271 programming-"Multiple"-"Prof"-"U.S"-"FEMTO-ST-institute"-"O.P" positions at University of Virginia
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online with the following documents: Upload all materials into the resume submission field, multiple documents can be submitted into this one field. Alternatively, merge all documents into one PDF
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profile by searching 'Find Jobs.' Complete an application online with the following documents: Upload all materials into the resume submission field, multiple documents can be submitted into this one field
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annually. PHYSICAL DEMANDS: This is primarily a sedentary job involving extensive use of desktop computers. The job does occasionally require traveling some distance to attend meetings, and programs. A
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program. Experience: Three years of experience required. Licensure: BLS required. Certified to practice as a Surgical Technologist by NBSTSA (The National Board of Surgical Technology and Surgical Assisting
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. Collaboration and training: Importantly, this lab will consist of multiple trainees at all levels, from undergraduate to postdoctoral fellows, and so the ideal candidate must be willing to work as a team, create
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-seq, CITE-seq, and/or multiome-sequencing data, along with genomic data integration. Interest in human genetics and autoimmune disorders. Solid background in both programming and biology. Strong
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equipment using established ACR and FDA guidelines along with imaging protocols set within the mammography program. Documents correct information on each patient using EMR and facility reporting systems
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of the core ERP. Migrates ERP projects programs and files from development to production environments. Supports team members and ensures that established deadlines and client needs are met. Keeps management
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incentive. The staffing plan is in a constant state of assessment and evaluation as the scheduled day progresses and as needs arise. Capable clinician, focused on expanding knowledge and skills. Consistently
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data issues. Utilizing machine learning techniques as appropriate for data analysis. Developing computing programs and software to support research initiatives. Applying new methodologies to real-world