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, mathematical physics, mathematical statistics, number theory, numerical analysis, optimization, partial differential equations and topological data analysis. Currently, there are about 25 graduate students
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modeling, differential equations, Bayesian inference, large-scale computational methods, bioinformatics, data science, machine learning, optimisation, numerical methods. Please read more about the position
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. Skills: • Strong programming skills (e.g., Python, MATLAB, or similar). • Proficiency in numerical methods for coupled differential equation systems. • Excellent written and verbal communication skills
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research is on the field of Calculus of variations and partial differential equations. More information about our research area and about our team can be found on our homepage at: https
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functional and harmonic analysis, partial differential equations, mathematical physics and probability theory. Candidates may suggest specific research topics or potential supervisors in their application
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of Applied Mathematics and Statistics we conduct research within the theory and implementation of biomathematics, biostatistics, spatial modeling, differential equations, Bayesian inference, large-scale
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University Assistant Postdoc to to complement the research team around Univ.-Prof. Ulisse Stefanelli, PhD. The focus of our research is on the field of Calculus of variations and partial differential equations
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the field of Calculus of variations and partial differential equations. More information about our research area and about our team can be found on our homepage at: https://appliedmath.univie.ac.at/. As a
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Australian National University | Canberra, Australian Capital Territory | Australia | about 1 month ago
Territory 2601, Australia [map ] Subject Area: nonlinear partial differential equations and harmonic analysis Starting Date: 2025/11/05 Salary Range: $87,135 - $134,507 per annum plus 17% superannuation Appl
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-represented backgrounds. The objective of the research project is to perform Bayesian inversion to characterise the velocity field of 3D partial differential equations describing brain fluid and solute movement