Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am currently developing an application in CUDA and I have some questions regarding to concurrency. The problem is I can not achieve a concurrent execution of two kernels. I have checked the card is capable of doing this and the two kernels are in separate streams. Also, I have checked that there is no other kernel blocking any of the executions. The program look like this:

-MemcpyAsync Host to device.(Stream 1)

-Execution of kernel A. (Stream 1)

-MemcpytoArrayAsync device to device. (Stream 0)(specified Stream 1)

-StreamSynchronize (Stream 2)

-Binding of textures

-Execution of kernel B (Stream 1)

...................................................................

-MemcpyAsync Host to device.(Stream 2)

-Execution of kernel A. (Stream 2)

-MemcpytoArrayAsync device to device. (Stream 0)(specified Stream 2)

-StreamSynchronize (Stream 1)

-Binding of textures

-Execution of kernel B (Stream 2)

...................................................................

-MemcpyAsync Host to device.(Stream 1)

-Execution of kernel A. (Stream 1)

-MemcpytoArrayAsync device to device. (Stream 0)(specified Stream 1)

-StreamSynchronize (Stream 2)

-Binding of textures

-Execution of kernel B (Stream 1)

...................................................................

And so on...

The first MemcpyAsync does execute concurrently with the previous execution of kernel B but when it comes to the execution of kernel A it waits until kernel B is done when the expected result is that it executes just after the MemcpyAsync and along kernel B. This behavior is shown in nvvp 5.0.0 and CUDA 5.0.

Also, as you can see the MemcpyToArrayAsync is in default stream, however that it not what I want. I don't know why although I passed the stream as argument it keeps executing it in the default stream.

Any help is appreciated. Thanks.

share|improve this question
    
Are the resource requirements of each kernel (so threads per block, registers per thread, shared memory per block, local memory per thread) such that at least one block of each kernel could run simultaneously? –  talonmies Jun 18 '13 at 10:29
    
I have tested with less blocks and threads to check if that was the problem and the behavior was the same. –  Lilae Jun 18 '13 at 10:32
    
While that might mean that resource conflicts are not the cause of your problem, it also might not. To be sure, you need to check everything I mentioned. –  talonmies Jun 18 '13 at 10:35
    
Have you taken a look at the concurrentKernels SDK example which demonstrates the use of streams for concurrent execution? –  JackOLantern Jun 18 '13 at 10:37
1  
@Lilae but there seems to be definitively a problem with those device-to-device transfers that happen on stream 0... any operation on stream 0 will force the GPU to synchronize the other streams. I would first concentrate on determining why the device-to-device copy is not working as it should. –  RoBiK Jun 18 '13 at 11:22

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.