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3

Vendors don't seem to make there hardware interfaces public and allow just anyone to make drivers. Drivers are the software that actually talk to the hardware. Usually drivers are written by the GPU manufacturers. However AMD is strongly shifting into a completely open GPU ecosystem. For some years now AMD did publish detailed programming documentation (...


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If you want to measure the speed of a particular operation by timing the whole kernel running time, you need to make that operation a major proportion of the kernel running. In your above kernel code, there are two issues. Each thread will only do the operation you want to measure once, but at the same time it will access the global memory 3 times, which ...


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Judging from the error, tensorflow OOM'ed trying to allocate a [10000, 23000]-sized tensor. Given that 10,000 happens to be the number of examples usually in the MNIST test set, I'm going to assume that you have some evaluation code that attempts to evaluate the whole test set at once. For just the activations you'd need 10000 * (784 + n + 10) ~= 1GB, which ...


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I'm one of the rendering software architects at a large VFX and animated feature studio with a proprietary renderer (not Pixar, though I was once the rendering software architect there as well, long, long ago). Almost all high-quality rendering for film (at all the big studios, with all the major renderers) is CPU only. There are a bunch of reasons why this ...


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Yes. The last CUDA version to support sm_10 was CUDA 6.0. CUDA 6.5 shipped with the PTX ISA 4.1 document, and information covering sm_10 instruction support was dropped from that document. However CUDA 6.5 still supported sm_11, sm_12, and sm_13, and descriptions of supported instructions in those architectures is still included in the PTX ISA 4.1 ...


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The GPU threads do not work in that way. Multiple global memory read from a single thread will never be combined. However multiple global memory reads from different threads may be combined if they are launched at the same time, and the locations they are reading are within 128 bytes. This happens in a warp (a group of threads that always execute the same ...


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It looks like pycuda introduces some additional overhead the first time you call the cumath.sin() function (~400ms on my system). I suspect this is due to the need to compile CUDA code for the function being called. More importantly, this overhead is independent of the size of the array being passed to the function. Additional calls to cumath.sin() are much ...



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