Prof. Dr. Md. Mamun HabibIndependent University of Bangladesh, Bangladeshi Core research areas are supply chain management, production & operations management, operations research, research methodology, engineering/technology management, and educational management. Currently, he is supervising Ten (10) Ph.D. scholars locally and internationally, and eleven (11) Ph.D. scholars have been awarded earlier, Dr. Habib published over 250 research papers, including Conference Proceedings, Journal articles, and book chapters, books. Among them, about 75 articles are WoS and Scopus Indexed. As a Keynote Speaker, he delivers lectures at more than 80 international conferences in various countries, particularly USA, UK, Taiwan, China, Indonesia, Malaysia, Thailand, Singapore, Turkey, Korea, India, Philippines, Greece, Bulgaria, Australia, Italy, Nigeria, Kuwait, Qatar, South Africa, Germany, etc. He conducted more than 230 Webinars/Workshops/ Seminars locally and internationally. He is involved in a few grant research projects in the USA, Malaysia, Thailand, Bulgaria, European Union, India, Australia, and Bangladesh. Speech Title: Technology-Enabled Supply Chain Management in the Service Industry Abstract: This keynote speech would demonstrate the theory and evolution of Supply Chain Management (SCM), as the least innovations in research, as well as highlight the chronological perspective of SCM in terms of the time frame in different areas of manufacturing and service industries. Researchers and practitioners make several attempts to define SCM appropriately. Amidst fierce competition in all industries, SCM has gradually been embraced as a proven managerial approach to achieving sustainable profits and growth. This keynote would illustrate SCM from raw materials to finished products, i.e., suppliers to consumers in various industries. Furthermore, this speech demonstrates SCM in various service industries, including hospitals, educational institutions, the banking sector, etc., to contribute to the consumer, i.e., society. |
Prof. Liang HuTongJi University, China Research Area: Recommender systems, machine learning, deep learning, data science, and cross-disciplinary-inspired and convergent smart technologies Liang Hu is a professor in the School of Electronic and Information Engineering at Tongji University, selected as Shanghai Overseas High-level Talent and National Foundation of China Excellent Youth (Overseas). His research areas include recommender systems, machine learning, deep learning, data science, and cross-disciplinary-inspired and converged intelligent technologies. He has published more than 40 high-level academic papers in many research directions such as cross-domain learning, multimodal learning, complex relationship learning, behavioral sequence analysis and prediction, and multi-objective optimization, including more than 20 papers in Chinese Computer Federation (CCF) Class A journals, more than 10 papers in CCF B as well as JCR Q1 journals, including WWW, IJCAI, AAAI, ICDM, ICWS, TOIS, TKDE, IEEE IS, and so on. Speech Title: New Paradigms of Generative Human-Computer Interaction and Collaboration in the Era of Large Models Abstract: The development of generative large language models, represented by ChatGPT, is in full swing, and the cross-modal generative technologies represented by MidJourney and SORA have become cutting-edge hot topics. It is said the generative AI technology is rapidly emerging. In the era of current AI large models, the development of generative technology has also brought a brand new paradigm to the modes of human-computer interaction and collaboration. This report will narrate the new paradigms of human-computer interaction and collaboration brought to us by generative AI technology in common daily scenarios, including content recommendation, game production, and smart healthcare. |
Assoc. Prof. Hongbo LiSchool of Management, Shanghai University, China Hongbo Li is Associate Professor of Information Systems and Management Science in the School of Management at Shanghai University, Shanghai, China. He obtained his PhD degree in Management Science in July 2014 from School of Economics and Management, Beihang University, Beijing, China. He was a visiting PhD student at Research Center for Operations Management, Faculty of Economics and Business, KU Leuven, Belgium from 2012 to 2013. His research interests include artificial intelligence, metaheuristics, project scheduling, robust scheduling, data science, business analytics, and information systems. He has published in a variety of refereed journals, such as Journal of Scheduling, International Journal of Production Research, Decision Support Systems, Expert Systems with Applications, and Electronic Commerce Research and Applications. Speech Title: Data-driven analytics for student reviews in China's higher vocational education MOOCs Abstract: The wide application of Massive Open Online Courses (MOOCs) has effectively improved the curriculum system of China's higher vocational education. In the meantime, some MOOCs suffer from poor course quality. Therefore, from the perspective of course quality improvement, we propose a data-driven framework for mining and analyzing student reviews in China's higher vocational education MOOCs. In our framework, we first mine multi-level student demands hidden in MOOC reviews by combining web crawlers and text mining. Then we use an artificial neural network and the KANO model to classify the extracted student demands, thereby designing effective MOOC quality improvement strategies. Based on the real data from China's higher vocational education MOOCs, we validate the effectiveness of the proposed data-driven framework. |