I currently have CUDA code that is performing around 3-4x slower than CPU code.
I removed all extraneous CPU/GPU transfers so that most of the computation is being done on the GPU, and only the final result is transferred back to CPU memory.
To speed this up more, I did a bit of reading and figured out that since the GPU memory bus is much slower, accessing GPU device memory is also slow. And, since my computation uses large arrays--and hence many memory accesses--that's slowing things down even when I set
threadsPerBlock to the max of 1024.
I guess the only option I have now is to copy blocks of data into the MP shared memory operated by each individual block and do my computation on that memory.
I want to know how I can copy a chunk of memory in burst mode into the shared memory most efficiently. Should I do it by copying on the starting thread index in each warp?
Any solutions with relevant code or functions for accomplishing this will be greatly appreciated!