基于Hopfield神经网络的组合近似算法构建资源有界调度程序

J. Gallone, F. Charpillet
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引用次数: 6

摘要

在以前的工作中(j.m。Gallone和F. Charpillet, 1996),我们研究了Hopfield人工神经网络模型及其用于解决特定调度问题的应用:具有释放时间、截止日期和计算时间的非抢占任务被调度到几个统一的机器上。我们提出了一种基于Hopfield网络的迭代方法,使资源有界推理成为可能。我们已经在大量随机生成的示例上验证了我们的方法。当不存在时间约束时,结果优于有效的调度启发式,并且当应用程序施加时间约束时,我们的系统能够适应其行为。我们通过研究处理时间和成功率的两种近似的发生率来扩展这项工作,从而确定合同的哪种激活顺序可能会获得最佳成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Composing approximated algorithms based on Hopfield neural network for building a resource-bounded scheduler
In previous work (J.-M. Gallone and F. Charpillet, 1996), we have studied the Hopfield artificial neural network model and its use for solving a particular scheduling problem: non preemptive tasks with release times, deadlines and computation times to be scheduled on several uniform machines. We presented an iterative approach based on Hopfield networks which enables resource bounded reasoning. We have validated our approach on a great number of randomly generated examples. Results are better than an efficient scheduling heuristics when no timing constraint exists and our system is able to adapt its behavior when timing constraints are imposed by the application. We extend this work by studying the incidence of two kinds of approximations on the processing time and on the success rate, so as to decide what sequence of activations for the contract will be likely to give the best success rate.
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