Let's say I have these two data frames:

>>> df1 = pd.DataFrame({'grp':[1,1,2], 'x':[6,4,2], 'y':[7,8,9]})
>>> df1
   grp  x  y
0    1  6  7
1    1  4  8
2    2  2  9
>>> df2 = pd.DataFrame({'grp':[1], 'x':[6], 'z':[3]})
>>> df2
   grp  x z
0    1  6 3

I figured that a semi-join can be done easily with a single column e.g.

>>> df1[df1.grp.isin(df2.grp)]
   grp  x  y
0    1  6  7
1    1  4  8

The question is: how do I do that with two columns - grp and x?

  • for inner join : df1.merge(df2,on=['grp','x']) ? or df1.merge(df2,on=['grp','x'],how='left')
    – anky
    Aug 30, 2020 at 18:13
  • Semi join should give me all rows from df1 where (grp,x) exists in df2. The merge function doesn't work because it brings in columns from both data frames. I could do a right join but then I have to drop all the columns from df2 afterwards...
    – fatdragon
    Aug 30, 2020 at 18:27
  • Actually you dont have to with a little helper function called reindex: df1.merge(df2,on=['grp','x']).reindex(df1.columns,axis=1) or df1.merge(df2,on=['grp','x'],how='right').reindex(df2.columns,axis=1) for right join but you get the idea
    – anky
    Aug 30, 2020 at 18:30

2 Answers 2


Try with tuple and you can still with isin

   grp  x  y
0    1  6  7
  • Very elegant solution, but quite expensive if df2 has many rows. In that case I would rather use merge. Feb 10, 2023 at 8:13

In the case that df2 has many rows, using isin will become very expensive. In that case consider using merge. An inner join will behave just like a semi join, if the right DataFrame consists only of the key columns:

df1 = pd.DataFrame({'grp':[1,1,2], 'x':[6,4,2], 'y':[7,8,9]})
df2 = pd.DataFrame({'grp':[1], 'x':[6], 'z':[3]})
df1.merge(df2[['grp', 'x']], how="inner", on=['grp', 'x'])

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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