what is the quickest/simplest way to drop nan and inf/-inf values from a pandas DataFrame without resetting `mode.use_inf_as_null`

? I'd like to be able to use the `subset`

and `how`

arguments of `dropna`

, except with `inf`

values considered missing, like:

```
df.dropna(subset=["col1", "col2"], how="all", with_inf=True)
```

is this possible? Is there a way to tell `dropna`

to include `inf`

in its definition of missing values?