基于ml边缘QoE估计的DASH视频服务保障的基于意图的控制回路

Christian Esteve Rothenberg, D. A. L. Perez, Nathan F. Saraiva de Sousa, R. V. Rosa, R. Mustafa, Md. Tariqul Islam, P. Gomes
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引用次数: 13

摘要

基于意图的网络(IBN)建议基于监视和调优网络性能的自主闭环编排架构。为此,IBN定义了由闭环系统实现的高级策略和操作。这项工作展示了一个用于视频服务保证的闭环控制回路(CCL)架构,该架构使用基于机器学习(ML)的边缘节点体验质量(QoE)估计。作为解决方案的一部分,通过流级监控收集的网络级服务质量(QoS)度量模式(例如RTT、吞吐量)用于构建针对特定目标网络区域、用户组和服务(在我们的案例中是DASH视频流)的QoS-to- qoe关联模型。演示将展示CCL工作流触发Orchestrator采取适当的网络级操作来克服网络QoS降级,并根据与视频服务相关的意图恢复QoE目标。
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Intent-based Control Loop for DASH Video Service Assurance using ML-based Edge QoE Estimation
Intent-Based Networking (IBN) proposals are based on autonomous closed-loop orchestration architectures that monitor and tune network performance. To this end, IBN defines high-level policies and actions implemented by a closed-loop system. This work demonstrates a Closed Control Loop (CCL) architecture for video service assurance using Machine Learning (ML) based Quality of Experience (QoE) estimation at edge nodes. As part of the solution, network-level Quality of Service (QoS) metrics patterns (e.g., RTT, Throughput) collected through flow-level monitoring are used to build a QoS-to-QoE correlation model tailored to specific target network regions, user groups, and services, in our case DASH video streaming. The demo will showcase the CCL workflow triggering the Orchestrator to take appropriate network-level actions to overcome network QoS degradations and restore the QoE target based on the intent associated with the video service.
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