improving the speed of parallel optimization
2 visualizzazioni (ultimi 30 giorni)
Mostra commenti meno recenti
Hi, I am trying to optimize in parallel but the speed is increased just slightly by using parfor. Do you have any further recommendations? Thanks!
parfor i = 1:M
options = optimset('MaxFunEvals',Inf,'MaxIter',10,...
'Algorithm','interior-point','Display','iter');
startTime = tic;
[x(:,i),fval(:,i)] = fmincon(@(x)revenue(price(1:N,1),ro,g,eff,x,N,k1,init_s(i),inFlow(:,i),alpha_par(i),b_par(i)),x0(1:2*N,i),A,b(:,i),Aeq,beq(:,i),LB(:,i),UB(:,i),[],options);
time_fmincon_parallel = toc(startTime);
fprintf('Parallel FMINCON optimization takes %g seconds.\n',time_fmincon_parallel);
end
0 Commenti
Risposte (2)
Walter Roberson
il 4 Giu 2018
Instead of running the fmincon calls in parallel, try running them in a loop, but using the option UseParallel to allow parallel estimation of the gradient.
Remember, it is common for Parallel processing to be slower than serial, depending on the amount of data to be transferred compared to the amount of work to be done per iteration, and taking into account that non-parallel workers can use the built-in parallelization of some operations on large "enough" matrices by calling into LaPACK / MKL.
9 Commenti
Walter Roberson
il 21 Giu 2018
If I recall correctly, with N even close to that large, asking matlabFunction to optimize the code takes far far too long, so I do not think you are going to be able to take advantage of that.
Matt J
il 21 Giu 2018
Modificato: Matt J
il 21 Giu 2018
This is a more optimal implementation of storage(),
function S=storage(init_s,inFlow,x,N)
D=inFlow-totalflow(x,N);
D(1) = D(1) + ( init_s(1) + D(1) );
S=cumsum(D);
end
14 Commenti
Matt J
il 26 Giu 2018
Modificato: Matt J
il 26 Giu 2018
I have implemented those suggestions and its a bit faster
How fast is it now? It should have been a lot faster than what you were doing.
Do you know maybe how I can run it with quadprog instead of fmincon?
The problem doesn't look quadratic, except maybe when b_par=1.
Vedere anche
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!