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There are 2 DataFrames which I'm trying to merge by month column and sum the fullprice, actualprice and discount rows.

Here's example:

# First DataFrame
  month  fullprice  actualprice  discount
0   Jan         10            7         3
1   Feb          6            4         2


# Second DataFrame
  month  fullprice  actualprice  discount
0   Jan         11            5         6
1   Feb          6            4         2
2   Mar        100           50        50


# Desired result
  month  fullprice  actualprice  discount
0   Jan         21            12        9
1   Feb         12             8        4
2   Mar        100            50        50

Tried few methods, but it's not what I need:

df1 = pd.DataFrame([['Jan', 10, 7, 3], ['Feb', 6, 4, 2]], columns=['month', 'fullprice', 'actualprice', 'discount'])
df2 = pd.DataFrame([['Jan', 11, 5, 6], ['Feb', 6, 4, 2], ['Mar', 100, 50, 50]], columns=['month', 'fullprice', 'actualprice', 'discount'])

df2.add(df1)

       month  fullprice  actualprice  discount
    0  JanJan       21.0         12.0       9.0
    1  FebFeb       12.0          8.0       4.0
    2     NaN        NaN          NaN       NaN

df1.merge(df2, how='right')

        month  fullprice  actualprice  discount
    0   Feb          6            4         2
    1   Jan         11            5         6
    2   Mar        100           50        50

df1.merge(df2, on='month', how='right')

        month  fullprice_x  actualprice_x  discount_x  fullprice_y actualprice_y  \
    0   Jan         10.0            7.0         3.0           11              5   
    1   Feb          6.0            4.0         2.0            6              4   
    2   Mar          NaN            NaN         NaN          100             50   

        discount_y  
    0           6  
    1           2  
    2          50

Any ideas how to merge it?

1
  • Dataframe.append then Dataframe.groupby should do the trick
    – alex314159
    Mar 22 '17 at 16:15
3

use append then groupby.

df1 = df1.set_index('month')
df2 = df2.set_index('month')
df1.append(df2).groupby(level=0).sum()

       fullprice  actualprice  discount
month                                  
Feb           12            8         4
Jan           21           12         9
Mar          100           50        50

or if no index:

df1.append(df2).groupby('month').sum()
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