197 associate-professor-computer-"https:"-"https:"-"https:"-"https:"-"FCiências" positions at NIST
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) to characterize the nuclear motions associated with the observed THz features. New methods based on electro-optical dual-optical-frequency combs and room-temperature multi-heterodyne detection are under development
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attracted considerable attention for potential application in nanoscale devices, including beyond-CMOS electronics, quantum computers, chemical sensors, photodetectors, etc. Prospective advantages over
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Description Exploiting atom-based solid-state technology and nanotechnology for quantum technologies such as quantum computing, quantum simulators, quantum nano-optics, and nanoscale sensing requires
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importance in chemical analysis, mass spectrometry still lacks theories that can provide computational predictions useful to the analyst. Mass spectrometry encompasses a variety of experimental techniques
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NIST only participates in the February and August reviews. NIST has recently launched a program to develop high accuracy 3D thermal imaging and control using thermosensitive magnetic nano-objects
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applications, the sensitivity of cryogenic instrumentation far surpasses that of conventional room temperature electronics. Consequently, NIST has a large program to develop detectors that operate
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generation magnetic data storage. Research projects will include using X ray and neutron scattering to characterize the fidelity of the block copolymer structure to the template and computer simulations of
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from these studies. The Associate should have experience in engineering and the sciences; particularly bioinformatics, molecular biology, and/or microfluidics. key words Bioinformatics; Biostatistics
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applications in manufacturing, aerospace, defense, engines, energy production, and research. However, substantial challenges to implementing such sensors are associated with the temperature limits, thermally
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of the constraints on sequencing (read length, depth), and informatics (e.g., database composition, algorithm biases). Proposals should address these challenges with strategies to evaluate the metagenomic