If you have a multicore processor, you can increase processing speed by using parallel processing. You can establish a parallel pool of several workers with a Parallel Computing Toolbox™ license. For a description of Parallel Computing Toolbox software, see Get Started with Parallel Computing Toolbox (Parallel Computing Toolbox).
Suppose you have a dual-core processor, and want to use parallel computing. Enter this code at the command line.
parpool
MATLAB® starts a pool of workers using the multicore processor. If you previously set a nondefault cluster profile, you can enforce multicore (local) computing by entering this code.
parpool('local')
Note
Depending on your preferences, MATLAB can start a parallel pool automatically. To enable this feature, select Parallel > Parallel Preferences in the Environment group on the Home tab, and then select Automatically create a parallel pool.
Set solver options to use parallel computing.
options = optimoptions('solvername','UseParallel',true);
When you run an applicable solver with options
,
applicable solvers automatically use parallel computing.
To stop computing optimizations in parallel, set UseParallel
to
false
. To halt all parallel computation, enter this code.
delete(gcp)
Note
The documentation recommends not to use parfor
or
parfeval
when calling Simulink®; see Using sim function within parfor (Simulink). Therefore, you might
encounter issues when optimizing a Simulink simulation in parallel using a solver's built-in parallel
functionality.
If you have multiple processors on a network, use Parallel Computing Toolbox functions and MATLAB Parallel Server™ software to establish parallel computation.
Make sure your system is configured properly for parallel computing. Check with your systems administrator, or refer to the Parallel Computing Toolbox documentation.
Perform a basic check by entering this code, where prof
is your cluster profile.
parpool(prof)
Workers must be able to access your objective function file and, if applicable, your nonlinear constraint function file. Complete one of these steps to ensure access:
Distribute the files to the workers using the parpool
(Parallel Computing Toolbox) AttachedFiles
argument. In this example, objfun.m
is your objective function file, and constrfun.m
is your nonlinear constraint function file.
parpool('AttachedFiles',{'objfun.m','constrfun.m'});
Workers access their own copies of the files.
Give a network file path to your objective or constraint function files.
pctRunOnAll('addpath network_file_path')
Workers access the function files over the network.
Check whether a file is on the path of every worker.
pctRunOnAll('which filename')
filename not found.
Set solver options to specify using parallel computing. The argument
'solvername'
represents a nonlinear solver that supports
parallel evaluation.
options = optimoptions('solvername','UseParallel',true);
After you establish your parallel computing environment, applicable
solvers automatically use parallel computing whenever you call them
with options
.
To stop computing optimizations in parallel, set UseParallel
to
false
. To halt all parallel computation, enter this code.
delete(gcp)
Note
The documentation recommends not to use parfor
or
parfeval
when calling Simulink; see Using sim function within parfor (Simulink). Therefore, you might
encounter issues when optimizing a Simulink simulation in parallel using a solver's built-in parallel
functionality.
Follow these steps to test whether your problem runs correctly in parallel.
Try your problem without parallel computation to ensure that it runs serially. Make sure this test is successful (gives correct results) before going to the next test.
Set UseParallel
to true
, and
ensure that no parallel pool exists by entering
delete(gcp)
. To make sure that
MATLAB does not create a parallel pool, select
Parallel > Parallel Preferences
in the Environment group on the
Home tab, and then clear
Automatically create a parallel
pool. Your problem runs
parfor
serially, with loop iterations
in reverse order from a for
loop. Make sure
this test is successful (gives correct results) before going to the
next test.
Set UseParallel
to true
, and
create a parallel pool using parpool
. Unless
you have a multicore processor or a network set up, this test does
not increase processing speed. This testing is simply to verify the
correctness of the computations.
Remember to call your solver using an options
argument to test or use
parallel functionality.