A Reinforcement Learning Approach to Online Web System Auto-configuration

نویسندگان

  • Xiangping Bu
  • Jia Rao
  • Cheng-Zhong Xu
چکیده

In a web system, configuration is crucial to the performance and service availability. It is a challenge, not only because of the dynamics of Internet traffic, but also the dynamic virtual machine environment the system tends to be run on. In this paper, we propose a reinforcement learning approach for autonomic configuration and reconfiguration of multi-tier web systems. It is able to adapt performance parameter settings not only to the change of workload, but also to the change of virtual machine configurations. The RL approach is enhanced with an efficient initialization policy to reduce the learning time for online decision. The approach is evaluated using TPCW benchmark on a three-tier website hosted on a Xenbased virtual machine environment. Experiment results demonstrate that the approach can auto-configure the web system dynamically in response to the change in both workload and VM resource. It can drive the system into a near-optimal configuration setting in less than 25 trialand-error iterations.

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تاریخ انتشار 2008