I assume this is an easy fix and I'm not sure what I'm missing. I have a data frame as such:

         index               c1       c2         c3
2015-03-07 01:27:05        False    False       True   
2015-03-07 01:27:10        False    False       True   
2015-03-07 01:27:15        False    False       False   
2015-03-07 01:27:20        False    False       True   
2015-03-07 01:27:25        False    False       False   
2015-03-07 01:27:30        False    False       True   

I want to remove any rows that contain False in c3. c3 is a dtype=bool. I'm consistently running into problems since it's a boolean and not a string/int/etc, I haven't handled that before.

  • Could you provide some code? May 13, 2016 at 15:12
  • How are you handling the file?
    – aBiologist
    May 13, 2016 at 15:16

5 Answers 5


Pandas deals with booleans in a really neat, straightforward manner:

df = df[df.c3]

This does the same thing but without creating a copy (making it faster):

df = df.loc[df.c3, :]

When you're filtering dataframes using df[...], you often write some function that returns a boolean value (like df.x > 2). But in this case, since the column is already a boolean, you can just put df.c3 in on its own, which will get you all the rows that are True.

If you wanted to get the opposite (as the original title to your question implied), you could use df[~df.c3] or df.loc[~df.c3, :], where the ~ inverts the booleans.

For more on boolean indexing in Pandas, see the docs. Thanks to @Mr_and_Mrs_D for the suggestion about .loc.

  • 2
    Not sure but this might have the problem of creating a copy - maybe df = df.loc[df.c3, :] would be faster for big dataframes? Sep 23, 2019 at 11:48

Well the question's title and the question itself are the exact opposite, but:

df = df[df['c3'] == True]  # df will have only rows with True in c3


df.drop(df[df['c3'] == False].index, inplace=True)

This explicitly drops rows where 'c3' is False and not just keeping rows that evaluate to True

  • 1
    Since c3 is a dtype=bool would not suffice to say df[~df['c3']]? This has also the disadvantage of calculating ~df['c3'] - would not "evaluate to True" be the same as `"not being False" for a boolean Series? Sep 23, 2019 at 11:45
  • 1
    @Mr_and_Mrs_D sometimes I provide answers that guess at what a person might need. I imagined a scenario where 'c3' was not of dtype==bool but instead was dtype=object. We could have nulls or other objects that aren't True or False. This accounts for that. Strictly speaking, and if we assume what the OP said is true, then you are absolutely correct.
    – piRSquared
    Sep 23, 2019 at 13:57

Consider DataFrame.query. This allows a chained operation, thereby avoiding referring to the dataframe by the name of its variable.

filtered_df = df.query('my_col')

This should return rows where my_col evaluates to true. To invert the results, use query('~my_col') instead.

To do this in-place instead:

df.query('my_col', inplace=True)
  • This is a DataFrame method. I am wondering if there is one for Series?
    – Dr_Zaszuś
    Apr 19 at 21:15

Another option is to use pipe:

df.pipe(lambda x: x[x['c3']])

It also works in a method chain like query, but also with a Series:

df['c3'].pipe(lambda x: x[x])

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