • Could you explain what that code is doing and how it works, please?
    – Kevin
    Commented Jan 16, 2015 at 1:36
  • How to work with partial match and grab the remaining string with the partial match '#':str something like this?
    – Sitz Blogz
    Commented Jun 28, 2016 at 1:50
  • 6
    Absolutely love it when someone does a step-by-step explanation. It really helps with comprehension! Commented Mar 1, 2017 at 9:49
  • 4
    And if you substitute 'ball' with '|'.join(list_of_balls) one can apply a list of strings to the search. While the '|'.join(list_of_balls) creates a RegEx with OR to search for vaild strings
    – venti
    Commented Sep 1, 2017 at 8:38
  • 5
    Note that you can make the filter case insensitive adding case=False, reuslting in df[df['ids'].str.contains('ball', case=False,na = False)]
    – Antonio
    Commented Jun 26, 2020 at 8:43
>>> mask = df['ids'].str.contains('ball')    
>>> mask
0     True
1     True
2    False
3     True
Name: ids, dtype: bool

>>> df[mask]
     ids  vals
0  aball     1
1  bball     2
3  fball     4
  • 3
    This should be the accepted answer. Commented Feb 26, 2020 at 18:50

If you want to set the column you filter on as a new index, you could also consider to use .filter; if you want to keep it as a separate column then str.contains is the way to go.

Let's say you have

df = pd.DataFrame({'vals': [1, 2, 3, 4, 5], 'ids': [u'aball', u'bball', u'cnut', u'fball', 'ballxyz']})

       ids  vals
0    aball     1
1    bball     2
2     cnut     3
3    fball     4
4  ballxyz     5

and your plan is to filter all rows in which ids contains ball AND set ids as new index, you can do

df.set_index('ids').filter(like='ball', axis=0)

which gives

aball       1
bball       2
fball       4
ballxyz     5

But filter also allows you to pass a regex, so you could also filter only those rows where the column entry ends with ball. In this case you use

df.set_index('ids').filter(regex='ball$', axis=0)

aball     1
bball     2
fball     4

Note that now the entry with ballxyz is not included as it starts with ball and does not end with it.

If you want to get all entries that start with ball you can simple use

df.set_index('ids').filter(regex='^ball', axis=0)


ballxyz     5

The same works with columns; all you then need to change is the axis=0 part. If you filter based on columns, it would be axis=1.

  • Just saw your post as I was looking for a similar solution. I used the filter method you mentioned but failed to get desired results. The question is here Would you mind taking a look nad see if there's anything wrong with my code/method? IMO it shall be super simple albeit my being unable to make it work.
    – Bowen Liu
    Commented Sep 13, 2018 at 21:05
  • @BowenLiu: I added an answer there, please check whether that works for you.
    – Cleb
    Commented Sep 13, 2018 at 21:36
  • Just got on my laptop for the night. Will do that real soon, thank you so much.
    – Bowen Liu
    Commented Sep 14, 2018 at 1:20
  • Note that contains also works with regex, the wording in this answer is a tiny bit misleading in that regard.
    – Puff
    Commented Apr 27, 2022 at 23:30

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