Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I use GTX 280, which has compute capability 1.3 and supports atomic operations on shared memory. I am using cuda SDK 2.2 and VS 2005. In my program I have to extensively use atomic operations because there is simply no other way.

One example is that I have to calculate the running sum of an array and find out the index where the sum exceeds a given cut off value. For this I am using a variant of scan algorithm and using atmoicMin to store index while the value is less than the threshold. So this way at the end the shared memory would have the index where the value is just less than the threshold.

This is just one component of the kernel, and there are many similar code blocks in the kernel call.

I am having 3 problems

  1. Firstly I have not been able to compile the code as it say atomic operations are not defined, I have searched but not found which file I have to add.
  2. Second, I somehow managed to compile the code by copying it in the code provided by CUDA SDK, but then it is saying the atomic operations are not supported on shared memory, where as it is running in the following program
  3. Even when I worked around a hack by giving -arch sm_12 in the command line compilation, the code snippet using these atomic operations are taking an awful lot of time.

I believe that in the worst case I should get some sort of speed up, because there are not very many atomic operations and I using 1 block of 16x16. Unfortunately the serial code in running 10x faster.

Please help, it is really urgent.



Below I am posting the kernel code, this kernel call seems to be the bottleneck if anyone could help me optimize then it would be nice. The serial code is just performing these actions in a serial manner. I am using a thread configuration of 16X16

The code seems to be lengthy but actually it contains an if code block and while code block that perform almost the same task, but they could not be merged.

Please help if possible.

#define limit (int)(log((float)256)/log((float)2))

// This receives a pointer to an image, some variables and 4 more arrays cont(of size 256) vars(some constants), lim and buf(of image size)
// block configuration 1 block of 16x16

__global__ void kernel_Main(unsigned char* in, int height,int width, int bs,int th, double cutoff, uint* cont,int* vars, unsigned int* lim,unsigned int* buf)
{  

    int j = threadIdx.x;
    int i = threadIdx.y;

    int k = i*blockDim.x+j;


    __shared__  int prefix_sum[256];  
    __shared__  int sum_s[256];
    __shared__  int ary_shared[256];
    __shared__  int he_shared[256];

    // this is the threshold
    int cutval = (2*width*height)*cutoff;
    prefix_sum[k] = cont[k];

    int l;
    // a variant of scan algorithm 
    for(l=0;l<=limit;l++)
    {
        sum_s[k]=prefix_sum[k];

        if(k >= (int)pow((float)2,(float)l))
        {  
            prefix_sum[k]+=sum_s[k-(int)pow((float)2,(float)l)];
            // Find out the minimum index for which the cummulative sum crosses threshold
            if(prefix_sum[k] > cutval)
            {
                atomicMin(&vars[cut],k);
            }
        }
        __syncthreads();
    }

    // The first thread will store the value in global array
    if(k==0)
    {
        vars[cuts]=prefix_sum[vars[cut]];
    }
    __syncthreads();


    if(vars[n])
    {
        // bs = 7 in this case
        if(i<bs && j<bs)
        {
            // using atomic add because the index could be same for 2 different threads
            atomicAdd(&ary_shared[in[i*(width) + j]],1);  
        }
        __syncthreads();


        int minth = 1>((bs*bs)/20)? 1: ((bs*bs)/20);
        prefix_sum[k] = ary_shared[k];
        sum_s[k] = 0;

        // Again prefix sum

        int l;
        for(l=0;l<=limit;l++)
        {
            sum_s[k]=prefix_sum[k];

            if(k >= (int)pow((float)2,(float)l))
            {  
                prefix_sum[k]+=sum_s[k-(int)pow((float)2,(float)l)];
                // Find out the minimum index for which the cummulative sum crosses threshold
                if(prefix_sum[k] > minth)
                {
                    atomicMin(&vars[hmin],k);
                }
            }
            __syncthreads();
        }

         // set the maximum value here
        if(k==0)
        {
            vars[hminc]=prefix_sum[255];
            // because we will always overshoot by 1
            vars[hmin]--;
        }

        __syncthreads();

        int maxth = 1>((bs*bs)/20)? 1: ((bs*bs)/20);
        prefix_sum[k] = ary_shared[255-k];

        for(l=0;l<=limit;l++)
        {
            sum_s[k]=prefix_sum[k];

            if(k >= (int)pow((float)2,(float)l))
            {  
                prefix_sum[k]+=sum_s[k-(int)pow((float)2,(float)l)];
                // Find out the minimum index for which the cummulative sum crosses threshold
                if(prefix_sum[k] > maxth)
                {
                    atomicMin(&vars[hmax], k);
                }
            }
             __syncthreads();
        }
         // set the maximum value here

         if(k==0)
         {
            vars[hmaxc]=prefix_sum[255];
            vars[hmax]--;
            vars[hmax]=255-vars[hmax];

         }
        __syncthreads();



        int rng = vars[hmax] - vars[hmin];
        if(rng >= vars[cut])
        {
          if( k <= vars[hmin] )
                he_shared[k] = 0;
          else if( k >= vars[hmax])
                he_shared[k] = 255;
          else
                he_shared[k] = (255 * (k - vars[hmin])) / rng;
        }
         __syncthreads();

        // only 7x7 = 49 threads will do this
        if(i>0 && i<=bs && j>0 && j<=bs)
        {
           int base = (vars[oy]*width+vars[ox])+ (i-1)*width + (j-1);

           if(rng >= vars[cut])
           {
              int value = he_shared[in[base]];
              buf[base]+=value;
              lim[base]++;
           }
           else
           {
              buf[base]+=255;
              lim[base]++;
           }
        }

        if(k==0)
            vars[n]--;

