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, methods, and policies. Interact with program participants. Represent CCE before the public, community leaders, government officials, Cornell or others. Occasionally apply established subject matter
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of fish populations in Adirondack ecosystems, as part of the Adirondack Fishery Research Program (AFRP) team. The mission of the AFRP is to inform fishery and environmental management to safeguard
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-intensive environment with demonstrated collaboration across AI and domain science teams Experience with scientific computing and numerical libraries; database design and management (SQL/NoSQL), data catalogs
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College of Computing and Information Science under the direction of Principal Investigator Rene Kizilcec. The NTO is a collaboration among Cornell University, Carnegie Mellon University, and the
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on work with the practice of putting it to use. CAROW provides a platform for new interdisciplinary approaches, innovative methods, and nimble resourcing with the goal of bringing high quality research
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the university. CAROW connects research on work with the practice of putting it to use. CAROW provides a platform for new interdisciplinary approaches, innovative methods, and nimble resourcing with
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program work, assist in the creation of program lesson plans, utilize a variety of delivery methods and assist in delivering established innovative educational programs as assigned. This position will also
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University. The Northwest New York Dairy, Livestock and Field Crops Program provides opportunities and information to producers, processors, and agri-business professionals, arming them with the knowledge
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of the greatest relevance, here in New York, across the nation, and around the world. Position Function The Research Associate will contribute to the Dillon Lab’s multidisciplinary research program evaluating
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support Freight and logistics modeling Cybersecurity and logistics systems Cutting edge computational methods including domain informed neural networks, explainable AI, hierarchical reinforcement learning