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I have a 2D matrix in the main. I want to transfer if from host to device. Can you tell me how I can allocate memory for it and transfer it to the device memory?

#define N 5
__global__ void kernel(int a[N][N]){
}
int main(void){

    int a[N][N];
    cudaMalloc(?);
    cudaMemcpy(?);
    kernel<<<N,N>>>(?);

}
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2 Answers 2

Perhaps something like this is what you really had in mind:

#define N 5 
__global__ void kernel(int *a)
{
    // Thread indexing within Grid - note these are
    // in column major order.
    int tidx = threadIdx.x + blockIdx.x * blockDim.x;
    int tidy = threadIdx.y + blockIdx.y * blockDim.y;

    // a_ij = a[i][j], where a is in row major order
    int a_ij = a[tidy +  tidx*N];
} 

int main(void)
{
    int a[N][N], *a_device;
    const size_t a_size = sizeof(int) * size_t(N*N);
    cudaMalloc((void **)&a_device, a_size); 
    cudaMemcpy(a_device, a, a_size, cudaMemcpyDeviceToHost); 
    kernel<<<N,N>>>(a_device); 
} 

The point you might have missed is that when you statically declare an array like this A[N][N], it is really just a row major ordered piece of linear memory. The compiler is automatically converting between a[i][j] and a[j + i*N] when it emits code. On the GPU, you must use the second form of access to read the memory you copy from the host.

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Thanks for the typo fixes Mark. Copied them from the original post without looking too closely. –  talonmies Feb 22 '12 at 5:14
cudaMemcpy(a_device, a, a_size, cudaMemcpyDeviceToHost);

Shouldn't the code be from host to device?

cudaMemcpy(a_device, a, a_size, cudaMemcpyHostToDevice);
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Does it refer the OP's question? Consider posting as a separate question. –  Lenin Dec 13 '12 at 15:00

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