327 physics-engineer-"https:"-"https:"-"HFML-FELIX" positions at Oak Ridge National Laboratory
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Requisition Id 16176 Overview: We are seeking a Composites Process Engineer who will focus on manufacturing process development and deployment of polymer composites. This position resides in
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Requisition Id 16082 Overview: The Performance Assurance Group of the Integrated Operations Support Division (IOSD) at Oak Ridge National Laboratory (ORNL) seeks a Process Improvement Engineer
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in facility/process systems and operations within a chemical processing environment. Excellent communication and interpersonal skills for interaction with customers, plant operators, facility engineers
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Requisition Id 16196 Level: RP02 Overview: We are seeking a Sensor Application Engineer who will focus on design and installation and assist with the development (hardware and software), of sensor
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, including the world’s first exaflop system, Frontier. The Team: As a Kubernetes Engineer for the Platform team, you will work within the Platforms group to support all activities of our supercomputer center
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transformative solutions to compelling problems in energy and security. Our diverse capabilities span a broad range of scientific and engineering disciplines, enabling the laboratory to explore fundamental science
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transformative solutions to compelling problems in energy and security. The Enrichment Systems Engineering Section is seeking a Process Design Engineer who will support the Enrichment Science and Engineering
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Requisition Id 16168 Overview: The Environmental Sciences Division (ESD) of Oak Ridge National Laboratory (ORNL) has an opening for a Data Systems AI/ML Engineer within its Earth Sciences
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Requisition Id 16164 Overview: We are seeking a Maintenance Engineer for the High Flux Isotope Reactor (HFIR), primarily supporting the Cold Source upgrade project. HFIR Maintenance Engineers
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seeking a Geospatial Data Engineer to support research and operational workflows focused on scalable geospatial data science, applied machine learning, and production-grade engineering practices to deliver