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. Department: London Inst. for Healthcare Engineering. Contact details:Gabriel Dubost. [email protected] Location: St Thomas’ Campus. Category: Professional & Support Services. About King’s The facility
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About us The Department of Informatics in the Faculty of Natural, Mathematical & Engineering Sciences (NMES) is a cutting-edge place to study and research the field of computer science and the
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, and BT. You will be a conscientious, innovative scientist who is conducting your PhD in Telecoms, computer science and engineering including electrical/electronic engineering or similar. Experience in
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architecture activities, which will help enable the operational effectiveness and adaptability as an agent for innovation and change, to help King’s exploit digital technology to secure advantage. They will work
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Job id: 086426. Salary: £51,974 to £61,021 per annum, including London Weighting Allowance. Posted: 15 March 2024. Closing date: 14 April 2024. Business unit: Natural, Mathematical & Engineering
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systems Development of service innovations across their Campus and the Estate The responsibility for all Engineers and contractors involved in the delivery of the mechanical, electrical, BMS and building
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also have the opportunity to engage in technology-enhanced learning projects aligned with our educational strategies and King's Vision 2029. Collaborating with colleagues, you'll play a key role in
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About us The Department of Informatics in the Faculty of Natural, Mathematical & Engineering Sciences (NMES) is a cutting-edge place to study and research the field of computer science and the
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(including electrical/electronic engineering), or a similar field. Candidates with strong backgrounds in reinforcement learning, multi-agent learning, language model agents and causal learning are encouraged
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(including electrical/electronic engineering), or a similar field. Candidates with strong backgrounds in reinforcement learning, multi-agent learning, language model agents and causal learning are encouraged