使用进化策略改进分布式系统性能的自动调优配置

A. Saboori, Guofei Jiang, Haifeng Chen
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引用次数: 34

摘要

分布式系统通常有许多可配置的参数,比如那些包含在通用配置文件中的参数。分布式系统的性能部分依赖于这些系统配置。虽然操作人员可能会根据自己的经验和直觉选择默认设置或手动调整参数,但结果设置可能不是分布式系统上运行的特定服务的最佳设置。在本文中,我们将自调优配置问题表述为一个黑盒优化问题。由于联合参数搜索空间很大,而且性能和配置之间没有明确的关系,因此这个问题变得非常具有挑战性。我们建议使用一种众所周知的进化算法,称为协方差矩阵自适应(CMA)来自动调整系统参数。我们将CMA算法与另一种称为智能爬坡(SHC)的现有技术进行了比较,并证明CMA算法在合成数据和实际系统中都优于SHC算法。
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Autotuning Configurations in Distributed Systems for Performance Improvements Using Evolutionary Strategies
Distributed systems usually have many configurable parameters such as those included in common configuration files. Performance of distributed systems is partially dependent on these system configurations. While operators may choose default settings or manually tune parameters based on their experience and intuition, the resulted settings may not be the optimal one for specific services running on the distributed system. In this paper, we formulate the problem of autotuning configurations as a black-box optimization problem. This problem becomes quite challenging since the joint parameter search space is huge and also no explicit relationship between performance and configurations exists. We propose to use a well known evolutionary algorithm called covariance matrix adaptation (CMA) to automatically tune system parameters. We compare CMA algorithm to another existing techniques called smart hill climbing (SHC) and demonstrate that CMA algorithm outperforms SHC algorithm both on synthetic data and in a real system.
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