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I wrote the following simple CUDA kernel:

__global__ void pr_kernel(float* O, const float* I, const float* W, int N)
{
  int x = threadIdx.x;
  float sum;
  int i;
  if (x < N) {
    for (i = 0; i < N; i++) {
      if (i == x) continue;
      sum += W[x*N+i] * I[x];
    }
    O[x] = (0.15 / N) + 0.85 * sum;
  }
}

The variables are allocated in Python as follows:

N      = np.int32(4)
W      = np.float32(np.asarray(
         [0, 1, 0, 1, 1, 0, 1, 1, 
         0, 1, 0, 1,1, 1, 0]))
I      = np.float32(np.asarray(
         [0.25, 0.25, 0.25, 0.25]))
O      = np.float32(np.zeros(N))

I'm transferring the variables using gpuarray.to_gpu, and I'm calling the kernel on a Tesla C2070 with the following line:

pr_kernel(O_d, I_d, W_d, N_d, block=blocksize, grid=gridsize)

Where:

blocksize = (128, 1, 1)
gridsize = (1, 1)

I get the error message:

pycuda.driver.LaunchError: cuLaunchKernel failed: launch out of resources.

This happens even if I reduce blocksize to something like (8, 1, 1). I can run other CUDA programs on the GPU with a blocksize of (512, 1, 1) so I'm confident this is not due to a GPU configuration issue.

What am I doing wrong? Thanks for any help.

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this can't be your actual kernel. Where is tid defined? Where is (little) i defined? Why not just cut and paste in your actual kernel? –  Robert Crovella Nov 4 '12 at 23:00
    
Sorry, actual kernel is on a VirtualBox and I posted a slightly outdated version from my local machine since I can't copy paste. –  louism Nov 4 '12 at 23:22
    
Is saxpy_kernel the same as pr_kernel? –  dreamcrash Nov 4 '12 at 23:26
    
Yes sorry again, same problem as above. Some starter code that I modified. –  louism Nov 4 '12 at 23:51
    
I don't think it explains your problem, but you may want to initialize sum to some known value before adding to it. The error message you're getting may be due to your actual launch configuration (e.g. number of parameters, or type of paraemters) as discussed here. Also this one shows a mistake that can be made in parameter definition for cuda kernels in pycuda. –  Robert Crovella Nov 5 '12 at 1:05

2 Answers 2

Verify if you had specify the correct number of arguments, or their correct size on the cuLaunch().

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up vote 0 down vote accepted

The problem was that I was transferring the integer N to the GPU using gpuarray.to_gpu, where I should have been directly passing N to the pr_kernel function.

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