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Dynamic Grid Resource Scheduling Model Using Learning Agent

机译:使用学习代理的动态网格资源调度模型

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Grid scheduling is a key problem for grid to improve the resource management and application performance. It has been proven to be a NP-hard problem for the computation of optimal grid schedules, which is responsible to allocate resources to user jobs with the objective such as minimizing the completion time or cost. Therefore, it is more difficult for Grid scheduling system to cope with the dynamically varied resource and jobs. To solve this problem, an adaptive negotiation based scheduling model is presented. The near-optimal schedules are selected by learning agents representing the resource and jobs respectively in grid. The agents can reduce the size of scheduling search space through a modified reinforcement learning algorithm, where the state-value function is improved by a numerical function approximation and the balance of efficiency and complexity is obtained by a simulated annealing algorithm. The results demonstrate that the proposed negotiation model and the learning agents based negotiation model are suitable and effective for grid environments.
机译:网格调度是网格提高资源管理和应用程序性能的关键问题。已被证明是对最佳网格计划计算的NP难题,这负责将资源分配给用户作业,例如最小化完成时间或成本。因此,网格调度系统更困难地应对动态变化的资源和作业。为了解决这个问题,提出了一种基于自适应协商的调度模型。通过学习代理来选择近乎最佳的时间表,该学习代理分别代表网格中的资源和作业。代理可以通过修改的增强学习算法降低调度搜索空间的大小,其中通过数值函数近似提高了状态值函数,并且通过模拟退火算法获得效率和复杂度的余额。结果表明,所提出的谈判模型和基于学习的谈判模型适用于电网环境。

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