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I'd like to do the equivalent of the following, but with data.table's "by":

dt <- data.table(V1 = rnorm(100), V2 = rnorm(100), V3 = rnorm(100), 
     group = rbinom(100,2,.5))
dt.agg <- aggregate(dt, by=list(dt$group), FUN=mean)

I know that I could do this:

dt.agg <- dt[, list(V1=mean(V1), V2=mean(V2), V3=mean(V3)), by=group]

But for the case I'm considering I have 100 or so columns V1-V100 (and I always want to aggregate all of them by a single factor, as in aggregate above) so the data.table solution I've got above isn't feasible.

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For reference, among the copious examples in ?data.table is the following: DT[,lapply(.SD,sum),by=x]. – joran Aug 6 '13 at 21:53
@joran, could you please explain the role of .SD? – POTENZA Jul 23 '15 at 0:32
up vote 22 down vote accepted
dt[, lapply(.SD, mean), by=group]

To specifiy columns:

dt[,...,by=group, .SDcols=c("V1", "V2", "V3", ...)]
dt[,...,by=group, .SDcols=names(dt)[1:100]]
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