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The ProbAI Hub is a £8.5M research hub funded by EPSRC to develop better understanding of and new methods in AI. This will be achieved by research at the interface of AI and Mathematics
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24 May 2024 Job Information Organisation/Company Ghent University Research Field Computer science » Programming Computer science » Other Mathematics » Applied mathematics Mathematics » Statistics
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the Job related to staff position within a Research Infrastructure? No Offer Description The Department of Mathematics of Vrije Universiteit Amsterdam welcomes applications for a fully-funded, 4-year
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-level teaching have enabled it to establish double degree agreements with prestigious universities and advanced partnerships with numerous companies. With its focus on sobriety, energy, the environment
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Dept. ESAT of KU Leuven (Belgium) in the frame of the AI initiative of the Flemish Government. The goal of this research is to develop new machine learning methods for data-driven selection and
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Make the code generated by AI more robust: Exploring the techniques for validating the automatically generated code. AI-powered coding tools are set to revolutionize how we develop software
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Umeå University is one of Sweden’s largest higher education institutions with over 37,000 students and about 4,700 employees. The University offers a diversity of high-quality education and world
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develop privacy-aware machine learning (ML) models. We are interested in building models that are explainable and are extracted from complex and heterogeneous data. Within explainable ML, we are interested
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disease by integrating patient data from the clinic and various types of omics resources. In short You will develop and apply integrative computational methods to propose novel phenotypic subtypes
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: Exploring the techniques for validating the automatically generated code. Job description AI-powered coding tools are set to revolutionize how we develop software. These AI tools are based on machine learning