The following is a simple toy example of the type of operation I want to do.

Suppose that I have two Pandas `DataFrame`

s `df0`

and `df1`

, like these:

```
In [2]: df0
Out[2]:
A B C
0 v 67 7
1 u 30 8
2 v 71 9
3 u 31 1
4 u 27 1
5 v 60 7
6 v 78 9
7 u 41 7
In [3]: df1
Out[3]:
A B
0 u 20
1 v 10
```

Note that all the columns of `df1`

are in `df0`

. Also note that, the values in `df1['A']`

are unique, and in fact they represent all the values that appear (with repeats) in `df0['A']`

.

I want to subtract `df1['B']`

from `df0['B']`

*in place*, by *broadcasting* `df0['B']`

into the right shape according to the value of the `A`

column. (With the end result that `20`

gets subtracted from the `B`

field of all the rows of `df0`

that have `u`

in their `A`

field; and likewise, `10`

gets subtracted from the `B`

field of all the rows of `df0`

that have `v`

in their `A`

field).

The goal is to end up with `df0`

looking like the following:

```
In [4]: df0
Out[4]:
A B C
0 v 57 7
1 u 10 8
2 v 61 9
3 u 11 1
4 u 7 1
5 v 50 7
6 v 68 9
7 u 21 7
```

As I said at the beginning, this is just a toy example. I'm interested in doing this sort of key-restricted updating with more operations than just subtraction.

What is the simplest way to do this sort of thing with Pandas?