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Department of Civil and Environmental Engineering Research Assistant Professor in Climate-Resilient Infrastructure or Large AI Models (Ref. 250811010) The Department of Civil and Environmental
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research areas are: • AI applications in education • AI and big data learning analytics • Generative AI for teaching and assessment innovation • Digital education technology platforms • Data
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the development of computing education in the territory. With over 45 years of success, COMP plays a strong role in undertaking world-class research including but not limited to the areas of Big Data Analytics and
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large-scale, mental health and well-being project for primary schools in Hong Kong, under Department of Psychology, Faculty of Social Sciences. He/She will be responsible for the smooth operation of
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and SPSS, for large and complex data analysis Proven knowledge and experience in undertaking research related to end-of-life care is advantageous What We Offer The appointment will commence from as soon
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management and business stakeholders; and (h) perform any other duties as assigned by the Director of Office or his delegates. Qualifications Applicants should have: (a) a recognised degree in Computer
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(RIGAI) (to be established) under the PolyU Academy for Artificial Intelligence (PAAI). The appointee will be required to: (a) oversee the daily operations, the monitoring and inspection of the Large
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real-world healthcare and genomic datasets, knowledge of regulatory guidelines (e.g., FDA, EMA) and Good Clinical Practice, exposure to cloud platforms (AWS, Azure) and big data tools would be preferred
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, InfiniBand network, GPU/NVLink topology and performance bottlenecks; (i) have knowledge of HDFS, JuiceFS, GPFS or similar large-scale data access systems, and an understanding of training data reading
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assistance in large classes, including supervising group projects; Undertake teaching-related responsibilities, including the implementation of team-based learning and supporting students with special