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, Urban Analytics, or related fields Strong expertise in transportation systems modeling and computational methods Demonstrated programming proficiency (e.g., Python, R, JavaScript, SQL) Experience working
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, and others) as part of program delivery. Foster acceptance of the AIS programs, methods and policies to address community and individual needs. Represent Capital Region PRISM and CCE before the public
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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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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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-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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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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support Freight and logistics modeling Cybersecurity and logistics systems Cutting edge computational methods including domain informed neural networks, explainable AI, hierarchical reinforcement learning