329 embedded-system-"https:"-"https:"-"https:"-"https:"-"IFM"-"IFM"-"IFM" positions at NIST
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material properties and evolves as a function of deformation. Accurate measurement of the crystallographic texture is the key to understanding how the material will respond during forming of parts
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edward.sisco@nist.gov 301 975 2093 Description This opportunity focuses on developing new methods, metrics, approaches, and techniques for the forensic analysis of seized drugs. Seized drug analysis is the most
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limited output of these devices is well suited to measuring long open-air paths and the combs themselves are becoming robust, compact, and transportable. Here we seek to employ frequency combs
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Description The Communications Technology Laboratories (CTL) at NIST is looking for a research assistant to work developing mm-wave components from complex oxides. This project will involve dc to 110 GHz
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evan.groopman@nist.gov 301 975 2139 Description Nuclear Safeguards is a process by which States’ nuclear activities are verified to conform to their international commitments. One aspect of Nuclear Safeguards is
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to predict materials properties is essential to improve materials design methods. This research will focus on the development and integration of first principle calculations; atomistic simulations; and/or
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structure-mechanical property relationships are needed to enable diverse applications of these materials. There is a need for quantitative measurement methods to study the interfacial properties of the filler
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capable of interpreting this information and integrating data from other “-omic” platforms such as genomics, transcriptomics, and proteomics. Leveraging artificial neural networks is the linchpin
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(1.6 μm). Numerous receivers are available including several 10” and 16” Schmidt-Cassegrain telescopes each equipped with a PMT and photon counting system for backscatter detection over integrated paths
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to this research is the development and application of real-time data analysis pipelines to process the vast, high-speed XRD datasets generated during AM processes. These pipelines will utilize