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participating university PhD admission requirements. c) Meet university English language requirements. d) Not have previously completed a PhD. e) Be able to commence the Program in the year of the offer. f) Enrol
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condensed matter physics, physical chemistry or biology Possess a strong interest in biological problems using physical and chemical theory and computer-based techniques Meet RMIT’s entry requirements
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listed below at the ARC Centre of Excellence for Quantum Computation and Communication Technology (CQC2T). CQC2T, the flagship organisation for Australian research in quantum computing, comprises eight
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PhD project to develop theoretical computations and modelling methods to guide and optimise the synthesis conditions and composition of electrocatalysts. PhD project to develop theoretical
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(or equivalent) in a relevant discipline (e.g., information science, sociology, digital humanities, digital health, computer science, information systems, user experience design) Have strong social research
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for three years with a possible extension of six months (full-time). Two (2). Two (2). Excellent academic background in a relevant field including chemical engineering, polymer science, food science, food
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These models are technology platforms that facilitate drug discovery and fundamental research. Our research is funded by Australian Research Council. This project aims to develop bio-microfluidic
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aim to use the features and functionalities of Metaverse supported by Artificial Intelligence to develop a framework for an educational technology platform and training programs that are challenging
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biochemistry, material science, and nanotechnology to develop particulate complexes that maintain protein/enzyme functionality under diverse (e.g., heat stress) conditions. The project will investigate novel
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@rmit.edu.au Dr. Shao, Wei (Data61, Marsfield) - wei.shao@data61.csiro.au The successful candidate is expected to have strong motivation and evidenced skills in machine learning and computer vision