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Towards complex dynamic fog network orchestration using embedded neural switch

机译:嵌入式神经开关向复杂的动态雾网络编排

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Cloud data centers used for High Performance Computing (HPC) with volatile Internet of Things (IoT) devices absolutely requires zero-speed switching/low latency, normalized throughput, network stability with near zero packet drops during heavy traffic workload. Deadlock traffic condition found in baseline Fog-nodes results when there is no dynamic provisioning of services at Fog layer. In this case, Quality of Service (QoS) metrics of Service Level Agreements (SLA) are violated. Motivated by these concerns, this paper proposes Smart Hierarchical Network (SHN) as a reliable Fog dynamic design structure based on Software Defined Artificial Neural Network (SD-ANN). It features congestion-aware neural switch model with embedded predictive receding horizon for intelligent congestion management. The goal is to exploit the locally optimized Fog neural switch connections and maximize the overall QoS while satisfying the enormous traffic workload requirements. A sampled real-world trace-file workload from Galaxy backbone, Nigeria, is compared with SHN for Fog service provisioning. It is shown that with receding horizon, the ANN-based model ideally offers 100% throughput R value. Under the established training scenarios, the ANN switch offers the lowest mean square error while yielding acceptable QoS metrics. The result is significant for scalable networks supporting massive computational workloads.
机译:用于高性能计算(HPC)的云数据中心具有易失性的东西(物联网)设备,绝对需要零速切换/低延迟,归一化吞吐量,在繁重的交通工作量期间与附近的零数据包下降的网络稳定性。在基线迷雾节点中发现的死锁交通条件会导致在雾层中没有动态配置。在这种情况下,违反了服务级别协议(SLA)的服务质量(QoS)度量。本文推动了这些问题,本文提出了基于软件定义的人工神经网络(SD-ANN)的可靠性分层网络(SHN)作为可靠的雾动态设计结构。它具有具有嵌入式预测后退地平线的拥塞感知神经开关模型,用于智能拥堵管理。目标是利用本地优化的雾神经开关连接并最大限度地提高整体QoS,同时满足巨大的交通工作负载要求。来自尼日利亚银河骨干网的采样现实世界追踪工作量与雾服务供应的SHN进行比较。结果表明,随着地平线,基于安基的模型理想地提供100%的吞吐量R值。在既定的培训方案下,ANN交换机提供了最低的平均方误差,同时产生可接受的QoS指标。结果对于支持大规模计算工作负载的可扩展网络是很大的。

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