# vectorize a loop which accesses non-consecutive memory locations

I have a loop of this structure

Reference : Maxwell Code Example

``````do z=1,zend
do y=1,yend
do x=1,xend
k=arr(x,y,z)
do while(k.ne.0)
ix=fooX(k)
iy=fooY(k)
iz=fooZ(k)
x1=x(ix  ,iy  ,iz)
x2=x(ix+1,iy  ,iz)
x3=x(ix  ,iy+1,iz)
x4=x(ix+1,iy+1,iz)
x5=x(ix  ,iy  ,iz+1)
x6=x(ix+1,iy  ,iz+1)
x7=x(ix  ,iy+1,iz+1)
x8=x(ix+1,iy+1,iz+1)

y1=y(ix  ,iy  ,iz)
y2=y(ix+1,iy  ,iz)
y3=y(ix  ,iy+1,iz)
y4=y(ix+1,iy+1,iz)
y5=y(ix  ,iy  ,iz+1)
y6=y(ix+1,iy  ,iz+1)
y7=y(ix  ,iy+1,iz+1)
y8=y(ix+1,iy+1,iz+1)

z1=z(ix  ,iy  ,iz)
z2=z(ix+1,iy  ,iz)
z3=z(ix  ,iy+1,iz)
z4=z(ix+1,iy+1,iz)
z5=z(ix  ,iy  ,iz+1)
z6=z(ix+1,iy  ,iz+1)
z7=z(ix  ,iy+1,iz+1)
z8=z(ix+1,iy+1,iz+1)
sumX+=x1+x2+..x8
sumY+=y1+y2+..y8
sumZ+=z1+z2+..z8

enddo
enddo
enddo
enddo
``````

x1 through x8 are the 8 corners of a rectangular cuboid. There are three challenges to vectorize this code. One is that the 8 array elements are not contiguous in memory. Second is the inherent while loop structure along with linked List access. Third the values of ix, iy, iz returned from from fooX, fooY, fooZ are not not contiguous. So each iteration of the loop has a completely different set of ix, iy, iz. So the even across the iterations the memory access is scattered. I tried the following approaches: 1. unrolled the 3-level DO loops as :

``````do z=1,zend
do y=1,yend
do x=1,xend
if(arr(x,y,z).NE.0) then
kArr(indx)=arr(x,y,z)
DO WHILE (kArr(indx).NE.0)
indx = indx + 1
ENDDO
endif
enddo
enddo
enddo
``````

With this i have got rid of the while loop structure and now I'm able to run one big loop on kArr inside which i group 8 elements (say my VPU can accomodate 8 sets of data at a time). It did not give a performance improvement. I can post the details of these if anyone is interested. I need suggestions on how to optimize this code. Another option i tried was to combine x,y,z data in a single array so that when i compute x1, y1 & z1 also will be in adjacent memory locations.

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You didn't tell us enough. What happens to the value x1...x8, y1..y8, z1..z8? The way the code is presented now they can all be eliminated and you don't have a computational problem because your loop body ie empty. – Ira Baxter Aug 13 '12 at 8:50
@IraBaxter: edited the code snippet. Thanks for pointing that out or my loop execution would be pointless. – arunmoezhi Aug 13 '12 at 9:14
If you really want to improve the performance, then you should consider using SSE intrinsics. "Hoping" that the compiler will produce fast/vectorized code will certainly lead to disappointment. I always assume that the compiler generates lousy code and that time critical sections need to be written in ASM or intrinsics (this assumption is usually correct). – BitBank Aug 16 '12 at 1:19
@BitBank: Two reasons for not using SSE intrinsics. 1. I havn't done it before but I can always learn it. 2. I'm not doing it now since the customer doesn't want me to use any compiler specific intrinsics – arunmoezhi Aug 16 '12 at 8:01
SSE Intrinisics are portable across GCC/Windows/MacOSX. Using inline assembler would be non-portable. – BitBank Aug 18 '12 at 15:20

That while loop is killing you. In a similar situation a few years back, I got a modest improvement in performance doing something like this:

``````! at top of your code, introduce:
integer :: special_index
integer :: ix(1000), iy(1000), iz(1000)  !promoting scalars to arrays.
! make as big as possibly needed.

! code as usual until you get to your loops, then

! first, make lookup table
special_index=0
do z=1,zend
do y=1,yend
do x=1,xend
k=arr(x,y,z)
do while(k.ne.0)
special_index=special_index+1
ix(special_index)=fooX(k)
iy(special_index)=fooY(k)
iz(special_index)=fooZ(k)
enddo
enddo
enddo
endoo
! and now we do the calculation, loop over lookup table:
do n=1,special_index
x1=x(ix(n)  ,iy(n)  ,iz(n))
x2=x(ix(n)+1,iy(n)  ,iz(n))
x3=x(ix(n)  ,iy(n)+1,iz(n))
etc.
enddo
``````

Like I said, this helped me a few years back. Your mileage may vary. The first loop still won't vectorize, but the second one might, and it might give better performance.

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I tried this already. The second loop got vectorized and it killed performance. It was like 3x slower. – arunmoezhi Sep 19 '12 at 22:51
I wasn't entirely confident that you would get a big boost out of this, but I am surprised that it actually degrades performance, and by that much. Ah well. I gave it a shot. If anything else occurs to me, I will let you know. Best of luck. – bob.sacamento Sep 19 '12 at 23:52
Thanks for your time and help. – arunmoezhi Sep 20 '12 at 0:37