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I started trying to use rcpp to improve the speed of a for loop in R where each iteration depends on the previous (i.e. no easy vectorization). My current code (below) is a bit faster than R but no nearly as fast as I would have thought. Any glaring inefficiencies in the code below that someone can spot? Any general (or specific) advice would be helpful.

UpdateInfections <- cxxfunction(signature(pop ="data.frame",inds="integer",alpha="numeric",t="numeric"), '
DataFrame DF(pop);
IntegerVector xinds(inds);
NumericVector inf_time = DF["inf.time"];
IntegerVector loc = DF["loc"] ;
IntegerVector Rind = DF["R.indiv"] ;
NumericVector infector = DF["infector"] ;
IntegerVector vac = DF["vac"] ;
NumericVector wts(loc.size());
double xt = Rcpp::as<double>(t);
double xalpha = Rcpp::as<double>(alpha);

RNGScope scope;         // Initialize Random number generator
Environment base("package:base");
Function sample = base["sample"];
int n = loc.size();
int i;int j;int k;
int infsize = xinds.size();

for (i=0;i<infsize;i++) {
   int infpoint = xinds[i]-1;
    NumericVector inf_times_prop(Rind[infpoint]);
    NumericVector inf_me(Rind[infpoint]);

for (j=0; j<n;j++){
  if (j == infpoint){
wts[j] = 0.0;
  } else if (loc[j] == loc[infpoint]){
    wts[j] = 1.0;
  } else {
wts[j] = xalpha;

inf_me = sample(n,Named("size",Rind[infpoint]),Named("prob",wts));
//Note that these will be shifted by one

for (k=0;k<Rind[infpoint];k++){
  inf_times_prop[k] = floor(::Rf_rlnorm(1.6,.6) + 0.5 + xt);
  if (inf_times_prop[k] < inf_time[inf_me[k]-1] && vac[inf_me[k]-1] == 0){
    inf_time[inf_me[k]-1] = inf_times_prop[k];
    infector[inf_me[k]-1] = inf_me[k];

// create a new data frame
Rcpp::DataFrame NDF =
' , plugin = "Rcpp" )
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2 Answers 2

up vote 3 down vote accepted

We're actually working on a pure C++ sample function for RcppArmadillo right now. Take a look here or here for updates.

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You are calling back to R. That cannot be as fast a pure C++ solution.

Your example is also long, too long. I recommend profiling and optimizing individual pieces. There is, alas, still no entirely free lunch.

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Thank @DirkEddelbuettel. Do you see any speed issues with using DataFrame? I guess I would need to adapt some pure C++ code to implement sample() if I really want to improve the code. – scottyaz Nov 14 '12 at 15:34
Not per se, and a single or few calls to R are also not punitive. But I am sorry, I cannot work through your example in detail just now. But you are allocating new vectors inside the loop which is a bad idea in any programming language. – Dirk Eddelbuettel Nov 14 '12 at 15:35
You forgot to mention testing. If you have a slow R implementation with tests, you can make sure your C version doesn't introduce bugs. – Spacedman Nov 14 '12 at 15:51

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