import pandas as pd

df1 = pd.DataFrame([["2014", "q2"]],
                   columns=('Year', 'Quarter'))

df2 = pd.DataFrame([["2016", "q1"], 
                    ["2015", "q1"]],
                   columns=('Year', 'Quarter'))

print(df1.merge(df2, on='Year', how='outer'))

Results in:

   Year   Quarter_x    Quarter_y
0   2016    NaN         q1
1   2015    NaN         q1
2   2014    q2          NaN

What I would like to get is:

   Year     Quarter
0  2016      q1
1  2015      q1
2  2014      q2

Is there a simple way to do this with the merge() or some other function?


You can use:

df1.merge(df2, on=['Year', 'Quarter'], how='outer').dropna()

to get:

   Year Quarter
0  2014      q2
1  2016      q1
2  2015      q1

You can also look into pd.concat().

  • The strings were not intentional, so I placed None into each slot to represent a NaN.
    – Bob Hopez
    Jun 13 '16 at 23:16
  • See updated. Depending on what your data look like, you can also add .drop_duplicates().
    – Stefan
    Jun 13 '16 at 23:17
  • Sorry about the mixup. The above now represents the problem. If you can edit your response, then thanks, otherwise I can repost it for you...
    – Bob Hopez
    Jun 13 '16 at 23:18
  • See the follow up to this question: stackoverflow.com/questions/37801230/…
    – Bob Hopez
    Jun 14 '16 at 0:37

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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