I’ve successfully used snowfall to setup a cluster on a single server with 16 processors.

if (sfIsRunning() == TRUE) sfStop()

number.of.cpus <- 15
sfInit(parallel = TRUE, cpus = number.of.cpus)
stopifnot( sfCpus() == number.of.cpus )
stopifnot( sfParallel() == TRUE )

# Print the hostname for each cluster member
sayhello <- function()
    info <- Sys.info()[c("nodename", "machine")]
    paste("Hello from", info[1], "with CPU type", info[2])
names <- sfClusterCall(sayhello)

Now, I am looking for complete instructions on how to move to a distributed model. I have 4 different Windows machines with a total of 16 cores that I would like to use for a 16 node cluster. So far, I understand that I could manually setup a SOCK connection or leverage MPI. While it appears possible, I haven’t found clear and complete directions as to how.

The SOCK route appears to depend on code in a snowlib script. I can generate a stub from the master side with the following code:

winOptions <-
         rscript="C:/Program Files/R/R-2.7.1/bin/Rscript.exe",

cl <- makeCluster(c(rep(list(winOptions), 2)), type = "SOCK", manual = T)

It yields the following:

Manually start worker on with
     "C:/Program Files/R/R-2.7.1/bin/Rscript.exe"
      MASTER=Worker02 PORT=11204 OUT=/dev/null SNOWLIB=C:/Rlibs

It feels like a reasonable start. I found code for RSOCKnode.R on GitHub under the snow package:

    master <- "localhost"
    port <- ""
    snowlib <- Sys.getenv("R_SNOW_LIB")
    outfile <- Sys.getenv("R_SNOW_OUTFILE") ##**** defaults to ""; document

    args <- commandArgs()
    pos <- match("--args", args)
    args <- args[-(1 : pos)]
    for (a in args) {
        pos <- regexpr("=", a)
        name <- substr(a, 1, pos - 1)
        value <- substr(a,pos + 1, nchar(a))
               MASTER = master <- value,
               PORT = port <- value,
               SNOWLIB = snowlib <- value,
               OUT = outfile <- value)

    if (! (snowlib %in% .libPaths()))
        .libPaths(c(snowlib, .libPaths()))
    library(methods) ## because Rscript as of R 2.7.0 doesn't load methods

    if (port == "") port <- getClusterOption("port")

    cat("starting worker for", paste(master, port, sep = ":"), "\n")
    slaveLoop(makeSOCKmaster(master, port))

It’s not clear how to actually start a SOCK listener on the workers, unless it is buried in snow::recvData.

Looking into the MPI route, as far as I can tell, Microsoft MPI version 7 is a starting point. However, I could not find a Windows alternative for sfCluster. I was able to start the MPI service, but it does not appear to listen on port 22 and no amount of bashing against it with snowfall::makeCluster has yielded a result. I’ve disabled the firewall and tried testing with makeCluster and directly connecting to the worker from the master with PuTTY.

Is there a comprehensive, step-by-step guide to setting up a snowfall cluster on Windows workers that I’ve missed? I am fond of snowfall::sfClusterApplyLB and would like to continue using that, but if there is an easier solution, I’d be willing to change course. Looking into Rmpi and parallel, I found alternative solutions for the master side of the work, but still little to no specific detail on how to setup workers running Windows.

Due to the nature of the work environment, neither moving to AWS, nor Linux is an option.

Related questions without definitive answers for Windows worker nodes:

  • 2
    I'm going to try to give you a real answer to this, but I will also mention that there's an Debian-based Linux distribution for distributed/cluster HPC modeling created by a really nice econometrician formerly from UC Davis and it's called PelicanHPC. He quit supporting it a couple years ago, but it still works great and is available on DistroWatch.org . Setup on multiple computers is simple. There's also Rocks Cluster also on DistroWatch, but I haven't gone too far with that distro because their logo of a bunch of snakes on startup bothers me.
    – Hack-R
    Apr 5 '16 at 14:16
  • For the purpose of clustering with R, what is the difference between the latest Ubuntu distribution and the PelicanHPC distribution? If there is no path forwards with Windows, this may be the only course.
    – jclouse
    Apr 6 '16 at 3:42
  • 1
    @jclouse As someone who has done multi-threaded, distributed computing with R on Windows I first want to say, I'm sorry. I have found the support and documentation for this on Windows to be very poor. My next question, do you truly need to spawn the tasks all from the same computer or can you subset the data and have each computer work on their own subset of the data? I have had to do this kind of thing in production and it was outrageously painful to debug and maintain. I know this does not answer your question but I wanted to warn you that R, Windows and distributed computing will be painful Jan 17 '17 at 4:58
  • 1
    @jclouse Would a solution with doRedis meet your requirements? I ask as doRedis can work locally to take advantage of multicore systems, and also farm tasks out to remote R instances (“workers”). It’s straightforward to add or remove workers at runtime—even in mid-job—to adapt to changing work conditions or speed up job processing. It works across Windows, Linux and MacOSX. bigcomputing.com/doRedis.html Do you just want a specific step-by-step guide to setting up a snowfall cluster on Windows? - just checking before responding in detail. Sep 27 '17 at 5:26
  • 1
    I know it's (also) not snowfall related but I have had good experiences with the futures (cran.r-project.org/web/packages/future/future.pdf) package in that respect (setting up workers and utilizing them, etc.)
    – GWD
    Mar 3 '20 at 11:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.