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将多个数据框组合成多索引列的 dataframe

[英]Combine multiple dataframes into dataframe of multi-index columns

Suppose I have 3 dataframes,假设我有 3 个数据框,

df_1 representing revenues df_1代表收入

Year        TSLA    MSFT     AVY
2019         851     200   112.8
2018         725     150    92.6

df_2 representing some other revenues df_2代表其他一些收入

Year        TSLA    MSFT     AVY
2019          10      13      17
2018          11      14      18

and df_3 representing expenses df_3代表费用

Year        TSLA    MSFT     AVY
2019         110     213     317
2018         111     214     418

what might the code be to obtain the following df?获取以下df的代码可能是什么?

       TSLA                             MSFT                             AVY
Year   revenues other_revenues expenses revenues other_revenues expenses revenues other_revenues expenses
2019        851             10      110      200             13      213    112.8             17      317
2018        725             11      111      150             14      214     92.6             18      418

where the columns are in multi-index form?列在哪里是多索引形式?

Thanks谢谢

Use concat with DataFrame.swaplevel and DataFrame.sort_index for sorting MultiIndex :使用concatDataFrame.swaplevelDataFrame.sort_indexMultiIndex进行排序:

#if not Year is index first create it
L = [x.set_index('Year') for x in [df_1, df_2, df_3]]
df = (pd.concat(L, 
               axis=1, 
               keys=('evenues', 'other_revenues', 'expenses'))
        .swaplevel(1, 0, axis=1)
        .sort_index(axis=1))
print (df)
         AVY                            MSFT                            TSLA  \
     evenues expenses other_revenues evenues expenses other_revenues evenues   
Year                                                                           
2019   112.8      317             17     200      213             13     851   
2018    92.6      418             18     150      214             14     725   

                              
     expenses other_revenues  
Year                          
2019      110             10  
2018      111             11  

EDIT: For order like in original add DataFrame.reindex by MultiIndex.from_product from unique values of first level of MultiIndex :编辑:对于像原始添加DataFrame.reindex通过MultiIndex.from_product从第一级MultiIndex的唯一值的顺序:

sub = ['revenues', 'other_revenues', 'expenses']
L = [x.set_index('Year') for x in [df_1, df_2, df_3]]
df = (pd.concat(L, 
               axis=1, 
               keys=sub)
        .swaplevel(1, 0, axis=1))

mux = pd.MultiIndex.from_product([df.columns.levels[0], sub])
df = df.reindex(mux, axis=1)
        
print (df)
         TSLA                             MSFT                          \
     revenues other_revenues expenses revenues other_revenues expenses   
Year                                                                     
2019      851             10      110      200             13      213   
2018      725             11      111      150             14      214   

          AVY                          
     revenues other_revenues expenses  
Year                                   
2019    112.8             17      317  
2018     92.6             18      418  

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