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Engineering Condensed Matter Physics Computer Science and Electrical and Computer Engineering (more...) Quantum Information and Quantum Control Computational Science and Engineering Quantum Computing Condensed
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) and spatial Machine Learning (ML) models Salary and full employee benefits are offered in accordance with Princeton University guidelines. The Term of appointment is based on rank. Positions
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Computer Science Department at Princeton University. We seek candidates with computational biology, bioinformatics, computer science, machine learning, statistics, data science, applied math and/or other
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researchers at Princeton and other institutions, to study novel renewable energy technologies. The candidates are expected to have a PhD degree in Chemical Engineering or related field, and have experience with
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senior ranks may have multi-year appointments. A PhD is required, with appropriate research experience in quantitative biology, (bio)physics, (bio)engineering or related Engineering and Physical sciences
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; have (or expect to have) a PhD in Molecular Biology or related field; research experience in one or more of the following protein purification, protein-nucleic acid biochemistry, cryo-electron
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funding.Applicants should have a strong track record of research excellence in a related field, and should have or be approaching a PhD in a related discipline (Physics, EE, Chemistry, or Computer Science
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ability to independently lead research projects. Candidates must also be comfortable working with and mentoring graduate and undergraduate student researchers. To be eligible for this position, a PhD in
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August 2026. The Center supports empirical research on democratic political processes and institutions. PhD required. Each post-doctoral associate will pursue research and contribute to the intellectual
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interested in computational materials design and discovery. The successful candidate will develop new, openly accessible datasets and machine learning models for modeling redox-active solid-state materials