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.

actualkernel? – Robert Crovella Nov 4 '12 at 23:00