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genomic data for reconstructing evolutionary patterns and processes that have shaped biological history across deep timescales. The ideal candidate will have a background in phylogenomics and bioinformatics
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contact information for three references. This position is subject to the University's background check policy. The work location for this position is in-person on campus at Princeton University.The Term
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/37861 and include curriculum vitae, research statement and names and contact information for three references. The Term of appointment is based on rank. Positions at the postdoctoral rank are for one
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: 277494300 Position: Postdoctoral Research Associate in Microfluidics, Nanofabrication, and Nanophotonics Description: The Department of Electrical and Computer Engineering has opening for postdoctoral
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engineering. We seek candidates with an interest in participating in large multi-PI grants and with collaborative research experiences, experience writing proposals for user-facilities, and/or experience
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they are likely to make to higher education in the future through teaching and writing about race. How To Apply: Applicants must upload to the online portal the following information by December 15, 2025, 11:59pm
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, and robotics. ARG's research interests include topics such as robot learning, human-robot interaction, Generative AI, computer vision, closed-loop control, extended reality (XR), and computational
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design; *One writing sample (limit of 50 pages); *Contact information for three references, who will be asked to comment specifically on the applicant's qualifications for the proposed research project
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data-driven, computational approaches. Successful candidates will be willing and able to work across a breadth of disciplines - from genomics to computer science, sociology to psychology, engineering to
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of phylogenomics to work with Professor Tiago Simões. The Simões lab is broadly interested in phylogenetic methods and applications, using morphological and genomic data for reconstructing evolutionary