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management, workflow management, High Performance Computing (HPC), machine learning and Artificial Intelligence to enhance our capabilities in making AI-ready scientific data. As a postdoctoral fellow at ORNL
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the behavior of complex rotating machinery operating under extreme conditions. Through the integration of modeling, simulation, and experimental validation, the group supports the design, performance
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: The design and analysis of computational methods that accelerate AI/ML when applied to large scientific data sets; Energy efficient physics-aware algorithms, capable of distributed learning on high performance
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include: Supporting the Division Director in the operation of the Division and representing the Division Director when the Director as needed. Working with the section Group Leaders to establish
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applied mathematics and computer science, experimental computing systems, scalable algorithms and systems, artificial intelligence and machine learning, data management, workflow systems, analysis and
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Coordinator with emphasis in the areas of production operations, Research & Development (R&D) testing, work planning, and the overall management of laboratory spaces. This group is focused on the demonstration
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Requisition Id 15696 Annual Salary Range: $125,000.00 - $156,000.00 Work-Site Type: Remote ORNL offers a flexible work environment that supports both the organization and the employee. In addition
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to the Prototype Manufacturing Group Leader. As part of our team, you will work with other technicians, engineers, quality representatives, project managers, and other project staff to provide best-in-class
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liquids, frustrated magnetism, excitonic magnets, and strongly correlated electron systems. You will work closely with theorists, experimentalists, and computer scientists to build robust, scalable
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species. It can be fine-tuned for downstream applications such as predicting genetic perturbations, optimizing photosynthetic apparatus for performance, selecting top performing genotypes for various