Starting from this dataframe df:

```
df = pd.DataFrame({'c':[1,1,1,2,2,2],'l1':['a','a','b','c','c','b'],'l2':['b','d','d','f','e','f']})
c l1 l2
0 1 a b
1 1 a d
2 1 b d
3 2 c f
4 2 c e
5 2 b f
```

I would like to perform a groupby over the `c`

column to get unique values of the `l1`

and `l2`

columns. For one columns I can do:

```
g = df.groupby('c')['l1'].unique()
```

that correctly returns:

```
c
1 [a, b]
2 [c, b]
Name: l1, dtype: object
```

but using:

```
g = df.groupby('c')['l1','l2'].unique()
```

returns:

```
AttributeError: 'DataFrameGroupBy' object has no attribute 'unique'
```

I know I can get the unique values for the two columns with (among others):

```
In [12]: np.unique(df[['l1','l2']])
Out[12]: array(['a', 'b', 'c', 'd', 'e', 'f'], dtype=object)
```

Is there a way to apply this method to the groupby in order to get something like:

```
c
1 [a, b, d]
2 [c, b, e, f]
Name: l1, dtype: object
```