Slurm Workload Manager is a popular HPC cluster job scheduler found
in many of the top 500 supercomputers. The slurmR
R package
provides an R wrapper to it that matches the parallel package’s syntax,
this is, just like parallel
provides the
parLapply
, clusterMap
, parSapply
,
etc., slurmR
provides Slurm_lapply
,
Slurm_Map
, Slurm_sapply
, etc.
While there are other alternatives such as
future.batchtools
, batchtools
,
clustermq
, and rslurm
, this R package has the
following goals:
It is dependency-free, which means that it works out-of-the-box
Emphasizes been similar to the workflow in the R package
parallel
It provides a general framework for creating personalized own wrappers without using template files.
Is specialized on Slurm, meaning more flexibility (no need to modify template files) and debugging tools (e.g., job resubmission).
Provide a backend for the parallel package, providing an out-of-the-box method for creating Socket cluster objects for multi-node operations. (See the examples below on how to use it with other R packages)
Checkout the VS section section for comparing
slurmR
with other R packages. Wondering who is using Slurm?
Check out the list at the end of this
document.
From your HPC command line, you can install the development version from GitHub with:
$ git clone https://github.com/USCbiostats/slurmR.git
$ R CMD INSTALL slurmR/
The second line assumes you have R available in your system (usually
loaded via module R
or some other command). Or using the
devtools
from within R:
# install.packages("devtools")
::install_github("USCbiostats/slurmR") devtools
To cite slurmR in publications use:
Vega Yon et al., (2019). slurmR: A lightweight wrapper for HPC with
Slurm. Journal of Open Source Software, 4(39), 1493,
https://doi.org/10.21105/joss.01493
And the actual R package:
Vega Yon G, Marjoram P (2022). _slurmR: A Lightweight Wrapper for
'Slurm'_. R package version 0.5-2,
<https://github.com/USCbiostats/slurmR>.
To see these entries in BibTeX format, use 'print(<citation>,
bibtex=TRUE)', 'toBibtex(.)', or set
'options(citation.bibtex.max=999)'.
For testing purposes, slurmR is available in Dockerhub.
The rcmdcheck
and interactive
images are built
on top of xenonmiddleware/slurm
.
Once you download the files contained in the slurmR
repository, you can go to the docker
folder and use the
Makefile
included there to start a Unix session with slurmR
and Slurm included.
To test slurmR
using docker, check the README.md file
located at https://github.com/USCbiostats/slurmR/tree/master/docker.
library(slurmR)
# Loading required package: parallel
# slurmR default option for `tmp_path` (used to store auxiliar files) set to:
# /home/george/Documents/development/slurmR
# You can change this and checkout other slurmR options using: ?opts_slurmR, or you could just type "opts_slurmR" on the terminal.
# Suppose that we have 100 vectors of length 50 ~ Unif(0,1)
set.seed(881)
<- replicate(100, runif(50), simplify = FALSE) x
We can use the function Slurm_lapply
to distribute
computations
<- Slurm_lapply(x, mean, plan = "none")
ans # Warning in normalizePath(file.path(tmp_path, job_name)):
# path[1]="/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18":
# No such file or directory
# Warning: [submit = FALSE] The job hasn't been submitted yet. Use sbatch() to submit the job, or you can submit it via command line using the following:
# sbatch --job-name=slurmr-job-113bd5bca5b18 /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/01-bash.sh
Slurm_clean(ans) # Cleaning after you
Notice the plan = "none"
option; this tells
Slurm_lapply
to only create the job object but do nothing
with it, i.e., skip submission. To get more info, we can set the verbose
mode on
$verbose_on()
opts_slurmR<- Slurm_lapply(x, mean, plan = "none")
ans # Warning in normalizePath(file.path(tmp_path, job_name)):
# path[1]="/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18":
# No such file or directory
# --------------------------------------------------------------------------------
# [VERBOSE MODE ON] The R script that will be used is located at: /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/00-rscript.r and has the following contents:
# --------------------------------------------------------------------------------
# .libPaths(c("/home/george/R/x86_64-pc-linux-gnu-library/4.2", "/usr/local/lib/R/site-library", "/usr/lib/R/site-library", "/usr/lib/R/library"))
