I have a vertically arranged (stacked) pooled time series `data.frame`

that looks like this:

```
date item qty_sold
day_1 orange 0
day_2 orange 0
day_3 orange 0
day_4 orange 0
day_5 orange 5
day_6 orange 0
day_7 orange 8
day_8 orange 0
day_1 hammer 0
day_2 hammer 0
day_3 hammer 3
day_4 hammer 0
day_5 hammer 70
day_6 hammer 70
day_7 hammer 0
Day_8 hammer 80
```

In each "item's" sub-series/sub-group, I need to identify and remove *all observations prior to the day on which the first positive qty_sold was observed*. For example, for the "*orange*" series, this means striking out days 1 through 4 and for the "*hammer*" series this means striking out the first 2 days.

(In case the explanation above is not clear): From each sub-series in the dataset, I need to to remove the all the days from date = Day_1 to date = Day_k, such that for each day in the interval 1...k qty_sold = 0, AND retain all rows where date = Day_k+1 qty_sold >= 0)

Can anyone kindly give an idea on how to go about this? The actual dataset contains about a million rows. I would also welcome suggestions in accomplishing this using SAS apart from R.

that you've already writtenbut isn't working. We typically prefer not to take Q's where you simply describe the problem and request code. – joran Jul 6 '13 at 22:39