Evaluation of multiobjective swarm algorithms for grid scheduling

María Arsuaga-Ríos, M. A. Vega-Rodríguez, F. Castrillo
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引用次数: 4

Abstract

Often, solutions to complex problems are found in nature. Swarm algorithms are capable of solving such complex problems by implementing patterns from nature. This patterns are found in a variety of scientific fields. In this paper, we discuss two swarm algorithms extracted from Biology and Physics, namely: Multiobjective Artificial Bee Colony (MOABC) and Multiobjective Gravitational Search Algorithm (MOGSA). The first one is based on bees behavior and the other follows the gravity between masses. These algorithms are implemented to solve the grid scheduling problem. Optimization of job scheduling is one of the most challenging tasks in Grid environments because it severely affects the execution time of an experiment (set of jobs). Experiments often are tied up to fulfill deadlines and budgets. One of the main contributions of this work is adding multiobjective processes to these swarm algorithms to minimize those conflictive objectives. Results show that MOABC clearly improves the MOGSA approach when solving the problem. MOABC is also compared with real grid meta-schedulers as Deadline Budget Constraint (DBC) and Workload Management System (WMS) by using the simulator GridSim to prove the improvement that offers this new algorithm.
网格调度的多目标群算法评价
通常,复杂问题的解决方案可以在自然界中找到。群算法能够通过实现自然界的模式来解决这样复杂的问题。这种模式在许多科学领域都有发现。本文讨论了从生物学和物理学中提取的两种群体算法,即多目标人工蜂群算法(MOABC)和多目标引力搜索算法(MOGSA)。第一个是基于蜜蜂的行为,另一个是根据质量之间的重力。这些算法是为了解决网格调度问题而实现的。作业调度的优化是网格环境中最具挑战性的任务之一,因为它严重影响一个实验(一组作业)的执行时间。实验通常是为了完成最后期限和预算。这项工作的主要贡献之一是将多目标过程添加到这些群算法中,以最小化这些冲突目标。结果表明,MOABC在解决问题时明显改进了MOGSA方法。利用GridSim仿真器将MOABC算法与实际的网格元调度程序(Deadline Budget Constraint, DBC)和工作量管理系统(Workload Management System, WMS)进行了比较,证明了该算法的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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