# Apply function to values and index of series

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?

-

this is a more efficient solution

``````s = Series(np.arange(500), index=dates)
(s/4).where(s.index.month % 3 == 1, 0)
``````
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That doesn't work (although it looks like it should!). When I apply your solution I get `s` where `s.index.month % 3 == 1` and `s/4` where `s.index.month % 3 != 1`; I wanted `s/4` and `0` respectively –  James MacAdie Aug 30 '13 at 14:19
@Jeff This is wrong, the third argument to where is `inplace` so the `0` means `False` here and is actually the default. –  Phillip Cloud Aug 30 '13 at 14:37
ok I think is easy to enable though, let me think about it. you can also do as a chained loc (same idea) –  Jeff Aug 30 '13 at 15:24
updated - should work now –  Jeff Aug 30 '13 at 15:31
Awesome. Nearly 40 times faster to boot! As an idea it is limited to if statement evaluations but that's a common enough use case to make this idiom worthwhile. –  James MacAdie Sep 2 '13 at 13:29

You can do it at least a little bit more elegant by using the DataFrame as follows

``````ts = pd.DataFrame({ "data": np.arange(500) }, index=dates)
f = lambda x: x["data"] / 4 if x.name.month % 3 == 1 else 0
ts.apply(f, axis=1)
``````

You can access the index of a dataframe's element using the `name`-property.

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I like the idea and is along the lines of what I was thinking about. The trouble is I can't make it work, if I apply your exact code (plus my def of dates) I get a Type Error: `TypeError: ("unsupported operand type(s) for /: 'buffer' and 'int'", u'occurred at index 2012-04-01 00:00:00')` –  James MacAdie Aug 30 '13 at 9:52
If I debug inside the function that is `.apply`ed I seem to just have an array of values, representing a given row of data in `x`. I suspect things like the `.name` method only works outside of `.apply` as inside you're not really working with a DataFrame object any more –  James MacAdie Aug 30 '13 at 9:56
Sorry for that, it's fixed now (`df.data` returns the internal storage, if you name a column `"data"` you have to use `df["data"]`). –  filmor Aug 30 '13 at 10:37
And you /are/ working on a `DataFrame` object inside of `apply` indeed. –  filmor Aug 30 '13 at 10:39
Actually inside `apply` we seem to be working with a `Series` object, the name of which is the index of the `DataFrame` we're iterating through. This is why your name suggestion works for accessing the value of the index. It seems `apply` collapses a "dimension" of the initiating object so this is why working on a `TimeSeries` directly only left me with a value object and no way to access the value of the index. Not a perfect solution then but def better than where I was. Thanks again for all the help. –  James MacAdie Aug 30 '13 at 11:23