0
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?

1

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().

4
  • 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

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