高性能多核信念传播的消息调度

Mark Van der Merwe, Vinu Joseph, Ganesh Gopalakrishnan
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引用次数: 3

摘要

信念传播(BP)是一种基于概率图模型(PGMs)的近似推理的消息传递算法,在计算机视觉、纠错码和蛋白质折叠等领域有许多应用。然而,该算法的收敛性和速度限制了其在复杂推理问题上的实际应用。多核图形处理单元(gpu)作为一种高度并行化的算法,可以显著提高BP的性能。通过多核系统改进BP是非常重要的:算法中的消息调度对性能有很大影响。本文研究了基于gpu的BP消息调度。我们证明了BP在基于并行性的速度和收敛性之间进行了权衡,并表明现有的消息调度无法利用这种权衡。为此,我们提出了一种新的随机消息调度方法,随机BP (random BP, RnBP),该方法在GPU上优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Message Scheduling for Performant, Many-Core Belief Propagation
Belief Propagation (BP) is a message-passing algorithm for approximate inference over Probabilistic Graphical Models (PGMs), finding many applications such as computer vision, error-correcting codes, and protein-folding. While general, the convergence and speed of the algorithm has limited its practical use on difficult inference problems. As an algorithm that is highly amenable to parallelization, many-core Graphical Processing Units (GPUs) could significantly improve BP performance. Improving BP through many-core systems is non-trivial: the scheduling of messages in the algorithm strongly affects performance. We present a study of message scheduling for BP on GPUs. We demonstrate that BP exhibits a tradeoff between speed and convergence based on parallelism and show that existing message schedulings are not able to utilize this tradeoff. To this end, we present a novel randomized message scheduling approach, Randomized BP (RnBP), which outperforms existing methods on the GPU.
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