基于硬件性能指标的多层网站容量在线测量

J. Rao, Chengzhong Xu
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引用次数: 30

摘要

了解服务器容量对于系统容量规划、配置和qos感知资源管理至关重要。传统的压力测试方法根据响应时间和吞吐量等应用程序级性能指标来测量服务器容量。它们在测量精度和及时性方面受到限制。在多层网站中,随着客户端访问模式的改变,资源瓶颈常常在层与层之间转移。这使得容量测量更具挑战性。本文提出了一种基于硬件性能指标的测量方法。该方法使用机器学习技术来推断每一层的应用程序级性能。在各个层模型上引入一个协调的预测器,以估计系统范围的性能,并在系统过载时识别瓶颈。实验结果表明,对于先验已知的输入交通模式,该方法能够实现超过90%的过载预测准确率,即使对于频繁发生瓶颈转移的交通,该方法也能够实现超过85%的过载预测准确率。数据收集的运行时开销小于0.5%,每个在线决策的开销不超过50 ms。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Measurement of the Capacity of Multi-Tier Websites Using Hardware Performance Counters
Understanding server capacity is crucial for system capacity planning, configuration, and QoS-aware resource management. Conventional stress testing approaches measure the server capacity in terms of application-level performance metrics like response time and throughput. They are limited in measurement accuracy and timeliness. In a multitier website, resource bottleneck often shifts between tiers as client access pattern changes. This makes the capacity measurement even more challenging. This paper presents a measurement approach based on hardware performance counter metrics. The approach uses machine learning techniques to infer application-level performance at each tier. A coordinated predictor is induced over individual tier models to estimate system-wide performance and identify the bottleneck when the system becomes overloaded. Experimental results demonstrate that this approach is able to achieve an overload prediction accuracy of higher than 90% for a priori known input traffic patterns and over 85% accuracy even for traffic causing frequent bottleneck shifting. It costs less than 0.5% runtime overhead for data collection and no more than 50 ms for each on-line decision.
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