I wonder if you can help me to find a solution for the following problem. Given a data frame df1 like this



and two dictionaries to define grouping over columns and rows


I wanted to aggregate over columns as a first step. Applying


results in

Result of grouping by column

but I wanted to keep the 'L' column for the next step row-wise aggregation, i.e. the result should be a dataframe df2 more like this:

Result I wanted to get

What do I need to code to make this happen? As a next step, I want to aggregate df2 over the rows using the dctRowGroups dictionary


to get a final result like this:

Final result

In what way can I do all these steps in as few lines of code as possible? Appreciate your advice on this.

Thanks a lot



You can do:

Firstly create df2 and insert 'L' column by using insert() method:


df2.insert(0,'L',df1['L'])  #use this only when the order matters

#OR(use anyone of the method either insert or assign)

df2=df2.assign(L=df1['L'])  #otherwise use this

Finally use assign() ,map() and groupby() method:




    L   ALPHA   BETA
0   aaa     4   6
1   bbb     12  14
2   ccc     20  22
3   aaa     28  30
4   bbb     36  38
5   ddd     44  46


A   52      58
B   92      98
  • Thank you for your answer. It works! What I would like to better understand is why in the second step a simple "result=df2.groupby(dctRowGroups,axis=0)" does deliver the same result as "result=df2.assign(L=df2['L'].map(dctRowGroups)).groupby('L').sum()"? – Will May 16 at 10:21
  • If this answer solved your query then pls try consider to accept this answer...Thnx :) – Anurag Dabas May 16 at 10:23
  • On my side result=df2.groupby(dctRowGroups,axis=0) this is throwing an error so I used result=df2.assign(L=df2['L'].map(dctRowGroups)).groupby('L').sum() – Anurag Dabas May 16 at 10:25
  • 1
    Ah, ok. I decomposed result=df2.assign(L=df2['L'].map(dctRowGroups)).groupby('L').sum() into individual steps to better understand what is going on. It's clear now: one needs to replace the old labels in column 'L' with the new one's from dctRowGroups, re-insert it as column 'L' into the DataFrame, and then apply the groupby('L').sum() to that new DataFrame. – Will May 16 at 10:55
  • yes.....df2['L'].map(dctRowGroups) this will replace keys of dctRowGroups inside 'L' column to its values(its basically called mapping) and assign() method i.e: df2.assign(L=df2['L'].map(dctRowGroups)) will assign those mapped values to column 'L' then we groupby column 'L' i.e: groupby('L') and calculate sum by sum() method – Anurag Dabas May 16 at 11:07

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.