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Fellowships Training in joining dissimilar materials using the Friction Stir Welding process and experience in numerical simulations using Finite Elements; to hold a PhD degree obtained in the 3 years
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functions to work properly. Please turn on JavaScript in your browser and try again. UiO/Anders Lien 1st March 2026 Languages English English English PhD Research Fellow in reinforcement learning
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Religious Devotion project (CREDO; see https://www.levyna.cz/en/about-us/research/credo-project ) is a five-year project (2024-2028) funded by the Czech Science Foundation and is based at Masaryk University
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control, reinforcement learning and data‑driven control methods, adaptive methods, safe/robust learning‑based control, and methodologies for stability, safety, and performance. Application‑driven method
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a PhD student, you will develop state-of-the-art learning and inference methods to detect and characterize anomalous radio behavior and to design algorithms that remain reliable under practical
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, which specializes in modelling, control, and optimization of mechatronic systems and processes (https://dynamics.ugent.be ). We are looking for a motivated and talented PhD student to delve into the field
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don’t just teach; we inspire, innovate, and empower. Join us as we continue to shape the future. About Sustainability Research Institute at the University of East London The Sustainability Research
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artificial intelligence (i.e. machine, deep and reinforcement learning…) to optimize efficiency, improve safety, reduce costs and promote sustainability. Collaborate with multidisciplinary teams to uncover a
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., Tacchetti, A., Bakker, M.A. et al. Scaffolding Cooperation in Human Groups with Deep Reinforcement Learning. Nat Hum Behav 7, 1787–1796 (2023). [22] Melnyk I., Mroueh Y ., Belgodere B., Rigotti M., Nitsure A
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the team. Each position will address a complementary research area within the project: 1. Quantum Control and Reinforcement Learning (CINN, Asturias) Develop AI-driven control strategies based