5

I hawe two DataFrame:

df1 = pd.DataFrame({'date':['2017-01-01','2017-01-02','2017-01-03','2017-01-04','2017-01-05'], 'value':[1,1,1,1,1]})
df2 = pd.DataFrame({'date':['2017-01-04','2017-01-05','2017-01-06','2017-01-07','2017-01-08'], 'value':[2,2,2,2,2]})

date        value      date        value         
2017-01-01      1      2017-01-04      2
2017-01-02      1      2017-01-05      2
2017-01-03      1      2017-01-06      2
2017-01-04      1      2017-01-07      2
2017-01-05      1      2017-01-08      2

Need to merge df1 and df2 to obtain the following results:

date        value
2017-01-01      1
2017-01-02      1
2017-01-03      1
2017-01-04      2
2017-01-05      2
2017-01-06      2
2017-01-07      2
2017-01-08      2
6

You can use concat with drop_duplicates by column date and keep last values:

print (pd.concat([df1, df2]).drop_duplicates('date', keep='last'))
         date  value
0  2017-01-01      1
1  2017-01-02      1
2  2017-01-03      1
0  2017-01-04      2
1  2017-01-05      2
2  2017-01-06      2
3  2017-01-07      2
4  2017-01-08      2
0
0

I believe you can use the combine_first command built into pandas.

http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.combine_first.html

in this case you would do

df3 = df1.combine_first(df2)

Im not certain if it works in the case you are replacing an integer with an integer or if you need to have NaN values in place.

0

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