PAIR Conference 2023 - PRI Program
Conference / Lecture
.png?bc=ffffff&h=540&w=1000&rev=ad120bbca3b04c9ca31237921aa86b9e&hash=68A59D17D9592420E2533E61C497051E)
-
Date
11 May 2023
-
Organiser
PolyU Academy for Interdisciplinary Research (PAIR) & Photonics Research Institute (PRI)
-
Time
09:00 - 18:30
-
Venue
PolyU - HJ304
Summary
PAIR Conference 2023 will be held on 8-11 May 2023 and themed on “Research Excellence for Societal Impacts”. The Conference is the first and the largest event in Hong Kong higher education dedicated to professional knowledge exchange on interdisciplinary research and development.
Photonics Research Institute (PRI) will be responsible for a one-day programme on 11 May 2023 (Thursday) that consists of keynote sessions, technical sessions, lab visits and posters/showcases.
For Conference details, please refer to PAIR Conference 2023
Keynote Speakers
Professor, Head of the EPFL Group for Fibre Optics, Member of the Swiss Academy of Science
Topic: "Light amplification and sensing in hollow core fibres"
Professor in Physics, Université Gustave Eiffel, France
Topic: "Radiative properties of Black Silicon revisited in the Mid-infrared and applications"
Technical Speakers
Professor and Director of the Lab for Photonics Sensing for Energy & Biology, Jinan University
Topic: "Operando battery monitoring using lab-on-fibre optical sensing technologies"
Associate Professor, Department of Biomedical Engineering, The Hong Kong Polytechnic University
Topic: "High-resolution optical focusing, imaging, stimulation, and encryption with scattered light"
Professor, Department of Electrical Engineering, The Hong Kong Polytechnic University
Topic: "Dynamic and self-aware Optical Communications and Networks"
Distinguished professor in College of Physics and Optoelectronic Engineering, Shenzhen University
Topic: "3D nanoprinted optical fiber sensors"
Professor, Department of Electronic and Information Engineering, The Hong Kong Polytechnic University & Optica/OSA Fellow
Topic: "Non-wearable non-invasive smart health monitoring system based on optical fiber interferometer with machine learning"