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Adaptive resource management in distributed systems.

机译:分布式系统中的自适应资源管理。

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摘要

In this dissertation, we focus on resource management in distributed systems. The essence of resource management is to match the requirements of computing tasks with the available resources. We propose and develop approaches to resource management in three qualitatively different systems: (1) server clusters providing computing-as-a-service, (2) tiered-architecture (of servers) hosting web services, and (3) networks of wireless sensors. These systems differ from each other along multiple dimensions: available resources, system dynamics, workload, etc. Still, a common theme in effective resource management for these systems (as demonstrated in this dissertation) is that we must be cognizant of the system heterogeneity (computing resources as well as workload), and adapt to system dynamics.;Our work improves upon the state-of-the-art in the three systems in the following way. For systems providing computing-as-a-service, we design and implement a service model that provides predictability in job finish times and prioritized service to delay sensitive jobs. We also develop a machine learning based workload characterization technique for web services that categorizes users' request based on their resource usage. Such categorization is useful in improving the accuracy of performance models for these systems. In the context of wireless sensor networks, we make the following two contributions: (1) we design an online algorithm that makes joint compression and transmission decisions to save energy, and (2) we explore techniques for detecting anomalies in data collected using these networks.
机译:本文主要研究分布式系统中的资源管理。资源管理的本质是使计算任务的需求与可用资源相匹配。我们提出并开发了三种在质量上不同的系统中进行资源管理的方法:(1)提供服务即计算的服务器集群;(2)托管Web服务的(服务器的)分层体系结构;以及(3)无线传感器网络。这些系统在多个维度上彼此不同:可用资源,系统动态性,工作负载等。这些系统的有效资源管理中的一个共同主题(如本论文所示)是,我们必须认识到系统的异构性(计算资源和工作负载),并适应系统动态。我们的工作在以下三个方面改进了三个系统的最新技术。对于提供服务即计算的系统,我们设计并实现了一种服务模型,该模型可提供可预测的工作完成时间和优先服务,以延迟敏感工作。我们还为Web服务开发了一种基于机器学习的工作负载表征技术,该技术根据用户的资源使用情况对其进行分类。这种分类对于提高这些系统的性能模型的准确性很有用。在无线传感器网络的背景下,我们做出了以下两点贡献:(1)设计一种在线算法,以制定联合压缩和传输决策以节省能源;(2)我们探索用于检测使用这些网络收集的数据中异常的技术。

著录项

  • 作者

    Sharma, Abhishek Bhan.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:55

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