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I ve written few programs in CUDA C on windows 7. I did the experimentation with the block size. I found that in most of the cases block size of 256 or 512 gives better performance than other. Can any body tell me the exact technical reason behind it? or point out any resource to know. Since other block sizes multiples of 32 (warp) gives less performance. Thanks in advance.

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Try using Cuda occupancy calculator to see what block sizes are best for your kernel. It might be just the kernels you write. Though, based on my experience, blocksize 256 is indeed too often an optimal choice to be just a coincidence, but I haven't found any explanations. – aland Sep 23 '11 at 20:42

Without actual measurements, there's no way to be sure of the optimal block size for a given chip. If you are doing 2D texturing, for example, a 16x4 block happens to work really well. In your case, it's possible that 512 happens to be a multiple of the number of memory partitions in the chip. (On the GeForce 8800 GTX, with 6 memory partitions, 384 was a really good block size for bandwidth-bound kernels).

Occupancy is just one of many considerations that affect performance - more threads isn't always better - for workloads that can use registers (instead of shared memory) to hold intermediate results, blocks that use more registers and fewer threads work best.

Sorry I can't give a more definitive answer, but it is a complicated issue.

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Thanks! You have given a very important clue that is "memory partitions" block size and memory partitions can be correlated in some way. Thanks alot. – user961614 Feb 25 '12 at 14:56

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