foreach 🔌 parabar
The doParabar package acts as a
foreach parallel adaptor for
parabar backends. It provides a minimal
implementation for the foreach::%dopar% operator, enabling seamless
integration of the parabar package with
the foreach package.
You can install doParabar directly from CRAN using the following command:
# Install the package from `CRAN`.
install.packages("doParabar")
Alternatively, you can also install the latest development version from GitHub
via:
# Install the package from `GitHub`.
remotes::install_github("mihaiconstantin/doParabar")
Then, load the package as usual using the library function:
# Load the package.
library(doParabar)
Note. By default, and for various reasons, the doParabar package does
not automatically load other packages. Instead, it is recommended to load the
foreach and
parabar packages explicitly in your
scripts (i.e., or add them to your Imports in the DESCRIPTION file when
developing an R package).
# Load the `foreach` package.
library(foreach)
# Load the `parabar` package.
library(parabar)
Note. Should you need to suppress the package startup messages (e.g., from
the parabar package) you can use the
suppressPackageStartupMessages
function (e.g., suppressPackageStartupMessages(parabar)).
Below you can find a minimal example of how to use doParabar and
parabar packages in your R scripts.
All examples below assume that you have already installed and loaded the
packages.
Tip. For a more detailed discussion see the vignette “Using parabar
with foreach”.
# Create an asynchronous `parabar` backend.
backend <- start_backend(cores = 2, cluster_type = "psock", backend_type = "async")
# Register the backend with the `foreach` package for the `%dopar%` operator.
registerDoParabar(backend)
# Get the parallel backend name.
getDoParName()
# Check that the parallel backend has been registered.
getDoParRegistered()
# Get the current version of backend registration.
getDoParVersion()
# Get the number of cores used by the backend.
getDoParWorkers()
# Define some variables strangers to the backend.
x <- 10
y <- 100
z <- "Not to be exported."
# Used the registered backend to run a task in parallel via `foreach`.
results <- foreach(i = 1:300, .export = c("x", "y"), .combine = c) %dopar% {
# Sleep a bit.
Sys.sleep(0.01)
# Compute and return.
i + x + y
}
# Show a few results.
head(results, n = 10)
tail(results, n = 10)
# Verify that the variable `z` was not exported.
try(evaluate(backend, z))
# To make packages available on the backend, see the `.packages` argument.
# Stop the backend.
stop_backend(backend)
Note. The doParabar package provides only a minimal implementation
for the foreach::%dopar% operator. If you need additional functionality,
please consider contributing to the package, or opening an issue on GitHub.
GitHub.GitHub.The parabar and doParabar documentation, vignettes, and other website materials by Mihai Constantin are licensed under CC BY 4.0
.