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I am trying to adapt the GPU accelerated JPEG encoding/decoding sample (SiGenGPU) by adding the capability to launch several encoding threads. I had to change a lot of code to get this working. Most of the time with two parallel threads I see no problems but when I increase thread count to 3 I start getting cudaErrorUnknown from cudaDeviceSynchronize. If I run 3 single threaded processes GPU Meter gadget shows ~60% GPU usage and plenty RAM so I suppose the error is not lack of resources.

I know this is a long shot but I was hoping this might ring a bell with someone experienced.

Also, I observed an average 28ms encoding speed on a 1920x1080 image in a single thread. When I increase the thread count to two, the average speed climbs to 33ms. Does this mean running parallel tasks on a GPU from multiple threads is not a good idea? Or are there special considerations when working with the GPU from multiple threads of the single process?

My video card is GeForce GTX 560M and I am using the latest driver.

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some of the device flags may affect the behavior of cudaDeviceSynchronize in a multi-threaded scenario. Have you set these flags any particular way or are you using defaults? Also, have you made any changes to compute mode or are you using default there? Is this windows or linux, and which thread engine are you using? –  Robert Crovella Nov 18 '12 at 21:09
I am using defaults. Do you have any suggestions? Thanks! –  wpfwannabe Nov 18 '12 at 21:15
cudaDeviceSynchronize() can return an error if one of the preceding tasks issued to the device (e.g. kernel calls, data copies, etc.) has returned an error. Are you doing error checking on all cuda calls? This may be important to help localize the error that you are seeing in cudaDeviceSynchronize() to a particular area of your application. –  Robert Crovella Nov 21 '12 at 3:32

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