AdaSlicing: Adaptive Online Network Slicing under Continual Network Dynamics in Open Radio Access Networks
Ming Zhao, Yuru Zhang, Qiang Liu, Ahan Kak, Nakjung Choi

TL;DR
AdaSlicing is an adaptive online network slicing system that leverages AI/ML and optimization to efficiently manage virtual resources in open radio access networks amid dynamic network conditions.
Contribution
The paper introduces AdaSlicing, a novel adaptive network slicing framework with a soft-isolated RAN virtualization and a Bayesian learning-based algorithm for real-time resource orchestration.
Findings
Achieves 64.2% cost reduction compared to existing methods.
Attains 45.5% normalized performance improvement.
Demonstrates high adaptability and scalability in real network tests.
Abstract
Open radio access networks (e.g., O-RAN) facilitate fine-grained control (e.g., near-RT RIC) in next-generation networks, necessitating advanced AI/ML techniques in handling online resource orchestration in real-time. However, existing approaches can hardly adapt to time-evolving network dynamics in network slicing, leading to significant online performance degradation. In this paper, we propose AdaSlicing, a new adaptive network slicing system, to online learn to orchestrate virtual resources while efficiently adapting to continual network dynamics. The AdaSlicing system includes a new soft-isolated RAN virtualization framework and a novel AdaOrch algorithm. We design the AdaOrch algorithm by integrating AI/ML techniques (i.e., Bayesian learning agents) and optimization methods (i.e., the ADMM coordinator). We design the soft-isolated RAN virtualization to improve the virtual resource…
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