42 postdoc-computational-physics Postdoctoral research jobs at SUNY University at Buffalo
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As a postdoctoral research associate in the department of Physics, this position will support the research program of Prof. Nie (PI)’s projects focusing on investigating novel organo-inorganic hybrid
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a strong background in electroanalytical techniques (e.g., CV, EIS) for investigating reaction kinetics, along with diagnostic skills to probe plasma physics and species transport during reactions
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computational multi-omic data analysis Physical Demands Salary Range $56,484 - $68,604 Additional Salary Information The salary range reflects our good faith and reasonable estimate of the possible compensation
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independently and collaborative within a team, time-management and organizational skills, strong communication skills. Physical Demands Salary Range $55,000 - $65,000 Additional Salary Information The salary
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Detail Information Position Summary This Postdoctoral Associate will support the research program of Professors Dr. Jae Lee and Dr. Soo-Kyung Lee in the Department of Biological Sciences . Projects will
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five years. Excellent oral and written communication skills. Preferred Qualifications Physical Demands Salary Range $61,000 - $64,000 Additional Salary Information Job Type Full-Time Campus North Campus
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Leadership (PAL) program is a structured two-year experience, offered through the University at Buffalo’s School of Pharmacy and Pharmaceutical Sciences (SPPS) Department of Pharmacy Practice (PHM
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Leadership (PAL) program is a structured two-year experience, offered through the University at Buffalo’s School of Pharmacy and Pharmaceutical Sciences (SPPS) Department of Pharmacy Practice (PHM
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Mathematics, Physics, or a closely related field Preferred Qualifications Experience in coding with Mathematica and Python, MATLAB, Julia, C/C++, or a similar program language Prior knowledge of the theory
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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