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I want to find the values of col1 and col2 where the col1 and col2 of the first dataframe are both in the second dataframe.

These rows should be in the result dataframe:

  1. pizza, boy

  2. pizza, girl

  3. ice cream, boy

because all three rows are in the first and second dataframes.

How do I possibly accomplish this? I was thinking of using isin, but I am not sure how to use it when I have to consider more than one column.

10

Perform an inner merge on col1 and col2:

import pandas as pd
df1 = pd.DataFrame({'col1': ['pizza', 'hamburger', 'hamburger', 'pizza', 'ice cream'], 'col2': ['boy', 'boy', 'girl', 'girl', 'boy']}, index=range(1,6))
df2 = pd.DataFrame({'col1': ['pizza', 'pizza', 'chicken', 'cake', 'cake', 'chicken', 'ice cream'], 'col2': ['boy', 'girl', 'girl', 'boy', 'girl', 'boy', 'boy']}, index=range(10,17))

print(pd.merge(df2.reset_index(), df1, how='inner').set_index('index'))

yields

            col1  col2
index                 
10         pizza   boy
11         pizza  girl
16     ice cream   boy

The purpose of the reset_index and set_index calls are to preserve df2's index as in the desired result you posted. If the index is not important, then

pd.merge(df2, df1, how='inner')
#         col1  col2
# 0      pizza   boy
# 1      pizza  girl
# 2  ice cream   boy

would suffice.


Alternatively, you could construct MultiIndexs out of the col1 and col2 columns, and then call the MultiIndex.isin method:

index1 = pd.MultiIndex.from_arrays([df1[col] for col in ['col1', 'col2']])
index2 = pd.MultiIndex.from_arrays([df2[col] for col in ['col1', 'col2']])
print(df2.loc[index2.isin(index1)])

yields

         col1  col2
10      pizza   boy
11      pizza  girl
16  ice cream   boy
4

Thank you unutbu! Here is a little update.

import pandas as pd
df1 = pd.DataFrame({'col1': ['pizza', 'hamburger', 'hamburger', 'pizza', 'ice cream'], 'col2': ['boy', 'boy', 'girl', 'girl', 'boy']}, index=range(1,6))
df2 = pd.DataFrame({'col1': ['pizza', 'pizza', 'chicken', 'cake', 'cake', 'chicken', 'ice cream'], 'col2': ['boy', 'girl', 'girl', 'boy', 'girl', 'boy', 'boy']}, index=range(10,17))
df1[df1.set_index(['col1','col2']).index.isin(df2.set_index(['col1','col2']).index)]

return:

    col1    col2
1   pizza   boy
4   pizza   girl
5   ice cream   boy
0

If somehow you must stick to isin or the negate version ~isin. You may first create a new column, with the concatenation of col1, col2. Then use isin to filter your data. Here is the code:

import pandas as pd
df1 = pd.DataFrame({'col1': ['pizza', 'hamburger', 'hamburger', 'pizza', 'ice cream'], 'col2': ['boy', 'boy', 'girl', 'girl', 'boy']}, index=range(1,6))
df2 = pd.DataFrame({'col1': ['pizza', 'pizza', 'chicken', 'cake', 'cake', 'chicken', 'ice cream'], 'col2': ['boy', 'girl', 'girl', 'boy', 'girl', 'boy', 'boy']}, index=range(10,17))

df1['indicator'] = df1['col1'].str.cat(df1['col2'])
df2['indicator'] = df2['col1'].str.cat(df2['col2'])

df2.loc[df2['indicator'].isin(df1['indicator'])].drop(columns=['indicator'])

which gives


    col1    col2
10  pizza   boy
11  pizza   girl
16  ice cream   boy

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