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, Head of Unit or their delegates. Qualifications Applicants should have: (a) a bachelor’s degree in Computer Science or an equivalent qualification; (b) experience in vision-language model training
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integration; (b) conduct algorithm research and development in areas such as computer vision, multimodal learning and embodied AI; (c) conduct experiments, data collection and performance evaluation; (d
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Department of Land Surveying and Geo-Informatics Project Associate (Administration) (Ref. 260413002) [Appointment period: twenty-four months] Duties The appointee will assist the project leader in
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slide imaging analysis in computational pathology is essential. Applicants should have a solid publication record and demonstrated experience in computer vision or analysis of pathology images
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demonstrated experience in computer vision or analysis of pathology images. The appointees will participate in a multidisciplinary collaborative research project related to development of deep learning model
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in logistics industry”. Qualifications For the post of Postdoctoral Fellow, applicants should have a doctoral degree in Robotics, Computer Vision, Aviation Engineering or a related discipline and must
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are trained across a range of practical disciplines spanning digital media art, animation, film, photography, and computer games. The School bridges the boundaries between art, technology, and computer
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the Faculty of Health and Social Sciences. The School is the sole provider of an Honours Undergraduate Programme in Optometry, Master of Science in Vision Science and Innovation, Doctor of Optometry and Doctor
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research in one of the Department's key research areas: (i) Artificial Intelligence and Machine Learning; (ii) Big Data Analytics and Management; (iii) Computer Vision and Pattern Recognition; and (iv
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research in one of the Department's key research areas: (i) Artificial Intelligence and Machine Learning; (ii) Big Data and Data Management; (iii) Computer Vision and Pattern Recognition; and (iv