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High Performance Computing (HPC) group to apply leadership expertise coupled with technical proficiency to forge the pathway for this new group. This position combines advanced technical skills with
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) at Oak Ridge National Laboratory (ORNL) is seeking a Research Associate to perform R&D in the areas of bulk power systems electromagnetic transient (EMT) simulations, high-fidelity dynamic and transient
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ecosystem for fault-tolerant quantum-accelerated high-performance computing (QHPC). Major Duties/Responsibilities: Perform state-of-the-art numerical computations of quantum spin systems using, e.g., tensor
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centered on Microsoft Azure and related AI cloud technologies with High Performance Computing (HPC) for on premise AI environments and Azure, AWS, and GCP for off premise environments. Major Duties
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centered on Microsoft Azure and related AI cloud technologies with High Performance Computing (HPC) for on premise AI environments and Azure, AWS, and GCP for off premise environments. Major Duties
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Requisition Id 15552 Level: BP04 Overview: We are seeking a Requirements Program Manager who will oversee the requirements management processes that support deployment of the UT-Battelle Prime
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Program, Molten Salt Reactor Program, and the Advanced Sensors and Instrumentation Program. Major Duties/Responsibilities: Perform experimental work in radiological materials laboratories centered on molten
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such as pulsed laser deposition (PLD) to synthesize and optimize materials. The focus will be on developing and improving the reliability of agentic AI platforms that can perform atomic manipulation in STM
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Requisition Id 15590 Overview: Oak Ridge National Laboratory (ORNL) is seeking a leader for our world class radioisotope production program. Supporting the largest radioisotope production and
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algorithms, capable of distributed learning on high performance and edge computing; The design of architectures/models which accurately capture the complexities of the data, with robust estimates of confidence