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interventions pertinent to patient care. Serve as a role model to teach students how to interact, assess and make sound clinical decisions. · Honor and uphold the Healthcare Simulationist Code of Ethics
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on the development of artificial intelligence/machine learning algorithms to integrate multiple sources of patient-derived data, such as optical coherence tomography (OCT), retinal fundus photography (RFP), electronic
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for translating complex data to the point of care. DBMI is the academic home for over 30 tenure-track faculty who use genome-scale biology, multiscale modeling, mathematical physiology, simulation, machine learning
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network models on computing clusters Knowledge, Skills and Abilities: Demonstrated fluency in Python, and willingness to keep up with new machine learning libraries (pytorch, lightning, …) Knowledge
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to implement advanced computational pipelines, including machine learning, deep learning, Bayesian inference, and probabilistic mixed membership modeling for innovative research. · Contribute
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epidemiology, simulation modeling, machine learning, and health economics to 1) improve health outcomes for vulnerable populations, 2) uncover structural factors that drive health inequities, and 3) inform
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differentiation (including evidence of more than one iPSC cell line creation). Bioinformatic analysis/computer coding experience. Experience and/or willingness to work with animal models. Knowledge, Skills, and
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/paraprofessional experience may be substituted for a bachelor’s degree on a year for year basis. An advanced degree (Masters or Doctorate) may be substituted for experience on a year-for-year basis if the degree is
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Millions of moments start at CU Denver, a place where innovation, research, and learning meet in the heart of a global city. We’re the state’s premier public urban research university with more than 100 in
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seeking a Professional Research Service Assistant to join our team. Our lab focuses on developing and applying innovative statistical machine learning methods, single-cell multi-omics, and systems