373 evolution "https:" "https:" "https:" "https:" "https:" "University of St" research jobs at Nature Careers
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University of Connecticut Health Department of Regenerative Medicine and Skeletal Development 263 Farmington Avenue Farmington, CT 06030-3705 Tel: 860-679-2062 email: reichenberger@uchc.edu visit us at: https
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available in the research group of Prof. Dr. Jan Streuff. The planned project deals with the development of new titanium(III)-catalyzed reactions, more information can be given during the interview
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coverage by exploiting negative ion mode and advanced fragmentation methods. Within this framework, the postdoc will drive method development and high-level experimental MS studies, including systematic
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(cover letter) Vision for teaching and research CV including employment history, list of publications indicating scientific highlights, H-index and ORCID (see http://orcid.org/ ) Teaching portfolio
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Master's student, and several Undergrad students, and we plan to recruit an additional Postdoc and a graduate student over the next couple of years. More information about the Kim lab can be found here: http
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(https://irp.drugabuse.gov/staff-members/da-ting-lin/ ) Note: This position is open to both U.S. and non-U.S. citizens. Selection for this position will be based solely on merit, with no discrimination
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provides unique career development opportunities for the postdoc trainees. Multiple former postdoc trainees have become Tenure Track Assistant Professors and/or Independent PIs in USA and other country
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development of blood malignancies and other solid cancers. Our research bridges basic, translational, and clinical studies to uncover mechanisms linking inflammation, DNA damage, and stem cell aging to cancer
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in their decisions and businesses in their strategies. Do you want to know more about LIST? Check our website: https://www.list.lu/ How will you contribute? We are seeking a highly motivated
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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