Zero-Touch Networks: Towards Next-Generation Network Automation
Mirna El Rajab, Li Yang, Abdallah Shami

TL;DR
This paper surveys Zero-Touch Networks within the ZSM framework, highlighting how AutoML enhances network automation, reduces management costs, and improves performance in 5G and beyond networks.
Contribution
It introduces the application of AutoML in ZSM, demonstrating its effectiveness in predicting throughput and adapting to data drift for next-generation network management.
Findings
AutoML outperforms traditional ML in prediction accuracy.
Integration of AutoML reduces network management efforts.
AutoML enhances network performance and operator efficiency.
Abstract
The Zero-touch network and Service Management (ZSM) framework represents an emerging paradigm in the management of the fifth-generation (5G) and Beyond (5G+) networks, offering automated self-management and self-healing capabilities to address the escalating complexity and the growing data volume of modern networks. ZSM frameworks leverage advanced technologies such as Machine Learning (ML) to enable intelligent decision-making and reduce human intervention. This paper presents a comprehensive survey of Zero-Touch Networks (ZTNs) within the ZSM framework, covering network optimization, traffic monitoring, energy efficiency, and security aspects of next-generational networks. The paper explores the challenges associated with ZSM, particularly those related to ML, which necessitate the need to explore diverse network automation solutions. In this context, the study investigates the…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · IoT and Edge/Fog Computing · Advanced Data and IoT Technologies
Methodstravel james · Focus
