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. The postdoctoral appointee will enhance the spatial resolution of high-energy X-ray diffraction microscopy (HEDM)[1] at the Advanced Photon Source (APS) by exploiting its high brilliance and coherence and use
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conditions facilitating signal averaging methods. Two new laser systems have recently been installed. One is for UV detection of radicals, and the other is a VUV photoionization source. The position will
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energy systems, develop new models and datasets, and provide rigorous and objective results. We are currently seeking applicants with life cycle analysis experience in one or more of the following areas
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international levels. The initial appointment will be for one year, with possibility of renewal for another two years and is based at Argonne National Laboratory (Lemont, Illinois). Position Requirements
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. Knowledge of high temperature subcritical crack growth in ceramic or composite materials. Familiarity with the basic structure-property relations for more than one of the material categories mentioned in
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that could begin as soon as Fall 2024 and is renewable annually for up to three years. Position Requirements Applicants should send: 1) Cover letter and CV 2) Brief statement of research interests
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Argonne’s Leadership Computing Facility (ALCF) is deploying one of the largest computing resources in the world, the Aurora exascale supercomputer. Working with scientists from all domains and
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presentations at scientific meetings based on their research findings. Position Requirements Demonstrated strong motivation toward creative research. Specific expertise in one or more of the following: inorganic
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the ability to integrate within a multi-faceted software development team. Position Requirements Knowledge of one or more specialized areas of fission reactor physics, engineering, or fuel systems
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systems, DER operations, and grid modeling and simulation. Proficiency in Python and OpenDSS. Familiarity in scripting using at least one ML framework (Keras, TensorFlow, PyTorch, or scikit-learn) and data