9 computer-science-programming-languages-"St"-"FEMTO-ST-institute"-"ST" Postdoctoral positions at University of New Hampshire in United States
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, Environmental Science, or a closely related field is required. Demonstrated experience in computational modeling, data analysis, or social science research relevant to environmental systems or infrastructure is
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: The candidate should have a strong background and training in theory and computational science related to molecular biophysics and biomolecular modeling, and should have significant prior research experience and
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: The candidate should have a strong background and training in theory and computational science related to molecular biophysics and biomolecular modeling, and should have significant prior research experience and
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at the University of New Hampshire. The candidate is expected to carry out analytical and computational study on three-dimensional (3D) topological spin textures and 3D magnetic tomography. Minimum Qualifications
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USNH Employees should apply within Workday through the Jobs Hub app This postdoctoral position is a key component of Assistant Professor Aylin Aykanat’s independent research program in
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: Doctorate in Oceanography, Meteorology, Statistics, or similar field. Required Knowledge, Skills & Abilities: Fluent in one or more programming languages (python, Julia, or possibly R) Able to perform
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for an experimental Postdoctoral Research Associate. Our group’s activities focus on the Spin Physics program at Jefferson Lab and other accelerators. We operate a Dynamic Nuclear Polarization Lab with full
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publishing of results. (20%) Collaborate with other team members on various lab projects (20%) Minimum Acceptable Education & Experience: PhD in quantitative ecology, marine science, or related field Required
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and Environmental Engineering at the University of New Hampshire. The successful candidate will be responsible for developing and coding workflow processes and designing experiments for multisensory data