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for Quantum Technologies (CQT) The Centre for Quantum Technologies (CQT) in Singapore brings together physicists, computer scientists and engineers to do basic research on quantum physics and to build devices
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analytic skills in particular in clinical risk prediction, machine learning and causality predictives. • At least 4 years hands-on experiences in data management and analysis using standard software programs
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Health, Environmental Health, Biological Sciences, Biostatistics, Data Science, preferably with relevant experience. Prior experience with machine learning is a plus. Recruitment is open immediately and
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, chemical engineering, mechanical engineering, electrical and computer engineering, artificial intelligence and data science, transportation engineering, materials engineering, industrial system engineering
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vulnerability management teams Set up and manage system applications, virtual machines, and network access storage Oversee the graphene virtual reality system, including vendor liaison and user support BOSS
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one of the following: Econometric methods for causal inference; Data science and machine learning; Survey design and analysis; Qualitative analysis skills specialized in policy and geopolitics A good
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an outstanding researcher whose prime interest involves the following research areas: Statistical Genetics / Omics Spatial Statistics Functional Data Analysis AI / Machine Learning in the healthcare space Or any
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knowledge at its fingertips by enhancing the use of effective applications and services for teaching and learning. We drive a culture that is forward-looking. With a strong passion for IT, our people
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knowledge at its fingertips by enhancing the use of effective applications and services for teaching and learning. We drive a culture that is forward-looking. With a strong passion for IT, our people
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of analyzing large-scale population data. Experiences working with electronic health records (desirable). Understanding of clinical informatics approaches (e.g., machine learning, Bayesian statistics) and