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., Tam, W.C., Yang, C. and Lo, S.M., 2025. A deep learning-based approach for unsafe area prediction in building fire evacuation. Journal of Building Engineering, p.113723. [4] Tam, W.C., Fu, E.Y., Li, J
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of Computational Materials Engineering (ICME) in an AI platform for industrial AM production. This research philosophy relies on a dual approach: Data Informatics & Analytics: Leading investigations into the root
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are essential for broad adoption of these methods, this postdoc would collaborate with a unique array of technology and informatics developers in the Genome in a Bottle Consortium to develop authoritative de novo
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informatics developers in the public-private-academic Genome in a Bottle Consortium to develop methods to integrate short-, linked-, and long-read sequencing technologies to form benchmarks for somatic variant
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RAP opportunity at National Institute of Standards and Technology NIST Hybrid Superconductor-Ferromagnetic Devices Location Physical Measurement Laboratory, Quantum Electromagnetics Division
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NIST only participates in the February and August reviews. The Alternative Computing Group at NIST has an ongoing program developing new metrologies to support emerging information processing
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Laboratory, Materials Measurement Science Division opportunity location 50.64.31.C0344 Gaithersburg, MD NIST only participates in the February and August reviews. Advisers name email phone Thomas P Forbes
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RAP opportunity at National Institute of Standards and Technology NIST Advanced computational modeling techniques to enable fast screening of RNA biopharmaceutical products Location Material
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and Failure of the Surface-Stress "Core-Shell" Model in Brookite Titania Nanorods. Chemistry of Materials, 2020. 32(1): p. 286-298. Ab initio theoretical modeling; Active nanodevices; Atomic scale
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Engineering, 2016. 96: p. 151-160. Ng, Lisa C., Andrew K. Persily, and Steven J. Emmerich. Improving infiltration modeling in commercial building energy models. Energy and Buildings, 2015. 88(0): p. 316-323