SigLM:用于云计算基础设施的签名驱动负载管理

Zhenhuan Gong, P. Ramaswamy, Xiaohui Gu, Xiaosong Ma
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引用次数: 20

摘要

云计算已经成为一个很有前途的平台,它允许用户直接共享访问计算资源和服务,而不必担心内部复杂的基础设施。与传统的批处理服务模型不同,云服务模型采用现收现付的形式,需要明确而精确的资源控制。在本文中,我们提出了SigLM,一种新的签名驱动的负载管理系统,用于在共享云计算基础设施中实现质量感知服务交付。SigLM使用时间序列模式动态捕获不同应用程序任务和云节点的细粒度签名,并根据提取的签名执行精确的资源计量和分配。SigLM采用动态时间翘曲算法和多维时间序列索引来实现高效的签名模式匹配。我们使用PlanetLab上收集的真实负载跟踪进行的实验表明,与现有方法相比,SigLM可以将资源配置性能提高30-80%。SigLM具有可扩展性和高效率,对系统的开销小于1%,可以在几十毫秒内完成签名匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SigLM: Signature-driven load management for cloud computing infrastructures
Cloud computing has emerged as a promising platform that grants users with direct yet shared access to computing resources and services without worrying about the internal complex infrastructure. Unlike traditional batch service model, cloud service model adopts a pay-as-you-go form, which demands explicit and precise resource control. In this paper, we present SigLM, a novel Signature-driven Load Management system to achieve quality-aware service delivery in shared cloud computing infrastructures. SigLM dynamically captures fine-grained signatures of different application tasks and cloud nodes using time series patterns, and performs precise resource metering and allocation based on the extracted signatures. SigLM employs dynamic time warping algorithm and multi-dimensional time series indexing to achieve efficient signature pattern matching. Our experiments using real load traces collected on the PlanetLab show that SigLM can improve resource provisioning performance by 30–80% compared to existing approaches. SigLM is scalable and efficient, which imposes less than 1% overhead to the system and can perform signature matching within tens of milliseconds.
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