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首页> 外文期刊>Journal of supercomputing >Heuristic solutions to resource allocation in grid computing: a natural approach
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Heuristic solutions to resource allocation in grid computing: a natural approach

机译:网格计算中资源分配的启发式解决方案:自然的方法

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Grid computing connects heterogeneous resources to achieve the illusion of being a single available entity. Charging for these resources based on demand is often referred to as utility computing, where resource providers lease computing power with varying costs based on processing speed. Consumers using this resource have time and cost constraints associated with each job they submit. Determining the optimal way to divide the job among the available resources with regard to the time and cost constraints is tasked to the Grid Resource Broker (GRB). The GRB must use an optimization algorithm that returns an accurate result in a timely manner. The genetic algorithm and the simulated annealing algorithm can both be used to achieve this goal, although simulated annealing outperforms the genetic algorithm for use by the GRB. Determining optimal values for the variables used in each algorithm is often achieved through trial and error, and success depends upon the solution domain of the problem.
机译:网格计算将异构资源连接起来,以实现成为单个可用实体的幻想。根据需求为这些资源收费通常被称为效用计算,其中资源提供商根据处理速度以不同的成本租用计算能力。使用此资源的消费者在与他们提交的每个工作相关联的时间和成本约束。网格资源代理(GRB)的任务是确定在时间和成本约束方面将工作分配到可用资源中的最佳方法。 GRB必须使用能够及时返回准确结果的优化算法。遗传算法和模拟退火算法均可用于实现此目标,尽管模拟退火优于GRB使用的遗传算法。通常通过反复试验来确定每种算法中使用的变量的最佳值,而成功取决于问题的解决领域。

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