37 big-data-and-machine-learning-phd Postdoctoral positions at SUNY University at Buffalo
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, machine learning, and optimization, broadly defined. Applicants working at the intersection of these areas, especially those applying theoretical and computational methods to problems in management science
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Term Salary Grade SL1 Posting Detail Information Position Summary The Shi group is seeking motivated Postdoctoral Associateswith an excellent work ethic and background in molecular simulation and machine
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that may improve data-model agreement. Learn more: Our benefits , where we prioritize your well-being and success to enhance every aspect of your life. Being a part of the University at Buffalo community. As
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Posting Details Position Information Fiscal Year 2025-2026 Position Title Postdoctoral Associate, Microbiology and Immunology Classification Title Postdoctoral Associate Department Microbiology and
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plans Develop methods or research that incorporate highly specialized training in chemistry Conduct experiments and collect data Analyze, evaluate, and present findings in professional journals Learn more
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Posting Details Position Information Fiscal Year 2025-2026 Position Title Postdoctoral Associate, Department of Biomedical Engineering Classification Title Postdoctoral Associate Department
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Posting Details Position Information Fiscal Year 2025-2026 Position Title Postdoctoral Associate, Indigenous Studies Classification Title Postdoctoral Associate Department Indigenous Studies
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completion by August 2026 Preferred Qualifications PhD in hand by start date Physical Demands Salary Range $70,000 Additional Salary Information The salary range reflects our good faith and reasonable estimate
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Posting Details Position Information Fiscal Year 2025-2026 Position Title Postdoctoral Associate, Center for Climate Change and Health Equity Classification Title Postdoctoral Associate Department
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. Candidates with expertise in climate science, hydrology, earth and planetary science, and physically-based or machine-learning/AI-based climate modeling (e.g. hydrometeorological and/or atmospheric processes