Imfo Hub Distinguished Lecture Series - CALM: Co-evolution of Algorithms and Large Language Models for Automatic Heuristic Design
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This talk presents a novel methodology for advancing solutions to a broad range of challenging optimization problems. Traditionally, solving complex optimization tasks has depended heavily on expert-designed heuristics, which are often developed through costly and time-consuming trial-and-error processes. Recent progress shows that large language models (LLMs), when embedded within well-designed evolutionary search frameworks, can automatically discover high-performing heuristics with far less effort. However, existing approaches largely depend on verbal guidance, i.e., manipulating prompts to steer the evolution of heuristics, without adapting the LLM itself. In this talk, we propose a hybrid framework that integrates both verbal and numerical guidance. Specifically, we fine-tune the LLM through reinforcement learning (RL), leveraging feedback on the quality of generated heuristics to enable the LLM to co-evolve alongside the search process. This joint optimization yields superior performance, consistently outperforming state-of-the-art baselines across various optimization tasks. At the end of the talk, we will discuss several potential applications of CALM in solving real-world engineering problems, including, for example, network resource allocation and network security.
Kui Wu entered the Special Class for the Gifted Young at Wuhan University, China, in 1985. He received the B.Sc. and the M.Sc. degrees in Computer Science from Wuhan University, China, in 1990 and 1993, respectively, and the Ph.D. degree in Computing Science from the University of Alberta, Canada, in 2002. He joined the Department of Computer Science at the University of Victoria, Canada, in 2002 and is currently a Full Professor there. During his sabbatical years, he was a JSPS Fellow at the University of Tsukuba, Japan (2009), a Visiting Professor at the City University of Hong Kong (2009, 2019, 2024), and a Visiting Professor at the Norwegian University of Science and Technology (2008, 2019). His research covers the theoretical foundation of computer networks (including stochastic modelling, network tomography, network calculus, and dependence modelling), online social network analytics and e-business, computational sustainability, Quality of Service (QoS) for cloud computing and content delivery networks (CDN), and IoT security.