91 engineering-computation "https:" "https:" "https:" positions at Nature Careers in United States
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/articles/s42256-024-00821-x, https://pubs.acs.org/doi/10.1021/acs.analchem.5c06256, https://www.nature.com/articles/s41570-023-00570-2). The research is computational in nature but involves close
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-023-00635-7 ) Information on our postdoctoral training program, benefits, and a virtual tour can be found at http://www.utsouthwestern.edu/postdocs . Interested individuals should send a CV, cover
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The High Meadows Environmental Institute (HMEI) at Princeton University is accepting applications for the 2027-28 HMEI Environmental Fellows Program. This postdoctoral program seeks scholars from
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of resistant cell lines) and in vivo experiments using xenograft, syngeneic and genetically engineered mouse models of KRAS-mutant lung cancer. Candidates with prior experience in computational biology will
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that accelerate innovation in healthcare and biotechnology through validation, engineering, and valorization pathways such as licensing, partnerships, and spin‑outs. About the role We are seeking a Computational
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publication record in immunology/epigenetics. Information on our postdoctoral training program, benefits, and a virtual tour can be found at http://www.utsouthwestern.edu/postdocs . Please also read recent
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of their harvest while using organic and regenerative practices. The Specialist will be part of the University of California, Santa Cruz Department of Electrical and Computer Engineering. The position will be based
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, including responsible, transparent, and equitable uses of computational tools in biomedical contexts but considering candidates with expertise in a broad range of biomedical engineering fundamentals. We
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. Learn more about Sandia at: http://www.sandia.gov *These benefits vary by job classification. What Your Job Will Be Like: Sandia provides systems, science, and technology solutions to meet national
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. The candidate will lead computational analyses of these datasets, using the laboratory’s suite of existing AI/ML tools to assign structures to unidentified peaks in metabolomic datasets (e.g., https