Sort by
Refine Your Search
-
superb outdoor recreational activities. If interested, please send an updated CV, and a cover letter indicating research experience, career goals, and the names and contact information of two references
-
of our daily lives, yet its full potential in medicine has not been achieved. Medical data—ranging from images and genetic information to electronic health records—is often complex and varied, creating
-
adipose tissue in cancer progression Our research includes transdisciplinary approaches to colorectal cancer prognosis, utilizing health behavior information, measures of energy balance, as
-
MRI protocols to accurately assess treatment outcomes in terms of treatment viability. This project aims to further advance this objective by integrating different medical imaging data types
-
to graduate and undergraduate students, and a willingness to participate in lab and departmental activities. Data Management: Maintain a detailed, well-organized electronic laboratory notebook to ensure
-
Information The University is a participating employer with Utah Retirement Systems (“URS”). Eligible new hires with prior URS service, may elect to enroll in URS if they make the election before they become
-
characterization of electrode materials Design, operate and optimize electrochemical reactors and separation systems, analyze and interpret data using electrochemical and materials characterization techniques (e.g
-
the selection process. Type Benefited Staff Special Instructions Summary Please provide a statement of research interests and career goals. Additional Information The University is a participating employer with
-
@hci.utah.edu . Responsibilities Minimum Qualifications Preferences Preferences: The successful applicant will have experiences working with electronic health records data, especially in its application in
-
retinal tissue dissection, immunohistochemical and molecular assays, confocal imaging, and basic analysis of imaging data. The candidate will help with tissue processing and data collection across multiple