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:

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:

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)
```

**Is there a more natural way to do this?**