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I tried to speed up my CUDA code.
I'm using VS2010 with CUDA 4.2 with GeForce GT 525M. The code gets:I. array of 7 integers (offsetsHost/Device is array of 7 integers, copy it to the device || An image to be copied to 1 dim array on device representing 7 images array. Than it perform the kernel and copy back the result to the host. My measures tell me my streams coda (under "if" statement) is much longer than streams computation (under else statement).

int threadsPerBlock = 128;
int blocksPerGrid = (imageSize + threadsPerBlock -1) / threadsPerBlock;

dim3 gridSize(blocksPerGrid, 1);
dim3 threadsSize(threadsPerBlock, 1);

if(USING_CUDA_HOST_ALLOC) // and CUDA streams
{
    int numOfStreams = 2;
    int stackSize = 7;
    int imageSize = 240000;

    int chunkSize = imageSize / numOfStreams;
    OutputDebugStringA(_cudaGetErrorEnum(cudaMemcpyAsync(offsetsDevice, offsetsHost, sizeof(int) * stackSize, cudaMemcpyHostToDevice, streams[0])));// copy 7 integers.

    for(int i = 0; i < numOfStreams; i++)
    {//copy half frame to 1 dim array representing 7 unsigned char images.
        OutputDebugStringA(_cudaGetErrorEnum(cudaMemcpyAsync(devStackImagesCuda + currentnewImageCuda * imageSize + i * chunkSize, hostImage + i * chunkSize, chunkSize, cudaMemcpyHostToDevice, streams[i])));

         kernel<<<gridSize,threadsSize, 0, streams[i]>>>( stackSize, offsetsDevice,  devStackImagesCuda + i * chunkSize, devMedian + i * chunkSize, imageSize, chunkSize,
            offsetMedianRes, currentnewImageCuda);// run kernel (median between frames along time.
    }

    }
    for(int i = 0; i < numOfStreams; i++)
    {//copy results back to host.
        OutputDebugStringA(_cudaGetErrorEnum(cudaMemcpyAsync(hostMedianRes + i * chunkSize, devMedian + i * chunkSize, sizeof(unsigned char) * chunkSize, cudaMemcpyDeviceToHost, streams[i])));
        OutputDebugStringA(_cudaGetErrorEnum(cudaStreamSynchronize(streams[i])));
    }
}
else
{//no streams version.
    OutputDebugStringA(_cudaGetErrorEnum(cudaMemcpy(offsetsDevice, offsetsHost, sizeof(int) * stackSize, cudaMemcpyHostToDevice)));//copy 7 integer values.
    OutputDebugStringA(_cudaGetErrorEnum(cudaMemcpy(devStackImagesCuda + currentnewImageCuda * imageSize, hostImage, imageSize, cudaMemcpyHostToDevice)));//copy image to its correct location on 1 dim array representing 7 images.

    median7Kernel<<<gridSize,threadsSize>>>( stackSize, offsetsDevice, devStackImagesCuda, devMedian, imageSize, imageSize, offsetMedianRes, currentnewImageCuda);

    cudaMemcpy(hostMedianRes, devMedian, sizeof(unsigned char) * imageSize, cudaMemcpyDeviceToHost);//copy result back to host.
}

Why using streams doesn't help me?

share|improve this question
1  
If your kernel computation time is small compared to your data copying time, using streams won't provide much advantage. In the non-streams version, you should measure your data copy time and your kernel computation time, to see if the kernel computation time is long enough to hide any of the data copy time. See this post for an example of timing overall time (kernel + copy) and kernel-only time. –  Robert Crovella Mar 4 '13 at 23:31
    
windows can also interfere with expected timeline behavior, for GPUs operating in WDDM mode. –  Robert Crovella Mar 4 '13 at 23:37

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