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, United States of America [map ] Subject Areas: Stochastic analysis, mathematical finance Appl Deadline: 2025/12/31 11:59PM (posted 2025/08/21) Position Description: Apply Position Description The Department
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of Mathematical Sciences invites applications for a two- or three-year postdoctoral position in stochastic analysis, with a preference for mathematical finance, beginning in September 2026. A Ph.D. in mathematics
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, computational fluid dynamics and material science, dynamical systems, numerical analysis, stochastic problems and stochastic analysis, graph theory and applications, mathematical biology, financial mathematics
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advanced computing, optimization, and data analytics technologies. The postdoctoral researcher will work with a team of researchers on solving challenging problems using optimization, stochastic models
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linear, mixed-integer, and stochastic programming. Work with programming languages such as Python, Julia, or C++ to build robust analytical tools and perform large-scale data analysis. Collaborate with
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(Microbiology & Immunology, University of Michigan) Responsibilities: • Develop SciML methods for learning ODE, PDE, and stochastic models from ABM simulations and multiscale spatial-omics data. • Integrate
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(e.g. systems biology), or ordinary/stochastic differential equations. Experience in computational, statistical, or machine learning method development in any discipline. Experience in GPU computing
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integration Optimization and stochastic modeling methodologies Energy storage Electricity market analysis Supports multidisciplinary teams in the application of these methods and tools to complex issues in
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projects ranging from score-based generative models, energy-based models, Bayesian analysis of graph and network structured data, highly multivariate stochastic processes; with data applications ranging from
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area of Drosophila neural development: How are stochastic choices made in sensory neuronal development coordinated with the deterministic generation of neuronal diversity in the synaptic targets