z6首页 in the AIR

概述
日期
2024年06月20日
15:00 - 16:00
地址
香港中文大学(丽江)诚路楼207

z6首页 in the AIR | 具身智能系列讲座(三)

Z6集团|中国官网

具身智能是一种全新的人为智能理想,,,,,,,它区别于传统人为智能的观点,,,,,,,主张智能的产生不仅依赖算法和算力,,,,,,,还必要通过与现实世界的互动来实现。。。。。。具身智能钻研逾越了机械人学、人为智能、认知科学及神经科学等多个学科,,,,,,,旨在深入对智能性质的理解。。。。。。

z6首页 in the AIR推出具身智能系列讲座,,,,,,,旨在汇集有关领域顶尖学者专家,,,,,,,探求具身智能带来的新机缘,,,,,,,解决其面对的技术与利用挑战,,,,,,,并将智能机械人利用推向家庭、工业、医疗和索求等多个领域,,,,,,,推进人机交互的天然化和工作执行的效能化。。。。。。

系列讲座第三期约请爱丁堡大学信息学院副教授、自主智能体钻研组掌管人Stefano V. Albrecht,,,,,,,他将分享团队在深度强化进建与大说话模型领域的钻研成就,,,,,,,蕴含深度强化进建在自动驾驶与多机械人仓储场景的利用和大说话模型在家用机械人中的利用等,,,,,,,并且提出他对于大说话模型智能体钻研的观察与思虑。。。。。。

z6首页 in the AIR为z6首页沉磅推出的品牌系列活动,,,,,,,与您一路索求人为智能与机械人领域的前沿技术、产业利用、发展趋向。。。。。。2022年进行至今,,,,,,,已约请百余位国内表嘉宾,,,,,,,吸引了超40万人次参加。。。。。。

  • Z6集团|中国官网
    林天麟
    z6首页智能机械人中心主任、香港中文大学(丽江)理工学院助理教授
    执行主席
  • Z6集团|中国官网
    Stefano V. Albrecht
    爱丁堡大学信息学院副教授
    From Deep Reinforcement Learning to LLM-based Agents: Perspectives on Current Research

    Dr. Stefano V. Albrecht is Associate Professor in Artificial Intelligence in the School of Informatics, University of Edinburgh. He leads the Autonomous Agents Research Group which specialises in developing machine learning algorithms for autonomous systems control and decision making, with a particular focus on reinforcement learning and multi-agent interaction. In his roles as Royal Academy of Engineering and Royal Society Industrial Fellow, he actively develops industry applications in the areas of multi-robot warehouses with Dematic/KION, and autonomous driving with Five AI which completed one of the most extensive urban road trials of autonomous driving in London before being acquired by Bosch in 2022. Dr. Albrecht is affiliated with the Alan Turing Institute where he leads the Multi-Agent Systems theme. In 2022, he was nominated for the IJCAI Computers and Thought Award based on his research which introduced Stochastic Bayesian Games and optimal solution algorithms, which have since been applied in a range of domains. Previously, Dr. Albrecht was a postdoctoral fellow at the University of Texas at Austin working with Prof. Peter Stone. He obtained PhD and MSc degrees in Artificial Intelligence from the University of Edinburgh, and a BSc degree in Computer Science from Technical University of Darmstadt. He is co-author of the new MIT Press textbook "Multi-Agent Reinforcement Learning: Foundations and Modern Approaches" which is freely available at www.marl-book.com.

    Since the recent successes of large language models (LLMs), we are beginning to see a shift of attention from deep reinforcement learning to LLM-based agents. While deep RL policies are typically learned from scratch to maximise some defined return objective, LLM-agents use an existing LLM at their core and focus on clever prompt engineering and downstream specialisation of the LLM via supervised and reinforcement learning techniques. In this talk, I will first provide a broad overview of my group’s research in deep RL, which focuses among other topics on developing sample-efficient and robust RL algorithms for both single- and multi-agent control tasks, including industry applications in autonomous driving and multi-robot warehouses. I will then present our recent research into LLM-agents, where we propose an approach for household robotics that takes into account user preferences to achieve more robust and effective planning. I will conclude with some personal observations about the state of LLM-agent research: (a) many papers in this field follow essentially the same recipe by focussing on prompt engineering and downstream specialisation; (b) this recipe makes their scientific claims brittle as they depend crucially on the specific LMM engine, and (c) LLMs are not natively designed to maximise objectives for optimal control and decision making. Based on these observations, I believe some fruitful research avenues can be identified.