I have a program whose purpose is to add specific data to one main array. A random number test
passesTest(randomNumber) is performed millions of times each second, and very occasionally the test is passed and the random number is pushed onto the end of the array. So most of the time the array is just sitting there while computations are going on.
I decided to parallelize this procedure with MPI, since I figured 1000 processors performing the random number test would be a big speed-up, and as memory writes are very infrequent, MPI should be well-suited to the job. Much to my dismay, my program is fastest with
mpirun -np 1 and gets significantly slower with each process that I add.
At the end of my
while loop that contains
passesTest(randomNumber), I have
MPI::COMM_WORLD.Allgather() to gather a flag from each process that indicates whether there is a new random number that needs pushing onto the array. If any of the flags is
true then I perform another
Allgather() to actually collect this data and push it onto each process' local copy of the array. Again, this second
Allgather() is performed very infrequently because the test is rarely passed.
So I'm guessing that my bottleneck is collecting all the flags from each MPI process to see if there is new data. The test of each random number is fast to perform, so I assume that what was billions of while loops per second is now significantly reduced because of the overhead of collecting data from multiple processes. Is this a good guess? I'm new to MPI so I don't know what kind of timescale is involved with
If this is the reason, then how can I only "interact" with the other processes when a test is passed? This is really all I want to do. In other words, if a random number passes a test, then send a message out to all the other processes to halt what they're doing and add that number onto their array.