34 coding-"https:"-"Prof"-"FEMTO-ST" "https:" "https:" "https:" "https:" "https:" "https:" "UNIV" positions at The University of South Dakota
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in Clay, Lincoln, Turner and Union counties. These services are available in-home or at one of our local centers and some are offered on a full-day, year-round basis. Visit https://www.usd.edu
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, active and significant research publication in the years preceding application, and substantial service record at various levels. Applications must be submitted online at https://yourfuture.sdbor.edu and
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on-line at https://yourfuture.sdbor.edu . Include on the website a letter of application, curriculum vitae with a link to your website and/or your digital portfolio, statement of teaching philosophy, and
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be accepted online until the position is filled, with full consideration given to completed applications received by October 15, 2025. Applicants are required to apply online at https
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be accepted online until the position is filled, with full consideration given to completed applications received by December 19, 2025. Applicants are required to apply online at https
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years of postdoctoral training. We seek an energetic and collaborative individual that will interact with faculty within the Division of Basic Biomedical Sciences (https://www.usd.edu/Academics/Colleges
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will begin immediately and continue until the position is filled. Applicants MUST complete application through the University of South Dakota’s on-line application process found at: https
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to the principles set forth in the National Association of Student Financial Aid Administrators (NASFAA) Statement of Ethical Principles and Code of Conduct for Institutional Financial Aid Professionals and the USD
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, macroinvertebrate collection, and stable isotope analysis. The successful candidate is expected to have extensive experience in aquatic ecology, coding in R, and an ability or willingness to learn Bayesian modeling
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, macroinvertebrate collection, and stable isotope analysis. The successful candidate is expected to have extensive experience in aquatic ecology, coding in R, and an ability or willingness to learn Bayesian modeling