I have a dataframe like

```
ID_0 ID_1 ID_2
0 a b 1
1 a c 1
2 a b 0
3 d c 0
4 a c 0
5 a c 1
```

I would like to groupby ['ID_0','ID_1'] and produce a new dataframe which has the sum of the ID_2 values for each group divided by the number of rows in each group.

```
grouped = df.groupby(['ID_0', 'ID_1'])
print grouped.agg({'ID_2': np.sum}), "\n", grouped.size()
```

gives

```
ID_2
ID_0 ID_1
a b 1
c 2
d c 0
ID_0 ID_1
a b 2
c 3
d c 1
dtype: int64
```

How can I get the new dataframe with the np.sum values divided by the size() values?

`df.groupby(['ID_0', 'ID_1']).mean()`

– root Sep 28 '16 at 18:37