60 structural-engineering-"https:"-"https:"-"https:"-"https:"-"https:"-"UCL"-"UCL" positions at Imperial College London
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Division help manage one of the largest built estates in the University sector and delivers a comprehensive range of services to an academic community who are world leaders in the provision of Engineering
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are structured to support downstream clinical, statistical, and machine learning analyses. Through this work, you will enable robust, scalable research and contribute to a broader goal of improving understanding
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and spinouts with deep technology-based solutions for climate mitigation and adaptation. Encompassing hardware, software and hybrid solutions, the project supports climate-focused businesses across a
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achieve enduring excellence in research and education in science, engineering, medicine and business, for the benefit of society. Our strategy, Science for Humanity, is ambitious and positions Imperial as a
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. CADI is supported by the UK Department for Science, Innovation and Technology with a remit to develop science-policy interfaces to aid the adoption of transformative AI applications across the UK
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and optimisation but not limited to data driven monitoring for control and operation. You must have a good master’s degree in electrical engineering, with Power and Control Engineering major
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Are you an experienced PMO professional who thrives on bringing structure, clarity and strong governance to complex programmes? Do you enjoy working with senior stakeholders and enabling teams
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As a Research Associate in Data-Driven Optimisation, you will work at the interface of chemical engineering, machine learning and automation, to develop next-generation workflows for the design and
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Rankings 2026, Imperial has a mission to deliver excellence in research and education across science, engineering, medicine, and business. The Natural Sciences and Trusts, Foundations & Corporates
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candidates will be involved in projects exploring novel ways to incorporate topological structures into deep learning pipelines, contributing to both theoretical advancements and practical applications