I have array (or rather pandas frame) that has a column `A`

, values in this columns are integers (let's assume that they belong to range 1..10).

Now I would have to select rows in this array that have `A`

values of `{3, 6, 9}`

(in this example it is possible to just or `==`

operations but in real life this set be a lot longer.

Is there any funciton in either library (`pandas`

or `numpy`

) that allows me to do following fast:

```
arr = pandas.DataFrame(...)
values = [3, 6, 9]
valid_indexes = magic_function(arr.A, values)
```

or in numpy:

```
arr = np.ndarray(...)
values = [3, 6, 9]
valid_indexes = magic_function(arr[13, :], values)
```

In other words I'm looking for element-wise `in`

operator.