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If I run the same kernel with the same input several times, like this

#define N 2000
for(int i = 0; i < 2000; i++) {

what happens? I timed it and played around with N: halving N (to 1000), halved the time it took.

Yet I'm bit cautious to belive that it just runs the kernel 2000 times because the speed up from the non-CUDA code is so dramatic (~900 sec to ~0.9 sec). So what kind of optimization does CUDA do in this case? Caching the results?

Setting CUDA_LAUNCH_BLOCKING=1 didn't change nothing.

mykernel replaces an inner loop in the non-CUDA code.

Hardware is GeForce GTX 260

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You need to put cudaThreadSynchronize(); before taking the time. You need not put it in the loop, but once outside the loop before taking the time would be good enough. –  Pavan Yalamanchili May 11 '11 at 18:45
Even better: Use CUDA events for timing: stackoverflow.com/questions/5801717 –  LumpN May 13 '11 at 11:16

2 Answers 2

It's believable. I've had a kernel that was a 1600x improvement over optimized CPU code. I don't think there's actual caching of results.

Note that the first time you spin up CUDA, the timings can vary a bit. Thus, doing 1 kernel run may not be exactly 1/1000 the time for 1000 kernel runs. For large numbers, it's linear like you observed.

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CUDA doesn't do any optimization of any kind, or any caching of the results. If you launch 2000 kernels, it runs 2000 kernels.

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