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of shifts available: We work with your availability to find shifts and positions that meet your needs and fit your interests. • Opportunities for professional growth and development. • A supportive and
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participation in professional development opportunities and university shared governance . These valuable contributions to university shared governance provide important representation and perspective, along
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leading global research institution, Virginia Tech conducts more than $650 million in research annually. Virginia Tech endorses and encourages participation in professional development opportunities and
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. The individual is also expected to mentor and train graduate students and staff and collaborate with faculty, scientists and students at Virginia Tech and/or other collaborating research institutions. This is a 1
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graduate students, train skills to students and staff, and collaborate with faculty and other scientists at Virginia Tech or other collaborating research institutions. This is a 1-year position that is
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• Experience developing classroom and/or laboratory learning activities • Demonstrated ability to work in a collaborative environment • Experience using Canvas Learning Management System or similar Preferred
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(VCE). The agent will join a team of agriculture, family and consumer science, and 4-H youth development agents in the region. This position requires basic knowledge of horticulture, including crop
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ABOUT THE ROLE: 1) You’ll be joining the Cook Counseling Center team; a department centered on promoting student learning, development, retention, and holistic wellbeing by providing resources
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on promoting student learning, development, retention, and holistic wellbeing by providing resources for improving mental health and identifying psychological barriers to academic success. 2) You’ll be
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broad range of research areas. We are interested in an experimentalist who can develop large datasets in support of emerging artificial intelligence and machine learning driven advances in fluid dynamics