551 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "https:" "UCL" positions at University of Virginia
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machine learning. The research associate is expected to conduct research on human-fires interactions in built environment. QUALIFICATION REQUIREMENTS: A PhD in atmospheric science, geography, environmental
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The Department of Anesthesiology at the University of Virginia School of Medicine seeks applications for a full-time position of Assistant Professor of Anesthesiology. Responsibilities Teach
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limited to 1500 hours of work in a year. For more information, refer to the Wage Employment link: http://uvapolicy.virginia.edu/policy/HRM-029 ” To apply, please submit an application online through
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to work in a collaborative environment; APPLICATION PROCEDURE: Apply online at https://uva.wd1.myworkdayjobs.com/UVAJobs attach the following; cover letter. In the cover letter, please address your
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. For more information, visit https://careers.uvahealth.org/us/en/support-staff. This patient focused role is responsible and accountable for various aspects of the patient access experience including but not
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Dr. Teague Henry at the University of Virginia invites applications for a post-doctoral research associate with expertise in intensive longitudinal data, machine learning, and digital intervention
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community please see http://www.virginia.edu/life/charlottesville and https://embarkcva.com/ . The University of Virginia is an equal opportunity employer. All interested persons are encouraged to apply
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Nursing. This position will focus on delivering course content, facilitating student learning and supporting academic success in alignment with the School of Nursing curriculum. Duties include preparing and
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and the Charlottesville community please see http://www.virginia.edu/life/charlottesville and https://embarkcva.com/. The University of Virginia is an equal opportunity employer. All interested persons
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multidisciplinary experience in combining integrative computational immunology – data-driven, state-of-the-art single cell resolution and spatial methods, machine learning and kinetic modeling – with integrative