28

This may seem like a stupid question, but this has been bugging me for some time.

df1:

imp_type    value
1           abc
2           def
3           ghi

df2:

id          value2
1           123
2           345
3           567

Merginge the 2 df's:

df1.merge(df2, left_on='imp_type',right_on='id')

yields:

imp_type    value    id    value2
1           abc      1     123
2           def      2     345
3           ghi      3     567

Then I need to drop the id column since it's essentially a duplicate of the imp_type column. Why does merge pull in the join key between the 2 dataframes by default? I would think there should at least be a param to set to False if you don't want to pull in the join key. Is there something like this already or something I'm doing wrong?

4
  • 4
    FWIW adding .drop("id", 1) doesn't seem so bad to me.
    – DSM
    Mar 5, 2014 at 20:34
  • 3
    I know, but it's just frustrating since it shouldn't have been implemented that way from the beginning, and to have to do it after every merge adds up and feels hacky. Mar 5, 2014 at 22:12
  • As an additional example why this is bad: "id" might already exist in df1 as a column, leading to further confusion. In this case - no id column exists afterwards! (Both get renamed to id_x and id_y...)
    – Thomas
    Aug 3, 2021 at 10:38
  • 1
    pandas.merge(left, right, suffixes=(None, '_y') will resolve what Thomas pointed out with the _x, _y renaming. Really surprised though that the elimination of the duplicate column still has to be done outside of pandas.merge(). May 19, 2022 at 23:01

1 Answer 1

20

I agree it would be nice if one of the columns were dropped. Of course, then there is the question of what to name the remaining column.

Anyway, here is a workaround. Simply rename one of the columns so that the joined column(s) have the same name:

In [23]: df1 = pd.DataFrame({'imp_type':[1,2,3], 'value':['abc','def','ghi']})

In [27]: df2 = pd.DataFrame({'id':[1,2,3], 'value2':[123,345,567]})

In [28]: df2.columns = ['imp_type','value2']

In [29]: df1.merge(df2, on='imp_type')
Out[29]: 
   imp_type value  value2
0         1   abc     123
1         2   def     345
2         3   ghi     567

Renaming the columns is a bit of a pain, especially (as DSM points out) compared to .drop('id', 1). However, if you can arrange for the joined columns to have the same name from the very beginning, then df1.merge(df2, on='imp_type') would be easiest.

1
  • 1
    Good tip. Might be the best answer I get, but I'll leave this open for a bit longer in case there's other options. Mar 5, 2014 at 22:13

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.