Machine learning for service migration: A survey

Toumi, Nassima; Bagaa, Miloud; Ksentini, Adlen
IEEE Communications Surveys and Tutorials, May 2023

Future communication networks are envisioned to satisfy increasingly granular and dynamic requirements to accommodate the application and user demands. Indeed, novel immersive and mission-critical services necessitate increased computing
and network resources, reduced communication latency, and guaranteed reliability. Thus, efficient and adaptive resource management schemes are required to provide and maintain sufficient levels of Quality of Experience (QoE) during the service life-cycle. Service migration is considered a key enabler of dynamic service orchestration. Indeed, moving services on demand is an efficient mechanism for user mobility support,
load balancing in case of fluctuations in service demands, and hardware failure mitigation. However, service migration requires planning, as multiple parameters must be optimized to reduce service disruption to a minimum. Recent breakthroughs in
computational capabilities allowed the emergence of Machine Learning as a tool for decision making that is expected to enable seamless automation of network resource management by predicting events and learning optimal decision policies. This
paper surveys contributions applying Machine Learning (ML) methods to optimize service migration, providing a detailed literature review on recent advances in the field and establishing a classification of current research efforts with an analysis of their
strengths and limitations. Finally, the paper provides insights on the main directions for future research.

DOI
HAL
Type:
Journal
Date:
2023-05-09
Department:
Communication systems
Eurecom Ref:
7295
Copyright:
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PERMALINK : https://www.eurecom.fr/publication/7295