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appreciated), • Background in viscoelasticity (linear and/or nonlinear) would be a significant asset, • Interest in multi-scale approaches and dynamic simulations. Additional comments The post-doctorate is part
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Deadline 2 Sep 2026 - 07:01 (UTC) Country Netherlands Type of Contract Temporary Job Status Not Applicable Hours Per Week 40.0 Is the job funded through the EU Research Framework Programme? Not funded by a
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, using a combination of well-established and robust analysis tools (e.g. mu-analysis) and Monte-Carlo time domain non-linear simulations, including variations in all the uncertainties expected in
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Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description We are looking for a motivated postdoctoral researcher to join the AI
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Inclusive excellence drives better science. We actively seek female and international researchers from all walks of life, valuing non-linear careers and diverse perspectives across cultures, disciplines, and
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development spanning areas such as optimization, Fourier analysis, numerical linear algebra, statistics, machine learning, and high-performance computing for one or more of the following: (1) reconstruction
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inputs with spatiotemporal patterns. The resulting neuronal responses (firing patterns) are highly non-linear due to the dynamic properties of dendritic signal processing. Investigating this input–output
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venuesStrong programming skillsSolid mathematical foundation, including linear algebra, probability, statistics, and optimizationBroad and in-depth experience with machine learning algorithms and deep learning
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linear algebra, numerical methods for PDEs and dynamical systems, stochastic methods in statistical mechanics, hydrodynamic limits, interacting many-body systems, quantum macroscopic evolution equations
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flexibility to choose research projects and mentor(s) among the faculty members in the department. Possible research areas and related desired background consist of: Research on the dynamics of nonlinear