191

I want to drop rows from a pandas dataframe when the value of the date column is in a list of dates. The following code doesn't work:

a=['2015-01-01' , '2015-02-01']

df=df[df.datecolumn not in a]

I get the following error:

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().

0

2 Answers 2

327

You can use pandas.Dataframe.isin.

pandas.Dateframe.isin will return boolean values depending on whether each element is inside the list a or not. You then invert this with the ~ to convert True to False and vice versa.

import pandas as pd

a = ['2015-01-01' , '2015-02-01']

df = pd.DataFrame(data={'date':['2015-01-01' , '2015-02-01', '2015-03-01' , '2015-04-01', '2015-05-01' , '2015-06-01']})

print(df)
#         date
#0  2015-01-01
#1  2015-02-01
#2  2015-03-01
#3  2015-04-01
#4  2015-05-01
#5  2015-06-01

df = df[~df['date'].isin(a)]

print(df)
#         date
#2  2015-03-01
#3  2015-04-01
#4  2015-05-01
#5  2015-06-01
2
  • 9
    You probably mean Series.isin, not DataFrame.isin. You're comparing for a column, not an entire df.
    – Asclepius
    Sep 23, 2018 at 0:28
  • I have an error when I tried this df = df[~df.isin(a)] SystemError: <built-in method view of numpy.ndarray object at 0x11a227690> returned a result with an error set
    – Howins
    May 31, 2021 at 14:00
66

You can use Series.isin:

df = df[~df.datecolumn.isin(a)]

While the error message suggests that all() or any() can be used, they are useful only when you want to reduce the result into a single Boolean value. That is however not what you are trying to do now, which is to test the membership of every values in the Series against the external list, and keep the results intact (i.e., a Boolean Series which will then be used to slice the original DataFrame).

You can read more about this in the Gotchas.

0

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