mcreplicate adds multi-core functionality to R’s
replicate function. It allows easy parallelization on all
platforms, including on Windows.
Install the package from GitHub:
if (!require(remotes)) install.packages("remotes")
remotes::install_github("christophergandrud/mcreplicate")mc_replicate() works just like replicate(),
but distributes the replications on multiple cores
library(mcreplicate)
# Function to replicate
one_sim <- function(n = 100, control_prob = 0.1, rel_effect = 0.01) {
treat_prob <- control_prob + (control_prob * rel_effect)
cy <- rbinom(n = n, size = 1, prob = control_prob)
ty <- rbinom(n = n, size = 1, prob = treat_prob)
mean(ty) - mean(cy)
}
mc_replicate(10, one_sim())## [1] -0.04 0.10 -0.02 -0.02 0.05 -0.02 -0.01 -0.07 -0.05 0.00
On Windows, mcreplicate relies on a parallel socket
cluster backend. This requires the user to explicitly specify which
packages and variables should be used to populate the workers’
environments. By default, mcreplicate attaches all
currently loaded packages and all variables from the current environment
which do not start with a “.”. This can be changed using the
packages, varlist and envir
optional arguments. You can learn more on the function’s help file.
k = 2
# The following works as intended since the variable "k" is exported by
# default to each worker.
mc_replicate(10, rnorm(k))
# For a reduced overhead, you can specify to *only* export the variable "k"
# from the current environment and to not load any particular package.
mc_replicate(10, rnorm(k), packages = NULL, varlist = c("k"),
envir = environment())This is inspired by the mcreplicate function from the rethinking package.
We added Windows support and we provide a lightweight package.