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Machine-learning-based aggregation of activation prescriptions for scalable computing resource scheduling

机译:基于机器学习的激活处方的聚合,可伸缩计算资源调度

摘要

A multi-layer resource aggregation (RA) stack may generate prescriptive activation timetables for controlling activation states for computing resources. To facilitate operator control and adjustment, the RA stack may, at an aggregation engine layer, aggregate the computing resource into one or more resource aggregates. The computing resources within the resource aggregates may have similar individual activation prescription patterns. Machine learning techniques may be used by the RA stack to identify these related individual activation prescription patterns and aggregate the computing resources accordingly. Once aggregated, the RA stack may make a uniform activation determination for the aggregates as single units. Therefore, the computing resources within the aggregate may be controlled and/or adjust together. Thus, the RA stack increases the scalability of implementation of prescriptive computing resource activation state determinations.
机译:多层资源聚合(RA)堆栈可以生成用于控制用于计算资源的激活状态的规定激活时间表。为了便于操作员控制和调整,RA堆栈可以在聚合引擎层中聚合计算资源到一个或多个资源聚合。资源聚合中的计算资源可以具有类似的单独激活处方模式。 RA堆栈可以使用机器学习技术来识别这些相关的单独激活处方模式并相应地聚合计算资源。一旦聚合,RA堆栈可以对聚合作为单个单元进行统一的激活确定。因此,可以控制聚合内的计算资源和/或一起调整。因此,RA堆栈增加了规范计算资源激活状态确定的实现的可扩展性。

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