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Workload forecasting based elastic resource management in edge cloud

机译:边缘云中基于工作量预测的弹性资源管理

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Cloud services are provided at the edge of the network so that data from users can be processed and calculated at the edges. The user's irregular access triggers the fluctuations of the edge cloud workload. Therefore, an elastic resource management method based on workload forecasting in edge clouds is proposed in this paper. When the resource demand is large, more resources are requested from the cloud service provider so that the task can be completed before the deadline. When the resource demand is small, the idle resource is released to meet the cost constraint. The resource demand is judged based on the workload forecasting. In order to improve the accuracy of workload forecasting, a workload forecasting model based on error correction is proposed in this paper. Neither overload nor the light-load status of edge cloud nodes can make full use of the resources. To improve the node processing performance and reduce migration times, a workload migration model for minimizing migration times is proposed in this paper. The experimental results show that the proposed methods can effectively forecast the workload and improve the processing performance of the entire cluster.
机译:在网络边缘提供云服务,以便可以在边缘处理和计算来自用户的数据。用户的不规则访问会触发边缘云工作负载的波动。因此,本文提出了一种基于边缘云工作量预测的弹性资源管理方法。当资源需求很大时,会向云服务提供商请求更多资源,以便可以在截止日期之前完成任务。当资源需求较小时,释放空闲资源以满足成本约束。基于工作量预测来判断资源需求。为了提高工作量预测的准确性,提出了一种基于纠错的工作量预测模型。边缘云节点的过载和轻负载状态都无法充分利用资源。为了提高节点处理性能并减少迁移时间,本文提出了一种使迁移时间最小的工作负载迁移模型。实验结果表明,所提方法可以有效地预测工作量,提高整个集群的处理性能。

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