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analytical chemistry, organic chemistry, inorganic chemistry, physical chemistry, materials chemistry, and biochemistry. The candidate will develop novel machine learning models in conjunction with electronic
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of Informatics and Computing Location Indianapolis Position Summary The Postdoctoral Research will help design and conduct research in AI & machine learning for medicine while receiving advanced training from a
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Postdoctoral Fellow Advancing Nature-Based Carbon Accounting in Eastern US Forests via Machine Learning and Remote Sensing O’Neill School of Public and Environmental Affairs Bloomington, Indiana Indiana
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a high degree of initiative. Ability to build strong customer relationships. Knowledge of and ability to apply quantitative research skills. Familiarity with and openness to learn qualitative and
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, computer scientists, and policy experts. The postdocs will work with Prof. Daniel Loveless on various areas of research, including radiation and reliability effects in emerging semiconductor technologies
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Responsibilities Conducts tests across a diverse array of assays using laboratory machinery and computer programs. Tests and sets up lab equipment. Collects data and prepares reports based upon established protocols
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, and Columbus. As the nation's largest medical school, IUSM is committed to being an institution that not only reflects the diversity of the learners we teach and the patient populations we serve, but
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. SKILLS Required Ability to understand instructions. Proficient laboratory and lab safety skills. Excellent customer service skills. Ability to learn quickly. Proficient training and teaching skills
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Indianapolis Position Summary Are you passionate about genomics, big data, drug discovery, and AI/machine learning? Interested in advancing cutting-edge multi-omics research to explore genetic and biomolecular
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traits using genomics and other omics data sources; developing and/or comparing statistical models, with a focus on machine learning methods, for more accurate predictions of polygenic risk scores and