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Bristol Medical School is seeking a talented and enthusiastic postdoctoral scientist with expertise in machine learning. The successful candidate will either be an interdisciplinary scientist
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The School of Mathematics is seeking to appoint a Lecturer (analogous to Assistant Professor) in Statistics or Machine Learning, to be interpreted as broadly including Statistics, Data Science
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The Particle Physics group of the University of Bristol (tinyurl.com/particle-bristol ) UK, seeks a Research Associate or Senior Research Associate to join its machine learning R&D team
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We invite applications from data scientists, computer scientists, geographers and economists specialised in machine learning and computer vision. The position would be hosted by the School
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’. The postholder will be responsible for development of a machine learning predictive model for the creation of a fundamentally novel kind of early disease detection system based on early behaviour changes rather
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of Bristol’s aims within the Prob_AI Hub. Publish in leading machine learning, AI, statistical, mathematical, or appropriate application journals. Contribute to publications in these journals jointly with other
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limited to applying machine learning algorithms for network optimisation, exploring the dynamicity of the quantum network and co-existence scheme of quantum links with classical optical channels. Some
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engineering, such as version control, testing, reproducible data analysis pipelines and FAIR data; Broad conceptual and practical knowledge of the state of the art in machine learning and data science
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on computer vision in the new £7.7M EPSRC-funded “TORUS” Programme Grant, where cameras and machine learning at the edge will be characterising symptoms of Parkinsons Disease. - You will also be a key
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such as program verification/analysis, program synthesis and repair, functional programming, type theory, and cryptography. Recently, we also focused on applying machine learning to program analysis