# Operate in defined number of rows of a data.table

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.

-
In your output, you do not have the mean of `pos`, but instead the lowest/first value...? –  Frank Aug 20 '13 at 17:34
how many unique `newID`s do you have in your data? –  Arun Aug 20 '13 at 21:45

An alternate way (without using `.SD`) would be:

``````dt.ex[, seq := (seq_len(.N)-1) %/% 3, by=newID][,
list(pos = mean(pos), count=sum(count)), list(newID, seq)]
``````

Benchmarking on (relatively) bigger data:

``````set.seed(45)
get_grps <- function() paste(sample(letters, 5, TRUE), collapse="")
grps <- unique(replicate(1e4, get_grps()))

dt.in <- data.table(newID = sample(grps, 6e6, TRUE),
pos = sample(-1000:1000, 6e6, TRUE),
count = runif(6e6))
setkey(dt.in, newID)

require(microbenchmark)
eddi <- function(dt) {
dt[, .SD[, list(pos = mean(pos), count = sum(count)),
by = seq(0, .N-1) %/% 3], by = newID]
}

arun <- function(dt) {
dt[, seq := (seq_len(.N)-1) %/% 3, by=newID][,
list(pos = mean(pos), count=sum(count)), list(newID, seq)]
}

microbenchmark(o1 <- eddi(copy(dt.in)), o2 <- arun(copy(dt.in)), times=2)

Unit: seconds
expr      min       lq   median       uq      max neval
o1 <- eddi(copy(dt.in)) 25.23282 25.23282 26.16009 27.08736 27.08736     2
o2 <- arun(copy(dt.in)) 13.59597 13.59597 14.41190 15.22783 15.22783     2
``````
-

Try this:

``````dt.ex[, .SD[, list(pos = mean(pos), count = sum(count)),
by = seq(0, .N-1) %/% 3],
by = newID]
``````

Note that the parent `data.table`'s `.N` is used in the nested `by`, because `.N` only exists in the `j-expression`.

-
Using `.SD` will be slower as the number of unique `newID`s increase and `n` is small (leading to too many groupings). `dt[, seq := (seq_len(.N)-1) %/% 3, by=newID][, list(pos = mean(pos), count=sum(count)), list(newID, seq)]` will be relatively faster. On 6 million rows, `.SD` takes 26 seconds, where as the other one takes 12 seconds. –  Arun Aug 20 '13 at 22:09
@Arun that's not the case in my tests, but you should test it yourself; hmm, I guess you did - that's weird for me it's the other way around, I'll post a bench –  eddi Aug 20 '13 at 22:18
Okay let me post my benchmarks so that you can verify then. –  Arun Aug 20 '13 at 22:19
@Arun I can see your deleted answer and it looks useful. +1 to undelete. –  Matt Dowle Aug 21 '13 at 3:29
@MatthewDowle, sure undeleted. You're totally right. There's about 1 second difference between `seq` and `seq_len` on 1e4 calls on my mac (and for 1e5 calls, 1 minute, 30 vs 90 seconds). –  Arun Aug 21 '13 at 6:48