Hands-on Workshop on Quantum Computational Intelligence for Student Experience with Generative AI Applications
Chair: Chang-Shing Lee and Yusuke Nojima
Abstract: The Human and Machine Co-Learning model educates students of various ages in Computational Intelligence (CI), covering Neural Networks, Fuzzy Logic, and Evolutionary Computation. The learning process consists of four stages, leading to co-learning with machines and real-life application of CI concepts. Tools align with IEEE standard 1855 and include STEM subjects, offering functionalities like sensing and coding. The QCI&AI-FML Learning Platform enables interaction between machine intelligence and human knowledge. The concept involves creating a workshop for young students, coupled with a competition, during IEEE-sponsored conferences. This approach has been successfully implemented at the IEEE CEC 2023 in the USA, the FUZZ-IEEE 2023 in Korea, the IEEE WCCI 2024 in Japan, the IEEE SSCI 2025 in Norway, and the IEEE Region 10 SPNIC Activity on Nov. 18, 2023, Feb. 20, 2024, and Feb. 13, 2025. At the beginning of the event, or during its initial hours, students will receive educational materials and guidance from tutors and invited speakers on CI-related topics. Subsequently, they will have the opportunity to apply their newfound knowledge in a practical, real-world setting using the QCI&AI-FML Learning Tool (Hardware/Software) provided by IEEE CIS and IEEE R10, which involves programming QCI&AI-FML robots to accomplish various tasks. On the competition day, we encourage students to form teams, fostering cooperation as they apply their real-world applications.
Experience-based and Operation-based Learning: Click Here
Whisper-Taiwanese Model for QCI&GAI Experience: Click Here
NUWA CodeLab for Meta AI UST and Quantum QCI Experience: Click Here
IEEE CIS Sandbox Initiative: Advancing Global Learning in AI and Quantum CI from IEEE EA Insight