1

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?

3
  • 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

5

Try with tuple and you can still with isin

df1[df1[['grp','x']].agg(tuple,1).isin(df2[['grp','x']].agg(tuple,1))]
Out[205]: 
   grp  x  y
0    1  6  7
1
  • 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
0

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'])

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