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for Postdoctoral Associate positions in the broad research areas of mathematical analysis and partial differential equations (PDEs). While all applicants with a background in the analysis of PDEs will be considered
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problems at the interface of geometric measure theory, the calculus of variations, partial differential equations, and geometric analysis. The successful candidate will contribute to the development
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. Liu, Fourier Neural Operator for Parametric Partial Differential Equations, arXiv:2010.08895, 2020. [10] B. Shahriari, K. Swersky, Z. Wang, R. P. Adams and N. de Freitas, Taking the Human Out
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Associação do Instituto Superior Técnico para a Investigação e Desenvolvimento _IST-ID | Portugal | 18 days ago
), financed by national funds through FCT Workplan: The candidate(s) will have experience in mathematical modeling and programming for nonlinear Ordinary and Partial Differential Equations. He/she will study
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approaches. Through innovative work combining machine learning with new paradigms for direct solvers of high-dimensional partial differential equations, members of CHaRMNET aim to overcome this challenge
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areas will be considered when selecting candidates: Machine Learning, Neural Networks, Numerical solutions of Partial Differential Equations and Stochastic Differential Equations, Numerical Optimization
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track record in research aligned with partial differential equations and/or geometric analysis. You will demonstrate the ability to work independently, contribute to team-based projects, and guide
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, and positions for distinguished professorship. Candidates in areas including, but not limited to, Dynamical Systems, Partial Differential Equations, Optimization, Stochastic Differential Equations
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JAX/Julia would be a nice plus. Experience in one or more of the following areas will be considered a strong merit: stochastic (partial) differential equations, controlled differential equations
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machine learning techniques for building efficient reduced-order models in the context of the numerical simulation of parameterized partial differential equations. The analysis of recent deep learning