Is there an easy method in pandas to invoke `groupby`

on a range of values increments? For instance given the example below can I bin and group column `B`

with a `0.155`

increment so that for example, the first couple of groups in column `B`

are divided into ranges between '0 - 0.155, 0.155 - 0.31 ...`

```
import numpy as np
import pandas as pd
df=pd.DataFrame({'A':np.random.random(20),'B':np.random.random(20)})
A B
0 0.383493 0.250785
1 0.572949 0.139555
2 0.652391 0.401983
3 0.214145 0.696935
4 0.848551 0.516692
```

Alternatively I could first categorize the data by those increments into a new column and subsequently use `groupby`

to determine any relevant statistics that may be applicable in column `A`

?