1

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

d1={'L':['aaa','bbb','ccc','aaa','bbb','ddd'],
'w':[1,5,9,13,17,21],
'x':[2,6,10,14,18,22],
'y':[3,7,11,15,19,23],
'z':[4,8,12,16,20,24]}
df1=pd.DataFrame(d1)

Data

and two dictionaries to define grouping over columns and rows

dctRowGroups={'aaa':'A','bbb':'B','ccc':'A','ddd':'B'}
dctColGroups={'w':'ALPHA','x':'BETA','y':'ALPHA','z':'BETA'}

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

g2=df1.groupby(dctColGroups,axis=1)
g2.sum()

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

g3=df2.groupby(dctRowGroups,axis=0)
g3.sum()

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

Willfried.

1

You can do:

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

df2=df1.groupby(dctColGroups,axis=1).sum()

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:

result=df2.assign(L=df2['L'].map(dctRowGroups)).groupby('L').sum()

Outputs:

df2:

    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

result:

    ALPHA   BETA
L       
A   52      58
B   92      98
5
  • 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

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