In a parallel application mimicking distributed inference, I would like to have an "initialization step" where all the "slaves" receive some initial information from the "master" then start their task.
At the moment I have a working implementation based on the
sendTo function (the code was found here on stack overflow) but I don't think it guarantees that the worker won't start its task before it has received the initial objects.
Here's a rough MWE
function sendTo(p::Int; args...) for (nm, val) in args @spawnat(p, eval(Main, Expr(:(=), nm, val))) end end a = 5 addprocs(4) [sendTo(worker,a=a+randn()) for worker in workers()] @everywhere begin println(a) end
The above "works" but how can I be sure that the commands in the
@everywhere block does not get executed before the worker has received the definition of
Rmk: for the context I'm working in, I would like to keep two distinct blocks, one that spreads the data and one that does stuff on it.
Other rmk: apologies if this is trivial, I'm quite new to dealing with parallelism (and quite new to Julia too)