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machine learning methods, particularly large language models (LLMs), to marketing research. Applicants are invited to contact Prof. Edward Lai at telephone number 2766 7141 or via email at edward-yh.lai
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) strong background in quantitative methods, statistics, computer science, geospatial data analysis and modeling; (b) experience in AI and geospatial computer version; (c) advanced skills in scientific
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) support major BIM platforms, such as Revit and AutoCAD; (c) develop BIM-related functional modules, including model parsing, data interaction, automated modelling, and collaborative design; (d
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aviation or aerospace fields and a demonstrated track record of publications in reputable journals or conferences; (c) solid skills in data analysis, modeling or simulation related to aviation systems
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project - “The development of a dynamic pricing and forecasting restaurant revenue management platform”. He/She will be required to: (a) conduct data analysis and modelling; (b) facilitate
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, Industrial Engineering, Operations Research, Computer Science or a related discipline with experiences in optimization modeling and coding. Applicants are invited to contact Prof. Li Ang at telephone number
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Assistant (two posts) [Appointment period: each for twenty-four months] Duties The appointees will assist the project leader in the research project - “Metal forming technologies and numerical modelling
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the trustworthiness of ML models with applications to several practical systems; and (c) document the steps of computational studies. Qualifications Applicants should have: (a) an honours degree in
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or an equivalent qualification; (b) have experience in conducting research, and skills in AI for processing modelling and optimization; and (c) be proficient in English. Applicants are invited to contact Prof
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value ESG innovation? – Evidence from the US patent “Lottery””. He/She will be required to conduct large-scale textual analysis, match various datasets, and run simple regression analyses. Qualifications