OnSlicing: Online End-to-End Network Slicing with Reinforcement Learning
Qiang Liu, Nakjung Choi, Tao Han

TL;DR
OnSlicing is an online reinforcement learning system for network slicing that minimizes resource usage while ensuring SLA compliance, using novel constraint-aware updates, proactive baseline switching, and offline imitation.
Contribution
The paper introduces OnSlicing, a novel online DRL framework with constraint-aware updates and proactive mechanisms for efficient, SLA-compliant network slicing.
Findings
Achieves 61.3% resource usage reduction compared to rule-based methods.
Maintains nearly zero SLA violations during online learning.
Reduces resource usage by 12.5% compared to existing online DRL solutions.
Abstract
Network slicing allows mobile network operators to virtualize infrastructures and provide customized slices for supporting various use cases with heterogeneous requirements. Online deep reinforcement learning (DRL) has shown promising potential in solving network problems and eliminating the simulation-to-reality discrepancy. Optimizing cross-domain resources with online DRL is, however, challenging, as the random exploration of DRL violates the service level agreement (SLA) of slices and resource constraints of infrastructures. In this paper, we propose OnSlicing, an online end-to-end network slicing system, to achieve minimal resource usage while satisfying slices' SLA. OnSlicing allows individualized learning for each slice and maintains its SLA by using a novel constraint-aware policy update method and proactive baseline switching mechanism. OnSlicing complies with resource…
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Taxonomy
Methodstravel james
