I'm looking for a way to check whether one string can be found in another string. str.contains only takes a fixed string pattern as argument, I'd rather like to have an element-wise comparison between two string columns.

import pandas as pd

df = pd.DataFrame({'long': ['sometext', 'someothertext', 'evenmoretext'],
               'short': ['some', 'other', 'stuff']})

# This fails:
df['short_in_long'] = df['long'].str.contains(df['short'])

Expected Output:

[True, True, False]
  • You've accepted an answer that is a near carbon copy of another. Not sure that kind of thing should be encouraged. Just FYI. – cs95 Mar 15 at 13:51
  • I accepted the other answer only because your (excellent one) did not work in my actual case. So the other seems to be more general. – E. Sommer Mar 15 at 13:53
  • Not sure which version of the answer you're referring to. The other answer will also fail from a TypeError. And like I replied to your other comment, the initial edit with str.contains is wrong, because the check is not element wise. For example, using the contains solution, you will search for "some" across all rows, when it should have checked just the first. General, but completely wrong. – cs95 Mar 15 at 13:57
  • You don't have to accept my answer, but you should check/verify the correctness of the solutions that you decide to accept, general or not... That's all. Have a nice day :) – cs95 Mar 15 at 13:58
  • I did check them obviously, and I accepted the final version, not the initial (wrong) one. You have a nice day too :) – E. Sommer Mar 15 at 14:00

Use list comprehension with zip:

df['short_in_long'] = [b in a for a, b in zip(df['long'], df['short'])]

print (df)
            long  short  short_in_long
0       sometext   some           True
1  someothertext  other           True
2   evenmoretext  stuff          False

This is a prime use case for a list comprehension:

# df['short_in_long'] = [y in x for x, y in df[['long', 'short']].values.tolist()]
df['short_in_long'] = [y in x for x, y in df[['long', 'short']].values]

            long  short  short_in_long
0       sometext   some           True
1  someothertext  other           True
2   evenmoretext  stuff          False

List comprehensions are usually faster than string methods because of lesser overhead. See For loops with pandas - When should I care?.

If your data contains NaNs, you can call a function with error handling:

def try_check(haystack, needle):
        return needle in haystack
    except TypeError:
        return False

df['short_in_long'] = [try_check(x, y) for x, y in df[['long', 'short']].values]

Check with numpy, it is row-wise :-) .

Out[302]: array([ True,  True, False])
  • I used numpy a well. I was trying df['short_in_long'] = np.where(df['short'].str.contains(df['long']), True, False). Why does this not work row-wise? – Erfan Mar 15 at 14:22
  • @Erfan isin will not check the partial match :-) – Wen-Ben Mar 15 at 14:23
  • Sorry, that was my second try. I edited my comment. – Erfan Mar 15 at 14:24
  • @Erfan two part , str.contain do not accept Series, second , if you using join string with sep = '|' when the 3rd row have any partial string like some and other, the 3rd row will return as True under str.contain – Wen-Ben Mar 15 at 14:29
  • 1
    @Erfan yes that is why when do rowwise check like 1-1 , we can not using str.contains – Wen-Ben Mar 15 at 14:34


df['short_in_long'] = df['long'].str.contains('|'.join(df['short'].values))

Update : I misinterpreted the problem. Here is the corrected version:

df['short_in_long'] = df['long'].apply(lambda x: True if x[1] in x[0] else False, axis =1)
  • 1
    It was my first wrong answer. OP need check values per rows. – jezrael Mar 15 at 13:51
  • As @jezrael mentioned , op want a row-wise check (1-1 check ), not (1-n) check – Wen-Ben Mar 15 at 14:01
  • Thanks. I have corrected my code for one-to-one row-wise checking. – Loochie Mar 15 at 16:24

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