NSDI '24 - EdgeRIC: Empowering Real-time Intelligent Optimization and Control in NextG Cellular...

แชร์
ฝัง
  • เผยแพร่เมื่อ 21 ธ.ค. 2024
  • NSDI '24 - EdgeRIC: Empowering Real-time Intelligent Optimization and Control in NextG Cellular Networks
    Woo-Hyun Ko, Texas A&M University; Ushasi Ghosh, University of California San Diego; Ujwal Dinesha, Texas A&M University; Raini Wu, University of California San Diego; Srinivas Shakkottai, Texas A&M University; Dinesh Bharadia, University of California San Diego
    Radio Access Networks (RAN) are increasingly softwarized and accessible via data-collection and control interfaces. RAN intelligent control (RIC) is an approach to manage these interfaces at different timescales. In this paper, we introduce EdgeRIC, a real-time RIC co-located with the Distributed Unit (DU). It is decoupled from the RAN stack, and operates at the RAN timescale. EdgeRIC serves as the seat of real-time AI-in-the-loop for decision and control. It can access RAN and application-level information to execute AI-optimized and other policies in real-time (sub-millisecond). We demonstrate that EdgeRIC operates as if embedded within the RAN stack. We showcase RT applications called μApps over EdgeRIC that significantly outperforms a cloud-based near real-time RIC (greater than 15 ms latency) in terms of attained system throughput. Further, our over-the-air experiments with AI-based policies showcase their resilience to channel dynamics. Remarkably, these AI policies outperform model-based strategies by 5% to 25% in both system throughput and end user application-level benchmarks across diverse mobile scenarios.
    View the full NSDI '24 program at www.usenix.org...

ความคิดเห็น •