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[ARC] stipend scholarships are available to help support two (2) Doctoral students undertaking research in the Discovery Project entitled. Optimizing Benefits of Cultural Diversity in Australian
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Development of auxetic structures for optimal orthopaedic implant / bone integration 3 Minute read This PhD project will be based at the University of Melbourne with a 12-month stay at Shanghai Jiao
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-edge AI/ML algorithms to pioneer innovative solutions for optimizing smart motorways and/or arterial traffic flow. By leveraging these technologies, the project endeavours to develop and test smart
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software, and high-temperature experimentation using both idealized and industrial DRI samples, the project seeks to provide insights into optimizing these processes. This proposed PhD project will establish
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software, and high-temperature experimentation using both idealized and industrial DRI samples, the project seeks to provide insights into optimizing these processes. This proposed PhD project will establish
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software, and high-temperature experimentation using both idealized and industrial DRI samples, the project seeks to provide insights into optimizing these processes. This proposed PhD project will establish
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and optimization methods would enhance the qualifications. In addition, experience in various research methodologies (i.e. quantitative, qualitative, and mixed-methods approaches) would enhance
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considered, but it will further be required that they also have a strong interest in operations and supply chain management background. Knowledge of optimization solvers and Proficiency in machine learning
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modelling, computer simulation, and experimental validation. The techniques developed during this project will help optimize the design of novel materials for various commercial and defence applications
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project aims to develop a blockchain-based, two-sided market transition framework to optimally reward/incentivise customers for their services to grids. Student type Future Students Faculty Faculty