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Speeding up R computations Pt II: compiling

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A year ago I wrote a post on speeding up R computations. Some of the tips that I mentioned then have since been made redundant by a single package: compiler. Forget about worrying about curly brackets and whether to write 3*3 or 3^2 – compiler solves those problems for you.

compiler provides a byte code compiler for R, which offers the possibility of compiling your functions before executing them. Among other things, this speeds up those embarrassingly slow for loops that you’ve been using:


> myFunction<-function() { for(i in 1:10000000) { 1*(1+1) } }
> library(compiler)
> myCompiledFunction <- cmpfun(myFunction) # Compiled function

> system.time( myFunction() )
   user  system elapsed 
 10.002   0.014  10.021 
> system.time( myCompiledFunction() )
   user  system elapsed 
  0.692   0.008   0.700 

That’s 14 times faster!


Functions written in C (imported using Rcpp) are still much faster than the compiled byte code, but for those of us who


compiler offers a great way of speeding up computations. It’s included in the recommended R packages since R 2.13 (meaning that it comes with your basic R installation) and since R 2.14 most standard functions are already compiled. If you still are running an older version of R it’s definitely time to update.

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