I have a dataframe with an email column. I'm trying delete all records from this dataframe where the email address exists in a second dataframe.
In SQL this would be
delete from df1 where email in (select email from df2)
Thanks
You can use ~isin
In [30]: df1
Out[30]:
pid
0 1
1 2
2 3
3 4
In [31]: df2
Out[31]:
pid
0 1
1 2
In [32]: df1=df1[~df1['pid'].isin(df2['pid'])]
In [33]: df1
Out[33]:
pid
2 3
3 4
You can do following using where
:
import pandas as pd
df1 = pd.DataFrame({'email':['[email protected]','[email protected]','[email protected]']})
df2 = pd.DataFrame({'email':['[email protected]']})
print(df1)
Output for df1
:
email
0 [email protected]
1 [email protected]
2 [email protected]
Output for print(df2)
:
email
0 [email protected]
Now, using where
:
df1 = df1.where(~df1.email.isin(df2.email)).dropna()
print(df1)
Output:
email
1 [email protected]
2 [email protected]
You can use isin
with drop
too. Using boolean indexing and .index
will drop those records form the df1 dataframe. Borrowing open-source's setup
df1 = df1.drop(df1[df1.email.isin(df2.email)].index)
Output:
email
1 [email protected]
2 [email protected]
pd.drop()
command, but it depends on how the two are related.