A runtime/memory trade-off of the continous Ziggurat method on GPUs

C. Riesinger, T. Neckel
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Abstract

Pseudo random number generators are intensively used in many computational applications, e.g. the treatment of Uncertainty Quantification problems. For this reason, the optimization of such generators for various hardware architectures is of big interest. We present a runtime/memory trade-off for the popular Ziggurat method with focus on GPUs. Such a trade-off means that the runtime of pseudo random number generation can be reduced by investing more memory and vice versa. Especially GPUs benefit from this approach since it reduces warp divergence which occurs for rejection methods such as the Ziggurat method. To our knowledge, such a trade-off for the Ziggurat method has never been investigated before for GPUs. It is shown that this approach makes the Ziggurat method competitive against well established normal pseudo random number generators on GPUs. Optimal implementations and grid configurations are given for different GPU architectures.
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gpu上连续Ziggurat方法的运行时/内存权衡
伪随机数生成器在许多计算应用中被广泛使用,例如不确定性量化问题的处理。出于这个原因,针对各种硬件架构优化这些生成器是非常有趣的。我们提出了流行的Ziggurat方法的运行时/内存权衡,重点是gpu。这种权衡意味着可以通过投入更多内存来减少伪随机数生成的运行时间,反之亦然。特别是gpu从这种方法中受益,因为它减少了诸如Ziggurat方法等拒绝方法中出现的翘曲发散。据我们所知,这种权衡的Ziggurat方法从未调查过gpu之前。结果表明,这种方法使Ziggurat方法与gpu上成熟的普通伪随机数生成器具有竞争力。针对不同的GPU架构给出了最优实现和网格配置。
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