        __syncthreads();   


    }// if(n) block closes here

    while(vars[n])
    {


        if(k==0)
        {
            if( vars[ox]==0 && vars[d1] ==3 )
                vars[d1] = 0; // l2r
            else if( vars[ox]==0 && vars[d1]==2 )
                vars[d1] = 3; // l u2d
            else if( vars[ox]==width-bs && vars[d1]==0)
                vars[d1] = 1; // r u2d
            else if( vars[ox]==width-bs && vars[d1]==1)
                vars[d1] = 2; // r2l

        }

        // Because this value will be changed so
        // all the threads should set their registers before
        // they move forward
        int ox_d = vars[ox];
        int oy_d = vars[oy];

        // Just putting it here so that all the threads should have set their
        // values before moving on, as this value will be changed
        __syncthreads();

        if(vars[d1]==0)
        {

            if(i == 0 && j < bs)
            {
                int index = j*width + ox_d + oy_d*width;
                int index2 = j*width + ox_d + oy_d*width +bs;

                atomicSub(&ary_shared[in[index]],1);
                atomicAdd(&ary_shared[in[index2]],1);
            }

            // The first thread of the first block should set this value
            if(k==0)
                vars[ox]++;
        }
        else if(vars[d1]==1||vars[d1]==3)
        {

            if(i == 0 && j < bs)
            {
                /*if(j==0)
                printf("Entered 1||3\n");*/
                int index = j*width + ox_d + oy_d*width;
                int index2 = j*width + ox_d + (oy_d+bs)*width;

                atomicSub(&ary_shared[in[index]],1);
                atomicAdd(&ary_shared[in[index2]],1);

            }
            // The first thread of the first block should set this value
            if(k==0)
                vars[oy]++;

        }
        else if(vars[d1]==2)
        {

            if(i == 0 && j < bs)
            {
                int index = j*width + ox_d-1 + oy_d*width;
                int index2 = j*width + ox_d-1 + oy_d*width +bs;

                atomicAdd(&ary_shared[in[index]],1);
                atomicSub(&ary_shared[in[index2]],1);

            }
            // The first thread of the first block should set this value
            if(k==0 )
                vars[ox]--;
         }
        __syncthreads();

        //ary_shared has been calculated

        // Reset the hmin and hminc values
        // again the same task as done in the if(n) loop
        if(k==0)
        {
            vars[hmin]=0;
            vars[hminc]=0;
            vars[hmax]=0;
            vars[hmaxc]=0;
        }
        __syncthreads();

        int minth = 1>((bs*bs)/20)? 1: ((bs*bs)/20);
        prefix_sum[k] = ary_shared[k];

        int l;
        for(l=0;l<=limit;l++)
        {
            sum_s[k]=prefix_sum[k];

            if(k >= (int)pow((float)2,(float)l))
            {  
                prefix_sum[k]+=sum_s[k-(int)pow((float)2,(float)l)];
                // Find out the minimum index for which the cummulative sum crosses threshold
                if(prefix_sum[k] > minth)
                {
                    atomicMin(&vars[hmin],k);
                }
            }
            __syncthreads();
        }

         // set the maximum value here
        if(k==0)
        {
            vars[hminc]=prefix_sum[255];
            vars[hmin]--;
        }
        __syncthreads();

        // Calculate maxth
        int maxth = 1>((bs*bs)/20)? 1: ((bs*bs)/20);
        prefix_sum[k] = ary_shared[255-k];

        for(l=0;l<=limit;l++)
        {
            sum_s[k]=prefix_sum[k];

            if(k >= (int)pow((float)2,(float)l))
            {  
                prefix_sum[k]+=sum_s[k-(int)pow((float)2,(float)l)];
                // Find out the minimum index for which the cummulative sum crosses threshold
                if(prefix_sum[k] > maxth)
                {
                    atomicMin(&vars[hmax], k);
                }
            }
             __syncthreads();
        }
         // set the maximum value here

         if(k==0)
         {
            vars[hmaxc]=prefix_sum[255];
            vars[hmax]--;
            vars[hmax]=255-vars[hmax];
         }
        __syncthreads();

        int rng = vars[hmax] - vars[hmin];
        if(rng >= vars[cut])
        {
          if( k <= vars[hmin] )
                he_shared[k] = 0;
          else if( k >= vars[hmax])
                he_shared[k] = 255;
          else
                he_shared[k] = (255 * (k - vars[hmin])) / rng;
        }
         __syncthreads();


        if(i>0 && i<=bs && j>0 && j<=bs)
        {
           int base = (vars[oy]*width+vars[ox])+ (i-1)*width + (j-1);

           if(rng >= vars[cut])
           {
              int value = he_shared[in[base]];
              buf[base]+=value;
              lim[base]++;
           }
           else
           {

              buf[base]+=255;
              lim[base]++;

           }
        }

        // This just might cause a little bit of problem
        if(k==0)
            vars[n]--;

        // All threads will wait here before continuing the while loop
        __syncthreads();

    }// end of while(n)
}
share|improve this question

1 Answer 1

Firstly you need -arch sm_12 (or in your case it should really be -arch sm_13) to enable atomic operations.

As for performance, there is no guarantee that your kernel will be any faster than normal code on the CPU - there are many problems which really do not fit well into the CUDA model and these may indeed run much slower than on the CPU. You need to do some analysis/design/modelling before coding any CUDA kernels to prevent yourself wasting a lot of time on something that is never going to fly.

Having said that, there may be a way to implement your algo in a more efficient way - maybe you could post the CPU code and then invite ideas as to how to efficiently implement it in CUDA ?

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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