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) with questions related to this position. Major Duties/Responsibilities: Develop and apply machine learning models (ML) as surrogates for high-resolution process-based hydrologic models. Design and
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of security policies, compliance frameworks, and associated standard processes (e.g., NIST, DISA STIGs). Demonstrated experience designing and deploying of HPC systems, ensuring they meet the
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focusing on designing and implementing robust and high performance applications for biomedical research. We are looking for someone who has innovative thinking to design and implement machine learning
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, the lab agenda, programmatic review documents, workshop brochures, reports, and factual documents for DOE. Assists with and develops content for ORNL/PSD business activities including PSD Business Plan and
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, this position is a Workplace Substance Abuse (WSAP) testing designated position. WSAP positions require passing a pre-placement drug test and participation in an ongoing random drug testing program. About ORNL
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for program and project developments. Lead teams to define and implement sponsor requirements. Interact with sponsors and funding agencies from project conception, proposal writing, and project execution
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Requisition Id 15915 Overview Oak Ridge National Laboratory (ORNL), the Department of Energy’s largest science and energy laboratory, is a global leader in cutting-edge research and innovation. We
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facilities are also available for added convenience. Other benefits include the following: Prescription Drug Plan, Dental Plan, Vision Plan, 401(k) Retirement Plan, Contributory Pension Plan, Life Insurance
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) guidance. Major Duties/Responsibilities: Coordinate, plan, and manage major RDT&E programs/projects in accordance with the federal sponsors requirements, ORNL policy, and DOE policy and guidance. Serve as
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. This position focuses on researching, designing, and deploying innovative data pipelines and readiness frameworks to tackle obstacles such as data heterogeneity, scalability bottlenecks, privacy