same as this python pandas: how to find rows in one dataframe but not in another? but with multiple columns
This is the setup:
import pandas as pd df = pd.DataFrame(dict( col1=[0,1,1,2], col2=['a','b','c','b'], extra_col=['this','is','just','something'] )) other = pd.DataFrame(dict( col1=[1,2], col2=['b','c'] ))
Now, I want to select the rows from
df which don't exist in other. I want to do the selection by
In SQL I would do:
select * from df where not exists ( select * from other o where df.col1 = o.col1 and df.col2 = o.col2 )
And in Pandas I can do something like this but it feels very ugly. Part of the ugliness could be avoided if df had id-column but it's not always available.
key_col = ['col1','col2'] df_with_idx = df.reset_index() common = pd.merge(df_with_idx,other,on=key_col)['index'] mask = df_with_idx['index'].isin(common) desired_result = df_with_idx[~mask].drop('index',axis=1)
So maybe there is some more elegant way?