Automated analysis of performance and energy consumption for cloud applications

Feifei Chen, J. Grundy, Jean-Guy Schneider, Yun Yang, Qiang He
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引用次数: 35

Abstract

In cloud environments, IT solutions are delivered to users via shared infrastructure. One consequence of this model is that large cloud data centres consume large amounts of energy and produce significant carbon footprints. A key objective of cloud providers is thus to develop resource provisioning and management solutions at minimum energy consumption while still guaranteeing Service Level Agreements (SLAs). However, a thorough understanding of both system performance and energy consumption patterns in complex cloud systems is imperative to achieve a balance of energy efficiency and acceptable performance. In this paper, we present StressCloud, a performance and energy consumption analysis tool for cloud systems. StressCloud can automatically generate load tests and profile system performance and energy consumption data. Using StressCloud, we have conducted extensive experiments to profile and analyse system performance and energy consumption with different types and mixes of runtime tasks. We collected fine-grained energy consumption and performance data with different resource allocation strategies, system configurations and workloads. The experimental results show the correlation coefficients of energy consumption, system resource allocation strategies and workload, as well as the performance of the cloud applications. Our results can be used to guide the design and deployment of cloud applications to balance energy and performance requirements.
自动分析云应用程序的性能和能耗
在云环境中,IT解决方案通过共享基础设施交付给用户。这种模式的一个后果是,大型云数据中心消耗大量能源,产生大量碳足迹。因此,云提供商的一个关键目标是以最小的能耗开发资源供应和管理解决方案,同时仍然保证服务水平协议(sla)。然而,全面了解复杂云系统中的系统性能和能耗模式对于实现能源效率和可接受性能之间的平衡至关重要。在本文中,我们介绍了StressCloud,一个云系统的性能和能耗分析工具。StressCloud可以自动生成负载测试和配置系统性能和能耗数据。使用StressCloud,我们进行了广泛的实验,以描述和分析不同类型和混合运行时任务的系统性能和能耗。我们收集了不同资源分配策略、系统配置和工作负载下的细粒度能耗和性能数据。实验结果显示了能源消耗、系统资源分配策略和工作负载以及云应用性能的相关系数。我们的结果可用于指导云应用程序的设计和部署,以平衡能源和性能需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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