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datasets developed by Turning Point, including the National Ambulance Surveillance System and population-based resources involving the National Health Data Hub to answer these questions. This work will
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PhD Scholarship This PhD project will develop an Australian-focused modelling framework to assess carbon and biodiversity market designs, comparing environmental and economic outcomes to inform
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Energy Market Operator (AEMO) launched the Zema Energy Studies Scholarship in March 2019, world-class PhD program to develop the nation’s future energy leaders. The Zema Scholarship aims to create a cohort
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focused on the discovery and development of advanced materials for energy storage applications. Based within Applied Chemistry and Environmental Science in the School of Science at RMIT University, the role
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community of staff are united by our purpose to inspire Australia’s future change-makers and create a better tomorrow. Work that matters Advance the frontier of AI by developing multi-agent systems capable
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Brain and Mind Centre is a centre for discovery, innovation and integrative research strategies, clinical product development and actions that translate research into improved treatment and disease
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materials and we utilise these non-absorbed X-rays to massively increase image contrast and reduce radiation exposure using coherent synchrotron radiation. We have developed these “phase contrast” and “dark
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-temperature performance. The PhD project will focus on the development, investigations and optimizations of new electrode and electrolyte materials. The project will expand the student’s skill set in scientific research
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Professor Wensu Chen on his Australian Research Council Future Fellowship project regarding “Multi-hazard resilient hybrid modular structures” along with Professor Hong Hao. This project aims to develop multi
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materials systems at the molecular level with machine learning. The PhD Student will work with tumour sections to develop multiple instance learning and weak supervision / spatial transcriptomics models