207 web-developer-"https:" "https:" "https:" Fellowship positions at Nanyang Technological University
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supervising students. Key Responsibilities: Perform laboratory testing and numerical modelling of rock and concrete materials Prepare and deliver comprehensive project reports Develop and publish scientific
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social sciences, enabling them to develop strong, independent research portfolios while contributing to the College's research, teaching, and intellectual life. Key Responsibilities: Fellows will be
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Materials Development for Sustainable Rare Earth Element Recovery Using Electrodialysis (AI-REE) Project Introduction: This project focuses on developing sustainable and cost-effective technologies for rare
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The Aumovio-NTU Corp Lab is a strategic research collaboration between NTU and Aumovio, focusing on developing technically advanced solutions in areas such as sustainable materials engineering
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fields. You will be an integral member of an inter-disciplinary Science of Learning research team in developing brain-based machine-learning predictive models for early identification of mathematical
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engineering, bio(medical)engineering, biotechnology, and other relevant multidisciplinary fields. The key objective is to support efforts to develop wood based membranes for resource recovery. We are looking
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The Coastal Protection and Flood Management Research Programme (CFRP) aims to advance knowledge in coastal and flood resilience and spur the growth of a vibrant research and development ecosystem
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Vo Dat Nguyen Host School : CCEB Email: datnguyen.vo@ntu.edu.sg Google Scholar: https://scholar.google.com/citations?user=6DpchCQAAAAJ&hl=en Dr. Nguyen’s research interests encompass mathematical
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Singapore’s AI-for-Science ecosystem. The candidate is expected to conduct the following research works Develop and validate finite element model of protonic ceramic electrolysers (PCECs) Develop generative AI
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Science of Learning research team in developing brain-based machine-learning predictive models for early identification of mathematical learning difficulties in kindergarten and early primary level students