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about the material behavior and its impact on performance. Using simulation data to train machine learning models of microstructure evolution. Mentoring and directing undergraduate, masters, and PhD
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Analysis About the Mentor: Dr. Shao obtained his PhD degree in Electrical and Computer Engineering from the University of Iowa in 2019, under the supervision of Dr. Gary E. Christensen (IEEE Fellow, AIMBE
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. Mingjie Liu, focusing on the development and implementation in advanced machine learning and deep learning models to predict new materials and molecule properties. This one-year appointment is renewable
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://biostat.ufl.edu/ ) is accepting applications for a fully-funded postdoctoral associate position. This position, available immediately, focuses on developing statistical, machine learning and deep learning methods
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, and multi-omics data analysis. They also develop novel diagnostic and clinical applications in the field of comparative oncology deploying AI and machine learning. The best-qualified candidate will have
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group as well. The group's research interests include axion and dark matter phenomenology, gravitational wave phenomenology, BSM model building, applications of machine learning to particle physics, and
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with education and experience. Minimum Requirements: PhD in Computer & Information Science & Engineering or a related field. Preferred Qualifications: Special Instructions to Applicants: The search
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compliance, computer programming (Python and R preferred), data analysis and visualization, machine learning and artificial intelligence, wearable sensors, biomechanics, sports analytics, sports performance
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graphical models, causal inference and machine learning. Dr. Liu's research interests lie in modeling the rapidly-accumulating big data (e.g., muti-omics) in biology and medicine for precision medicine via a
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incorporated into all areas of supervision, training seminars, evaluations, and professional activities. The training program is also committed to cultivating an atmosphere that is conducive to learning by