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jessica.reiner@nist.gov 843.460.9894 Description The Analytical Chemistry Division has an ongoing program to improve the quality of analytical chemical measurements made in marine environmental research through
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jessica.reiner@nist.gov 843.460.9894 Description The Analytical Chemistry Division has an ongoing program to improve the quality of analytical chemical measurements made in marine environmental research through
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, or techniques that will speed up analysis times, provide increased information to the chemist, and/or simplify data interpretation while enhancing data quality. One of the goals of the forensic program at NIST is
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@nist.gov 843.442.2188 Description The Chemical Sciences Division has a developing program to improve the quality of analytical chemical measurements in the field of marine debris research. Research
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NIST only participates in the February and August reviews. The Applied Economics Office (AEO) at NIST works closely with the NIST Community Resilience Program (CRP) and external collaborators
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301.975.3438 Description NIST has developed an integrated measurement services program for forensic and cannabis (hemp and marijuana) laboratories to help ensure the quality of routine analysis of cannabis plant
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familiar with the concepts of electrochemistry, models for electrolyte solutions such as Pitzer and ion associations, have programming skills, and be able to explore new concepts and generate innovative
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of firefighter's to per- and polyfluoroalkyl substances (PFAS) from their gear (FFG): https://www.nist.gov/programs-projects/measurement-science-and-polyfluoroalkyl-substances-pfas Engineered Fire Safe Products
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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 improved
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correlations and prediction methods. The program will build on our existing efforts using Quantitative Structure-Property Relationship (QSPR) methodologies and modern machine learning methods (support vector