An approach for scalable parallel execution of ant algorithms

F. Cicirelli, Agostino Forestiero, Andrea Giordano, C. Mastroianni
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引用次数: 4

Abstract

This paper presents an approach for the efficient parallel/distributed execution of ant algorithms, based on multi-agent systems. A very popular clustering problem, i.e., the spatially sorting of items belonging to a number of predefined classes, is taken as a use case. The approach consists in partitioning the problem space to a number of parallel nodes. Data consistency and conflict issues, which may arise when multiple agents concurrently access shared data, are transparently handled using a purposely developed notion of logical time. The developer remains in charge only of defining the behavior of the agents modeling the ants, without coping with issues related to parallel/distributed programming and performance optimization. Experimental results show that the approach is scalable and can be adopted to speed up the ant algorithm execution when the problem size is large, as may be in the case of massive data analysis and clustering.
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蚁群算法的可扩展并行执行方法
本文提出了一种基于多智能体系统的高效并行/分布式蚂蚁算法执行方法。一个非常流行的聚类问题,即属于许多预定义类的项目的空间排序,被作为一个用例。该方法包括将问题空间划分为许多并行节点。当多个代理并发访问共享数据时,可能会出现数据一致性和冲突问题,使用专门开发的逻辑时间概念来透明地处理这些问题。开发人员仍然只负责定义代理对蚂蚁建模的行为,而不处理与并行/分布式编程和性能优化相关的问题。实验结果表明,该方法具有可扩展性,当问题规模较大时,如在海量数据分析和聚类的情况下,可以采用该方法加快蚂蚁算法的执行速度。
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