Skip to main content Start main content

Towards Building the Trust of Complex AI Systems in the LLM Era

Research Seminar Series

20241004Dr Lei MaISE Website Event Image
  • Date

    04 Oct 2024

  • Organiser

    Department of Industrial and Systems Engineering, PolyU

  • Time

    10:00 - 11:30

  • Venue

    R406  

Speaker

Dr Lei Ma

20241004Dr Lei MaISE Website Event Image

Summary

In recent years, deep learning-enabled systems have made remarkable progress, powering a surge in advanced intelligent applications. This growth and its real-world impact have been further amplified by the advent of large foundation models (e.g., LLM, Stable Diffusion). Yet, the rapid evolution of these AI systems often proceeds without comprehensive quality assurance and engineering support. This gap is evident in the integration of standards for quality, reliability, and safety assurance, as well as the need for mature toolchain support that provides systematic and explainable feedback of the development lifecycle. In this talk, I will present a high-level overview of our team's ongoing initiatives to lay the groundwork for Trustworthy Assurance of AI Systems and its industrial applications, e.g., including (1) AI software testing and analysis, (2) our latest trustworthiness assurance efforts for AI-driven Cyber-physical systems with an emphasis on sim2real transition. (3) risk and safety assessment for large foundational models, including those akin to large language models, and vision transformers.

Keynote Speaker

Dr Lei Ma

Dr Lei Ma

Associate Professor
The University of Tokyo, Japan

Lei Ma is currently an Associate Professor with The University of Tokyo; as well as an associate professor and Canada CIFAR AI Chair with University of Alberta. He is a Fellow with Amii - Alberta Machine Intelligence Institute. His research centers around the interdisciplinary fields of human-centered trustworthy artificial intelligence (AI), software engineering (SE), and cyber-physical system (CPS) with a special focus on quality, reliability, safety, and security assurance, as well as the interpretation and human interactivity of and AI Systems. Many of his works were published in top-tier AI, software engineering, and security venues (e.g., TSE, TOSEM, ICSE, FSE, ASE, CAV, ICML, NeurIPS, AAAI, IJCAI, TDSC), among which four papers receive the ACM SIGSOFT Distinguished Paper Awards (ASE 16, ASE 18, ASE 18, FSE 23), and an annual best paper award of 2022 IEEE Transactions on Software Engineering (TSE 2022). More information about his recent activities can be found at https://www.malei.org

Your browser is not the latest version. If you continue to browse our website, Some pages may not function properly.

You are recommended to upgrade to a newer version or switch to a different browser. A list of the web browsers that we support can be found here