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, the University contributes to a better future. Doctoral position in Natural Science, Specialising in Chemistry (focus on Structural Biology) As a PhD student you will be part of the research group of Prof Gisela
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description This project is part of the EU-funded “Print4Life” Marie Sklodowska-Curie (MSCA) doctoral network led by Prof. Persson, group leader at Uppsala University. This network has 8 doctoral candidate host
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mathematics. The applicant should be skilled at implementing new models and algorithms in a suitable software environment, with documented experience. Experience in applying or developing machine learning
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of Computing Science while also engaging with the research environments at the Department of Informatics. The project is led by Dr. Jason Tucker (AI Policy Lab), Dr. Pedro Sanches (Informatics), and Prof. Dr
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principled concepts and mechanisms to ensure robust security and privacy for software. The PhD student will be supervised by Prof. Andrei Sabelfeld (Wallenberg Scholar and recipient of awards from ERC, SSF
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theoretical research, algorithm design, and the development of software tools that demonstrate the applicability of the new methods. Research environment The positions are hosted by the Department
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: According to agreement. For further information, please contact: Prof. Xiaoyan Ji (LTU), (+46) 920-492837, xiaoyan.ji@ltu.se Prof. Aatto Laaksonen (LTU/SU), aatto@mmk.su.se Prof. Thomas Wågberg (UmU
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to have good knowledge of computer science, mathematics, algorithms, and programming. Knowledge and experience in artificial intelligence and machine learning is expected, but not required. Knowledge and
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, algorithms, and programming. Knowledge and experience in artificial intelligence and machine learning is expected, but not required. Knowledge and experience in deep learning and generative AI is considered
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; they make sense to humans and are accessible to algorithmic techniques while neural models are adaptive and learnable. The aim of this project is to develop models which combine these advantages. The project