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View All Vacancies Engineering Location: UK Other Closing Date: Friday 31 May 2024 Reference: ENG1753 Subject area: Drug Discovery, Laboratory Automation, Machine Learning Overview: This 36-month funded PhD studentship will contribute to cutting-edge advancements in automated drug discovery...
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This 36-month funded PhD studentship will contribute to cutting-edge advancements in automated drug discovery through the integration of high data-density reaction/bioanalysis techniques, laboratory automation & robotics and machine learning modelling. This exciting project involves the...
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Concerns about Autonomous Vehicles (AVs) navigating complex driving scenarios necessitate balancing safety, legality, ethics, and comfort, akin to human drivers. AVs must adhere to legal and ethical
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autonomous airborne platforms. The solutions developed in this should be robust to dynamic and congested environments, adverse weather conditions, and mutual sensor interference. A range of algorithmic and
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to technological developments. Ubiquitous connectivity, alternative fuels and partial vehicle automation are now very much a reality, with further advances, such as fully connected and autonomous vehicles, expected
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, to formally detect and repair software vulnerabilities, and enhancing security of robots with self-protection capabilities to autonomously protect them against attacks. The candidate will use different
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Project title: Learning for Control: Enabling Efficient Networked Autonomous Systems Supervisory Team: Konstantinos Gatsis Project description: There is an ongoing transformation in engineering
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challenging, an issue highlighted by the recent energy crisis. Improving energy efficiency of EVs is therefore an important research topic for our society. Autonomous driving offers significant opportunities
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Supervisory Team: Dr Adrian Nightingale, Dr Amber Annett, Dr Blair Thornton, Dr Rand Ismaeel Project description Autonomous underwater vehicles (AUVs) are becoming increasingly widespread in ocean
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focuses on innovating beam and null steering antenna systems that are optimized for 6G cellular networks and autonomous vehicles, including planes, trains, drones, airships, and cars. In the realm of 6G