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I have a dataframe with a 3-level deep multi-index on the columns. I would like to compute subtotals across rows (sum(axis=1)) where I sum across one of the levels while preserving the others. I think I know how to do this using the level keyword argument of pd.DataFrame.sum. However, I'm having trouble thinking of how to incorporate the result of this sum back into the original table.

Setup:

import numpy as np
import pandas as pd
from itertools import product

np.random.seed(0)

colors = ['red', 'green']
shapes = ['square', 'circle']
obsnum = range(5)

rows = list(product(colors, shapes, obsnum))
idx = pd.MultiIndex.from_tuples(rows)
idx.names = ['color', 'shape', 'obsnum']

df = pd.DataFrame({'attr1': np.random.randn(len(rows)), 
                   'attr2': 100 * np.random.randn(len(rows))},
                  index=idx)

df.columns.names = ['attribute']

df = df.unstack(['color', 'shape'])

Gives a nice frame like so:

Original frame

Say I wanted to reduce the shape level. I could run:

tots = df.sum(axis=1, level=['attribute', 'color'])

to get my totals like so:

totals

Once I have this, I'd like to tack it on to the original frame. I think I can do this in a somewhat cumbersome way:

tots = df.sum(axis=1, level=['attribute', 'color'])
newcols = pd.MultiIndex.from_tuples(list((i[0], i[1], 'sum(shape)') for i in n.columns))
tots.columns = newcols
bigframe = pd.concat([df, tots], axis=1).sort_index(axis=1)

aggregated

Is there a more natural way to do this?

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1 Answer 1

Here's my brute-force way of doing it.

After running your well written (thank you) sample code, I did this:

attributes = pd.unique(df.columns.get_level_values('attribute'))
colors = pd.unique(df.columns.get_level_values('color'))

for attr in attributes:
    for clr in colors:
        df[(attr, clr, 'sum')] = df.xs([attr, clr], level=['attribute', 'color'], axis=1).sum(axis=1)

df

Which gives me:

big table

share|improve this answer
    
thanks for your answer. I'm mixed on this. On the one hand, I feel like this reads more naturally than what I wrote. On the other hand, I always feel like I've come up a bit short when I need to use a for loop to get the job done in Pandas. Which method do you think runs faster? –  8one6 Jan 2 at 22:27
    
@DJ_8one6 I agree 100% on the uneasy feelings when using for loops with pandas objects. For that reason, I like your method more. I just thought this was too good of a question to not have any brainstorming going on :) –  Paul H Jan 2 at 22:38
    
thanks for the encouragement. I'm thinking about this sort of thing in the context of adding more useful marginals in pivot table type reports. Basically sequentially reducing the levels in an axis and providing a subtotal for each level as you go. –  8one6 Jan 2 at 22:53

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