Advanced Scaling Methods for VNF deployment with Reinforcement Learning
Namjin Seo, DongNyeong Heo, Heeyoul Choi

TL;DR
This paper introduces an advanced reinforcement learning approach using improved graph neural networks and phasic policy gradient to optimize VNF deployment, achieving better QoS and resource efficiency across diverse network scenarios.
Contribution
It presents a novel RL model with enhanced GNN architecture and PPG, improving generalization and deployment efficiency for complex network environments.
Findings
Achieves better QoS with minimal resource use
Demonstrates improved generalization across scenarios
Provides more interpretable node representations
Abstract
Network function virtualization (NFV) and software-defined network (SDN) have become emerging network paradigms, allowing virtualized network function (VNF) deployment at a low cost. Even though VNF deployment can be flexible, it is still challenging to optimize VNF deployment due to its high complexity. Several studies have approached the task as dynamic programming, e.g., integer linear programming (ILP). However, optimizing VNF deployment for highly complex networks remains a challenge. Alternatively, reinforcement learning (RL) based approaches have been proposed to optimize this task, especially to employ a scaling action-based method which can deploy VNFs within less computational time. However, the model architecture can be improved further to generalize to the different networking settings. In this paper, we propose an enhanced model which can be adapted to more general network…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Advanced Memory and Neural Computing · Conducting polymers and applications
Methodstravel james
