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CQPSO scheduling algorithm for heterogeneous multi-core DAG task model

机译:异构多核DAG任务模型CQPSO调度算法

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摘要

Efficient task scheduling is critical to achieve high performance in a heterogeneous multi-core computing environment. The paper focuses on the heterogeneous multi-core directed acyclic graph (DAG) task model and proposes a novel task scheduling method based on an improved chaotic quantum-behaved particle swarm optimization (CQPSO) algorithm. A task priority scheduling list was built. A processor with minimum cumulative earliest finish time (EFT) was acted as the object of the first task assignment. The task precedence relationships were satisfied and the total execution time of all tasks was minimized. The experimental results show that the proposed algorithm has the advantage of optimization abilities, simple and feasible, fast convergence, and can be applied to the task scheduling optimization for other heterogeneous and distributed environment.
机译:高效的任务调度对于在异构多核计算环境中实现高性能至关重要。 该纸张侧重于异构多核定向的非循环图(DAG)任务模型,并提出了一种基于改进的混沌量子表现粒子群优化优化(CQPSO)算法的新型任务调度方法。 构建了任务优先级计划列表。 具有最小累积最早结束时间(EFT)的处理器作为第一个任务分配的对象。 满足任务优先关系,并且所有任务的总执行时间都被最小化。 实验结果表明,该算法具有优化能力,简单可行,快速收敛的优点,可以应用于其他异构和分布式环境的任务调度优化。

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