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, mtrapp@kth.se Published: 2025-11-06 Last application date: 2025-12-19 Where to apply Website https://academicpositions.com/ad/kth-royal-institute-of-technology/2025/doctora… Requirements Research
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, probabilistic programming, Bayesian deep learning, causal inference, reinforcement learning, graph neural networks, and geometric deep learning. It comprises Jan-Willem van de Meent, who serves as director, Max
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. Currently, we have a focus on randomized algorithms and probabilistic data structures such as data sketches, Bloom filters, and hash functions. We are also interested in implementing and developing efficient
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engineering, structural health monitoring, and reliability and probabilistic risk assessment. Preference will be given to candidates who can establish multidisciplinary and large-scale experimental-based
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. The University’s Computer Vision research is amongst the best in the world. Find out more at https://www.adelaide.edu.au/aiml/home We are seeking a motivated and experienced Postdoctoral Research Fellow A to join
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transformative paradigm. By taking advantage of qubits' ability to exist in multiple states simultaneously and exploiting the probabilistic and delocalized behaviors of quantum systems, quantum computing promises
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confidential basis until the completion of the search process. Inquiries, nominations, referrals, and CVs with cover letters should be sent via the Isaacson, Miller website: https://www.imsearch.com/open
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. Have excellent skills in mathematics and probabilistic AI. Good written and oral English PLEASE NOTE: For detailed information about what the application must contain, see paragraph “About the
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(https://www.hereon.de/index.php.en ) and Institute of Surface Science (https://www.hereon.de/institutes/surface_science/index.php.en ). Collaborators: Uppsala Universitet, Sweden and Quintus
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measurements are most informative and guiding where, when and how to observe next. By combining Bayesian inference, probabilistic modeling, and machine learning, the project aims to make Arctic observations more