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DoLoops performance in Fortran

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What is the best performance that Fortran can give when computing do-loops over large matrices? The test-case below shows a four-times performance increase when looping over (k,j,i) insteado of (i,j,k).

Test-case

Hardware

  • Intel Core i7 - 870
  • 8 GB Ram

Code

program DoloopsOpenmp

   use moduleDoloopsOpenmp, only: makeloop

   implicit none
   
   integer, dimension(:,:,:), pointer      :: mycube
   integer                                 :: M = 1
   real                                    :: elapsedtime
   real                                    :: time = 0.0

   do while (M < 1000)

       write(*,*) 'Insert the cube size M (<600): '
       read(*,*) M
       
       if (M > 999) exit

       allocate(mycube(1:M,1:M,1:M))

       !Tic()    
       time = elapsedtime(time)

       call makeloop(mycube)

       !Toc()
       time = elapsedtime(time)
       
       write(*,10) time
       write(*,*) 
        
       deallocate(mycube)
       nullify(mycube)

   end do

   10 format('Time elapsed: ',F6.2)
   
end program DoloopsOpenmp

!This function computes the time
real function elapsedtime(lasttime)

   integer     :: count, count_rate
   real        :: lasttime

   call system_clock(count, count_rate)
   
   elapsedtime = count * 1.0 / count_rate - lasttime

end function elapsedtime

Results


DO (i,j,k) / NO CHUNK


Table A.1 - Debug do(i,j,k) Size Time 100 0.04 200 0.37 300 1.58 400 7.60 500 19.66 600 41.65

Table A.2 - Debug openmp without !$OMP PARALLEL directives do(i,j,k) Size Time 100 0.04 200 0.37 300 1.58 400 7.27 500 19.34 600 41.34

Table A.3 - Debug openmp with one !$OMP PARALLEL DO directive do(i,j,k) Size Time 100 0.02 200 0.19 300 0.70 400 1.86 500 4.05 600 7.83


DO (k,j,i) / NO CHUNK


Table B.1 - Debug do(k,j,i) Size Time 100 0.04 200 0.31 300 1.22 400 3.36 500 7.55 600 14.88

Table B.2 - Debug openmp without !$OMP PARALLEL directives do(k,j,i) Size Time 100 0.04 200 0.31 300 1.21 400 3.36 500 7.82 600 15.07

Table B.3 - Debug openmp with one !$OMP PARALLEL DO directive do(k,j,i) Size Time 100 0.02 200 0.09 300 0.36 400 0.94 500 2.04 600 3.89


DO (k,j,i) / STATIC CHUNK = (UBOUND - LBOUND) / NTHREADS + 1


Table C.3 - Debug openmp with one !$OMP PARALLEL DO directive do(k,j,i) Size Time 100 0.02 200 0.15 300 0.42 400 1.03 500 2.12 600 3.97


DO (k,j,i) / STATIC CHUNK = 10


Table D.3 - Debug openmp with one !$OMP PARALLEL DO directive do(k,j,i) Size Time 100 0.02 200 0.16 300 0.43 400 1.04 500 2.18 600 4.05


DO (k,j,i) / DYNAMIC CHUNK = 10


Table E.3 - Debug openmp with one !$OMP PARALLEL DO directive do(k,j,i) Size Time 100 0.01 200 0.10 300 0.36 400 0.93 500 2.01 600 3.89


DO (k,j,i) / DYNAMIC CHUNK = (UBOUND - LBOUND) / NTHREADS + 1


Table F.3 - Debug openmp with one !$OMP PARALLEL DO directive do(k,j,i) Size Time 100 0.02 200 0.09 300 0.39 400 1.04 500 2.14 600 4.00

Conclusions:

  • do(k,j,i) Vs do(i,j,k) ==> 2 to 4 times faster!
  • dynamic small chunks, or no chunk at all yield 10% increased performance over large dynamic chunks. Probably better off with no-chunk.
  • More test-cases representing different scenarios of do-loops may yield different choices of CHUNK/scheduling.