Parallel computing is the technique of using multiple processors on a single problem. The reason to use parallel computing is to speed computations.
The following Optimization Toolbox™ solvers can automatically distribute the numerical estimation of gradients of objective functions and nonlinear constraint functions to multiple processors:
fmincon
fminunc
fgoalattain
fminimax
fsolve
lsqcurvefit
lsqnonlin
These solvers use parallel gradient estimation under the following conditions:
You have a license for Parallel Computing Toolbox™ software.
The option SpecifyObjectiveGradient
is set to
false
, or, if there is a nonlinear constraint
function, the option SpecifyConstraintGradient
is set
to false
. Since false
is the
default value of these options, you don't have to set them; just don't
set them both to true
.
Parallel computing is enabled with parpool
, a
Parallel Computing Toolbox function.
The option UseParallel
is set to
true
. The default value of this option is
false
.
When these conditions hold, the solvers compute estimated gradients in parallel.
Note
Even when running in parallel, a solver occasionally calls the objective and nonlinear constraint functions serially on the host machine. Therefore, ensure that your functions have no assumptions about whether they are evaluated in serial or parallel.
One solver subroutine can compute in parallel automatically: the subroutine that estimates the gradient of the objective function and constraint functions. This calculation involves computing function values at points near the current location x. Essentially, the calculation is
where
f represents objective or constraint functions
ei are the unit direction vectors
Δi is the size of a step in the ei direction
To estimate ∇f(x) in parallel, Optimization Toolbox solvers distribute the evaluation of (f(x + Δiei) – f(x))/Δi to extra processors.
You can choose to have gradients estimated by central finite differences instead of the default forward finite differences. The basic central finite difference formula is
This takes twice as many function evaluations as forward finite differences, but is usually much more accurate. Central finite differences work in parallel exactly the same as forward finite differences.
Enable central finite differences by using optimoptions
to set the FiniteDifferenceType
option to
'central'
. To use forward finite differences, set the
FiniteDifferenceType
option to
'forward'
.
Solvers employ the Parallel Computing Toolbox function parfor
(Parallel Computing Toolbox) to perform parallel
estimation of gradients. parfor
does not work in parallel when
called from within another parfor
loop. Therefore, you cannot
simultaneously use parallel gradient estimation and parallel functionality within
your objective or constraint functions.
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.
Suppose, for example, your objective function userfcn
calls
parfor
, and you wish to call fmincon
in a loop. Suppose also that the conditions for parallel gradient evaluation of
fmincon
, as given in Parallel Optimization Functionality, are satisfied. When parfor Runs In Parallel shows three cases:
The outermost loop is parfor
. Only that loop runs in
parallel.
The outermost parfor
loop is in
fmincon
. Only fmincon
runs in
parallel.
The outermost parfor
loop is in
userfcn
. userfcn
can use
parfor
in parallel.
When parfor Runs In Parallel
Improving Performance with Parallel Computing | Minimizing an Expensive Optimization Problem Using Parallel Computing Toolbox™ | Using Parallel Computing in Optimization Toolbox