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Requisition Id 11879 Overview: ORNL is searching for a group leader to lead the newly formed Spatial Statistics group. This group focuses on developing and applying advanced statistical and
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data science, statistics, nuclear engineering, and scientific computing to deliver high-impact research and solutions that address some of our nation's most challenging security threats. Major Duties
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(DOE), the Department of Transportation (DOT), and other federal agencies in developing solutions to national transportation problems. TADS researchers conduct spatial and statistical analyses, build
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the integrity of the infrastructure. Proactively monitor, test, collect and analyze system performance statistical data to improve quality of the network environment. Adhere to a customer serviced focused culture
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for distributed energy resources (REopt, DER-CAM, DER-VET, Homer, System Advisor Model (SAM), TRNSYS, etc.) is highly advantageous. Familiarity with numerical calculation and statistical data analysis techniques is
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Qualifications: A BS in computer science, data science, business analytics management, applied statistical analytics, or a related field of study and five (5) to seven (7) years of relevant experience is required
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management, applied statistical analytics or a related field of study and eight (8) to twelve (12) years relevant experience is required. An overall combination of equivalent experience may be considered
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– in how we treat one another, work together, and measure success. Basic Qualifications: BS/BA degree in Human Resources, Statistics, Data Science, Information Technology, or related field. A minimum of
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to acquire new skills and explore new areas. Proficiency in using Excel for engineering data analysis. Familiarity with numerical calculation and statistical data analysis techniques. Extensive experience in
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researching or using hydrological and nutrient transport processes, statistical methods in hydrology/environmental sciences, basin scale modelling experience using process-based hydrologic models Experience