1,333 machine-learning "https:" "https:" "https:" "https:" "https:" "The University of Edinburgh" positions at Nature Careers
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position of a University assistant (prae doc) as soon as possible, at the Research Group Data Mining and Machine Learning at the Faculty of Computer Science under the supervision of Univ.-Prof. Dipl
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details, please visit our website at https://slst.shanghaitech.edu.cn/main.htm Shanghai Institute for Advanced Immunochemical Studies (SIAIS) Shanghai Institute for Advanced Immunochemical Studies (SIAIS
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if they demonstrate strong relevant skills. Coursework or strong background in computational mechanics / FEM, numerical methods, and scientific programming. Exposure to machine learning / data-driven modelling and/or
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with biomedical graduate training and research, as well as a vibrant Master's Degree and post-baccalaureate program. The successful candidate will be expected to teach in the medical curriculum and
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: https://kaunasin.lt/en/live-in-kaunas/ Application Process Applications must be submitted electronically by e-mail. Deadline: 30 January 2026, 16:00 CET E-mail: talent.pool@lsmu.lt Subject line: My First
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to develop new methods, for example using machine learning. have a proven track record of independent research funding and high quality publications. have at least 5 years of post-PhD work experience
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) at the Fralin Biomedical Research Institute at VTC (FBRI - https://fbri.vtc.vt.edu/ ) for a tenured (as approved by the VT BOV) faculty leadership position at the full professor level. The PRC
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and knowledge transfer. Discipline, including, but not limited to: Electronic and Information Engineering, Computer and Data Engineering, Electronic and Electrical Engineering, Information Engineering
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or machine learning, proficiency in deep learning techniques (CNN, VIT, diffusion, GAN) Good understanding of the mathematical foundations of machine learning Mastering python and related AI software
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. AT-CERE is closely connected with the center CERE of DTU (www.cere.dtu.dk ) and KT Consortium (https://www.kt.dtu.dk/research/kt-consortium ) which is a cross-disciplinary and cross-center activity of