309 postdoctoral-image-processing-in-computer-science positions at University of Kansas
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exposure to using computers and computer programs including Word, Excel, and PowerPoint, Team; Ability to learn new computer software and applications, as evidenced by application materials. Additional
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exposure to using computers and computer programs including Word, Excel, and PowerPoint, Team; Ability to learn new computer software and applications, as evidenced by application materials. Additional
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30311BR Engineering Administration Position Overview The Self Engineering Leadership Fellows (SELF) Program in the School of Engineering at The University of Kansas (KU) is seeking outstanding
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individual for a non-tenure-track twelve-month faculty position as a Professor of the Practice in our graduate Engineering Management (EMGT) program. The successful candidate will have a professional record in
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Award Program (UGRA) application and awarding process twice each academic year. Monitor the progress of 25-50 UGRA recipients each semester. Develop content for, coordinate, and assess the impact of
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Behavioral Sciences and the Hoglund Biomedical Imaging Center , providing research and clinical training opportunities. Responsibilities for the position include administering cognitive, sensory, EEG, and MRI
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upgrade new and existing computer equipment including imaging. Troubleshooting hardware and software issues for labs, faculty, staff, students, etc. Tests to isolate the source of issues. Preparation
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performance, and organizational structures and processes that support clear goals. The HOPE program provides students with grounding in the tools that can be implemented across the organization to achieve
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of the professional development program, the timeframe for the preparation, and client needs. Instruction in professional development programs can range from three days per month once per year to a recurring series of
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questions in genetics and evolutionary biology. Our current work integrates wet lab and computational approaches to understand the genetics of adaptation and speciation, with a focus on the role of gene