宽度优先搜索的启发式跨架构组合设计

Yang You, David A. Bader, M. Dehnavi
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引用次数: 12

摘要

广度优先搜索(BFS)广泛应用于计算生物学、社交网络和电子设计自动化等实际应用中。最有效的BFS方法已被证明是自上而下和自下而上方法的结合。这种混合技术需要确定一个切换点,而这个切换点通常是通过昂贵的试错和详尽的搜索例程找到的。我们提出了一种基于回归分析的自适应方法,可以在运行时以很小的开销实现动态切换。我们通过利用流行的异构平台来提高方法的性能,并有效地为给定的体系结构设计方法。在gpu的标准自顶向下方法上实现了155倍的加速。我们的方法是第一个在不同的体系结构中结合自顶向下和自底向上的方法。与单一体系结构上的组合不同,错误的切换点可能会显著降低跨体系结构组合的性能。我们的自适应方法可以高精度地预测切换点,与最差切换点相比,速度提高了695倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing a Heuristic Cross-Architecture Combination for Breadth-First Search
Breadth-First Search (BFS) is widely used in real-world applications including computational biology, social networks, and electronic design automation. The most effective BFS approach has been shown to be a combination of top-down and bottom-up approaches. Such hybrid techniques need to identify a switching point which is conventionally found through expensive trial-and-error and exhaustive search routines. We present an adaptive method based on regression analysis that enables dynamic switching at runtime with little overhead. We improve the performance of our method by exploiting popular heterogeneous platforms and efficiently design the approach for a given architecture. An 155x speedup is achieved over the standard top-down approach on GPUs. Our approach is the first to combine top-down and bottom-up across different architectures. Unlike combination on a single architecture, a mistuned switching point may significantly decrease the performance of cross-architecture combination. Our adaptive method can predict the switching point with high accuracy, leading to an 695x speedup compared the worst switching point.
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