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GPSO: An improved search algorithm for resource allocation in cloud databases

机译:GPSO:一种改进的搜索算法,用于云数据库中的资源分配

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The Virtual Design Advisor (VDA) has addressed the problem of optimizing the performance of Database Management System (DBMS) instances running on virtual machines that share a common physical machine pool. In this work, the search algorithm in the optimization module of the VDA is improved. The particle swarm optimization (PSO) heuristic is used as a controller of the greedy heuristic algorithm to reduce trapping into local optima. Our proposed algorithm, called Greedy Particle Swarm Optimization (GPSO), was evaluated using prototype experiments on TPC-H benchmark queries against PostgreSQL instances in Xen virtualization environment. Our results show that the GPSO algorithm required more computation but in many test cases have succeeded to escape local optima and reduced the cost as compared to the greedy algorithm alone.
机译:虚拟设计顾问(VDA)解决了优化在共享公共物理机池的虚拟机上运行的数据库管理系统(DBMS)实例的性能问题。在这项工作中,改进了VDA优化模块中的搜索算法。粒子群优化(PSO)启发式算法被用作贪婪启发式算法的控制器,以减少陷入局部最优的陷阱。我们使用Xen虚拟化环境中针对PostgreSQL实例的TPC-H基准查询的原型实验,对我们提出的算法(称为贪婪粒子群优化(GPSO))进行了评估。我们的结果表明,与单独的贪婪算法相比,GPSO算法需要更多的计算,但在许多测试案例中已成功摆脱了局部最优,并降低了成本。

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