Stochastic Greedy-Based Particle Swarm Optimization for Workflow Application in Grid

Ruey-Maw Chen, Yin-mou Shen
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Abstract

The workflow application is a common grid application. The objective of a workflow application is to complete all the tasks within the shortest time, i.e., minimal makespan. A job scheduler with a high-efficient scheduling algorithm is required to solve workflow scheduling based on grid information. Scheduling problems are NP-complete problems, which have been well solved by metaheuristic algorithms. To attain effective solutions to workflow application, an algorithm named the stochastic greedy PSO (SGPSO) is proposed to solve workflow scheduling; a new velocity update rule based on stochastic greedy is suggested. Restated, a stochastic greedy-driven search guidance is provided to particles. Meanwhile, a stochastic greedy probability (SGP) parameter is designed to help control whether the search behavior of particles is exploitation or exploration to improve search efficiency. The advantages of the proposed scheme are retaining exploration capa- bility during a search, reducing complexity and computation time, and easy to implement. Retaining exploration capability during a search prevents particles from getting trapped on local optimums. Additionally, the diversity of the proposed SGPSO is verified and analyzed. The experimental results demonstrate that the SGPSO proposed can effectively solve workflow class problems encountered in the grid environment.
基于随机贪婪的粒子群优化在网格中工作流中的应用
工作流应用程序是一个常见的网格应用程序。工作流应用程序的目标是在最短的时间内完成所有任务,即最小的makespan。为了解决基于网格信息的工作流调度问题,需要一种具有高效调度算法的作业调度程序。调度问题是np完全问题,已被元启发式算法很好地解决了。为了有效地解决工作流应用问题,提出了一种随机贪婪粒子群算法(SGPSO)来解决工作流调度问题;提出了一种新的基于随机贪心的速度更新规则。重申,为粒子提供了随机贪婪驱动的搜索导向。同时,设计了一个随机贪婪概率(SGP)参数来控制粒子的搜索行为是开发还是探索,以提高搜索效率。该方案的优点是在搜索过程中保留了搜索能力,降低了计算复杂度和计算时间,易于实现。在搜索过程中保留探索能力可以防止粒子被困在局部最优上。此外,对所提出的SGPSO的多样性进行了验证和分析。实验结果表明,该算法能够有效地解决网格环境下的工作流类问题。
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