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Responsible for developing LC-MS method for structural elucidations of natural carbohydrates Perform chemical biology assays to evaluate the bioactivity of natural and synthetic carbohydrates Job Requirements
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peptides, antimicrobial assays development, and electrochemical studies efforts led by the other partners in the consortia. The candidate shall work under the supervision of the Principal Investigator, who
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Materials, Bioinspired Materials and Sustainable Materials. For more details, please view https://www.ntu.edu.sg/mse/research . The job is in the area of development of high efficient thermoelectric materials
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decarbonisation, data analysis, methodology development and applications Coordinate the preparation of project reports and deliverables Publish findings in top peer-reviewed journals and conference proceedings
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an emphasis on technology, data science and the humanities. The Lee Kong Chian School of Medicine (LKCMedicine), Assoc Prof Hou Han Wei's lab is seeking to hire a Research Fellow to develop microfluidic-based
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processes, and leading R&D efforts in material science for application development. Drives the development and implementation of coating techniques. Oversee the transition from experimental designs
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material science for application development. Drives the development and implementation of coating techniques. Oversee the transition from experimental designs to scalable solutions. Additionally, the role
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of faculty, students and alumni who are shaping the future of AI, Data Science and Computing. This lab is focusing on research and development of exploring visual signal representation towards machine uses. We
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modelling Reconstructing the temporal evolution of magma reservoir properties at one of more potential caldera systems. Petrological timescales will be determined via diffusion chronometry and/or
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an emphasis on technology, data science and the humanities. We are looking for a Research Fellow to work on AI in mental health. The role will focus on developing predictive models for early detection of mental