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of projects or assignments you have completed using a programming language and/or teaching related to a programming or software. Job Summary: The University Libraries Research Computing Student Assistant
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Civil or Environmental Engineering, hydrology, ecology, geosciences, computer science, applied mathematics, data analytics, or related fields at the start date. Candidates will need to have completed
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. Develops and applies numerical and statistical models to better understand and predict flood risks in coastal environments, including the integration of hydrodynamic, climatic, and socio-environmental data
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Research Assistant I. Research focuses on advanced surface engineering and laser-based manufacturing methods, with particular emphasis on the laser peening and laser machining. The goal of the project is to
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for a highly driven Postdoctoral Research Scholar to join the lab. This group focuses on developing advanced surface engineering techniques, particularly laser-based methods, and conducting experiments to
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from a computer screen and clearly convey it over the phone in an understandable manner. Ability to accurately type collected information using a computer keyboard. Enrollment Requirements: Applicants
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. Experience with quantitative methods. Experience with supervising students. Published research in the peer-reviewed literature. Background Investigation Statement: Prior to hiring, the final candidate(s) must
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Pay Grade/Pay Range: Minimum: $48,600 - Midpoint: $60,800 (Salaried E7) Department/Organization: 214241 - Computer Science Normal Work Schedule: Monday - Friday 8:00am to 5:00pm Job Summary: The
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, Geography, Civil Engineering, Computer Science, Mathematics, Physics or a related quantitative field. Skills and Knowledge: Knowledge of scientific computing, data assimilation, and machine learning
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electronic health records) and developing computational models. Establishes frameworks for data modernization, integrating metadata and varied datasets to create databases suitable for cross-disciplinary AI