18 computer-network "https:" "Kiel University" Postdoctoral positions in Saudi Arabia
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topics. Candidates should have some experience working with FPGAs as well as an understanding of computer networks. Experience with both RTL and HLS design is favoured. The ideal candidate would have some
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Position Location: Dhahran, Eastern Province 31261, Saudi Arabia Subject Areas: Quantum Computing Theoretical Physics / Quantum Condensed Matter Theory Condensed Matter Physics / Condensed Matter Physics
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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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and international network of leading scientists and practitioners, including Professors Christopher Golden (Harvard University), James Robinson (Lancaster University), and Christina Hicks (Lancaster
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doing so, we will also establish a long-term, market-based monitoring program, generating real-world data to inform smarter, fairer, and more sustainable management of reef fisheries worldwide. We
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Physics » Computational physics Researcher Profile First Stage Researcher (R1) Recognised Researcher (R2) Positions Postdoc Positions Application Deadline 17 Sep 2026 - 23:59 (Asia/Riyadh) Country Saudi
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: For salary and program details see KFUPM’s Postdoctoral Research Fellowship Program page (link below). https://ri.kfupm.edu.sa/join-us/postdoctoral-research-fellowship-program Additional information
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Materials Spectroscopy (SMS) Laboratory, http://spectroscopy.kaust.edu.sa Institution: Division of Physical Science & Engineering, King Abdullah University of Science and Technology (KAUST) Thuwal, Saudi
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at the Mechanics of Composites for Energy and Mobility Lab. (MCEM, https://composites.kaust.edu.sa ). Field of study A Postdoctoral opening is available in the area of Insitu Multiphysics
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containment. The prohibitively high computational cost of such simulations necessitates the development of efficient and robust surrogate models for general GCS modeling tasks, especially when inverse modeling