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for application of research outcomes; Contribute to knowledge exchange activities with external partners and collaborators; Requirements A PhD in Computer Science, with specialization related to machine learning
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, solution and implementation of robust traffic signal control of the intersections using machine learning methods. The role involves the opportunity to work with the research team within National University
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expertise in other aspects of quantum computing such as quantum machine learning, near-term quantum algorithms, quantum approximate optimization are encouraged to apply. • PhD in electrical engineering
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Job Description The National University of Singapore (NUS) is offering a position for a postdoctoral fellow who will work closely with Dr. Vincent Tan in online machine learning (reinforcement
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of high-gain antennas and apply prior-knowledge for machine-learning enabled-synthesis. The applicant will report their research achievements at prestigious journals and conferences. The applicant shall
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background in applied empirical methods, coupled with a keen interest in pursuing a quantitative marketing PhD degree with a focus on machine learning or structural modelling. Responsibilities: The successful
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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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in Python programming would be preferred) and familiarity with the LINUX platform. • Experience in machine learning, deep learning, and data analytics will be beneficial. • Proficiency in written
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in Python programming would be preferred) and familiarity with the LINUX platform. • Experience in machine learning, deep learning, and data analytics will be beneficial. • Proficiency in written
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; • Scripting/computer programming knowledge is required; • Knowledge of data analytics and/or data visualization is desired; • Expertise in building simulation and/or the application of deep learning is a