2

I have mutiple DataFrames, each containing a row called 'location' and another row called 'value' (both make up the index). for example, suppose i have the following 2:

df1 = pd.DataFrame(np.array([[-4,2,5],['nyc','sf','chi']]), columns=['col1','col2','col3'], index=['value','location'])

df2 = pd.DataFrame(np.array([[5,0,-3],['nyc','sf','chi']]), columns=['col1','col2','col3'], index=['value','location'])

the DataFrames will be housed in a dictionary that I can iterate through. Ultimately, I want to retrieve the list of 'value's for each 'location' in a separate DataFrame. so the desired output would look like:

enter image description here

this is a toy example, while my real one will have many more DataFrames and the source DataFrames will have other rows besides the 2 key ones I am interested in

  • Do all data frames have the same values for the "location" row? – cs95 Mar 3 at 20:05
  • yes, the number and values of the "location" row are the same in all dataframes, however i should mention that the column placement might not be. e.g. nyc could be under col1 in one dataframe but under col2 in another – laszlopanaflex Mar 3 at 20:06
3

I would recommend set_index and concat:

(pd.concat([df.T.set_index('location')['value'] for df in [df1, df2]], axis=1)
   .T
   .reset_index(drop=True))

location nyc sf chi
0         -4  2   5
1          5  0  -3
1

Using merge

df1.T.merge(df2.T,on='location').set_index('location').T
location nyc sf chi
value_x   -4  2   5
value_y    5  0  -3

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