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to successful work-based learning and internship support services. The Professional Development and Experiential Programs team conceptualizes and executes programs, services, and resources that help Virginia Tech
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for construction operations. The successful candidate will contribute to cutting-edge research in mixed reality (MR)-based simulation platforms, machine learning-based process optimization, and human-machine
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no later than the sixth year of employment. Demonstrated ability to recruit, select, train and manage volunteers; demonstrated ability to lead groups, plan, implement, facilitate, teach, and evaluate
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machine learning for next-generation wireless networks, (ii) Foundations of semantic communications and age of information, (iii) Stochastic geometry and spatial modeling of large-scale wireless systems
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information; use computer applications; develop and implement evaluation plans; recruit, train and utilize volunteers, enabling them to plan, conduct, evaluate and report educational activities; provide
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ecosystems, or climate adaptation frameworks (i.e. Resilience Adaptation Feasibility Tool); and/or an enthusiasm to learn about climate issues in coastal Virginia. ● Experience engaging with community
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degree completion. Joining our team means becoming a part of an inclusive and supportive work environment. You will have the opportunity to engage with a diverse range of individuals, learn from
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the School of Neuroscience since 2015 (http://www.neuroscience.vt.edu). Successful candidates will teach as well as establish a competitive research program that can attract extramural funding from a wide
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Job Description This team is responsible for assisting clinicians, residents, interns, and students during routine and emergency surgical procedures. You will instruct senior veterinary students in
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calling methods, proximal sensing, significant programing proficiency in a suitable scientific language (Python, Julia, R, C, C++, Fortran, etc.), machine learning, and knowledge or familiarity of crop