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characterization techniques with mechanical behavior and finite element methods. The postdoctoral candidate will develop the processes needed to connect mechanical testing data with 3D microstructure of nuclear
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other characterization methods, as well as across multiple CNMS groups and divisions at ORNL. Major Duties/Responsibilities: Conduct materials research using combined photonics/scanning probe microscopy
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analytical methods to ensure and determine purity of samples being used for molten salt property measurements Leverage database of thermophysical properties and theoretical modeling frameworks to generate
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aspects of distributed intelligence, driving advancements in resilient, adaptive AI systems on a global scale. Responsibilities include, but not limited to: Develop novel decentralized methods
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. Major Duties/Responsibilities: Perform research and development on advanced dry head end processing methods and post-processing separations related to the nuclear fuel cycle and energy-critical element
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Compliance: Ensure compliance with ORNL’s safety, security, quality, and environmental standards while carrying out all research activities. Basic Qualifications: A PhD in civil/environmental engineering
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. Extensive experience in the development and application of finite element method (FEM) or comparable methods for AM applications. Preferred Qualifications: Demonstrated expertise in multi-physics simulations
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Impact, Integrity, Teamwork, Safety, and Service. Promote equal opportunity by fostering a respectful workplace – in how we treat one another, work together, and measure success. Basic Qualifications: PhD
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, Teamwork, Safety, and Service. Promote equal opportunity by fostering a respectful workplace – in how we treat one another, work together, and measure success. Basic Qualifications: A PhD degree in physics
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, transportation, and more, with a special emphasis on grid resilience assessments and equity analysis. You will have the opportunity to creatively use interdisciplinary methods from computational data science