My machine has 4 cores. When I do parallel runs with @sync @parallel, I notice that Julia divides the jobs into 4 before sending the jobs to the 4 processors:
# start of do_something.jl function do_something(i, parts) procs = zeros(Int, parts) procs[i] = myid() total = 0.0 for j = 1:i * 100000000 total = total + 1e-6 end return procs end # end of do_something.jl # synctest3a.jl addprocs(Sys.CPU_CORES) @everywhere include("do_something.jl") parts = 20 procs = @sync @parallel (+) for i = 1:parts do_something(i, parts) end @printf("procs=%s\n", procs)
Result of julia synctest3a.jl, indicating the first 5 were sent to processor 2, the next 5 were sent to processor 3, and so on:
procs=[2, 2, 2, 2, 2, 3, 3, 3, 3, 3, 4, 4, 4, 4, 4, 5, 5, 5, 5, 5]
I have an application where the time to execute do_something() can vary a lot (in this toy example it is more or less proportional to i). So what I really want is for each processor to execute do_something as soon it is free, rather than each one always doing exactly 1/4 of the calls. How do I do that?