具有年龄相关延迟统计的异构分布式计算系统的最优任务再分配

J. Pezoa, M. Hayat, Zhuoyao Wang, S. Dhakal
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引用次数: 5

摘要

本文提出了异构分布式计算系统中任务优化再分配的一般框架,并给出了工作负载随机执行时间的严格分析模型。该模型考虑了任务服务和传输时间、服务器故障时间的异质性和随机性,以及任意的任务再分配策略。假设随机服务、传输和故障时间具有一般的年龄依赖(非指数)分布,从而产生具有非马尔可夫动力学的串联分布式排队系统。在分析中引入了辅助年龄变量,以捕获与非马尔可夫随机时间相关的记忆,从而使工作负载执行时间统计的再生年龄相关分析表征成为可能。该模型用于设计优化三个指标的任务重新分配策略:工作负载的平均执行时间、在规定期限内执行工作负载的服务质量以及执行工作负载的可靠性。本文还研究了非指数事件时间对这些指标的影响。关键结果在分布式计算试验台上进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Task Reallocation in Heterogeneous Distributed Computing Systems with Age-Dependent Delay Statistics
This paper presents a general framework for optimal task reallocation in heterogeneous distributed-computing systems and offers a rigorous analytical model for the stochastic execution time of a workload. The model takes into account the heterogeneity and stochastic nature of the tasks' service and transfer times, servers' failure times, as well as an arbitrary task-reallocation policy. The stochastic service, transfer and failure times are assumed to have general, age-dependent (non-exponential) distributions, resulting in a tandem distributed queuing system with non-Markovian dynamics. Auxiliary age variables are introduced in the analysis to capture the memory associated with the non-Markovian stochastic times, thereby enabling a regenerative age-dependent analytical characterization of the statistics of the execution time of a workload. The model is utilized to devise task reallocation policies that optimize three metrics: the average execution time of a workload, the quality-of-service in executing a workload by a prescribed deadline and the reliability in executing a workload. Implications of the non-exponential event times on these metrics are also studied. Key results are verified experimentally on a distributed-computing testbed.
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