太阳城集团app-澳门太阳城集团娱乐城注册送彩金28

服務大廳 | VPN | English

Toward Scalable Generative AI via Mixture of Experts in Mobile Edge Networks

發布時間:2025-03-03

報告時間:2025年3月3日9:30-11:00

報告地點:電航樓218

報告摘要:The evolution of generative artificial intelligence (GenAI) has driven revolutionary applications like ChatGPT. The proliferation of these applications is underpinned by the mixture of experts (MoE), which contains multiple experts and selectively engages them for each task to lower operation costs while maintaining performance. Despite MoE's efficiencies, GenAI still faces challenges in resource utilization when deployed on local user devices. Therefore, we first propose mobile edge networks supported MoE-based GenAI. Rigorously, we review the MoE from traditional AI and GenAI perspectives, scrutinizing its structure, principles, and applications. Next, we present a new framework for using MoE for GenAI services in Metaverse. Moreover, we propose a framework that transfers subtasks to devices in mobile edge networks, aiding GenAI model operation on user devices. Moreover, we introduce a novel approach utilizing MoE, augmented with Large Language Models (LLMs), to analyze user objectives and constraints of optimization problems based on deep reinforcement learning (DRL) effectively. This approach selects specialized DRL experts, and weights each decision from the participating experts. In this process, the LLM acts as the gate network to oversee the expert models, facilitating a collective of experts to tackle a wide range of new tasks. Furthermore, it can also leverage LLM's advanced reasoning capabilities to manage the output of experts for joint decisions. Lastly, we insightfully identify research opportunities of MoE and mobile edge networks.

報告人簡介:Dusit (Tao) Niyato is a professor in the College of Computing and Data Science, at Nanyang Technological University, Singapore. He is an IEEE Fellow and an IET Fellow. His research interests include generative artificial intelligence, the Internet of Things, edge intelligence metaverse, mobile and distributed computing, and wireless networks. He has received numerous academic awards and honors, including the IEEE ComSoc Asia-Pacific Best Young Researcher Award, the 2011 IEEE Communications Society Fred W. Ellersick Paper Award, and the 2022 Distinguished Technical Achievement Recognition Award. He currently serves as the Editor-in-Chief of IEEE Transactions on Network Science and Engineering and is the Area Editor of IEEE Communications Surveys and Tutorials and IEEE Transactions on Vehicular Technology. He has been recognized as a Highly Cited Researcher in the field of Computer Science by Clarivate Analytics for several consecutive years.

歡迎全校感興趣的師生參與!

信息科學技術學院

202533

來源:信息科學技術學院 ?

地址:遼寧省大連市甘井子區凌海路1號

郵編:116026

珠海市| 百家乐官网平预测软件| 新花园百家乐的玩法技巧和规则| 大发888官方df888gwyxpt| 云梦县| 免费百家乐官网预测| 做生意适合摆放龙龟吗| 德州扑克英文| 新锦江百家乐官网娱乐网| 百家乐的规则玩法| 做百家乐网上投注| 大发888 备用6222.com| 百家乐官网PK| 太阳百家乐官网网| 太阳城俱乐部| 闽清县| 做生意 风水| 六合彩教程| 百家乐官网免费是玩| 大发888ber娱乐场下载| 尉犁县| 百家乐官网网页游戏网址| 百家乐官网赌博技巧论坛| 百家乐是骗人的么| 麦盖提县| 百家乐长龙怎么预判| 百家乐游戏分析| 百家乐水晶筹码价格| 云鼎百家乐官网注册| 百家乐好津乐汇| 怎么看百家乐走势| 香港百家乐官网六合彩| 大发888线上娱乐城百家乐| 百家乐官网娱乐城新闻| 综合百家乐博彩论坛| 百家乐官网在线赌场娱乐网规则| 皇家娱乐城| 百家乐官网号破| 网上真钱棋牌游戏| bet365是否合法| 百家乐有好的投注法吗|