327 engineering-computation-"https:" "https:" "https:" "https:" "The University of Edinburgh" positions at Oak Ridge National Laboratory
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). Major Duties/Responsibilities: Develop AI/ML models and systems for diverse data and mission contexts Design and implement reproducible pipelines for data acquisition, feature engineering, model training
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Requisition Id 15751 Overview: The Advanced Computing in Health Sciences (ACH) section at the Oak Ridge National Laboratory is seeking qualified applicants for a Machine Learning Engineer position
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challenges facing the nation. The Computational Coupled Physics (CCP) Group within the Computational Sciences and Engineering Division (CSED), at Oak Ridge National Laboratory (ORNL) is seeking a Postdoctoral
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Requisition Id 15935 Overview The Biosciences Division at Oak Ridge National Laboratory seeks a Technical Professional to support computational biology research within the Plant-Microbe Interfaces
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plans for the computing environment and lead technical projects from conception to completion. This includes planning for hardware upgrades, new technology implementations, and system performance
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the Nuclear and Radiological Measurements Laboratory within the Nuclear Measurements and Analytical Services group. ORNL is a world leader in advanced science and technology research involving several
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more than 1,000 experiments in the physical, chemical, materials, biological and medical sciences for more than 3,000 visiting scientists. To learn more about Neutron Sciences at ORNL go to: http
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scientists, engineers, and technicians on challenging, fast-paced technical projects and operations in support of the DOE Isotope Program and specifically associated with the rapidly growing field of stable
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the fundamental engineering understanding of gas centrifuge systems. The group leverages analytical techniques and advanced computational tools—including finite element analysis (FEA)—to evaluate and predict
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to Computational Methods for Data Reduction. Topics include data compression and reconstruction, data movement, data assimilation, surrogate model design, and machine learning algorithms. The position comes with a