95 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:" positions at King's College London
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, Nutritional Sciences and Women's Health cluster) for REF was rated as world-leading or internationally excellent. We use this expertise to teach the next generation of health professionals and research
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maintain a positive work environment. 5. Strong computer skills (proficient with MS WORD, Excel and web-based applications). 6. Eye for detail and ability to accurately document findings in written
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Health Hub (KHP DHH) training team and provide leadership in the design and delivery of innovative, high-quality learning resources. The role is central to PharosAI’s mission of equipping researchers
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, Nutritional Sciences and Women's Health cluster) for REF was rated as world-leading or internationally excellent. We use this expertise to teach the next generation of health professionals and research
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, then apply statistical and machine learning techniques to analyse how network activity changes in response to these perturbations. This involves identifying patterns, dependencies, and emergent
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to the project’s scope, such as mechanistic interpretability of LLMs, robustness verification of machine learning models, and conformal inference. Applicants should demonstrate scientific creativity, research
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for Simulation and Interactive Learning Centre. Simulation and Interactive Learning (SaIL) at King’s College London is an entity within Florence Nightingale Faculty of Nursing, Midwifery & Palliative care
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researchers and a passionate student body, we are always encouraging innovative and progressive collaboration, as well as new ways to work and learn. Further Information The Faculty of Life Sciences & Medicine
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and blended learning across King’s College London. At the same time, you’ll benefit from being part of a creative and experienced team of developers within King’s Digital, working to make Moodle more
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-based cameras (e.g. DVXplorer), and tactile/force sensors. 3. Strong background in computer vision and deep learning, with practical implementation experience. 4. Proficiency in programming with