# Race condition in opencl kernel threads

If multiple threads are simultaneously writing a single memory location.,there will be a race condition,right?? In my case same is happening..

Consider a module from 'reduce.cl'

int i = get_global_id(0);
int n,j;

n = keyMobj[i];                       // this n is the key..It can be either 0 or 1.
for(j=0; j<2; j++)
sumMobj[n*2+j] += dataMobj[i].dattr[j];        //summing operation.

Here, The memory locations
sumMobj===> [...0..., ....1...] is accessed 4 threads simultaneously & sumMobj===> [....3..., ....4...] is accessed 6 threads simultaneously..

Is there any way to still make it parallely,like using locking or semaphore? As this summing is a very big part in my algorithm...

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What type is sumMobj? –  talonmies Jan 21 '13 at 8:02
these are the definitions of sumMobj and dataMobj typedef struct data { double dattr[10]; int d_id; int bestCent; }Data; Data *dataMboj; and double *sumMobj = (double *)malloc(sizeof(double) * 2 * 2); –  sandeep.ganage Jan 21 '13 at 9:08
@talonmies It is actually parallel addition problem..in opencl kernel. I just don't know the feasible solution. –  sandeep.ganage Jan 21 '13 at 9:13
Why don't you use barrier if you suspect there is a race condition ? like barrier(CLK_LOCAL_MEM_FENCE); –  ocluser Jan 21 '13 at 9:27
@ocluser I am having multiple threads which are simultaneously accessing(writing) a single memory location. Would this function 'barrier(CLK_LOCAL_MEM_FENCE);' be useful in this case? I have not used it before. –  sandeep.ganage Jan 21 '13 at 11:07
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I can give you some hint as I was also facing similar problem.

I can think of three different methods for achieving similar goal:

Consider a simple kernel, assuming you launched 4 (0-3) threads

{
int i = get_local_id(0);
p[4]+= p[i];
}

You want to add values p[0], p1,p2, p[3], p[4], and store the final sum in p[4]. right? i.e:

p[4]= p[0] + p[1] + p[2] + p[3] + p[4]

Method -1 (no parallelism)

Assign this job to only 1 thread (no parallelism):

int i = get_local_id(0);
if (i==0)

{

p[4]+= p[i];

}

Method-2 (with parallelism)

p[4]= p[0] + p[1] + p[2] + p[3] + p[4] + 0

This is a reduction problem

So launch 3 threads: i=0 to i=2. In first iteration

i=0 finds p[0] + p[1]
i=1 finds p[2] + p[3]
i=2 finds p[4] + 0

Now you have three numbers, you apply the same logic as above and add these numbers (with suitable padding of 0 to make it in power of two)

Method -3 Atomic operations

If you still need to implement this atomically, you can use atomic_add():

int fsfunc atomic_add (   volatile __global int *p ,int val)

Description

Read the 32-bit value (referred to as old) stored at location pointed by p. Compute (old + val) and store result at location pointed by p. The function returns old.

This is assuming the data is int type. Otherwise you can see the link as suggested above.

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It means if I am using floating point operations,then I don't any other option than using the reduction method, as there isn't any provision of extensions for floating point based atomic operations (as far as my information in concerned). Am I right? –  sandeep.ganage Feb 6 '13 at 7:45
Apart from reduction you can also see the link posted by @Slicedpan –  gpuguy Feb 6 '13 at 8:01