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sustaining a thriving clinical research ecosystem and driving development in Hong Kong and Greater Bay Area (GBA). In November 2024, the University of Hong Kong LKS Faculty of Medicine (HKUMed) was appointed
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cell approaches with experimental epigenetics and stem cell platforms. Potential projects include: Developing AI/multimodal models (e.g., integrating single-cell omics, spatial transcriptomics
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strong interest in cryo-EM methodology development, nanomaterials, and structural analysis of biological samples. The appointee will conduct basic science and translational research focused on integrating
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pluripotent stem cells differentiation, especially those specializing in germ cell development. The appointee is expected to demonstrate both independent research capabilities and effective team collaboration
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, School of Clinical Medicine, is seeking a highly motivated and talented researcher to join our multidisciplinary team specializing in medical imaging and algorithm development. Our work focuses on
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The ability to work well independently and collaboratively as a team The capacity to develop and pursue a coherent research agenda The ability to develop a body of high-quality publications in scholarly
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to apply. The abilities to work independently, participate in highly collaborative projects, and contribute intellectually to research development are requisites for the position. Applicants should have good
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the Project Leader to develop reading tasks, exercises, other teaching & learning instructional resources, and reading materials in accordance with the primary and secondary education reading proficiency
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and problem-solving skills The ability to multi-task and work on a tight schedule to meet project deadlines The ability to work well independently and collaboratively as a team The capacity to develop
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multidisciplinary team specializing in medical imaging and algorithm development. Our work focuses on advancing the use of computer vision, deep learning, and machine learning for analyzing medical imaging modalities