119 engineering-computation-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"U.S" positions at NIST in United States
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enough to keep pace with the numerous and constantly evolving synthetic drugs in use today. Portable proton transfer reaction mass spectrometry (PTR-MS) is a technology well suited to address
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. Chemical engineers constantly need reliable property data for process design development and optimization. This information is predominantly coming from scientific publications. Thousands of papers
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technology that can operate at unprecedented levels of sensitivity and discrimination, and in highly varied backgrounds (ranging from corrosive industrial exhaust, to planetary atmospheres, to cell cultures
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-based and data-driven prediction models are often impractical for operational use due to unrealistic assumptions, limited data availability, and prohibitive computational costs. To address
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-process densification. Complementary computational model simulation capabilities are also available. [1] J. Ilavsky, F. Zhang, R.N. Andrews, I. Kuzmenko, P.R. Jemian, L.E. Levine & A.J. Allen; J. Appl
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multiple laser lines. Also exciting is a combination of Raman microscopy and microfluidic technology to monitor the vibrational spectra of biomolecules while rapidly changing the buffer environment to induce
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circuit design and the signal-chain engineering. We will focus on an in-depth analysis of the correlations between the design of the charge circuit and the resulting level of noise and charge sensing
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infrastructure to its limits. Naturally, engineers have pushed existing devices and networks to ever-increasing frequencies in an effort to address this multifaceted problem by improving data rates and adding
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catalytic turnover. Integrative modeling and machine learning have the promise of establishing new tools for combining computational and experimental data from HDX-MS and NMR to explain the dynamics and
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, or membranes. References Espinal L, Poster DL, Wong-Ng W, Allen AJ, Green ML: Environmental Science and Technology 47: 11960, 2013 Espinal L, Wong-Ng W, Kaduk JA, Allen AJ, et al: Journal of the American