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orders, moves, and renovations for the Division including: Manage office/space assignments. Coordinate moves and renovations. Manage all space related expenses (i.e., computer and telephone service orders
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performance analysis, graph-driven deep neural networks, data-efficient machine learning, self-supervised learning, reinforcement learning, online learning, and meta-learning with applications
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to tailor instruction and support participant readiness Set up the physical and digital learning environment—including seating arrangements, technology configuration (e.g., computer, projector), and
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ecology, imaging spectroscopy, remote sensing, and machine and deep learning approaches to work in the detection of invasive diseases using spaceborne observations. We are interested in recruiting
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Clinical Practices (GCP) Standards ● Computer proficiency and ability to navigate multiple software applications; experience with computerized data management ● Demonstrated accurate data management skills
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computer hardware and software. ● Must have demonstrated proficiency within the last 5 years in processing financial transactions. ● Ability to work in teams and work collaboratively Desired Qualifications
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orientation and other professional development; accreditation], UMD Engage [volunteer fairs, professional learning communities]) Contact internal units and external organizations as needed to secure venues
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six years Strong organizational and communication skills; ability to write and follow protocols accurately. Computer literacy, including proficiency with Word and Excel. Exposure to laboratory
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clinical pathology workflows, datasets, and terminology • Experience with high-performance computing (HPC) environments and containerization tools (e.g., Docker, Singularity) • Exposure to machine learning
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Previous Job Job Title Post-Doctoral Associate - Electrical and Computer Engineering Next Job Apply for Job Job ID 369523 Location Twin Cities Job Family Academic Full/Part Time Full-Time Regular