I've done some searching and can't figure out how to filter a dataframe by df["col"].str.contains(word), however I'm wondering if there is a way to do the reverse: filter a dataframe by that set's compliment. eg: to the effect of !(df["col"].str.contains(word)).

Can this be done through a DataFrame method?


You can use the invert (~) operator (which acts like a not for boolean data):

new_df = df[~df["col"].str.contains(word)]

, where new_df is the copy returned by RHS.

contains also accepts a regular expression...

If the above throws a ValueError, the reason is likely because you have mixed datatypes, so use na=False:

new_df = df[~df["col"].str.contains(word, na=False)]


new_df = df[df["col"].str.contains(word) == False]
  • 1
    Perfect! I'm SQL-familiar with regex and thought it was different in Python - saw a lot of articles with re.complies and told myself I'd get to that later. Looks like I overfit the search and it's just as you say : ) – stites Jun 14 '13 at 14:58
  • 4
    Maybe a full example would be helpful: df[~df.col.str.contains(word)] returns a copy of the original dataframe with excluded rows matching the word. – Dennis Golomazov Jun 12 '17 at 18:03

I was having trouble with the not (~) symbol as well, so here's another way from another StackOverflow thread:


You can use Apply and Lambda to select rows where a column contains any thing in a list. For your scenario :

df[df["col"].apply(lambda x:x not in [word1,word2,word3])]

I had to get rid of the NULL values before using the command recommended by Andy above. An example:

df = pd.DataFrame(index = [0, 1, 2], columns=['first', 'second', 'third'])
df.ix[:, 'first'] = 'myword'
df.ix[0, 'second'] = 'myword'
df.ix[2, 'second'] = 'myword'
df.ix[1, 'third'] = 'myword'

    first   second  third
0   myword  myword   NaN
1   myword  NaN      myword 
2   myword  myword   NaN

Now running the command:


I get the following error:

TypeError: bad operand type for unary ~: 'float'

I got rid of the NULL values using dropna() or fillna() first and retried the command with no problem.


I hope the answers are already posted

I am adding the framework to find multiple words and negate those from dataFrame.

Here 'word1','word2','word3','word4' = list of patterns to search

df = DataFrame

column_a = A column name from from DataFrame df

Search_for_These_values = ['word1','word2','word3','word4'] 

pattern = '|'.join(Search_for_These_values)

result = df.loc[~(df['column_a'].str.contains(pattern, case=False)]

Additional to nanselm2's answer, you can use 0 instead of False:

  • it looks like this also remove any rows with NaN – bshelt141 Jan 7 at 20:17

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