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students across programs (PhD, MSW, BSW) and campuses. The IUSSW is nationally and internationally recognized for educating leaders of tomorrow through community-engaged practice, research, and partnerships
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function) · Using advanced neuroimaging and/or machine learning techniques to understand the connection between physical activity, sedentary behavior, and brain health. · Examining the effects of prolonged
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readiness. A focus on big data resources (environmental, health, social, and model projections), AI and machine learning tools, is desirable. Highly desired experience includes digital technologies (e.g
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students across programs (PhD, MSW, BSW) and campuses. The IUSSW is nationally and internationally recognized for educating leaders of tomorrow through community-engaged practice, research, and partnerships
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. EDUCATION Required Bachelor's degree Preferred Graduate Degree (Master's/PhD) Juris Doctor (J.D.) or other advanced degree or certification in legal, EEO compliance, human resources, student affairs
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. Ability to teach both face-to-face and online classes. Preferred Basic Qualifications PhD or ABD in Computer Science, or a closely related field. Demonstrated potential of teaching excellence in the areas
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neuroimaging and fluid biomarkers, (b) systems biology analysis of pathways from multi-omics data using multi-layered network approaches, © machine learning for identification of genetic risk factors in ADRD, (d
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some overlapping measures in the individual data sets and through the use of advanced analytic tools including machine learning and graph theoretics, one can discover multiple developmental pathways in
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, and improving quality of life for individuals and societies. Ongoing learning: Continuously developing the skills, knowledge, experience, and sound judgment necessary for wise and informed decision
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pathology on computational, molecular, cellular, preclinical and translational levels. A spectrum of scientific methods includes state-of-the-art multi-omics approaches, machine learning and implementation