利用计算依赖减少大型共享内存系统上的数据移动

Isaac Sánchez Barrera, Miquel Moretó, E. Ayguadé, Jesús Labarta, M. Valero, Marc Casas
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引用次数: 19

摘要

共享内存系统正变得越来越复杂,因为它们通常集成多个存储设备。这会带来不同的访问延迟或带宽速率,这取决于发出内存访问的核心与包含所请求数据的存储设备之间的距离。在这种情况下,管理和减轻非均匀内存访问(NUMA)影响的技术包括迁移线程、内存页面或两者,通常由系统软件应用。我们提出了运行时系统级别的技术,以进一步减轻NUMA对并行应用程序性能的影响。我们利用以任务依赖关系图表示的运行时系统元数据,其中节点是串行代码片段,边缘是它们之间的控制或数据依赖关系,以有效地减少数据传输。我们的方法基于图分区,增加的开销可以忽略不计,并且与部署在288核共享内存系统上的最佳方法相比,能够提供高达1.52倍的性能改进和平均1.12倍的性能改进。我们的方法相对于最先进的技术平均减少了2.28倍的相干流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Data Movement on Large Shared Memory Systems by Exploiting Computation Dependencies
Shared memory systems are becoming increasingly complex as they typically integrate several storage devices. That brings different access latencies or bandwidth rates depending on the proximity between the cores where memory accesses are issued and the storage devices containing the requested data. In this context, techniques to manage and mitigate non-uniform memory access (NUMA) effects consist in migrating threads, memory pages or both and are generally applied by the system software. We propose techniques at the runtime system level to further mitigate the impact of NUMA effects on parallel applications' performance. We leverage runtime system metadata expressed in terms of a task dependency graph, where nodes are pieces of serial code and edges are control or data dependencies between them, to efficiently reduce data transfers. Our approach, based on graph partitioning, adds negligible overhead and is able to provide performance improvements up to 1.52X and average improvements of 1.12X with respect to the best state-of-the-art approach when deployed on a 288-core shared-memory system. Our approach reduces the coherence traffic by 2.28X on average with respect to the state-of-the-art.
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