Optimized Resource Allocation for Cloud-Native 6G Networks: Zero-Touch ML Models in Microservices-Based VNF Deployments

Bibliographic Details
Title: Optimized Resource Allocation for Cloud-Native 6G Networks: Zero-Touch ML Models in Microservices-Based VNF Deployments
Authors: Swarna Bindu Chetty, Avishek Nag, Ahmed Al-Tahmeesschi, Qiao Wang, Berk Canberk, Johann Marquez-Barja, Hamed Ahmadi
Source: IEEE network
Publication Status: Preprint
Publisher Information: Institute of Electrical and Electronics Engineers (IEEE), 2025.
Publication Year: 2025
Subject Terms: Computer. Automation, Signal Processing (eess.SP), Mass communications, FOS: Electrical engineering, electronic engineering, information engineering, Electrical Engineering and Systems Science - Signal Processing, Engineering sciences. Technology
Description: 6G, the next generation of mobile networks, is set to offer even higher data rates, ultra-reliability, and lower latency than 5G. New 6G services will increase the load and dynamism of the network. Network Function Virtualization (NFV) aids with this increased load and dynamism by eliminating hardware dependency. It aims to boost the flexibility and scalability of network deployment services by separating network functions from their specific proprietary forms so that they can run as virtual network functions (VNFs) on commodity hardware. It is essential to design an NFV orchestration and management framework to support these services. However, deploying bulky monolithic VNFs on the network is difficult, especially when underlying resources are scarce, resulting in ineffective resource management. To address this, microservices-based NFV approaches are proposed. In this approach, monolithic VNFs are decomposed into micro VNFs, increasing the likelihood of their successful placement and resulting in more efficient resource management. This article discusses the proposed framework for resource allocation for microservices-based services to provide end-to-end Quality of Service (QoS) using the Double Deep Q Learning (DDQL) approach. Furthermore, to enhance this resource allocation approach, we discussed and addressed two crucial sub-problems: the need for a dynamic priority technique and the presence of the low-priority starvation problem. Using the Deep Deterministic Policy Gradient (DDPG) model, an Adaptive Scheduling model is developed that effectively mitigates the starvation problem. Additionally, the impact of incorporating traffic load considerations into deployment and scheduling is thoroughly investigated.
Document Type: Article
ISSN: 1558-156X
0890-8044
DOI: 10.1109/mnet.2024.3486623
DOI: 10.48550/arxiv.2410.06938
Access URL: http://arxiv.org/abs/2410.06938
https://repository.uantwerpen.be/docstore/d:irua:26000
https://hdl.handle.net/10067/2095460151162165141
Rights: IEEE Copyright
CC BY
Accession Number: edsair.doi.dedup.....d1ae7f59204421781b75b776cc23fe3f
Database: OpenAIRE
Description
ISSN:1558156X
08908044
DOI:10.1109/mnet.2024.3486623