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301 975 4364 Kathryn L. Beers kathryn.beers@nist.gov 202 578 8353 Aaron A Burkey aaron.burkey@nist.gov 301.975.4769 Sara Orski sara.orski@nist.gov 301 975 4671 Description Development of quantitative
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crystallography and spectroscopy are fundamental and imperative in the investigation and development of condensed matter sciences. We will widely use these methods to study the crystal structures of novel materials
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materials, (2) the preferred binding sites of adsorbate species in nanoporous solids and predicted experimental signals (e.g., infrared spectra), and (3) the development of DFT-based force field models
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information. Our group performs research and development to extend the accuracy, wavelength range, power range, robustness, and portability of radiometric standards. We use advanced nanfabrication techniques
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system. However, not much is known about how these chemical modifications affect structure-function relationships. We propose to develop robust computational modeling in conjunction with experimental NMR
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within the Radioactivity Group at NIST addresses some of these hurdles in an effort to provide the foundations for absolute quantitation in imaging. NIST pioneered the development of long-lived calibration
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) to develop a high-throughput technique to screen new materials for high frequency performance. As a first step, the Associate will focus on ferroelectric materials and transition metal dichalcogenides
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Microscopic and Spectroscopic Characterization in Engineered Polymeric Materials NIST only participates in the February and August reviews. The purpose of this research is to develop advanced
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that can be integrated into the research workflows used in developing new materials (e.g., carbon nanotubes) or in determining disease pathologies (e.g., Alzheimer’s disease). We want to explore solutions
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301.975.2235 Description We are developing novel methodologies and approaches to modeling complex systems consisting of a large number of interacting elements. The models should not only have predictive power