1

I am facing a problem of loading arrays from global to shared memory with hallo

Here is the problem: I have a big array (256,64) in my global memory that i want to load to shared memory of size [16][16] In my computation I will need the neighbouring value (halo)

I find my self in a very diverged code thus very slow and at the end it does not work. Here is my approach I will appreciate your advice

 real, shared :: s_data(-1:16,-1:16)

 d_j = (blockIdx%x-1) * blockDim%x + threadIdx%x-1
 d_l = (blockIdx%y-1) * blockDim%y + threadIdx%y-1

 tIdx = threadIdx%x -1
 tIdy = threadIdx%y -1

  bdimx = 256/(blockDim%x)  !16
  bdimy = 64/(blockDim%y)   !8


d_l1=d_l+1
if(d_l1==d_lmax) d_l1=0

d_l0 = d_l -1
if(d_l==0) d_l0=d_lmax-1
call syncthreads()

!load the main part 
s_data(tIdx,tIdy)   = g_data(d_j,d_l)


!Filling halos 
if(tIdx ==0)then
      f(bx == 0) then
         s_data(tIdx-1,tIdy) =0
     else 
         s_data(tIdx-1,tIdy)   = g_data(d_j-1,d_l)
     end if
end if

!Fill (16,tIdy)
if(tIdx == blockDim%x-1)then
    if(bx == bdmx-1) then
       s_data(tIdx+1,tIdy) = 0
    else
        s_data(tIdx+1,tIdy) = g_data(d_j+1,d_l) 
    end if
end if

!Fill (-1,tIdy)
if(tIdy == 0)then              
     s_data(tIdx,tIdy+1)=g_data(d_j,d_l1)
end if

!Fill (N,tIdy)
if(tIdy == blockDim%y -1)then
    s_data(tIdx,tIdy-1) = g_data(d_j,d_l0) 
end if

!Fill (-1,-1) and (-1, N)
if(tIdx==0)then
    if(bx == 0)then
       if(tIdy == 0) then
          s_data(tIdx-1,tIdy-1) =0 
       end if
       if(tIdy == blockDim%y-1) then
          s_data(tIdx-1,tIdy+1) = 0 
       end if

    else
       if(tIdy == 0) then
           s_data(tIdx-1,tIdy-1) =g_data(d_j-1,d_l0) 
       end if 
       if(tIdy == blockDim%y) then
           s_data(tIdx-1,tIdy+1) = g_data(d_j-1,d_l1)
       end if 
    end if 
end if

!Fill (N, -1) & (N,N)
if(tIdx==blockDim%x-1)then
      if(bx == bdimx-1)then
          if(tIdy == 0) then
            s_data(tIdx+1,tIdy-1) = 0
          end if
          if(tIdy == blockDim%y) then
             s_data(tIdx+1,tIdy+1) = 0
          end if 
       else 
          if(tIdy == 0) then
              s_data(tIdx+1,tIdy-1) =g_data(d_j+1,d_l0) 
          end if
          if(dIdy == blockDim%y) then
              s_data(tIdx+1,tIdy+1) = g_data(d_j+1,d_l1) 
          end if 
end if

!do some computation with s_data

1

Box filters for image processing always involves halo data. The basic idea is each output element/pixel is processed by one thread, and each thread loads more than one element/pixel to the shared mem.

This white paper about image convolution using CUDA could be a good reference.

http://docs.nvidia.com/cuda/samples/3_Imaging/convolutionSeparable/doc/convolutionSeparable.pdf

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.