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research thrusts (or both): 1.Applied operations research: scholars will develop and implement novel methods to improve the computational performance and resolution of large-scale optimization models
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specific experience in Large Language Models (LLMs), and Vision-Language Models (VLMs) Excellent programming skills (Python is required, C# and C++ is desired) Fluency in English Desired qualifications
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to participate in projects that research and refine quantitative methodology for political science. The postdoc will work on a variety of projects, which may include methods for large language models, the impact
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genome data available. Similarly, the NOAA Geophysical Fluid Dynamics Laboratory (GFDL) has world-leading expertise in climate modeling and access to valuable climate, weather, and air quality data
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of interest include: Metabolomics, isotope tracing, metabolic flux analysis, quantitative modeling, mass spectrometry imaging, cancer metabolism, small molecule inhibitor discovery, dietary impact on cancer
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on developing new systems models to examine social and biological drivers of infection inequality. The overarching goal of this postdoctoral position is to advance the use of mathematical and statistical models
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C.V. online. Upon request, candidates should be prepared to submit references, code and/or writing samples, and transcripts. The final candidate will be required to complete a background check. The work
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multimessenger analyses. Candidates with experience in gravitational-wave data analysis, source modeling, and electromagnetic follow-up are all encouraged to apply. Princeton hosts a strong research program in
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incident angles for benchmarking and validation of theoretical calculations and computational physics and chemistry modeling of important surface processes occurring at plasma-material interfaces in fusion
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of the work builds on recent publications from the laboratory, e.g. integrating language models with mass spectrometry data (https://www.nature.com/articles/s42256-021-00407-x, https://www.nature.com/articles