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Science, Industrial Engineering, or a closely related field by start date. Demonstrated expertise in optimization (e.g., convex/nonconvex, stochastic, combinatorial), probability and stochastic processes, numerical
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an exciting opportunity to work at the intersection of nanomedicine, and translational neuroscience, with projects aimed at improving targeted delivery across CNS barriers and optimizing nanoparticle
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University of North Carolina at Charlotte | Charlotte, North Carolina | United States | about 1 hour ago
transdisciplinary research interests in: 1. Modern and future Computing systems, including photonic and quantum computing, analog neuromorphic computing, combinatorial algorithms, and continuous optimization. 2
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outstanding research potential in all fields of Discrete Mathematics with emphasis on Structural Graph theory, Extremal Graph Theory, Combinatorial Optimization, Matroid Theory, and Algorithms. This appointment
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date. Demonstrated expertise in optimization (e.g., convex/nonconvex, stochastic, combinatorial), probability and stochastic processes, numerical linear algebra, and algorithm design. Proficiency in
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Postdoctoral Fellow - Materials Chemistry, Texas Materials Institute, Cockrell School of Engineering
to the rapid exploration of novel materials chemistries—such as compositionally complex energy materials—using high-throughput, combinatorial synthesis strategies. The position involves working
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optimization, including integer, nonlinear, and combinatorial optimization; global and non-convex optimization; machine learning for optimization; explainable artificial intelligence; heuristic and metaheuristic
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considered, preference may be given to applicants whose work bridges theory and applications in data analysis, discrete mathematics, linear algebra, or optimization, and they are especially encouraged to apply
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are encouraged, but priority will be given to applications in the following areas: Applied Analysis and Partial Differential Equations (contact: Razvan Fetecau and Weiran Sun); Combinatorial Optimization (contact
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Scientific Computing Research. We are seeking applications from researchers in the broad domain of computational and applied mathematics, including algorithm analysis, artificial intelligence, combinatorial