VNE Solution for Network Differentiated QoS and Security Requirements: From the Perspective of Deep Reinforcement Learning
Chao Wang, Ranbir Singh Batth, Peiying Zhang, Gagangeet Singh Aujla,, Youxiang Duan, Lihua Ren

TL;DR
This paper introduces a deep reinforcement learning-based virtual network embedding algorithm that effectively addresses differentiated QoS and security needs in network services, improving revenue and acceptance rates.
Contribution
It proposes a novel DRL-based VNE algorithm that considers QoS and security attributes, demonstrating improved performance over existing methods.
Findings
Enhanced long-term revenue and acceptance rate
Effective handling of QoS and security requirements
Superior performance compared to other algorithms
Abstract
The rapid development and deployment of network services has brought a series of challenges to researchers. On the one hand, the needs of Internet end users/applications reflect the characteristics of travel alienation, and they pursue different perspectives of service quality. On the other hand, with the explosive growth of information in the era of big data, a lot of private information is stored in the network. End users/applications naturally start to pay attention to network security. In order to solve the requirements of differentiated quality of service (QoS) and security, this paper proposes a virtual network embedding (VNE) algorithm based on deep reinforcement learning (DRL), aiming at the CPU, bandwidth, delay and security attributes of substrate network. DRL agent is trained in the network environment constructed by the above attributes. The purpose is to deduce the mapping…
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Taxonomy
TopicsSoftware-Defined Networks and 5G
