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expected to join at the end of 2025 or early 2026. The position is a one-year appointment and might be renewed up to 2 years based on the performance and career plan of the hired person. Responsibility
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Applications are invited for the following full-time position in the Saw Swee Hock School of Public Health: Research Fellow for Saw Swee Hock School of Public Health The Saw Swee Hock School of Public Health
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processes. The Research Fellow will work on a cross-disciplinary project at the intersection of mechanics, machine learning, and advanced manufacturing. The key responsibilities of this position include
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The National Institute of Education invites suitable applications for the position of Research Fellow on a 24-month contract (renewable) at the Office for Research . Project Title: Arts
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(part-time) Location: Saw Swee Hock School of Public Health, National University of Singapore Position Type: 1 year contract at the first instance (renewable), 3-4 days a week, based in Singapore only
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field studies Develop and validate instruments for psychological and behavioural assessment in urban settings Conduct data analysis using relevant statistical, spatial, or computational tools with
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position for a Research Associate/Fellow (Data Scientist) in Data Science at the Department of Family Medicine (DFM) within the National University Health System (NUHS). The role is focused on leading data
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for meetings, conferences, etc Prepare manuscripts for submission, and other administrative work The position will have an initial one-year term with the possibility of renewal for a second year based on
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published in high impact journals. Specific requirements: PhD from a reputable university with knowledge in biophysics and statistical mechanics. Good publication track record. Expertise in numerical
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PhD* (or equivalent research experience) in a relevant subject (only for Research Fellow position). Candidates with a non-healthcare degree are welcome to apply. Familiarity with image data analysis