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and photonics Neuromorphic computing, artificial intelligence and machine learning Quantum and 2D materials technologies & systems Micro and nanoelectromechanical systems (MEMS/NEMS) Electromagnetics
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, synaptic growth, brain network organization and connectivity, cognitive function) Using advanced neuroimaging and/or machine learning techniques to understand the connection between physical activity
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therapeutics, wearables, artificial intelligence (AI) and machine learning (ML), public health surveillance systems, and virtual/augmented/extended reality. Health conditions of interest are also broad and may
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programs at the BS, MS, and PhD levels. Candidates must be tenured and demonstrate a strong scholarly record of effective, well-reviewed teaching, a scholarly record of externally-funded research, exhibited
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, virtual machines, network...) Provides advanced consultation with researchers in the use of a broad set of state-of-the-art research systems, tools, and software to enable research productivity Partners
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networks; brand safety and suitability; campaign content, distribution, and effects; consumer behavior) and methodologies (e.g., explanatory social scientific; predictive machine learning; econometric
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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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of incomplete grades, double PhD major forms, etc. Advises students on best use of fee remissions. Determine eligibility for G901 and off campus A800 (research credit hours). Designs and maintains a database to
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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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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