579 computer-programmer-"https:"-"Prof" "https:" "https:" "https:" "https:" "CNRS" positions at University of Virginia
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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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supervision and collaborating with and mentoring graduate and undergraduate students, QUALIFICATION REQUIREMENTS: A Ph.D. in Psychology, Human Development, Political Science, Computer Science, Data Science or
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more, please visit: https://tinyurl.com/trinhlaboratory The successful candidate will join an interdisciplinary research group in which research questions and novel ideas are valued and examined from
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The UVA Earn While You Learn Trainee Program provides structured coursework and paid on-the-job-training as a full-time, benefitted employee. Patient Care Techs perform a variety of patient care and
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needs Retirement through the Virginia Retirement System Tuition and professional development benefits Employee wellness program featuring activities to earn up to $500/year The selected applicant will
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year. For more information, refer to the Wage Employment link: http://uvapolicy.virginia.edu/policy/HRM-029 The University will perform background checks on all new hires prior to employment. Questions
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professional development benefits Employee wellness program featuring activities to earn up to $500/year Physical Demands: The employee will be required to bend, stoop, squat and walk while making frequent
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throughout the program as determined by their competency and overall clinical development. Fellows are evaluated on their clinical performance and competencies after each rotation. Full-time Clinical Schedule
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single course. This is an at-will faculty wage position which does not carry benefits. To apply, please submit an application online at https://jobs.virginia.edu and attach a cover letter, curriculum vitae
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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