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software package (e.g. SPSS, Stata, SAS, R, Mplus) is required. The appointee will join an internationally active team of researchers in developing studies in the area of digital phenotyping in early
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written and spoken English and Chinese (Cantonese); good communication skills; advanced knowledge and experience with statistical and data analysis software (e.g., SPSS, R, Stata, Nvivo) and MS Office
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projects focused on artificial intelligence, bioinformatics, precision dentistry/medicine and drug discovery; Develop and maintain software tools, database and web applications; Conduct literature reviews
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of academic publication is advantageous. They should have a good command of written and spoken Chinese (Cantonese) and English, advanced knowledge and experience with statistical software (e.g., SPSS, R, Stata
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learning in imaging analysis, clinical trials, epidemiology, genetic study, big data analysis, R language or related statistic software, or/and Python software, or programming skills of deep learning tools
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, bioinformatics, precision dentistry/medicine and drug discovery; Develop and maintain software tools, database and web applications; Conduct literature reviews and summarize findings related to AI and large
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in project management, ethics applications, and supervision of junior researchers. Requirements: A PhD degree in Social Sciences. Strong analytical skills and proficiency in statistical software and
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analysis, R language or related statistic software, or/and Python software, or programming skills of deep learning tools; (iv) proven track records and ability to work independently and within a team; (v
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, Epidemiologist, Data Scientist, Software Engineers, Health Economists, and other clinical staff and healthcare stakeholders, in the field of Family Medicine and Primary Care. The appointee will work on various
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. Strong analytical skills and proficiency in statistical software (e.g., STATA) and qualitative tools (e.g., NVivo). Track record of scholarly output (publications in Q1/Q2 journals preferred). Experience