gpu的带宽优化随机洗牌

Pub Date : 2021-06-11 DOI:10.1145/3505287
Rory Mitchell, Daniel Stokes, E. Frank, G. Holmes
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引用次数: 3

摘要

传统上用于在cpu上对数据进行洗刷的线性时间算法,如Fisher-Yates方法,由于固有的顺序依赖性,不太适合在GPU上实现,现有的并行洗刷算法不适合GPU架构,因为它们会对高延迟的全局内存产生大量的读/写操作。为了解决这个问题,我们提供了一种通过将合适的伪随机双射函数与流压缩操作融合来并行生成伪随机排列的方法。我们的算法,称为“双目标洗牌”,用增加的每线程算术运算来换取减少的全局内存事务。它工作效率高,具有确定性,并且每次洗牌输入只需要一次全局内存读写,从而最大限度地利用全局内存带宽。为了从经验上证明该算法的正确性,我们开发了一个基于核空间嵌入的伪随机排列质量的统计测试。实验结果表明,双目标洗牌算法在gpu上优于竞争算法,表现出一到两个数量级的改进,并且接近峰值设备带宽。
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Bandwidth-Optimal Random Shuffling for GPUs
Linear-time algorithms that are traditionally used to shuffle data on CPUs, such as the method of Fisher-Yates, are not well suited to implementation on GPUs due to inherent sequential dependencies, and existing parallel shuffling algorithms are unsuitable for GPU architectures because they incur a large number of read/write operations to high latency global memory. To address this, we provide a method of generating pseudo-random permutations in parallel by fusing suitable pseudo-random bijective functions with stream compaction operations. Our algorithm, termed “bijective shuffle” trades increased per-thread arithmetic operations for reduced global memory transactions. It is work-efficient, deterministic, and only requires a single global memory read and write per shuffle input, thus maximising use of global memory bandwidth. To empirically demonstrate the correctness of the algorithm, we develop a statistical test for the quality of pseudo-random permutations based on kernel space embeddings. Experimental results show that the bijective shuffle algorithm outperforms competing algorithms on GPUs, showing improvements of between one and two orders of magnitude and approaching peak device bandwidth.
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