374 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"CESBIO" positions at University of Virginia in United States
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demonstrates an understanding of the functional/developmental age of the individual served. Licensed Practical Nurse - Ambulatory Assist the registered nurse and/or provider through data collection concerning
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demonstrates an understanding of the functional/developmental age of the individual served. Licensed Practical Nurse - Ambulatory Assist the registered nurse and/or provider through data collection concerning
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moderate supervision. Problems are typically of a routine nature but may at times require interpretation or deviation from standard procedures. Communicates information that requires some explanation or
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vocational or technical education. Work is routine or follows standard procedures. Work is closely supervised. Communicates information that requires little explanation or interpretation Education
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will be accountable for reporting data and will maintain proper documentation, meet all regulatory reporting requirements within the office, prepare for audits, and operate according to federal and state
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your perfect job match, and the freedom and support to take your career to the next level. Educational Resources 1 Job Information Management, Services & Technology 1 Job Nursing 2 Jobs Research 3 Jobs
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meetings and events. Coordinate arrangements with internal and/or external vendors. Handle sensitive and confidential information with utmost discretion. Interact with other university officers on behalf
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with enterprise resource planning (ERP) such as Workday or fixed asset management software. Additional Information This position requires the ability to work onsite in Charlottesville, Virginia
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Development of strategies to improve the spatial resolution and image contrast of structural lung proton MRI using efficient spiral sampling and neural networks for denoising, motion compensation, and data