69 parallel-computing-"https:" "Simons Foundation" Postdoctoral research jobs at University of Minnesota
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of Minnesota is seeking highly motivated Postdoctoral Associates to join our team. Funded by the Simons Foundation), these positions offer an exciting opportunity to conduct cutting-edge research
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-disciplinary research team, consisting of researchers in coil development, electromagnetic simulation, parallel transmit RF pulse design, pulse sequence development, advanced MR image processing, analysis and
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development, data management, and preparation of scientific reports (20%) Computer knowledge to enter data from experiments into existing databases; spreadsheets and web-based applications. Conduct background
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team of undergraduate/postgraduate researchers. Candidates should be able to multitask parallel evolution experiments with phenotypic and genomic analyses. Job Duties and Responsibilities: Typical tasks
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the collective behavior of complex systems, understanding how micro- level interactions drive macro-level evolution. Practical experience with high-performance computing (HPC) and parallel processing to enable
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dynamic and progressive city with outstanding cultural attractions and a high standard of living. For more info, see: https://www.minneapolis.org/visitor-information/ The Institute for Molecular Virology
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programs supported by the Regents Tuition Benefit Program Low-cost medical, dental, and pharmacy plans Healthcare and dependent care flexible spending accounts University HSA contributions Disability and
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, or on-farm research. About the Department The Department of Animal Science (http://www.ansci.umn.edu) in CFANS is located on the St. Paul campus. The Animal Science major enrolls approximately 400 students
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-Doctoral Associate (9546 Post-Doctoral Associate) position. For more info on the division, visit http://www.sph.umn.edu/academics/divisions/biostatistics/. The successful candidate will work with Dr. Thierry
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for soft materials, with particular emphasis on thermo–visco–hyperelastic behavior, integrating continuum mechanics, scientific machine learning (SciML), and computational physics. The project aims