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opportunities through grant proposals Job Requirements: PhD in Electrical/Mechanical/Biomedical Engineering or relevant specialty Experience (3+ years) in a bioengineering specialty such as but not limited
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beyond Conduct world-leading research in the field of Global Asia Job Requirements: PhD in a relevant discipline Conduct world class research in the history and politics of Global Asia Possess more than 10
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. The design and integration of CHIPLETS is a complex multi-physics task that requires substantial design space exploration and co-design and co-optimization accounting for the electrical, thermal and mechanical
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. Perform thermal characterization and real-application tests. Prepare monthly reports and presentations for meetings and project deliverables. Mentoring of PhD students. Job Requirements: Possess PhD degree
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storage materials, and employing machine learning and high throughput for the discovery of new electrode materials and electrolyte systems. 1. Holds a PhD degree in chemical engineering, chemistry
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should possess a PhD in fields related to the law of the sea, international shipping regulation, or oceans law and policy. A minimum of six (6) years of postdoctoral research experience in these areas is
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. The Postdoctoral Research Fellow will work closely with members of the Physical Activity and Nutrition Determinants in Asia (PANDA) research programme: https://blog.nus.edu.sg/sphpanda/ . PANDA is one of the major
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storage materials, and employing machine learning and high throughput for the discovery of new electrode materials and electrolyte systems. 1. Holds a PhD degree in chemical engineering, chemistry
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storage materials, and employing machine learning and high throughput for the discovery of new electrode materials and electrolyte systems. 1. Holds a PhD degree in chemical engineering, chemistry
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, including machine learning, computer vision, adaptive data modelling, and computational imaging. The objective is to develop state-of-the-art machine learning algorithms for solving ill-posed inverse problems