I have a very simple script that calls the built-in genetic algorithm function:

function test1(gen)
    options = gaoptimset('UseParallel', 'always', 'Vectorized', 'off');
    x = ga(@dejong5fcn, 2, [], [], [], [], [], [], [], options);

First, I ran test1 without starting matlabpool. As expected, it runs fine but uses only one CPU core as observed with Windows Resource Monitor. It takes 4.2 seconds to run 20020 fitness evaluations. Then, I started the parallel engine with: "start matlabpool local 4" and then performed an otherwise identical run of test1. It runs and uses all four CPU cores, but takes about 90.7 seconds to perform 20020 fitness evaluations.

What am I not understanding about parallelism in Matlab R2012a (on Windows 7 64 bit)? Thanks for any help.

  • Have you tried on different platforms? I find the Parallel Computing Toolbox performance can be rather platform-sensitive. Also, do you have hyperthreading enabled? – Matt J Feb 4 '14 at 9:14
  • Parallel processing is typically good if you do a few long operations, if you do 20000 operations that take a fraction of a second, probably the overhead is killing you. – Dennis Jaheruddin Feb 4 '14 at 10:34

When you parallelize an algorithm, there is an overhead involved in communicating between the several parallel operations, and passing data back and forth between them. In this case you have a fairly large number of fairly small operations, and the overhead is swamping any speedup from parallelization.

Try parallelizing a smaller number of larger operations, and you should see a much better speedup.

By the way, this is the reason that the UseParallel option is not on by default. When you set it to true, you are telling the Parallel Computing Toolbox that you know that the problem will benefit from parallelization (not all problems do), and that you are giving it permission to parallelize the algorithm.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.