412 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "UCL" "UCL" "UCL" "UCL" positions at Nature Careers in United States
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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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The Department of Physiology at the University of Tennessee Health Science Center (UTHSC) (https://www.uthsc.edu/physiology/ ) invites applications and nominations for a tenure-track Associate
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. Describe a deep learning project you have executed, ideally a creative use of supervised fine tuning of a pre-trained vision transformer, U-Net architecture, or related topic. Projects in computer vision for
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the University Commission, UW invites applications for three (3) tenure-track Assistant/Associate Professor positions in applied artificial intelligence (AI), machine learning (ML), and advanced applications of AI
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learning. We are proud to be part of progress, working together with the communities we serve to share knowledge and bring greater understanding to the world. For more information, please visit
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bibliography and names with addresses of two references to the online application. Apply for this position online at: http://apply.interfolio.com/177044 Clinician-Educator Track - Clinical responsibilities
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affiliated with HMEI. HMEI's Faculty and Associated Faculty are listed on the Institute's website: http://environment.princeton.edu . Note: Any Princeton University faculty member may serve as a mentor for the
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ambitious, and the opportunity for collaboration with students as well as colleagues is real and constant. For more information on the department, see: https://www.swarthmore.edu/chemistry-biochemistry
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International University (https://biology.fiu.edu) invites qualified candidates to apply for an Open Rank (Assistant, Associate, or Full Professor) position. Scientists addressing groundbreaking questions
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of novel probabilistic deep-learning models that automatically extract mechanistic and statistical knowledge from your in vivo perturbational omics data. This interdisciplinary atmosphere has been a main