4

I have a dataframe of the following form:

|----------|----|------|
|date      |type|inflow|
|----------|----|------|
|2017-01-01|I   |  3500|
|2017-02-01|A   |    23|
|2017-07-01|A   |    44|
|2017-09-01|A   |    55|
|2017-12-01|A   |    12|
|2018-01-01|I   |  3800|
|2018-03-01|A   |    87|
|2018-05-01|A   |    34|
|2018-07-01|A   |    23|
|----------|----|------|

I is the initial inflow and As are additional inflows. They are not necessarily grouped by years and the dates can be arbitrary. I want a cumulative sum in each row, starting the last time I encounter an I. So the cumulative sum should reset when I encounter another I. If it helps, the maximum number of As between two Is can be 5.

I tried using apply and rollapply, but not able to figure out how to apply them on an inconsistent rolling window. How can I do this using Pandas?

4

Let's try GroupBy.cumsum:

df['inflow_cumsum'] = df.groupby(df['type'].eq('I').cumsum())['inflow'].cumsum()
df

         date type  inflow  inflow_cumsum
0  2017-01-01    I    3500           3500
1  2017-02-01    A      23           3523
2  2017-07-01    A      44           3567
3  2017-09-01    A      55           3622
4  2017-12-01    A      12           3634
5  2018-01-01    I    3800           3800
6  2018-03-01    A      87           3887
7  2018-05-01    A      34           3921
8  2018-07-01    A      23           3944

Details
df['type'].eq('I').cumsum() is used to mark groups of inflows to perform the group-wise cumulative sum.

See below for a visualization:

type  type == "I"  (type == "I").cumsum()
   I         True                       1
   A        False                       1
   A        False                       1
   A        False                       1
   A        False                       1
   I         True                       2
   A        False                       2
   A        False                       2
   A        False                       2

You'll notice the column of 1s and 2s is what will uniquely identify groups to perform the cumsum over.

| improve this answer | |
  • That's really amazing, thanks a lot. I was struggling to calculate this even with a for loop. Could you explain why you've used the cumsum() function twice? I understand the purpose of the second one, but not the first. I can see that it is not working without the first one, but not able to understand what it is doing. – gouravkr Jul 14 at 10:24
  • 1
    @gouravkr Hope the edit to my answer is helpful. – cs95 Jul 14 at 10:32
  • 1
    That is very helpful. I can understand now, that it is the cumsum() of the boolean values returned by eq('I'). Thanks again. – gouravkr Jul 14 at 10:57
  • 1
    Just to note for other's references, this method is also incredibly fast. My actual dataframe had ~150000 rows and this took around 1.2 seconds (along with a few other steps to group by two other columns which I had not shown here) on my core i5 laptop. – gouravkr Jul 14 at 11:59
  • @gouravkr sounds good, thanks for testing and verifying the code! – cs95 Jul 14 at 15:13

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