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- CITY UNIVERSITY OF MACAU
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Project title Multi-Modal Large Language Model for Medical Image Analysis Research period 2 years Abstract The proposed research project aims to develop a novel multi-modal large language model (MLLM
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, with focuses on precision oncology, stem cell and development, aging, neural and metabolism disorders and infectious diseases, biomedical imaging, data science, drug development, neuropsychiatry
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. ZJE has a core facility (composed of FACS core, imaging core, histology core, biochemistry core and bioinformatics core etc.) and a laboratory animal facility (up to 8000 cages) to provide strong
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Biostatistics, Computational biology and neuroscience, Theoretical and computational chemistry, Imaging and Data sciences and Machine learning, Quantum information and quantum computing. The recruitment program
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Province, China Postal Code: 211189 Website of Southeast University: http://www.seu.edu.cn Website of School of Mathematics: http://math.seu.edu.cn We are not accepting applications for this job through
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excavation, scientific archaeology, digital technology, image science, etc. to take the path of cross-integration of humanities and technology in multidisciplinary development. It will fully serve the national
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. ZJE has a core facility (composed of FACS core, imaging core, histology core, biochemistry core and bioinformatics core etc.) and a laboratory animal facility (up to 8000 cages) to provide strong
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. We envision a research paradigm shift in fluid mechanics to a physics-informed (and -informative) probabilistic learning framework, which leads to disruptive technology transformation in the aerospace
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. We envision a research paradigm shift in fluid mechanics to a physics-informed (and -informative) probabilistic learning framework, which leads to disruptive technology transformation in the aerospace
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optoelectronic devices and technologies, and apply them to communications and computing, imaging and display, sensing and detection, and other fields. 3. Efficient energy storage materials and technologies Aiming