I have the following dataframe `df`

:

[Out]:

```
VOL
2011-04-01 09:30:00 11297
2011-04-01 09:30:10 6526
2011-04-01 09:30:20 14021
2011-04-01 09:30:30 19472
2011-04-01 09:30:40 7602
...
2011-04-29 15:59:30 79855
2011-04-29 15:59:40 83050
2011-04-29 15:59:50 602014
```

This `df`

consist of volume observations at every 10 second for 22 non-consecutive days. I want to DE-seasonalized my time-series by dividing each observations by the average volume of their respective 5 minute time interval. To do so, I need to take the time-series average of volume at every 5 minutes across the 22 days. So I would end up with a time-series of averages at every 5 minutes `9:30:00 - 9:35:00; 9:35:00 - 9:40:00; 9:40:00 - 9:45:00 ...`

until 16:00:00. The average for the interval `9:30:00 - 9:35:00`

is the average of volume for this time interval across all 22 days (i.e. So the average between 9:30:00 to 9:35:00 is the total volume between 9:30:00 to 9:35:00 on (day 1 + day 2 + day 3 ... day 22) / 22 . Does it makes sense?). I would then divide each observations in `df`

that are between `9:30:00 - 9:35:00`

by the average of this time interval.

Is there a package in Python / Pandas that can do this?