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Science and Technology Job Summary The Center for Mathematics, Science, and Technology (CeMaST) is seeking strong student candidates to become STEM Ambassadors to join their HHMI Success in Science Program
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-rounded program that develops youth through school and community-based programs recruiting and training volunteers and leaders to work with youth utilizing and/or developing councils, advisory groups, and
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for 4-H Youth Development will work to provide leadership and management to the overall 4-H youth development programs for Clark County. Agent responsibilities include: implementing a well-rounded program
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curriculum. Contribute to a comprehensive assessment plan and utilize data to make evidence-based enhancements to programs and services. Actively recruit, advise, develop, and support the Community Council
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integration across identity management, research computing platforms, AI/ML workloads, and a growing portfolio of cloud-native and hybrid applications. This hands-on technical leadership role requires deep
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, wait time, abandonment rates, and agent performance. Identifies trends and areas for improvement, using data to make informed decisions around staffing and workflow optimization. Leads a team of
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, including regional campuses in Peoria, Quad Cities, Rockford, Springfield, and Urbana. UI Health is dedicated to the pursuit of health equity. Learn more: https://hospital.uillinois.edu/about-ui-health
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strategies and sustainable use of ecosystems. Weekly recitation sections discuss material from lectures, assigned readings and films, and perform computer and gaming simulations. Modes of Work Positions that
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multiple AI fields, including machine learning (including deep learning, foundation models or agentic AI), human-centered AI (including social computing, multi-modal processing or robotics), digital security
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the following is desired: - Agentic and sequential decision-making for autonomous experimentation, including active learning and optimal experimental design - Generative and probabilistic modeling