# message("[slurmR info] Loading variables and functions... ", appendLF = FALSE)
# Slurm_env <- function (x = "SLURM_ARRAY_TASK_ID")
# {
# y <- Sys.getenv(x)
# if ((x == "SLURM_ARRAY_TASK_ID") && y == "") {
# return(1)
# }
# y
# }
# ARRAY_ID <- as.integer(Slurm_env("SLURM_ARRAY_TASK_ID"))
#
# # The -snames- function creates the write names for I/O of files as a
# # function of the ARRAY_ID
# snames <- function (type, array_id = NULL, tmp_path = NULL, job_name = NULL)
# {
# if (length(array_id) && length(array_id) > 1)
# return(sapply(array_id, snames, type = type, tmp_path = tmp_path,
# job_name = job_name))
# type <- switch(type, r = "00-rscript.r", sh = "01-bash.sh",
# out = "02-output-%A-%a.out", rds = if (missing(array_id)) "03-answer-%03i.rds" else sprintf("03-answer-%03i.rds",
# array_id), job = "job.rds", stop("Invalid type, the only valid types are `r`, `sh`, `out`, and `rds`.",
# call. = FALSE))
# sprintf("%s/%s/%s", tmp_path, job_name, type)
# }
# TMP_PATH <- "/home/george/Documents/development/slurmR"
# JOB_NAME <- "slurmr-job-113bd5bca5b18"
#
# # The -tcq- function is a wrapper of tryCatch that on error tries to recover
# # the message and saves the outcome so that slurmR can return OK.
# tcq <- function (...)
# {
# ans <- tryCatch(..., error = function(e) e)
# if (inherits(ans, "error")) {
# ARRAY_ID. <- get("ARRAY_ID", envir = .GlobalEnv)
# msg <- paste0("[slurmR info] An error has ocurred while evualting the expression:\n[slurmR info] ",
# paste(deparse(match.call()[[2]]), collapse = "\n[slurmR info] "),
# "\n[slurmR info] in ", "ARRAY_ID # ", ARRAY_ID.,
# "\n[slurmR info] The error will be saved and quit R.\n")
# message(msg, immediate. = TRUE, call. = FALSE)
# ans <- list(res = ans, array_id = ARRAY_ID., job_name = get("JOB_NAME",
# envir = .GlobalEnv), slurmr_msg = structure(msg,
# class = "slurm_info"))
# saveRDS(list(ans), snames("rds", tmp_path = get("TMP_PATH",
# envir = .GlobalEnv), job_name = get("JOB_NAME", envir = .GlobalEnv),
# array_id = ARRAY_ID.))
# message("[slurmR info] job-status: failed.\n")
# q(save = "no")
# }
# invisible(ans)
# }
# message("done loading variables and functions.")
# tcq({
# INDICES <- readRDS("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/INDICES.rds")
# })
# tcq({
# X <- readRDS(sprintf("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/X_%04d.rds", ARRAY_ID))
# })
# tcq({
# FUN <- readRDS("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/FUN.rds")
# })
# tcq({
# mc.cores <- readRDS("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/mc.cores.rds")
# })
# tcq({
# seeds <- readRDS("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/seeds.rds")
# })
# set.seed(seeds[ARRAY_ID], kind = NULL, normal.kind = NULL)
# tcq({
# ans <- parallel::mclapply(
# X = X,
# FUN = FUN,
# mc.cores = mc.cores
# )
# })
# saveRDS(ans, sprintf("/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/03-answer-%03i.rds", ARRAY_ID), compress = TRUE)
# message("[slurmR info] job-status: OK.\n")
# --------------------------------------------------------------------------------
# The bash file that will be used is located at: /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/01-bash.sh and has the following contents:
# --------------------------------------------------------------------------------
# #!/bin/sh
# #SBATCH --job-name=slurmr-job-113bd5bca5b18
# #SBATCH --output=/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/02-output-%A-%a.out
# #SBATCH --array=1-2
# #SBATCH --job-name=slurmr-job-113bd5bca5b18
# #SBATCH --cpus-per-task=1
# #SBATCH --ntasks=1
# /usr/lib/R/bin/Rscript /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/00-rscript.r
# --------------------------------------------------------------------------------
# EOF
# --------------------------------------------------------------------------------
# Warning: [submit = FALSE] The job hasn't been submitted yet. Use sbatch() to submit the job, or you can submit it via command line using the following:
# sbatch --job-name=slurmr-job-113bd5bca5b18 /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/01-bash.sh
Slurm_clean(ans) # Cleaning after you
The following example was extracted from the package’s manual.
# Submitting a simple job
<- Slurm_EvalQ(slurmR::WhoAmI(), njobs = 20, plan = "submit")
job
# Checking the status of the job (we can simply print)
jobstatus(job) # or use the state function
sacct(job) # or get more info with the sactt wrapper.
# Suppose some of the jobs are taking too long to complete (say 1, 2, and 15 through 20)
# we can stop it and resubmit the job as follows:
scancel(job)
# Resubmitting only
sbatch(job, array = "1,2,15-20") # A new jobid will be assigned
# Once its done, we can collect all the results at once
<- Slurm_collect(job)
res
# And clean up if we don't need to use it again
Slurm_clean(res)
Take a look at the vignette here.
The function makeSlurmCluster
creates a PSOCK cluster
within a Slurm HPC network, meaning that users can go beyond a single
node cluster object and take advantage of Slurm to create a multi-node
cluster object. This feature allows using slurmR
with other
R packages that support working with SOCKcluster
class
objects. Here are some examples
With the future
package
library(future)
library(slurmR)
<- makeSlurmCluster(50)
cl
# It only takes using a cluster plan!
plan(cluster, cl)
...your fancy futuristic code...
