197 machine-learning-"https:"-"https:"-"https:"-"https:" positions at University of Sheffield
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machine learning system to actively control loft, paving the way for advanced, adaptive manufacturing systems. Earn While You Learn: Get a fully funded four-year postgraduate research degree (EngD or PhD
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that can use explanation as a core mechanism for learning and reasoning in natural language. To this end, he investigates the integration of neural and symbolic AI methods to enhance the robustness and
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tool wear, decreased part quality, and costly unplanned machine shutdowns. The challenge facing manufacturers is that MWFs contain complex chemistries susceptible to attack from heat, contamination
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happen is not straightforward, and success is far from guaranteed. Using AI as a tool for scientific research requires deep knowledge of both the subject area being studied and the AI and machine learning
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Overview The Campaigns and Alumni Relations Office (CAR) at the University of Sheffield is dedicated to inspiring alumni (former students) and supporters to make philanthropic gifts, as
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Overview We have an exciting opportunity for a motivated and enthusiastic individual interested in biodiversity, evolution, neuroscience and machine learning to join the Leverhulme Trust funded
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for attaining desired engineering properties. The project will combine physical modelling, experimental data, and machine learning to create a feedback loop that refines the material properties and manufacturing
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Accessible Tinnitus Notch Noise Therapy via Machine Learning, Acoustic Metamaterials and Additive Manufacturing (with NHS and TinnitusUK)
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Overview Campaigns and Alumni Relations (CAR) at the University of Sheffield is dedicated to inspiring alumni (former students) and supporters to make donations and volunteer their time. A gift to
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the key data streams and advanced analytics methods (e.g., Machine Learning) required for a practical, production-ready system. Use signal responses to optimise process parameters, tool selection, and even