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Fast Autotuning Configurations of Parameters in Distributed Computing Systems Using Ordinal Optimization

机译:使用序数优化的分布式计算系统中的参数的快速自动配置配置

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Conventional autotuning configuration of parameters in distributed computing systems using evolutionary strategies increases integrated performance notably, though at the expense of consuming too much measurement time. An ordinal optimization (OO) based strategy is proposed in this work, combined with neural networks to improve system performance and reduce measurement time, which is fast enough to autotune configurations for distributed computing applications. The method is compared with a well known evolutionary algorithm called Covariance Matrix Algorithm (CMA). Experiments are carried out using high dimensional rastrigin functions, which show that OO can reduce one to two orders of magnitude of simulation time while at the cost of an acceptable scope of optimization performance. We also carried out experiments using a real application system with three-tier web servers. Experimental results show that OO can reduce 40% testing time on average at a reasonable and slight cost of optimization performance.
机译:使用进化策略的分布式计算系统中参数的传统自动传统配置显着提高了集成性能,但牺牲了太多的测量时间。在这项工作中提出了一个基于序数优化(OO)的策略,结合神经网络来提高系统性能并降低测量时间,这足以让自动调谐配置用于分布式计算应用程序。将该方法与称为协方差矩阵算法(CMA)的众所以为已知的进化算法进行比较。使用高维拉斯特菌素函数进行实验,表明OO可以减少一到两个模拟时间级数,而在可接受的优化性能范围内。我们还使用具有三层Web服务器的实际应用系统进行实验。实验结果表明,OO可以平均降低40%的测试时间,以合理和略微的优化性能。

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