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I'm wondering what the overhead of performing a cuda kernel call is in C/C++ such as the following:

somekernel1<<<blocks,threads>>>(args);
somekernel2<<<blocks,threads>>>(args);
somekernel3<<<blocks,threads>>>(args);

The reason why I am asking this is because the application I am building currently makes repeated calls into several kernels (without memory being re-read/written to the device between calls) and I'm wondering if wrapping these kernel calls into a single kernel call (with somekernel1-3 becoming device functions) would make any meaningful difference in performance.

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2 Answers 2

up vote 8 down vote accepted

The host side overhead of a kernel launch uaing the runtime API is only about 15-30 microseconds on non-WDDM Windows platforms. On WDDM platforms (which I don't use), I understand it can be much, much higher, plus there is some sort of batching mechanism in the driver which tries to amortise the cost by doing multiple operations in a single driver side operation.

Generally, there will be a performance increase in "fusing" multiple data operations which would otherwise be done in separate kernels into a single kernel, where the algorithms allow it. The GPU has much higher arithmetic peak performance than peak memory bandwidth, so the more FLOPs which can be executed per memory transaction (and per kernel "setup code"), the better the performance of the kernel will be. On the other hand, trying to write a "swiss army knife" style kernel which tries to cram completely disparate operations into a single piece of code is never a particularly good idea, because it increases register pressure and reduce the efficiency of things like L1, constant memory and texture caches.

Which way you choose to go should really be guided by the nature of the code/algorithms. I don't believe there is a single "correct" answer to this question that can be applied in all circumstances.

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The swiss army knife approach is something i am trying to avoid doing to maintain sharing of these kernel's between projects. Thanks for the response, I just wanted to make sure that there was not some crazy performance issue that i was not aware of when making multiple cuda calls. –  NothingMore Feb 19 '12 at 13:43
1  
Note: on WDDM, if you are using a Tesla GPU, you can use the Tesla Compute Cluster (TCC) driver to bring the performance into line with non-WDDM platforms such as XP or Linux. To the original question, I would emphasize: if combining kernels helps reduce PCI-express transfers required, it may be worth it. If not, then at least make sure you overlap computation of Kernel1 with transfers to the GPU of data for Kernel2, etc. –  harrism Feb 20 '12 at 2:22
    
talonmies what non-WDDM Windows platforms are you talking about? winXP ? Im very interested since WDDM penalty is HUGE and I can't siwtch to Linux. CUrrently using win7 x64 and would need a x64 platform (RAM issues) –  Dredok Mar 10 '13 at 22:29

If you are using Visual Studio Pro on Windows I sugest you run a test application using NVidia's Parallel NSight, I think it can tell you the time stamps from the method call to the real execution, in any case a penalty is inherent, but it will be negligible if your kernels lasts long enought.

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I am not running on windows (RHEL 6.0, Tesla C2075). –  NothingMore Feb 19 '12 at 13:36

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