I tried this: library(data.table) N <- 1000 T <- N*10 d <- data.table(gp= rep(1:T, rep(N,T)), val=rnorm(N*T), key = 'gp') dim(d) [1] 10000000 2
# On my humble 8Gb system, > system.time(l <- d[, split(val, gp)]) user system elapsed 4.15 0.09 4.27 I wouldn't be surprised if there were a much faster way to do this operation in data.table since split() is a data frame operation. This is about as fast as Jim Holtman's suggestion: system.time(s <- split(seq_len(nrow(d)), d$gp)) user system elapsed 4.15 0.09 4.29 HTH, Dennis On Mon, Oct 10, 2011 at 6:01 PM, ivo welch <ivo.we...@gmail.com> wrote: > dear R experts: apologies for all my speed and memory questions. I > have a bet with my coauthors that I can make R reasonably efficient > through R-appropriate programming techniques. this is not just for > kicks, but for work. for benchmarking, my [3 year old] Mac Pro has > 2.8GHz Xeons, 16GB of RAM, and R 2.13.1. > > right now, it seems that 'split()' is why I am losing my bet. (split > is an integral component of *apply() and by(), so I need split() to be > fast. its resulting list can then be fed, e.g., to mclapply().) I > made up an example to illustrate my ills: > > library(data.table) > N <- 1000 > T <- N*10 > d <- data.table(data.frame( key= rep(1:T, rep(N,T)), val=rnorm(N*T) )) > setkey(d, "key"); gc() ## force a garbage collection > cat("N=", N, ". Size of d=", object.size(d)/1024/1024, "MB\n") > print(system.time( s<-split(d, d$key) )) > > My ordered input data table (or data frame; doesn't make a difference) > is 114MB in size. it takes about a second to create. split() only > needs to reshape it. this simple operation takes almost 5 minutes on > my computer. > > with a data set that is larger, this explodes further. > > am I doing something wrong? is there an alternative to split()? > > sincerely, > > /iaw > > ---- > Ivo Welch (ivo.we...@gmail.com) > > ______________________________________________ > R-help@r-project.org mailing list > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/posting-guide.html > and provide commented, minimal, self-contained, reproducible code. > ______________________________________________ R-help@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.