Get Number of Available Cores on The Current Machine
The current/main R session counts as one, meaning the minimum number of cores available is always at least one.
availableCores( constraints = NULL, methods = getOption2("parallelly.availableCores.methods", c("system", "nproc", "mc.cores", "_R_CHECK_LIMIT_CORES_", "PBS", "SGE", "Slurm", "LSF", "fallback", "custom")), na.rm = TRUE, logical = getOption2("parallelly.availableCores.logical", TRUE), default = c(current = 1L), which = c("min", "max", "all"), omit = getOption2("parallelly.availableCores.omit", 0L) )
constraints |
An optional character specifying under what
constraints ("purposes") we are requesting the values.
For instance, on systems where multicore processing is not supported
(i.e. Windows), using |
methods |
A character vector specifying how to infer the number of available cores. |
na.rm |
If TRUE, only non-missing settings are considered/returned. |
logical |
Passed to
|
default |
The default number of cores to return if no non-missing settings are available. |
which |
A character specifying which settings to return.
If |
omit |
(integer; non-negative) Number of cores to not include. |
The following settings ("methods") for inferring the number of cores are supported:
"system"
-
Query detectCores(logical = logical)
.
"nproc"
-
On Unix, query system command nproc
.
"mc.cores"
-
If available, returns the value of option
mc.cores
.
Note that mc.cores is defined as the number of
additional R processes that can be used in addition to the
main R process. This means that with mc.cores = 0
all
calculations should be done in the main R process, i.e. we have
exactly one core available for our calculations.
The mc.cores option defaults to environment variable
MC_CORES (and is set accordingly when the parallel
package is loaded). The mc.cores option is used by for
instance mclapply()
of the parallel
package.
"PBS"
-
Query TORQUE/PBS environment variables PBS_NUM_PPN and NCPUS.
Depending on PBS system configuration, these resource
parameters may or may not default to one.
An example of a job submission that results in this is
qsub -l nodes=1:ppn=2
, which requests one node with two cores.
"SGE"
-
Query Sun/Oracle Grid Engine (SGE) environment variable
NSLOTS.
An example of a job submission that results in this is
qsub -pe smp 2
(or qsub -pe by_node 2
), which
requests two cores on a single machine.
"Slurm"
-
Query Simple Linux Utility for Resource Management (Slurm)
environment variable SLURM_CPUS_PER_TASK.
This may or may not be set. It can be set when submitting a job,
e.g. sbatch --cpus-per-task=2 hello.sh
or by adding
#SBATCH --cpus-per-task=2
to the ‘hello.sh’ script.
If SLURM_CPUS_PER_TASK is not set, then it will fall back to
use SLURM_CPUS_ON_NODE if the job is a single-node job
(SLURM_JOB_NUM_NODES is 1), e.g. sbatch --ntasks=2 hello.sh
.
"LSF"
-
Query Platform Load Sharing Facility (LSF) environment variable
LSB_DJOB_NUMPROC.
Jobs with multiple (CPU) slots can be submitted on LSF using
bsub -n 2 -R "span[hosts=1]" < hello.sh
.
"custom"
-
If option parallelly.availableCores.custom is set and a function,
then this function will be called (without arguments) and it's value
will be coerced to an integer, which will be interpreted as a number
of available cores. If the value is NA, then it will be ignored.
For any other value of a methods
element, the R option with the
same name is queried. If that is not set, the system environment
variable is queried. If neither is set, a missing value is returned.
Return a positive (>= 1) integer.
If which = "all"
, then more than one value may be returned.
Together with na.rm = FALSE
missing values may also be returned.
Note that some machines might have a limited number of cores, or the R process runs in a container or a cgroup that only provides a small number of cores. In such cases:
ncores <- availableCores() - 1
may return zero, which is often not intended and is likely to give an error downstream. Instead, use:
ncores <- availableCores(omit = 1)
to put aside one of the cores from being used. Regardless how many cores you put aside, this function is guaranteed to return at least one core.
It is possible to override the maximum number of cores on the machine
as reported by availableCores(methods = "system")
. This can be
done by first specifying
options(parallelly.availableCores.methods = "mc.cores")
and
then the number of cores to use, e.g. options(mc.cores = 8)
.
To get the set of available workers regardless of machine,
see availableWorkers()
.
message(paste("Number of cores available:", availableCores())) ## Not run: options(mc.cores = 2L) message(paste("Number of cores available:", availableCores())) ## End(Not run) ## Not run: ## IMPORTANT: availableCores() may return 1L options(mc.cores = 1L) ncores <- availableCores() - 1 ## ncores = 0 ncores <- availableCores(omit = 1) ## ncores = 1 message(paste("Number of cores to use:", ncores)) ## End(Not run) ## Not run: ## Use 75% of the cores on the system but never more than four options(parallelly.availableCores.custom = function() { ncores <- max(parallel::detectCores(), 1L, na.rm = TRUE) ncores <- min(as.integer(0.75 * ncores), 4L) max(1L, ncores) }) message(paste("Number of cores available:", availableCores())) ## What is available minus one core but at least one options(parallelly.availableCores.custom = function() { max(1L, parallelly::availableCores() - 1L) }) message(paste("Number of cores available:", availableCores())) ## End(Not run)
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