Recently I'm doing some work with two Series in pandas:

- The first Series contains purely numerical data
- The second Series contains categorical data: "Plus", "Minus", and NaN.

Example data:

```
first_series = pandas.Series([0.000003, 0.004991, 0.004991])
second_series = pandas.Series(["Plus", "Minus", np.nan], dtype="object",
index=first_series.index)
```

(in the real-world scenario, the second Series is built programmatically using the same index as the first one, but here it's just a simplified example)

I'm doing first some manipulation:

```
first_series = np.log2(1 / first_series)
```

Then I'd need to invert the sign (multiply by -1) of the corresponding "Minus" entries, and turn to NaN the ones that in the second series are NaN.

The latter part works OK:

```
first_series[np.invert(second_series.notnull())] = np.nan
print first_series
0 18.567557
1 7.646459
2 NaN
Name: Example data
```

However I'm kind of stuck with the former part. How can I use the information in the second Series (given that they are identically-indexed) to switch the sign in the first Series?

As a reference, after the application, first_series should become like this:

```
0 18.567557
1 -7.646459
2 NaN
Name: Example data
```