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evaluation of multi-disease tests, and test this using AI applications in radiology as a practical case study. Where to apply Website https://www.academictransfer.com/en/jobs/360280/phd-position-developing
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to the intensional paradoxes. The project is highly interdisciplinary and brings together methods and techniques from philosophy, logic and linguistics. PhD 1 will be conducting research within the Property work
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a deeply synergistic endeavor: foundational AI research on methods that can accelerate scientific discovery, where domain insights from the natural sciences drive the development of better AI. We seek
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team as PhD candidate on the DECIDE project, an ambitious inter- and transdisciplinary initiative to design AI systems for decision support, that contribute to the empowerment and democratic
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, the ideal candidate is someone who demonstrates the following qualities in research and teaching: Research: Holds a PhD in a quantitative field (e.g., methods and statistics, data science, computational
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Business and Management programme can be found on the RSM website Where to apply Website https://www.academictransfer.com/en/jobs/359347/fully-funded-phd-positions-in-s… Requirements Specific Requirements
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/359354/2-phd-positions-on-learning-cau… Requirements Additional Information Website for additional job details https://www.academictransfer.com/359354/ Work Location(s) Number of offers available2Company
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interdisciplinary and brings together methods and techniques from philosophy, logic and linguistics. You will be conducting research within the Provability work package. The overall goal of this work package is to
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together methods and techniques from philosophy, logic and linguistics. You will be conducting research within the Propositions work package. The overall goal of this work package is to develop an account of
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team as a PhD candidate to work on beyond the state-of-the-art model distillation and robustness methods, enabling efficient, reliable inference for challenging real-world problems in the semiconductor