I'm finding myself applying a function to the values and the index of a TimeSeries. The way I do this is by building a DataFrame of the the values and and the index of the TimeSeries and then applying a function to the DataFrame.

```
# imports
import pandas as pd
import numpy as np
# Set up some input time series
dates = pd.date_range('2012-04-01', periods=500,freq='MS')
ts = pd.Series(np.arange(500), index=dates)
# Build data frame of values and index
tmp = pd.concat([ts, ts.index.to_series()], join='outer', axis=1)
# Example function to apply
f = lambda x: x[0] / 4 if x[1].month % 3 == 1 else 0
# Apply function
out = tmp.apply(f, axis=1)
```

I have a sneaking suspicion that this is not the most elegant / efficient way to approach this but can't find anything in the docs to suggest a better route. Any ideas?