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manifold learning and Riemannian optimisation to leverage the underlying manifold structure for better training and novel network designs. Low Effective-dimensional Learning Models. We will extend
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, Lausanne 1015, Switzerland [map ] Subject Areas: • stochastic differential equations (SDEs); stochastic partial differential equations (SPDEs); stochastic processes on manifolds; multi-scale stochastic
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Inria, the French national research institute for the digital sciences | Paris 15, le de France | France | 19 days ago
Generative Modeling through Stochastic Differential Equations.” ICLR. [4] Pidstrigach, Jakiw. 2022. “Score-Based Generative Models Detect Manifolds.” NeurIPS. [5] Dupuis, Benjamin, Dario Shariatian, Maxime
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. Transformation of tomographic voxel representations into triangulated surfaces (2-manifold triangular meshes). Collaboration with experimentalists to ensure real world impact of your developed computational tools
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University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | 1 day ago
include (but are not limited to): * Clustering and unsupervised learning * Dimension reduction and manifold learning * High-dimensional inference and feature selection * Generative modeling and digital
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techniques such as NMR and IR spectroscopy. Experience in synthetic techniques for the handling of air- and moisture-sensitive materials using dual manifolds and gloveboxes. Written and oral scientific
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group of people dedicated to a manifold range of research and academic teaching. Your future tasks: Active participation in research, teaching & administration, which means: You build up an independent
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and analysis Gaussian processes, random functions, rare events, harmonic analysis Shira Faigenbaum-Golovin Manifold learning, shape space analysis, machine learning, mathematics of data
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, -- mathematical theory for artificial intelligence, -- optimization and numerical computation over manifold, -- systems and control theory, -- algebraic computation theory and cryptography. The position is for two
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University of North Carolina at Chapel Hill | Chapel Hill, North Carolina | United States | 1 day ago
, geometric analysis, etc. During the first year, the position will be funded in part through the National Science Foundation Research Training Group (RTG) award: ‘Partial Differential Equations on Manifolds