I'm new to using the parallel packages and have started exploring them in a bid to speed up some of my work. An annoyance I often encounter is that the
foreach command will throw up problems when I have not
clusterExport the relevant functions/variables.
I know that the example below does not necessarily need
foreach to make it fast, but for illustration sake, I'll use it.
library(doParallel) library(parallel) library(lubridate) library(foreach) cl <- makeCluster(c("localhost", "localhost", "localhost","localhost"), type = "SOCK") registerDoParallel(cl, cores = 4) Dates <- sample(c(dates = format(seq(ISOdate(2010,1,1), by='day', length=365), format='%d-%m-%Y')), 500, replace = TRUE) foreach(i = seq_along(Dates), .combine = rbind) %dopar% dmy(Dates[i]) Error in dmy(Dates[i]) : task 1 failed - "could not find function "dmy""
As you can see, there is an error that says that the
dmy function is not found. I then have to go on and add the following:
So my question is, besides looking at the error for clues on what to export, is there a more elegant way of knowing beforehand what objects to export or is there a way to share the global environment with all the slaves before running the