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 have a kernel launched several times, untill a solution is found. the solution will be found by at least one block.
therefore when a block finds the solution it should inform the cpu that the solution is found, so the cpu prints the solution provided by this block.
so what i am currently doing is the following:

__global__ kernel(int sol)
   //do some computations
   if(the block found a solution)
        sol = blockId.x //atomically

now on every call to the kernel i copy sol back to the host memory and check its value. if its set to 3 for example, i know that blockid 3 found the solution so i now know where the index of the solution start, and copy the solution back to the host.
in this case, will using cudaHostAlloc be a better option? more over would copying the value of a single integer on every kernel call slows down my program?

share|improve this question
add comment

1 Answer 1

up vote 1 down vote accepted

Issuing a copy from GPU to CPU and then waiting for its completion will slow your program a bit. Note that if you choose to send 1 byte or 1KB, that won't make much of a difference. In this case bandwidth is not a problem, but latency.

But launching a kernel does consume some time as well. If the "meat" of your algorithm is in the kernel itself I wouldn't spend too much time on that single, small transfer.

Do note, if you choose to use the mapped memory, instead of using cudaMemcpy, you will need to explicitly put a cudaDeviceSynchronise (or cudaThreadSynchronise with older CUDA) barrier (as opposed to an implicit barrier at cudaMemcpy) before reading the status. Otherwise, your host code may go achead reading an old value stored in your pinned memory, before the kernel overwrites it.

share|improve this answer
With CUDA 4.0 it is cudaDeviceSynchronize(), cudaThreadSynchronize() is deprecated. –  harrism Jul 8 '11 at 0:51
OK, fixed. Thanks! –  CygnusX1 Jul 8 '11 at 3:41
@harrism Any idea on what is the difference between cudaDeviceSynchronize() and cudaThreadSynchronize() ? I guess they are intended to do the same thing, but why change the name ? –  Pavan Yalamanchili Aug 4 '11 at 14:43
They do exactly the same thing. The name was changed because originally intended that you would have one host thread per device context, so cudaThreadSynchronize() would be used to synchronize (aka wait for completion of) all CUDA calls from a single host thread. Now a single host thread can control multiple device contexts, so the call cudaDeviceSynchronize() is used to synchronize all CUDA calls to a single device, and cudaThreadSynchronize() is deprecated. –  harrism Aug 4 '11 at 23:04
add comment

Your Answer


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

Not the answer you're looking for? Browse other questions tagged or ask your own question.