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characterization techniques such as atom probe tomography (APT), electron microscopy, X-ray and neutron scattering, surface analysis, or other advanced methods. Candidates will work collaboratively with internal
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for cutting-edge characterization techniques such as atom probe tomography (APT), electron microscopy, X-ray and neutron scattering, surface analysis, or other advanced methods. You will work collaboratively
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of programmatic deliverables in numerous areas of nuclear fuel fabrication and characterization. Lead development and optimization of new fabrication methods applicable to actinide and nuclear fuel systems. Develop
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methods towards improving our understanding of unique target materials. You will be working with scientists, engineers, technicians, and safety and quality assurance staff to support material testing and
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computations relevant to the development of strategic nuclear performance codes for nuclear reactors. This position resides in the Radiation Effects and Microstructural Analysis Group (REMAG) in the Materials in
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, operate and maintain clusters, servers, and workstations supporting services where science happens at ORNL! This position resides in the Emerging Technologies & Computing team in the Research Computing
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numerous corporate services to the DOE IP and serves as its business interface, regularly communicating with the isotope user community and coordinating isotope production across numerous program facilities
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program. The Reliability Engineering Team Lead provides line management to the reliability engineers and craft supervisor. The Team Lead will also be responsible for working with the group leader and other
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, industrial energy systems, energy efficiency of manufacturing industry, or other related fields. You will play a crucial role in the planning, execution, and optimization of our technical assistance program
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Postdoc Research Associate - Quantum Materials Synthesis and Characterization, AI-Enabled Automation
condensed matter physics approaches with cutting-edge AI/ML methods to gain deep fundamental understanding of new materials. The successful candidate will develop new materials systems including thin films