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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?

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2 Answers 2

up vote 0 down vote accepted

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 .applyed 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

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