28

Let me say first that I've read Writing R Extensions, the Rcpp package vignette, and that I've built a package from Rcpp.package.skeleton().

Since building my package, I added a function, multiGenerateCSVrow(), and then ran compileAttributes() on the package directory before R CMD build/R CMD install. After I load my package, I can run my function either directly or via foreach() with the %do% method.

When I try to run in parallel however, I get an error:

cl <- makePSOCKcluster(8)                                                                                     
registerDoParallel(cl)                                                                                        
rows <- foreach(i=1:8,.combine=rbind,.packages="myPackage") %dopar% multiGenerateCSVrow(scoreMatrix=NIsample,   
                                                                   validMatrix = matrix(1,nrow=10,ncol=10),   
                                                                   cutoffVector = rep(0,10),                  
                                                                   factorVector = randomsCutPlus1[i,],        
                                                                   actualVector = rep(1,10),                  
                                                                   scaleSample = 1)                           
stopCluster(cl)                                                                                               
~                                                                                                             

Error in multiGenerateCSVrow(scoreMatrix = NIsample, validMatrix = matrix(1,  : 
  task 1 failed - "NULL value passed as symbol address"

Here's the package NAMESPACE:

# Generated by roxygen2 (4.0.1): do not edit by hand 
useDynLib(myPackage)                                   
exportPattern("^[[:alpha:]]+")                       
importFrom(Rcpp, evalCpp) 

Here's the relevant chunk of RcppExports.cpp:

// multiGenerateCSVrow
SEXP multiGenerateCSVrow(SEXP scoreMatrix, SEXP validMatrix, SEXP cutoffVector, SEXP factorVector, SEXP actualVector, SEXP scaleSample);
RcppExport SEXP myPackage_multiGenerateCSVrow(SEXP scoreMatrixSEXP, SEXP validMatrixSEXP, SEXP cutoffVectorSEXP, SEXP factorVectorSEXP, SEXP actualVectorSEXP, SEXP scaleSampleSEXP) {
BEGIN_RCPP
    SEXP __sexp_result;
    {
        Rcpp::RNGScope __rngScope;
        Rcpp::traits::input_parameter< SEXP >::type scoreMatrix(scoreMatrixSEXP );
        Rcpp::traits::input_parameter< SEXP >::type validMatrix(validMatrixSEXP );
        Rcpp::traits::input_parameter< SEXP >::type cutoffVector(cutoffVectorSEXP );
        Rcpp::traits::input_parameter< SEXP >::type factorVector(factorVectorSEXP );
        Rcpp::traits::input_parameter< SEXP >::type actualVector(actualVectorSEXP );
        Rcpp::traits::input_parameter< SEXP >::type scaleSample(scaleSampleSEXP );
        SEXP __result = multiGenerateCSVrow(scoreMatrix, validMatrix, cutoffVector, factorVector, actualVector, scaleSample);
        PROTECT(__sexp_result = Rcpp::wrap(__result));
    }
    UNPROTECT(1);
    return __sexp_result;
END_RCPP
}

And RcppExports.R:

multiGenerateCSVrow <- function(scoreMatrix, validMatrix, cutoffVector, factorVector, actualVector, scaleSample) {
    .Call('myPackage_multiGenerateCSVrow', PACKAGE = 'myPackage', scoreMatrix, validMatrix, cutoffVector, factorVector, actualVector, scaleSample)
}   

What could it be looking for?

11
  • Does the cluster span several machines? Did you install the updated package on the other machines? Jul 31, 2014 at 18:42
  • Nope, one machine, run locally. Jul 31, 2014 at 18:43
  • 1
    Check if the slaves can find other packages etc. At the end of the day, these are "just" other R processes, so make sure your path and settings are fine. Jul 31, 2014 at 18:45
  • 1
    I extended the .packages vector to include "Rcpp" and the other package dependencies, but no change. Is there a way I can log into the other R threads or somehow interact with them directly? Jul 31, 2014 at 18:50
  • 2
    I'd love to help you here but little nothing to go on. To me, you are "merely" having issues with a parallel processing setup, so I would recommend reading the vignette of the package "parallel" which came with your copy of R. Aug 1, 2014 at 13:42

4 Answers 4

14

I had a similar problem and I solved it by adding .noexport = c(<Functions that were implemented in C++>) to the foreach.

I am guessing these functions get imported from the global environment into the parallel contexts, but, since they are not ordinary functions, they don't actually work. This does mean the functions have to be loaded separately on each node; in my case that was a SNOW clusterCall() call that sourced various files including the C++ code.

2
10

I also had the problem that functions using Rcpp would not work within foreach. As suggested by Patrick McCarthy, I put the function in a package, installed&loaded the package and passed it in forearch with .packages=("...").

I still got some errors, but that was resolved after updating all involved packages.

(I would have commented, but I do not have enough reputation and I thought this might be helpful for some people)

1
  • Can you provide an example on how you've put the function in a package?
    – ztl
    Feb 3, 2021 at 12:06
7

Inspired by answers from @henine & @jmb, I tried the "reverse" option, which is that I actually source my R file with the Rccp functions inside my foreach loop and make sure to include "Rccp" in the .packages option of foreach. Might not be the most efficient, but does the job & is simple.

Something like:

cl = makeCluster(n_cores, outfile="")
registerDoParallel(cl)

foreach(n = 1:N,.packages = "Rcpp",.noexport = "<name of Rccp function>")%dopar%{
  source("Scripts/Rccp_functions.R")
  ### do stuff with functions scripted in Rccp_functions.R
}

stopImplicitCluster()

And similarly to @jmb, I would have commented, but don't have enough reputation :D

2
  • I used this Method for long time and finally managed to try out the "proper" method by using the cpp-File inside a Package. I was disapointed to not get ANY increase in speed :(
    – Squeezie
    Nov 8, 2019 at 14:32
  • you can also wrap the cpp function with an R function that call sourceCpp first, based on the existence of the global cpp function object. stylistically, seems cleaner than having source in the loop body, but same basic idea
    – Ethan
    Nov 25, 2021 at 16:23
0

Hi I met this problem before, the solution for me is:

within your function (which you used to run the loops), write

library(Rcpp)
sourceRcpp('<the path to your cpp file>')

before calling that function. It works for me and is still quick.

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