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

I would recommend set_index and concat:

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

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

Using merge

location nyc sf chi
value_x   -4  2   5
value_y    5  0  -3

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.