Network Virtualization (NV) is an emerging network dynamic planning technique to overcome network rigidity. As its necessary challenge, Virtual Network Embedding (VNE) enhances the scalability and flexibility of the network by decoupling the resources and services of the underlying physical network. For the future multi-domain physical network modeling with the characteristics of dynamics, heterogeneity, privacy, and real-time, the existing related works perform satisfactorily. Federated learning (FL) jointly optimizes the network by sharing parameters among multiple parties and is widely employed in disputes over data privacy and data silos. Aiming at the NV challenge of multi-domain physical networks, this work is the first to propose using FL to model VNE, and presents a VNE architecture based on Horizontal Federated Learning (HFL) (HFL-VNE). Specifically, combined with the distributed training paradigm of FL, we deploy local servers in each physical domain, which can effectively focus on local features and reduce resource fragmentation. A global server is deployed to aggregate and share training parameters, which enhances local data privacy and significantly improves learning efficiency. Furthermore, we deploy the Deep Reinforcement Learning (DRL) model in each server to dynamically adjust and optimize the resource allocation of the multi-domain physical network. In DRL-assisted FL, HFL-VNE jointly optimizes decision-making through specific local and federated reward mechanisms and loss functions. Finally, the superiority of HFL-VNE is proved by combining simulation experiments and comparing it with related works.
翻译:虚拟网络嵌入(虚拟网络嵌入)作为必要的挑战,通过将基础物理网络的资源和服务脱钩,提高网络的可扩展性和灵活性。对于未来的多域物理网络模式,根据动态、异质性、隐私和实时等特征建模,现有相关工程表现令人满意。联谊学习(FL)通过多个当事方共享参数,共同优化网络,并广泛用于数据隐私和数据仓争端。虚拟网络嵌入(VNE)是应对多域实体网络对流动挑战的扩大性和灵活性,将基础物理网络的资源和服务分离出来。对于未来的多域物理网络模式,根据动态、异质性、隐私和实时等特征建模,现有相关工程表现令人满意。联谊学习(FL)通过多个实体领域共享参数,共同优化网络的优化网络。全球服务器与共享培训参数,提高本地数据隐私,大幅提高学习效率。此外,我们通过FDR(F-L) 将每个动态服务器的升级和升级配置,通过HDR(L-L) 最终将FL(F-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-L-