在 SFC 配置中释放深度强化学习的可重构性

Murat Arda Onsu;Poonam Lohan;Burak Kantarci;Emil Janulewicz;Sergio Slobodrian
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摘要

网络功能虚拟化(NFV)是 5G 及其后网络的一项关键基础技术,其中,要提供网络服务,按照规定的顺序执行虚拟网络功能(VNF)对于高质量的服务功能链(SFC)配置至关重要。为了提供快速、可靠和自动的 VNF 置放,深度强化学习(DRL)等机器学习(ML)算法正在被广泛研究。然而,由于 DRL 模型需要固定大小的输入,这些算法高度依赖于网络配置,如可放置 VNF 的数据中心(DC)数量和 DC 之间的逻辑连接。在这封信中,我们提出了一种使用 DRL 技术进行 SFC 配置的新方法,该方法释放了网络的可重构性,也就是说,同一拟议模型可应用于不同的网络配置,而无需额外的训练。此外,还为 DRL 构建了一种先进的深度神经网络(DNN)架构,该架构带有一个关注层,通过查找 SFC 请求的优先级点,提高了 SFC 供应的性能,同时还考虑到了资源的有效利用和 SFC 请求的端到端(E2E)延迟。数值结果表明,所提出的模型超越了基线启发式方法,SFC 的总体接受率提高了 20.3%,资源消耗和端到端延迟分别减少了 50% 和 42.65%。
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Unlocking Reconfigurability for Deep Reinforcement Learning in SFC Provisioning
Network function virtualization (NFV) is a key foundational technology for 5G and beyond networks, wherein to offer network services, execution of Virtual Network Functions (VNFs) in a defined sequence is crucial for high-quality Service Function Chaining (SFC) provisioning. To provide fast, reliable, and automatic VNFs placement, Machine Learning (ML) algorithms such as Deep Reinforcement Learning (DRL) are widely being investigated. However, due to the requirement of fixed-size inputs in DRL models, these algorithms are highly dependent on network configuration such as the number of data centers (DCs) where VNFs can be placed and the logical connections among DCs. In this letter, a novel approach using the DRL technique is proposed for SFC provisioning which unlocks the reconfigurability of the networks, i.e., the same proposed model can be applied in different network configurations without additional training. Moreover, an advanced Deep Neural Network (DNN) architecture is constructed for DRL with an attention layer that improves the performance of SFC provisioning while considering the efficient resource utilization and the End-to-End (E2E) delay of SFC requests by looking up their priority points. Numerical results demonstrate that the proposed model surpasses the baseline heuristic method with an increase in the overall SFC acceptance ratio by 20.3% and a reduction in resource consumption and E2E delay by 50% and 42.65%, respectively.
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Table of Contents IEEE Networking Letters Author Guidelines IEEE COMMUNICATIONS SOCIETY IEEE Communications Society Optimal Classifier for an ML-Assisted Resource Allocation in Wireless Communications
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