264

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?

9 Answers 9

500

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 or TypeError, the reason is likely because you have mixed datatypes, so use na=False:

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

Or,

new_df = df[df["col"].str.contains(word) == False]
2
  • 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, 2013 at 14:58
  • 6
    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. Jun 12, 2017 at 18:03
88

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

df[df["col"].str.contains('this|that')==False]
3
  • Can it be combined like this? df[df["col1"].str.contains('this'|'that')==False and df["col2"].str.contains('foo'|'bar')==True]? Thanks! May 24, 2017 at 10:54
  • Yes, you can. The syntax is explained here: stackoverflow.com/questions/22086116/… May 24, 2017 at 11:26
  • 2
    Not to forget that if we want to rwmove rows which contain "|" we should use "\" like df = df[~df["col"].str.contains('\|')]
    – Amir
    Nov 26, 2019 at 8:59
18

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 DataFrame df

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

pattern = '|'.join(values_to_remove)

result = df.loc[~df['column_a'].str.contains(pattern, case=False)]
1
  • this was the only method that worked for me
    – brygid
    Sep 8, 2021 at 6:27
17

You can use Apply and Lambda :

df[df["col"].apply(lambda x: word not in x)]

Or if you want to define more complex rule, you can use AND:

df[df["col"].apply(lambda x: word_1 not in x and word_2 not in x)]
6
  • its not working for contains but working for equals. Aug 11, 2021 at 5:08
  • I fixed it, now it should be fine @RamanJoshi
    – Arash
    Aug 16, 2021 at 23:21
  • I think 'in' works for checking equals so 'not in' will check not equals, will not check for not contains. right? Aug 17, 2021 at 5:05
  • @RamanJoshi please read the question : Search for “does-not-contain”
    – Arash
    Aug 18, 2021 at 6:44
  • I have read the question carefully, that's why I am saying to you that there is much difference in between "not equals" and "not contains". for eg. if we have list which containing items ["hello", "world", "test"] and if we want to check for "not equals" then text "ello" will return "true" as text is not equals to any of the items. but when we check for "not contains" it should return "false" as one item i.e. "Hello" contains the text "ello". I think you are getting the question wrong. Aug 19, 2021 at 7:16
8

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'
df

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

Now running the command:

~df["second"].str.contains(word)

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.

2
4

To negate your query use ~. Using query has the advantage of returning the valid observations of df directly:

df.query('~col.str.contains("word").values')
1
  • This is perfect when you want to chain operations (df .filter(items=['time', ' lat', ' long', ' col']) .rename(columns={' lat': 'lat', ' long': 'lng', ' col': 'col'}) .query('lat != 0.0') .query('lng != 0.0') .query('~col.str.contains("word").values') )
    – oekici
    Oct 26, 2022 at 20:09
3

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

df["col"].str.contains(word)==0
1
  • it looks like this also remove any rows with NaN
    – bshelt141
    Jan 7, 2019 at 20:17
1

somehow '.contains' didn't work for me but when I tried with '.isin' as mentioned by @kenan in the answer (How to drop rows from pandas data frame that contains a particular string in a particular column?) it works. Adding further, if you want to look at the entire dataframe and remove those rows which has the specific word (or set of words) just use the loop below

for col in df.columns:
    df = df[~df[col].isin(['string or string list separeted by comma'])]

just remove ~ to get the dataframe that contains the word

0

To compliment to the above question, if someone wants to remove all the rows with strings, one could do:

df_new=df[~df['col_name'].apply(lambda x: isinstance(x, str))]

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