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Job Description Job Alerts Link Apply now Job Title: Research Fellow (High-Performance AI Computing Systems) Posting Start Date: 20/01/2026 Job Description: Job Description We are seeking a highly
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to design, analyse, and operate high-power and high-voltage electrical systems, ensuring safe, reliable, and compliant operation across our facilities. The candicate will work closely with the Principal
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optimisation, algorithm design and high-performance computing, with application to airport innovation. Successful candidates will join an active group of Principal Investigators and researchers to work within
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Director, Operations, you will: Lead and inspire a high-performing team of senior administrators, including both direct reports and matrix teams across Schools and Centres. Translate strategy into action by
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undertake the responsibilities towards the development of new photopolymers and biomaterials. Key Responsibilities: Operate nano-computed tomography (nano-CT) systems to perform high-resolution 3D imaging
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May 2026 - 00:00 (UTC) Country Singapore Type of Contract Other Job Status Full-time Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to
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of Research Associate/Research Fellow will focus on developing advanced high throughput phenotyping tools for assessing the performance of genotypes under abiotic and biotic stresses that occur in indoor
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a culture of service excellence and operational efficiency to ensure high-quality programme delivery. • Champion the continuous review and enhancement of work processes to drive efficiency and
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unstructured data to enhance intelligent decision-making and real-world application performance. Job Description: Conduct high-quality research in recommendation systems, graph neural networks, and multimodal
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mechanisms) to ensure stable operation and precise control during flight. Edge Computing Implementation: Architect and deploy machine learning and computer vision models directly onto onboard edge devices (e.g