I am working with a data table that has groups of data and for each a position (from -1000 to +1000) and a count for each position. A small example looks this this:

```
dt.ex <- data.table(newID=rep(c("A","B"), each = 6), pos=rep(c(-2:3), 2), count= sample(c(1:100), 12))
newID pos count
1: A -2 29
2: A -1 32
3: A 0 33
4: A 1 45
5: A 2 51
6: A 3 26
7: B -2 22
8: B -1 79
9: B 0 2
10: B 1 48
11: B 2 87
12: B 3 38
```

What I want to do is to calculate the mean (or sum) between every n rows for each group of newID. That is, split into n rows and aggregate the results. This would be output assuming n=3 and summing:

```
newID pos count
A -2 94
A 1 122
B -2 103
B 1 173
```

And I honestly have no idea on how to start without resorting some kind of looping - not advisable for a 67094000 x 3 table. If I wanted to calculate per newID only, something like this would do the trick but I am yet to see a solution that comes close to answering my question. Plyr solutions are also welcome although I feel it might be too slow for this.

`pos`

, but instead the lowest/first value...? – Frank Aug 20 '13 at 17:34`newID`

s do you have in your data? – Arun Aug 20 '13 at 21:45