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Periodic hierarchical load balancing for large supercomputers

机译:大型超级计算机的周期性分层负载平衡

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Large parallel machines with hundreds of thousands of processors are becoming more prevalent Ensuring good load balance is critical for scaling certain classes of parallel applications on even thousands of processors. Centralized load balancing algorithms suffer from scalability problems, especially on machines with a relatively small amount of memory. Fully distributed load balancing algorithms, on the other hand, tend to take longer to arrive at good solutions. In this paper, we present an automatic dynamic hierarchical load balancing method that overcomes the scalability challenges of centralized schemes and longer running times of traditional distributed schemes. Our solution overcomes these issues by creating multiple levels of load balancing domains which form a tree. This hierarchical method is demonstrated within a measurement-based load balancing framework in Charm++. We discuss techniques to deal with scalability challenges of load balancing at very large scale. We present performance data of the hierarchical load balancing method on up to 16,384 cores of Ranger (at the Texas Advanced Computing Center) and 65,536 cores of Intrepid (the Blue Gene/P at Argonne National Laboratory) for a synthetic benchmark. We also demonstrate the successful deployment of the method in a scientific application, NAMD, with results on Intrepid.
机译:具有数十万个处理器的大型并行机正变得越来越普遍。确保良好的负载平衡对于在数千个处理器上扩展某些类别的并行应用程序至关重要。集中式负载平衡算法存在可伸缩性问题,尤其是在内存量相对较小的计算机上。另一方面,完全分布式的负载平衡算法往往需要更长的时间才能得出好的解决方案。在本文中,我们提出了一种自动动态分层负载平衡方法,该方法克服了集中式方案的可伸缩性挑战以及传统分布式方案的较长运行时间。我们的解决方案通过创建形成一棵树的多个级别的负载均衡域来克服这些问题。在Charm ++中基于度量的负载平衡框架中演示了此分层方法。我们讨论了解决大规模负载平衡的可伸缩性挑战的技术。我们提供了分层负载平衡方法的性能数据,该数据可用于多达16,384个Ranger内核(位于德克萨斯州高级计算中心)和65,536个Intrepid内核(Argonne国家实验室的Blue Gene / P)作为综合基准。我们还展示了该方法在科学应用NAMD中的成功部署,并在Intrepid上取得了成果。

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