I'm trying to match rows of a Pandas DataFrame that contains and doesn't contain certain strings. For example:

import pandas
df = pandas.Series(['ab1', 'ab2', 'b2', 'c3'])


0    ab1
1    ab2
2     b2
dtype: object

Desired output:

2     b2
dtype: object

Question: is there an elegant way of saying something like this?

df[[df.str.contains("b")==True] and [df.str.contains("a")==False]]
# Doesn't give desired outcome

3 Answers 3


You're almost there, you just haven't got the syntax quite right, it should be:

df[(df.str.contains("b") == True) & (df.str.contains("a") == False)]

Another approach which might be cleaner if you have a lot of conditions to apply would to be to chain your filters together with reduce or a loop:

from functools import reduce
filters = [("a", False), ("b", True)]
reduce(lambda df, f: df[df.str.contains(f[0]) == f[1]], filters, df)
#outputs b2
  • 4
    Don't need to use == True and can use the complement operator tilda ~ instead of == False
    – lstodd
    Jan 9, 2020 at 11:38


>>> ts.str.contains('b') & ~ts.str.contains('a')
0    False
1    False
2     True
3    False
dtype: bool

or use regex:

>>> ts.str.contains('^[^a]*b[^a]*$')
0    False
1    False
2     True
3    False
dtype: bool

You can use .loc and ~ to index:

df.loc[(df.str.contains("b")) & (~df.str.contains("a"))]

2    b2
dtype: object

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.