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I'm developing one CUDA app where kernel has to go to global memory many times. This memory is accessed by all CTAs randomly (no locality, so cannot use shared memory). I need to optimize it. I heard that texture memory can alleviate this problem but can kernel read and write into texture memory? 1D texture memory? 2D texture memory? Also what about CUDA arrays?

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Have a read of the documentation for Surface memory in Section 3 of the CUDA programming guide. –  talonmies Sep 20 '12 at 9:36
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If your memory accesses are really random over a large chunk of memory with no locality, no kind of cache will give you a significant improvement. You either need to find a way to improve the memory access pattern or live with the current low performance. –  tera Sep 20 '12 at 10:45
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I came across this question, and with a bit of search I found this question and this answer to it useful. Basically texture memory is global memory. Texture memory refers to the special caching mechanism that can be associated with global memory reads. So kernel can manipulate global memory bounded to the texture. But as it shows in provided link there's no instruction such as tex1D(ref, x) = 12.0.

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I would reccomend declaring your memory as pitched linear memory and bind the with texture. I have not experiment with the new bindless texture yet. Anyone tried it?

Texture mem as mentioned is read-only through cache. Treat it as a read-only memory. Thus, it is important to note that within the Kernel itself, you do not write to the memory binded to the texture as it may not be updated to the texture cache.

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CUDA Textures are read only. Texture reads are cached. So performance gain is probabilistic.

CUDA Toolkit 3.1 onwards also have writeable textures known as Surfaces, but they are available only for devices with Compute Capability >=2.0. Surfaces are just like textures but the advantage is that they can also be written by the kernel.

Surfaces can only be bound to cudaArray created with flag cudaArraySurfaceLoadStore.

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Can I perform atomic ops on surface memory? –  username_4567 Sep 22 '12 at 21:02
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