Sort by
Refine Your Search
-
For predicting thermochemistry of small main-group molecules, quantum chemistry is sufficiently reliable that it can be used to settle experimental disagreements and to provide critical data that are not available
-
NIST only participates in the February and August reviews. Isotope metallomics is the coupling of elemental and isotope geochemistry techniques with the health and medical sciences. In the last two
-
Laboratory, Software and Systems Division opportunity location 50.77.51.B7872 Gaithersburg, MD NIST only participates in the February and August reviews. Advisers name email phone Ram D. Sriram sriram@nist.gov
-
potentially competing performance goals. Achieving these goals requires the development and application of technologies, such as high performance building envelopes and advanced cooling and ventilating systems
-
metallic systems and are currently being developed for a variety of ordered metallic systems. These composition dependent mobility descriptions can then be used in conjunction with multicomponent
-
frequency collective motions of biomolecular systems. These collective modes characterize the incipient motions for the large-scale conformational changes along the torsional coordinates responsible
-
, internal dynamics, materials physics and chemistry is of primary importance in determining the processing, performance and viability of advanced ceramic components such as relevant to solid oxide or hydrogen
-
include 1) characterizing novel nanomagnetic contrast agents on both the macroscopic scale using NIST NMR/MRI systems and on the nanoscale using scanned probe imaging systems, 2) combining low-field MRI
-
microfluidic networks.Our goal is to develop systems that enable accurate, high-throughput, and dynamic measurement of materials in flow, which will, for example, improve the ability to specify composition and
-
DeCost brian.decost@nist.gov 301.975.5160 Description Trustability and physical interpretability are critical requirements for the development of robust and sustainable machine learning systems needed