基于 DDPG 的零接触动态优先级排序,解决基于微服务的 VNF 部署中的服务饥饿问题

Swarna B. Chetty;Hamed Ahmadi;Avishek Nag
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摘要

与第五代移动网络(5G)相比,第六代移动网络(6G)承诺提供更快的数据传输速率、超高的可靠性和更低的延迟的应用和服务。这些高要求的 6G 应用将对网络提出严格的性能要求,从而加重网络负担。网络功能虚拟化(NFV)通过在商品硬件上以虚拟网络功能(VNF)的形式运行网络功能来降低成本。虽然 NFV 是一种前景广阔的解决方案,但它也带来了资源分配(RA)方面的挑战。为了提高资源分配效率,我们解决了两个关键的子问题:动态服务优先级要求和低优先级服务饥饿问题。我们引入了 "动态优先级"(DyPr),采用 ML 模型来强调未见服务的宏观和微观优先级,并解决目前解决方案中存在的饥饿问题及其局限性。我们提出了 "自适应调度"(AdSch),这是一种三因素方法(优先级、阈值等待时间和可靠性),超越了传统的基于优先级的方法。在这里,"饥饿 "指的是等待时间延长,以及由于 "延迟 "而最终拒绝低优先级服务。此外,为了进一步研究,我们还研究了流量感知的饥饿和部署问题,以提高效率。我们采用了用于自适应调度的深度确定性策略梯度(DDPG)模型和用于动态优先级排序的在线岭回归(RR)模型,创建了一个零接触解决方案。DDPG 模型能有效识别 "受益和饥饿 "服务,通过部署两倍的低优先级服务来缓解饥饿问题。我们的在线 RR 模型准确率超过 80%,可在 100 次转换中快速学习优先级模式。我们根据流量将服务分为 "高需求"(HD)和 "非高需求"(NHD),以便深入了解高创收服务。通过平衡低优先级 HD 服务和低优先级 NHD 服务,我们实现了近乎最优的资源分配,部署的低优先级 HD 服务数量是无流量感知模型的两倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A DDPG-Based Zero-Touch Dynamic Prioritization to Address Starvation of Services for Deploying Microservices-Based VNFs
The sixth generation of mobile networks (6G) promises applications and services with faster data rates, ultra-reliability, and lower latency compared to the fifth-generation mobile networks (5G). These highly demanding 6G applications will burden the network by imposing stringent performance requirements. Network Function Virtualization (NFV) reduces costs by running network functions as Virtual Network Functions (VNFs) on commodity hardware. While NFV is a promising solution, it poses Resource Allocation (RA) challenges. To enhance RA efficiency, we addressed two critical subproblems: the requirement of dynamic service priority and a low-priority service starvation problem. We introduce ‘Dynamic Prioritization’ (DyPr), employing an ML model to emphasize macro- and microlevel priority for unseen services and address the existing starvation problem in current solutions and their limitations. We present ‘Adaptive Scheduling’ (AdSch), a three-factor approach (priority, threshold waiting time, and reliability) that surpasses traditional priority-based methods. In this context, starvation refers to extended waiting times and the eventual rejection of low-priority services due to a ‘delay. Also, to further investigate, a traffic-aware starvation and deployment problem is studied to enhance efficiency. We employed a Deep Deterministic Policy Gradient (DDPG) model for adaptive scheduling and an online Ridge Regression (RR) model for dynamic prioritization, creating a zero-touch solution. The DDPG model efficiently identified ‘Beneficial and Starving’ services, alleviating the starvation issue by deploying twice as many low-priority services. With an accuracy rate exceeding 80%, our online RR model quickly learns prioritization patterns in under 100 transitions. We categorized services as ‘High-Demand’ (HD) or ‘Not So High Demand’ (NHD) based on traffic volume, providing insight into high revenue-generating services. We achieved a nearly optimal resource allocation by balancing low-priority HD and low-priority NHD services, deploying twice as many low-priority HD services as a model without traffic awareness.
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