# Slurm Clusters are stopped in the same way any cluster object is
stopCluster(cl)
With the doParallel
package
library(doParallel)
library(slurmR)
<- makeSlurmCluster(50)
cl
registerDoParallel(cl)
<- matrix(rnorm(9), 3, 3)
m foreach(i=1:nrow(m), .combine=rbind)
stopCluster(cl)
The slurmR
package has a couple of convenient functions
designed for the user to save time. First, the function
sourceSlurm()
allows skipping the explicit creating of a
bash script file to be used together with sbatch
by putting
all the required config files on the first lines of an R scripts, for
example:
#!/bin/sh
#SBATCH --account=lc_ggv
#SBATCH --partition=scavenge
#SBATCH --time=01:00:00
#SBATCH --mem-per-cpu=4G
#SBATCH --job-name=Waiting
Sys.sleep(10)
message("done.")
Is an R script that on the first line coincides with that of a bash
script for Slurm: #!/bin/bash
. The following lines start
with #SBATCH
explicitly specifying options for
sbatch
, and the reminder lines are just R code.
The previous R script is included in the package (type
system.file("example.R", package="slurmR")
).
Imagine that that R script is named example.R
, then you
use the sourceSlurm
function to submit it to Slurm as
follows:
::sourceSlurm("example.R") slurmR
This will create the corresponding bash file required to be used with
sbatch
, and submit it to Slurm.
Another nice tool is the slurmr_cmd()
. This function
will create a simple bash-script that we can use as a command-line tool
to submit this type of R-scripts. Moreover, this command will can add
the command to your session’s alias
as follows:
library(slurmR)
slurmr_cmd("~", add_alias = TRUE)
Once that’s done, you can submit R scripts with “Slurm-like headers” (as shown previously) as follows:
$ slurmr example.R
Since version 0.4-3, slurmR
includes the option
preamble
. This provides a way for the user to specify
commands/modules that need to be executed before running the Rscript.
Here is an example using module load
:
# Turning the verbose mode off
$verbose_off()
opts_slurmR
# Setting the preamble can be done globally
$set_preamble("module load gcc/6.0")
opts_slurmR
# Or on the fly
<- Slurm_lapply(1:10, mean, plan = "none", preamble = "module load pandoc")
ans
# Printing out the bashfile
cat(readLines(ans$bashfile), sep = "\n")
# #!/bin/sh
# #SBATCH --job-name=slurmr-job-113bd5bca5b18
# #SBATCH --output=/home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/02-output-%A-%a.out
# #SBATCH --array=1-2
# #SBATCH --job-name=slurmr-job-113bd5bca5b18
# #SBATCH --cpus-per-task=1
# #SBATCH --ntasks=1
# module load gcc/6.0
# module load pandoc
# /usr/lib/R/bin/Rscript /home/george/Documents/development/slurmR/slurmr-job-113bd5bca5b18/00-rscript.r
Slurm_clean(ans) # Cleaning after you
There are several ways to enhance R for HPC. Depending on what are your goals/restrictions/preferences, you can use any of the following from this manually curated list:
Package | Rerun (1) | *apply (2) | makeCluster (3) | Slurm options | Dependencies | Activity |
---|---|---|---|---|---|---|
slurmR | yes | yes | yes | on the fly | ||
drake | yes | - | - | by template | ||
rslurm | - | yes | - | on the fly | ||
future.batchtools | - | yes | yes | by template | ||
batchtools | yes | yes | - | by template | ||
clustermq | - | - | - | by template |
The packages slurmR, rslurm work only on Slurm. The drake package is focused on workflows.
We welcome contributions to slurmR
. Whether it is
reporting a bug, starting a discussion by asking a question, or
proposing/requesting a new feature, please go by creating a new issue here so that we
can talk about it.
Please note that this project is released with a Contributor Code of Conduct (see the CODE_OF_CONDUCT.md file included in this project). By participating in this project, you agree to abide by its terms.
Here is a manually curated list of institutions using Slurm:
Institution | Country | Link |
---|---|---|
University of Utah’s CHPC | US | link |
USC Center for Advance Research Computing | US | link |
Princeton Research Computing | US | link |
Harvard FAS | US | link |
Harvard HMS research computing | US | link |
UCSan Diego WM Keck Lab for Integrated Biology | US | link |
Stanford Sherlock | US | link |
Stanford SCG Informatics Cluster | US | link |
UC Berkeley Open Computing Facility | US | link |
University of Utah CHPC | US | link |
The University of Kansas Center for Research Computing | US | link |
University of Cambridge | UK | link |
Indiana University | US | link |
Caltech HPC Center | US | link |
Institute for Advanced Study | US | link |
UTSouthwestern Medical Center BioHPC | US | link |
Vanderbilt University ACCRE | US | link |
University of Virginia Research Computing | US | link |
Center for Advanced Computing | CA | link |
SciNet | CA | link |
NLHPC | CL | link |
Kultrun | CL | link |
Matbio | CL | link |
TIG MIT | US | link |
MIT Supercloud | US | supercloud.mit.edu/ |
Oxford’s ARC | UK | link |
With project is supported by the National Cancer Institute, Grant #1P01CA196596.
Computation for the work described in this paper was supported by the University of Southern California’s Center for High-Performance Computing (hpcc.usc.edu).