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accurate measurements during emergencies, such as those encountered in pre- or post-detonation scenarios. The nuclear forensics program at NIST focuses largely on analytical method development, new and
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evolution. The Group aims to advance fundamental understanding, improve predictability for design, ensure reproducibility and comparability, and facilitate scalability for real-world applications
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. In this project, we are developing metrology needed for the synthesis, processing, and characterization of low-dimensional materials to enable reliable nanoscale device development and manufacturing
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, oxidation, and mechanical wear of chain scission in fibers are required to support the development of predictive models. This project seeks to utilize and develop novel chemical and mechanical techniques
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that cryogenic-compatible memory elements can be developed that can be integrated with the superconducting logic circuits. The goal of this project is to develop nanoscale ferromagnetic devices that can be
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Communications Technology Laboratory (CTL) are seeking a Postdoctoral Fellow to develop high-pressure NMR spectroscopy for the measurement of intermolecular interactions of ions in solution. Measurements of ion
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@nist.gov 301.975.2860 Description New developments in detector technology have made possible the acquisition of the full electron scattering distribution at each pixel in a scanning transmission electron
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Technology Laboratory (CTL) is seeking a Postdoctoral Fellow to develop new spectroscopy for intermolecular interactions. The team is pioneering an electric-acoustic spectrometer that selectively drives and
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, plays an important role at NIST in the development and interpretation of new measurement techniques, as well as aiding the understanding of the behavior of new materials in existing measurements. In
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are not sufficiently accurate, or the methods are too expensive to accurately model sufficiently large systems. As a result, these computational problems are ideal for developing machine-learned potentials