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of ORNL to deliver groundbreaking advancements with a variety of applications, from national security to life-saving medical treatments. ESED is the national steward for research, development, and
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-facing QA position supporting the full lifecycle of a first-of-a-kind research and manufacturing facility — from procurement of architect-engineer (A&E) design and construction through fabrication
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. Our team is made up of over 7,000 dedicated and innovative individuals! Our goal is to create an environment where a variety of perspectives and backgrounds are valued, ensuring ORNL is known as a top
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power electronics resources modeling, explore different intelligence algorithms to enhance ease of usage of simulations, and different applications of EMT simulations. Selection will be based
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. Valid Tennessee driver’s license. Preferred Qualifications: Class A commercial driver’s license (CDL). Thorough knowledge of load handling equipment commonly used in hoisting and rigging applications
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. Provide updates to management on repayment status. Track and monitor repayments of prior years’ income and prepare and file IRS Forms 941-X as required. Prepare and submit annual payroll reports to DOE
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. NND staff contributes world class research, technology development, risk assessment, and systems analysis related to nonproliferation and counterproliferation. The division activities play a vital role
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, proctor examinations, implement practical exercises, and conduct associated administrative duties related to course delivery in accordance with the Systematic Approach to Training (SAT) and the Standards
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with world-class scientists, you will enhance your expertise in resource optimization, scalable computing techniques, fault resilience, and advanced AI applications. This role offers unparalleled access
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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