Edge Network
Edge networks aim to bring computation and data processing closer to data sources, improving latency and bandwidth efficiency for AI applications. Current research focuses on optimizing resource allocation and model architectures (e.g., hierarchical federated learning, deep equilibrium models) to address challenges like heterogeneity, security, and communication bottlenecks in these distributed systems. This field is significant because it enables privacy-preserving AI at scale, powering applications ranging from IoT devices to industrial automation and improving the efficiency and responsiveness of various AI-driven services.
Papers
TPAoI: Ensuring Fresh Service Status at the Network Edge in Compute-First Networking
Haosheng He, Jianpeng Qi, Chao Liu, Junyu Dong, Yanwei Yu
Accelerating AIGC Services with Latent Action Diffusion Scheduling in Edge Networks
Changfu Xu, Jianxiong Guo, Wanyu Lin, Haodong Zou, Wentao Fan, Tian Wang, Xiaowen Chu, Jiannong Cao
Learning Networks from Wide-Sense Stationary Stochastic Processes
Anirudh Rayas, Jiajun Cheng, Rajasekhar Anguluri, Deepjyoti Deka, Gautam Dasarathy
Seamless Optical Cloud Computing across Edge-Metro Network for Generative AI
Sizhe Xing, Aolong Sun, Chengxi Wang, Yizhi Wang, Boyu Dong, Junhui Hu, Xuyu Deng, An Yan, Yingjun Liu, Fangchen Hu, Zhongya Li, Ouhan Huang, Junhao Zhao, Yingjun Zhou, Ziwei Li, Jianyang Shi, Xi Xiao, Richard Penty, Qixiang Cheng, Nan Chi, Junwen Zhang
Overlay-based Decentralized Federated Learning in Bandwidth-limited Networks
Yudi Huang, Tingyang Sun, Ting He
Early-Exit meets Model-Distributed Inference at Edge Networks
Marco Colocrese, Erdem Koyuncu, Hulya Seferoglu
AI-Driven Chatbot for Intrusion Detection in Edge Networks: Enhancing Cybersecurity with Ethical User Consent
Mugheez Asif, Abdul Manan, Abdul Moiz ur Rehman, Mamoona Naveed Asghar, Muhammad Umair