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?