232

Is there any function that would be the equivalent of a combination of df.isin() and df[col].str.contains()?

For example, say I have the series s = pd.Series(['cat','hat','dog','fog','pet']), and I want to find all places where s contains any of ['og', 'at'], I would want to get everything but 'pet'.

I have a solution, but it's rather inelegant:

searchfor = ['og', 'at']
found = [s.str.contains(x) for x in searchfor]
result = pd.DataFrame[found]
result.any()

Is there a better way to do this?

3
  • 3
    Note: There is a solution described by @unutbu which is more efficient than using pd.Series.str.contains. If performance is an issue, then this may be worth investigating.
    – jpp
    May 6, 2018 at 22:09
  • 4
    Highly recommend checking out this answer for partial string search using multiple keywords/regexes (scroll down to the "Multiple Substring Search" subheading).
    – cs95
    Apr 7, 2019 at 21:04
  • In the specific example in the question, you could use pd.Series.str.endswith with a tuple argument: pandas.pydata.org/docs/reference/api/…
    – user7868
    Oct 20, 2022 at 0:19

4 Answers 4

404

One option is just to use the regex | character to try to match each of the substrings in the words in your Series s (still using str.contains).

You can construct the regex by joining the words in searchfor with |:

>>> searchfor = ['og', 'at']
>>> s[s.str.contains('|'.join(searchfor))]
0    cat
1    hat
2    dog
3    fog
dtype: object

As @AndyHayden noted in the comments below, take care if your substrings have special characters such as $ and ^ which you want to match literally. These characters have specific meanings in the context of regular expressions and will affect the matching.

You can make your list of substrings safer by escaping non-alphanumeric characters with re.escape:

>>> import re
>>> matches = ['$money', 'x^y']
>>> safe_matches = [re.escape(m) for m in matches]
>>> safe_matches
['\\$money', 'x\\^y']

The strings with in this new list will match each character literally when used with str.contains.

4
  • 4
    maybe good to add this link pandas.pydata.org/pandas-docs/stable/… too. Starting from pandas 0.15, the string operations are even easier
    – goofd
    Oct 26, 2014 at 21:19
  • 7
    one thing you have to take care with is if a string in searchfor has special regex characters (you can map with re.escape). Oct 26, 2014 at 21:24
  • I don't know why your method doesn't work with "str.startswith('|'.join(searchfor))" Feb 17, 2019 at 12:59
  • 1
    in this case I understand we use "|" for OR, how could we use AND??
    – The Dan
    Feb 11, 2021 at 23:31
94

You can use str.contains alone with a regex pattern using OR (|):

s[s.str.contains('og|at')]

Or you could add the series to a dataframe then use str.contains:

df = pd.DataFrame(s)
df[s.str.contains('og|at')] 

Output:

0 cat
1 hat
2 dog
3 fog 
3
  • 2
    how to do it for AND?
    – JacoSolari
    Mar 25, 2020 at 17:07
  • 2
    @JacoSolari check out this answer stackoverflow.com/questions/37011734/…
    – James
    Mar 26, 2020 at 10:08
  • 3
    @James yes, thanks. For completion here is the most upvoted oneliner in that answer. df.col.str.contains(r'(?=.*apple)(?=.*banana)',regex=True)
    – JacoSolari
    Mar 26, 2020 at 14:13
13

Here is a one line lambda that also works:

df["TrueFalse"] = df['col1'].apply(lambda x: 1 if any(i in x for i in searchfor) else 0)

Input:

searchfor = ['og', 'at']

df = pd.DataFrame([('cat', 1000.0), ('hat', 2000000.0), ('dog', 1000.0), ('fog', 330000.0),('pet', 330000.0)], columns=['col1', 'col2'])

   col1  col2
0   cat 1000.0
1   hat 2000000.0
2   dog 1000.0
3   fog 330000.0
4   pet 330000.0

Apply Lambda:

df["TrueFalse"] = df['col1'].apply(lambda x: 1 if any(i in x for i in searchfor) else 0)

Output:

    col1    col2        TrueFalse
0   cat     1000.0      1
1   hat     2000000.0   1
2   dog     1000.0      1
3   fog     330000.0    1
4   pet     330000.0    0
1
  • 6
    I did it as df.loc[df.col1.apply(lambda x: True if any(i in x for i in searchfor) else False)] and it gone well, thanks.
    – emremrah
    Dec 21, 2020 at 5:53
0

Had the same issue. Without making it too complex, you can add | in between each entry, like fieldname.str.contains("cat|dog") works

1

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