This is in F90, but the question holds for any language with OpenMP support. A typical way of structuring data for a simulation code that needs multiple storage arrays for time integration would be (2 dimensional for now):
REAL, DIMENSION(imax,jmax,n_sub_timesteps) :: vars
Which would then be updated with something like:
DO J = 1, jmax DO I = 1, imax vars(I,J,2) = func(vars(:,:,1)) END DO END DO
In my experience, OpenMP won't actually parallelize those loops because it thinks
vars is not thread-safe. But to the programmer, it obviously is.
And let's assume for further real-case situations that making
vars thread-local would be far too expensive to copy data into it.
So, is there a way to gently hint (aka coerce) OpenMP into not locking
vars because it may not figure out that there's no thread dependency issues but there really aren't? I know there are ways to tell it that something is not thread-safe and needs locking, but is there a way to specify the inverse without making a copy for each thread?