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Multi-objective Big Data Optimization with jMetal and Spark

机译:使用jMetal和Spark进行多目标大数据优化

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Big Data Optimization is the term used to refer to optimization problems which have to manage very large amounts of data. In this paper, we focus on the parallelization of metaheuristics with the Apache Spark cluster computing system for solving multi-objective Big Data Optimization problems. Our purpose is to study the influence of accessing data stored in the Hadoop File System (HDFS) in each evaluation step of a metaheuristic and to provide a software tool to solve these kinds of problems. This tool combines the jMetal multi-objective optimization framework with Apache Spark. We have carried out experiments to measure the performance of the proposed parallel infrastructure in an environment based on virtual machines in a local cluster comprising up to 100 cores. We obtained interesting results for computational effort and propose guidelines to face multi-objective Big Data Optimization problems.
机译:大数据优化是用于指代必须管理大量数据的优化问题的术语。在本文中,我们专注于元启发式算法与Apache Spark集群计算系统的并行化,以解决多目标大数据优化问题。我们的目的是研究在元启发式方法的每个评估步骤中访问存储在Hadoop文件系统(HDFS)中的数据的影响,并提供解决此类问题的软件工具。该工具将jMetal多目标优化框架与Apache Spark结合在一起。我们已经进行了实验,以在包含多达100个内核的本地集群中基于虚拟机的环境中,对建议的并行基础架构的性能进行测量。我们获得了有趣的计算成果,并提出了应对多目标大数据优化问题的指南。

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