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characterization. Collaborate with line management, project management, and team members to ensure project success. Contribute significantly to R&D, design development, and experimental troubleshooting activities
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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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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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include data compression and reconstruction, data movement, data assimilation, surrogate model design, and machine learning algorithms. The position comes with a travel allowance and access to advanced
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, from national security to life-saving medical treatments. Major Duties/Responsibilities: The Section Head works closely with the Division Director, ESED leadership, and section Group Leaders to establish
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involved with developing and coordinating tests to determine mechanical and thermal properties for use in and to validate simulations. Finally, the candidate will be responsible for providing direction in
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: The selected candidate will work with technicians, process engineers, quality control engineers, quality assurance staff, supply chain staff, safety & security staff, and project managers to implement plans
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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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(https://www.olcf.ornl.gov/frontier ) and plant phenotyping (https://www.ornl.gov/appl ). GPTgp is a pilot project initiated in September 2025 with funding from the US Department of Energy and will
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computational models for quantum magnets and neutron scattering observables. Generate, document, and manage synthetic datasets (e.g. S(Q,ω), diffraction, thermodynamic data) for AI training and validation