Two points -- first, the example is in Fortran, but I think it should hold for any language; second, the built in random number generators are not truly random and other generators exist, but we're not interested in using them for what we're doing.
Most discussions on random seeds acknowledge that if the program doesn't seed it at run-time, then the seed is generated at compile time. So, the same sequence of numbers is generated every time the program is run, which is not good for random numbers. One way to overcome this is to seed the random number generator with the system clock.
However, when running in parallel with MPI on a multi-core machine, the system clock approach for us generated the same kinds of problems. While the sequences changed from run to run, all processors got the same system clock and thus the same random seed and same sequences.
So consider the following example code:
PROGRAM clock_test IMPLICIT NONE INCLUDE "mpif.h" INTEGER :: ierr, rank, clock, i, n, method INTEGER, DIMENSION(:), ALLOCATABLE :: seed REAL(KIND=8) :: random INTEGER, PARAMETER :: OLD_METHOD = 0, & NEW_METHOD = 1 CALL MPI_INIT(ierr) CALL MPI_COMM_RANK(MPI_COMM_WORLD, rank, ierr) CALL RANDOM_SEED(SIZE=n) ALLOCATE(seed(n)) DO method = 0, 1 SELECT CASE (method) CASE (OLD_METHOD) CALL SYSTEM_CLOCK(COUNT=clock) seed = clock + 37 * (/ (i - 1, i = 1, n) /) CALL RANDOM_SEED(put=seed) CALL RANDOM_NUMBER(random) WRITE(*,*) "OLD Rank, dev = ", rank, random CASE (NEW_METHOD) OPEN(89,FILE='/dev/urandom',ACCESS='stream',FORM='UNFORMATTED') READ(89) seed CLOSE(89) CALL RANDOM_SEED(put=seed) CALL RANDOM_NUMBER(random) WRITE(*,*) "NEW Rank, dev = ", rank, random END SELECT CALL MPI_BARRIER(MPI_COMM_WORLD, ierr) END DO CALL MPI_FINALIZE(ierr) END PROGRAM clock_test
Which when run on my workstation with 2 cores, gives:
OLD Rank, dev = 0 0.330676306089146 OLD Rank, dev = 1 0.330676306089146 NEW Rank, dev = 0 0.531503215980609 NEW Rank, dev = 1 0.747413828750221
So, we overcame the clock issue by reading the seed from
/dev/urandom instead. This way each core gets its own random number.
What other seed approaches are there that will work in a multi-core, MPI system and still be unique on each core, from run to run?