Considerations on Distributed Load Balancing for Fully Heterogeneous Machines: Two Particular Cases

Nathanaël Cheriere, Erik Saule
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引用次数: 7

Abstract

When the size of parallel systems increases, centralized algorithms to schedule tasks on the system can induce a significant overhead. This is why decentralized scheduling algorithms have been developed. The most popular one certainly is work-stealing because of its interesting theoretical guarantees. Parallel systems have evolved from homogeneous clusters to fully heterogeneous ones such as GPU-accelerated clusters. We investigate in this paper decentralized scheduling algorithms for heterogeneous systems. The guarantees of work-stealing algorithms no longer hold on such systems because it is an a posteriori algorithm which highly depends on the initial distribution of work. We focus on a priori decentralized scheduling algorithms for heterogeneous systems and we propose two distributed algorithms to balance the load on unrelated machines for two particular cases. The first one exploits a low heterogeneity in the task set and reaches an approximation ratio linear in the number of types of tasks. The second one focuses on the case where the system only uses two different types of machines and we show it is a 2-approximation if the system converges. In the case it does not converge, we study the dynamic equilibrium of the system. In the homogeneous case, we numerically compute the probability density function of the load imbalance and show that the imbalance is low on average. And we show using simulation that the heterogeneous case is similar to the homogeneous case and that the imbalance is low in both cases.
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对完全异构机器的分布式负载平衡的考虑:两种特殊情况
当并行系统的规模增加时,在系统上调度任务的集中式算法可能会导致显著的开销。这就是分散调度算法被开发出来的原因。最流行的一种当然是偷作品,因为它有有趣的理论保证。并行系统已经从同构集群发展到完全异构集群,比如gpu加速集群。本文研究了异构系统的分散调度算法。工作窃取算法的保证不再适用于这样的系统,因为它是一种高度依赖于工作初始分配的后验算法。本文重点研究了异构系统的先验分散调度算法,并针对两种特殊情况提出了两种分布式算法来平衡不相关机器上的负载。第一种方法利用任务集中的低异质性,在任务类型的数量上达到近似线性的比率。第二个集中在系统只使用两种不同类型机器的情况下我们证明如果系统收敛,它是2逼近。在不收敛的情况下,研究系统的动态平衡。在齐次情况下,我们数值计算了负载不平衡的概率密度函数,并表明负载不平衡的平均不平衡程度很低。我们通过模拟表明,异质情况与均匀情况相似,两种情况下的不平衡都很低。
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