I would like to merge two Pandas dataframes together and control the names of the new column values.

I originally created the dataframes from CSV files. The original CSV files looked like this:

   # presents.csv
   12B,Liverpool Street,37,212,...
   # trees.csv
   12B,Liverpool Street,2,92,...

Now I have two data frames:

df_presents = pd.read_csv(StringIO(presents_txt))
df_trees = pd.read_csv(StringIO(trees_txt))

I want to merge them together to get a final data frame, joining on the org and name values, and then prefixing all other columns with an appropriate prefix.

12B,Liverpool Street,37,212,2,92,...

I've been reading the documentation on merging and joining. This seems to merge correctly and result in the right number of columns:

ad = pd.DataFrame.merge(df_presents, df_trees,
                        on=['practice', 'name'],

But then doing print list(aggregate_data.columns.values) shows me the following columns:

[org', u'name', u'spend_x', u'spend_y', u'items_x', u'items_y'...]

How can I rename spend_x to be presents_spend, etc?

  • You could use the suffixes option to have them named spend_presents, etc. Will that work? Otherwise, use the rename function. – itzy Dec 17 '15 at 15:38
  • @itzy yes, thank you! please submit as an answer and i will accept! – Richard Dec 17 '15 at 15:40

The suffixes option in the merge function does this. The defaults are suffixes=('_x', '_y').

In general, renaming columns can be done with the rename method.


You can rename all the columns of ad by setting its columns as follows.

ad.columns = ['org', 'name', 'presents_spend', 'trees_spend']

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.