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The world of artificial intelligence evolves at an astonishing speed. For those working with AI daily, staying up to date with the newest techniques and issues within various domains is a challenge. In this seminar series, academic experts will bring you up to speed with new topics: Agentic AI, AI for Robotics, Semantic Reasoning and Fairness in LLMs.
This session is designed for businesses interested in discovering how multi-agent systems can enhance their operations. Are you curious about AI agents and how they collaborate to solve complex problems? Join us to explore the fundamentals, recent research developments, and real-world applications of these systems.
This session provides a historical overview of the development of agents and multi-agent systems, tracing their evolution from early conceptual models to their current role in complex, distributed AI applications. We begin with the foundational ideas of autonomous agents in the 1980s and 1990s, including seminal contributions in reactive and deliberative architectures. The emergence of multi-agent systems is discussed in the context of coordination, negotiation, and cooperation among agents, influenced by theories from economics, game theory, and cognitive science. We conclude with some use cases of what is today referred to as Agentic AI.
Professor Ann Nowé is a leading Belgian computer scientist specialised in artificial intelligence, with a focus on reinforcement learning, multi-agent systems, and explainable AI. She is a full professor at the Vrije Universiteit Brussel (VUB), holding joint appointments in the Faculty of Sciences and the Faculty of Engineering. Additionally, she is the head of the VUB Artificial Intelligence Lab, an EurAI fellow, and actively involved in Agent Community (IFAAMAS).
In this session, we'll explore how semantic reasoning and knowledge graphs can add value to your data and processes. Knowledge graphs offer a powerful way to model complex relationships in your domain, while reasoning allows you to derive new insights automatically by interpreting your domain knowledge. Through concrete examples, we’ll show how these technologies can help you make smarter decisions, improve data integration, and unlock hidden value. We'll discuss how these technologies support interoperability and seamless data integration, making it easier to connect systems, share information, and build solutions that truly understand your domain.
Professor Pieter Bonte is an assistant professor at KU Leuven, campus Kulak, specialising in the efficient processing of Internet of Things (IoT) data using various branches of Artificial Intelligence (AI). His research primarily focuses on Knowledge Representation and Reasoning, with core expertise in semantic reasoning and knowledge graphs.
Condition monitoring of rotating machinery, including fault detection, fault diagnosis and estimation of Remaining Useful Life (RUL), offers significant cost benefits to industry by minimizing unexpected downtimes and failures. Data-driven approaches, often based on Deep Learning, have achieved significant performance. However, limited data availability for model training, influence of varying operating conditions, lack of interpretability and need for robustness and reliability in predictions pose significant challenges in the application of AI based models in real-world applications. The goal of this talk is to present a methodology for diagnostics and prognostics under varying operating conditions, based on Digital Twins and Transfer Learning, which mitigates the need for large historical data for model training, estimating and quantifying in parallel the epistemic and aleatoric uncertainty of predictions, addressing the safety issues in RUL prediction. Moreover a domain transformation technique, which in combination with existing gradient-based XAI algorithms enables the explanation in a domain, different from the input domain of the machine learning model, will be introduced. The methodologies will be applied on different use cases from rotating machinery, with emphasis in rolling element bearings, and their performance will be discussed.
Professor Konstantinos Gryllias is a mechanical engineering professor at KU Leuven, specialising in AI-based condition monitoring of rotating machinery. His research focuses on fault detection, diagnostics, and digital twins, combining signal processing, machine learning, and hybrid modelling. He leads projects in sectors such as manufacturing, energy, and transportation, and is affiliated with Leuven.AI and Flanders Make.
This talk will explore how biases in AI language models can lead to unfair outcomes in real-world applications. We will examine methods for measuring and mitigating these biases, particularly across different languages. We will also address broader safety concerns and technical approaches to creating more fair and responsible AI systems.
Dr. Pieter Delobelle is an AI engineer at Aleph Alpha, focusing on inference, alignment and fairness of large language models. He did his PhD and postdoc at KU Leuven, where he created multiple Dutch language models with over 3 million downloads. His research on fairness also received attention from companies and government agencies, and he serves as an independent expert for the EU AI Office's AI Act Code of Practice.
This programme is organised by PUC - KU Leuven Continue with the support of the Flemish AI Academie (VAIA).
This seminar series is designed for AI professionals who wish to stay up to date, including AI engineers, R&D managers, IT developers, and functional analysts... Participating companies are not required to have the same employee attend all sessions. If you enrol as a company for the whole series, you have the flexibility to send a different employee to each session.
Professor Ann Nowé, professor Pieter Bonte, professor Konstantinos Gryllias, dr. Pieter Delobelle