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From a Pandas newbie: I have data that looks essentially like this -

 data1=pd.DataFrame({'Dir':['E','E','W','W','E','W','W','E'], 'Bool':['Y','N','Y','N','Y','N','Y','N'], 'Data':[4,5,6,7,8,9,10,11]}, index=pd.DatetimeIndex(['12/30/2000','12/30/2000','12/30/2000','1/2/2001','1/3/2001','1/3/2001','12/30/2000','12/30/2000']))
           Bool  Data Dir
2000-12-30    Y     4   E
2000-12-30    N     5   E
2000-12-30    Y     6   W
2001-01-02    N     7   W
2001-01-03    Y     8   E
2001-01-03    N     9   W
2000-12-30    Y    10   W
2000-12-30    N    11   E

And I want to group it by multiple levels, then do a cumsum():

E.g., like running_sum=data1.groupby(['Bool','Dir']).cumsum() <-(Doesn't work)

with output that would look something like:

Bool Dir Date        running_sum
N    E   2000-12-30           16
     W   2001-01-02            7
         2001-01-03           16
Y    E   2000-12-30            4
         2001-01-03           12
     W   2000-12-30           16

My "like" code is clearly not even close. I have made a number of attempts and learned many new things about how not to do this.

Thanks for any help you can give.

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2 Answers 2

up vote 5 down vote accepted

Try this:

data2 = data1.reset_index()
data3 = data2.set_index(["Bool", "Dir", "index"])   # index is the new column created by reset_index
running_sum = data3.groupby(level=[0,1,2]).sum().groupby(level=[0,1]).cumsum()

The reason you cannot simply use cumsum on data3 has to do with how your data is structured. Grouping by Bool and Dir and applying an aggregation function (sum, mean, etc) would produce a DataFrame of a smaller size than you started with, as whatever function you used would aggregate values based on your group keys. However cumsum is not an aggreagation function. It wil return a DataFrame that is the same size as the one it's called with. So unless your input DataFrame is in a format where the output can be the same size after calling cumsum, it will throw an error. That's why I called sum first, which returns a DataFrame in the correct input format.

Sorry if I haven't explained this well enough. Maybe someone else could help me out?

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Could you suggest why data3.cumsum() doesn't work? –  Andy Hayden Apr 2 '13 at 9:20
Thanks, this works. I really appreciate the help. I echo Andy's question: any explanation why data3.cumsum() doesn't work? –  msteen Apr 2 '13 at 12:15
See the edited answer for (hopefully) a little clarification. –  bdiamante Apr 2 '13 at 13:38
That explanation makes sense to me - thanks, bdiamante, you solved my problem and helped me understand pandas better. –  msteen Apr 2 '13 at 16:19

I use the numpy cumsum function in combination with Pandas groupby:


The cumulative sum is calculated internal to each group. The output from this command will also include the original 'Data' column.

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