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). Consulting on strategic design and responsibility for performing data analytics to include data collection, cleaning, management, analysis, and visualization. Execute projects and tasks as directed by
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data analytics to include data collection, cleaning, management, analysis, and visualization. Execute projects and tasks as directed by the Division Director/Medical Director, HSD Group Leader, and HSD
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is building agentic AI workflows that help discover, gather, validate, and standardize open-source data for downstream geospatial analytics and machine learning. The position offers a unique
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contribute and succeed. Basic Qualifications PhD in data science, mathematics, physics, or engineering with a minimum of 8 years of relevant experience, or MS in these areas with a minimum of 12 years
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radiological facilities. Utilize Windows based personal computers, instrumentation operation, data reporting, analytical calculations, and sample management. Ensure compliance with environment, safety, health
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Requisition Id 16169 Overview: The Environmental Sciences Division (ESD) of Oak Ridge National Laboratory (ORNL) has an opening for a Data Systems Software Engineer II, in its Earth Sciences
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data science to develop new methodologies for assessing and improving the quality of components fabricated using advanced manufacturing processes. This position resides in the Manufacturing Systems
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, curation, and modernization of research data and legacy records to ensure they are well-documented, trustworthy, and prepared for advanced analytics, modeling, and future computational use. The candidate
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Requisition Id 16188 Active DOE Q, active DOD Top Secret, or active DOD TS/SCI clearance is required for consideration. Overview: We are seeking a Multi-Function Information Systems Senior Engineer
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Methods and Dynamics (MMD) Group at Oak Ridge National Laboratory (ORNL) is seeking several qualified applicants for postdoctoral positions related to Computational Methods for Data Reduction. Topics