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learning (reinforcement learning, multi-armed bandits). This position is expected to last from one to two years. The start date is negotiable. The candidate is expected to have a PhD in electrical
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development. Job Requirements PhD in Physics with a strong background in atomic physics; Knowledge of computer hardware control is expected; Some knowledge of ion traps and electronics is preferred but not
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. Qualifications Requirements • A PhD in Computer Engineering/Electrical Engineering/Computer Science and related disciplines, with knowledge and experience in one or more areas, 5G, Metaverse, edge computing
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machine learning conferences such as CVPR, ICCV, ECCV, NeurIPS, ICLR, etc. The candidate will also help to co-supervise PhD students in the group. Only shortlisted applicants will be notified
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transportation), Electrical Engineering, Computer Engineering, or Computer Science; • Programming experience and knowledge of machine learning would be a plus; • Possesses research background with ability
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PhD degree (transportation engineering, operations research, computer engineering/science, or related disciplines) • Strong interests and expertise in traffic simulation, statistical modeling
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be a hot bed for top quality research and the playground for commercialization and start-ups. Qualifications A PhD degree in Computer Science/Computer Engineering Possess strong background in
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photodetectors. 4) Be skilled in at least one computer programming language for data processing and analysis. Programming experience in neural networks or machine learning is preferred. 4. Independent Research
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About the Centre for Quantum Technologies (CQT) The Centre for Quantum Technologies (CQT) in Singapore brings together physicists, computer scientists and engineers to do basic research on quantum
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. • Integrating existing literature to propose research ideas and hypotheses, develop and implement empirical analysis using various statistical software. Methodologies used include machine learning, regression