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Dynamic Edge Fabric EnvironmenT: Seamless and Automatic Switching among Resources at the Edge of IoT Network and Cloud

机译:动态边缘结构环境:IOT网络边缘的资源无缝与自动切换,云

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The number of IoT devices at the edge of the network is increasing rapidly. Data from IoT devices can be analysed locally at the edge, or they may be sent to the cloud. Currently, the decision to deploy a task for execution at the edge or in the cloud is not decided as the data are received. Instead the decision is usually based on pre-defined system design and corresponding assumptions about locality and connectivity. However, the mobile environment has rapid, sometimes unpredictable changes and requires a system that can dynamically adapt to these changes. An intelligent platform is required that can discover available resources (both nearby and in the cloud) and autonomously orchestrate a seamless and transparent task allocation at runtime to help the IoT devices achieve their best performance given the available resources. We propose a new platform, DEFT (Dynamic Edge-Fabric environmenT), that can automatically learn where best to execute each task based on real-time system status and task requirements, along with learned behavior from past performance of the available resources. The task allocation decision in this platform is powered by machine learning techniques such as regression models (linear, ridge, Lasso) and ensemble models (random forest, extra trees). We have implemented this platform on heterogeneous devices and run various IoT tasks on the devices. The results reveal that choosing proper machine learning approaches based on the tasks properties and priorities can significantly improve the overall performance of selecting resources (either from the edge or cloud) dynamically at runtime.
机译:网络边缘的IOT设备的数量正在迅速增加。可以在边缘本地分析来自IoT设备的数据,或者可以将它们发送到云。目前,在收到数据时,不会决定部署在边缘或云中执行任务的任务。相反,该决定通常基于预定义的系统设计和关于局部性和连接的相应假设。但是,移动环境有快速,有时不可预测的更改,并且需要一个可以动态地适应这些变化的系统。需要一个智能平台,可以发现可用的资源(附近和云端),并在运行时自主协调无缝和透明的任务分配,以帮助IoT设备达到可用资源的最佳性能。我们提出了一个新的平台,DEFT(动态边缘结构环境),可以自动学习最佳地基于实时系统状态和任务要求执行每个任务,以及来自可用资源的过去性能的学习行为。该平台中的任务分配决策由机器学习技术(如回归模型)(Linear,Ridge,Lasso)和集合模型(随机林,额外的树木)提供供电。我们在异构设备上实现了这个平台,并在设备上运行各种IOT任务。结果表明,根据任务属性和优先级选择适当的机器学习方法,可以显着提高在运行时动态地选择资源(从边缘或云)的整体性能。

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