OpticGAI: Generative AI-aided Deep Reinforcement Learning for Optical Networks Optimization
June 22, 2024 Β· Declared Dead Β· π HotOptics@SIGCOMM
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Authors
Siyuan Li, Xi Lin, Yaju Liu, Gaolei Li, Jianhua Li
arXiv ID
2406.15906
Category
cs.NI: Networking & Internet
Cross-listed
cs.AI
Citations
4
Venue
HotOptics@SIGCOMM
Last Checked
3 months ago
Abstract
Deep Reinforcement Learning (DRL) is regarded as a promising tool for optical network optimization. However, the flexibility and efficiency of current DRL-based solutions for optical network optimization require further improvement. Currently, generative models have showcased their significant performance advantages across various domains. In this paper, we introduce OpticGAI, the AI-generated policy design paradigm for optical networks. In detail, it is implemented as a novel DRL framework that utilizes generative models to learn the optimal policy network. Furthermore, we assess the performance of OpticGAI on two NP-hard optical network problems, Routing and Wavelength Assignment (RWA) and dynamic Routing, Modulation, and Spectrum Allocation (RMSA), to show the feasibility of the AI-generated policy paradigm. Simulation results have shown that OpticGAI achieves the highest reward and the lowest blocking rate of both RWA and RMSA problems. OpticGAI poses a promising direction for future research on generative AI-enhanced flexible optical network optimization.
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