when is calling to the cudaDeviceSynchronize function really needed?.
As far as I understand from the cuda documentation, cuda kernels are asynchronous, so it seems that we should call cudaDeviceSynchronize after each kernel launch. However, I have tried the same code (training neural networks) with and without any cudaDeviceSynchronize except one before the time measurement. I have found that I get the same result but with a speed up between 7-12x (depending on the matrix sizes).
So the question is if there are any reasons to use cudadevicesynchronize apart of time measurement. For example:
-it is needed before copying data from the gpu back to the host with cudaMemcpy?
-If I do matrix multiplications like
should I put cudadevicesynchronize between both? (from my experiment It seems that I don't)
Why does cudadevicesynchronize slow the program so much?