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, computer science, electrical engineering, applied mathematics, or operations research) before May 2025 are encouraged to apply. Ideal candidates will display outstanding ability for research and a record of
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opportunities are subject to sufficient course enrollment and the approval of the Dean of the Faculty. Postdoctoral track requirements: *Both CITP and Princeton University place high value on in-person
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, architectural or mechanical engineering, physics, applied mathematics.- A strong background in theoretical mechanics and applied mathematics, with an expertise in artificial intelligence. Expertise in design
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evaluation.This opportunity will prepare candidates for a range of competitive positions in academia or industry that involve computational biology/chemistry, machine-learning for biological or chemical data, and
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experimentalists, materials synthesis experts and theorists to maximize their potential to explore, discover and understand emergent behavior of complex quantum matter. The Moore Postdoctoral Scholars in Theory
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forms of electronic and magnetic structure theory and calculations is also expected. The successful candidate will have a strong research and publication record and must have a Ph.D in physics or related
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Theory (more...) Quantum Computing Chemical Engineering / energy sciences and engineering Atomic and Molecular Physics Computer Science and Electrical and Computer Engineering Materials Physics Material
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The Department of Astrophysical Sciences, Princeton University, anticipates offering a number of postdoctoral or more senior research positions in theory, observation, and instrumentation, including
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optimization (theory, modeling, and tools). Candidates should apply at: https://www.princeton.edu/acad-positions/position/39361 and include a cover letter, CV (including a list of publications), research
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related field are particularly encouraged to apply.We seek candidates with expertise in some or all the following areas: density functional theory, deep learning, high-throughput simulations, molecular