I have a DataFrame with three levels on the main index:

```
from pandas import *
df_multi = DataFrame(np.random.rand(6,2), index = [['CF', 'CF', 'CF', 'DA', 'DA','DA'], ['x', 'y', 'y', 'x', 'y', 'y'], ['a', 'b', 'a', 'a', 'a', 'b']], columns = ['PC1', 'PC2'])
df_multi.index.names =['l1','l2','l3']
In [5]: df_multi
Out[5]:
PC1 PC2
l1 l2 l3
CF x a 0.118061 0.473159
y b 0.159534 0.407676
a 0.466731 0.163322
DA x a 0.152799 0.333438
y a 0.632725 0.965348
b 0.737112 0.834592
```

Now I want to sum across the third level and then divide each element by its corresponding sum to get shares at the third level (e.g. divide `(CF, x, a)`

by `(CF, x, a)`

and `(CF, y, a)`

by `(CF, y, a) + (CF, y, b)`

, etc.)

```
In [6]: df_multi.sum(level = [0, 1])
Out[6]:
PC1 PC2
l1 l2
CF x 0.118061 0.473159
y 0.626265 0.570998
DA x 0.152799 0.333438
y 1.369837 1.799940
```

and

```
df_multi_share = df_multi.div(df_multi.sum(level = [0, 1]), level=[0, 1])
```

However this does not work. I am looking for a general solution, not confined to the computation of percentage shares, that enables me to do arithmetics matching on multiple levels. It does work when using only one level, e.g.

```
df_multi = DataFrame(np.random.rand(4,2), index = [['CF', 'CF', 'DA', 'DA'], ['1', '2', '1', '2']], columns = ['PC1', 'PC2'])
df_single = DataFrame(np.random.rand(3,3), index = ['1', '2', '3'], columns = ['PC1', 'PC2', 'PC3'])
df_combined = df_multi.mul(df_single, level = 1)
```