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have no more than five years of post-qualification experience at the time of application. Applicants are invited to contact Prof. Xu Xin at telephone number 2766 7065 or via email at xin.xu@polyu.edu.hk
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-qualification experience at the time of application. Applicants are invited to contact Prof. Wen X. Sitman at telephone number 3400 2473 or via email at xw.wen@polyu.edu.hk for further information. Conditions of
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robotics, localization, mapping, and multi-modal sensor fusion; (b) proficiency in programming languages such as Python and C++; (c) demonstrated ability to conduct independent research and contribute
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five years of post-qualification experience at the time of application. Applicants are invited to contact Prof. Lei Yang at telephone number 2766 7280 or via email at ray.yang@polyu.edu.hk for further
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preliminary research on the application of brain-computer interface technology in enhancing tourism experiences for families with ASD children”. Qualifications Applicants should have: (a) a doctoral degree
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molecular technique and clinical data analysis. Applicants are invited to contact Prof. Chien-Ling Huang at telephone number 3400 8602 or via email at cl.huang@polyu.edu.hk for further information
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the research project - “A novel sustainable campus lighting and charging infrastructure managing flexible multi-source power generation”. They will be required to: a) lead power generator design and
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health monitoring, preferably with a publication record in top-tier journals; and (c) be proficient in mainstream research frameworks for deep learning and computer vision. Applicants are invited
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Department of Electrical and Electronic Engineering Research Fellow (Ref. 250808021) [Appointment period: twelve months] Duties The appointee will assist the project leader in the research project
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) have a strong research background in machine learning, deep learning, human-computer interaction and XAI; (e) be proficient in programming languages such as Python and at least one deep learning