12 algorithm-development-"Prof"-"Prof" PhD positions at Queensland University of Technology
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research background, your motivation to research in this field, full CV, one page statement of your strength and best work, and your full CV. Prof Hoang might decide to contact referees regarding your CV
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fabrication facilities as well as high performance computing (HPC) facilities at QUT. PhD2: Pore-network modelling of reactive transport As a PhD student, you will develop efficient pore-network modelling
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package totalling approximately $47,000 per annum tax exempt (2025 rate) a four-year Research Training Program (RTP) Fee-Offset a four-year project expense and development package of $13,000 per annum a
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Training Program (RTP) Fee-Offset a four-year project expense and development package of $13,000 per annum a three-month industry engagement component with Gelomics a structured professional development and
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copy the link to this scholarship website into Question 2 of the Financial Details section. About the scholarship This PhD project will contribute to the development and optimisation of a Paediatric Post
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will be expected to work closely with the supervisory team and RACQ to co-develop a research proposal not have had any serious road safety offences in the previous 10 years, or any charges currently
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Research Training Program (RTP) Fee-Offset a four-year project expense and development package of $13,000 per annum a three-month industry engagement component with Xcel Sodium a structured professional
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focuses on developing the first-ever closed-loop cardiopulmonary resuscitation (CPR) feedback device. The device uses non-invasive sensors to measure blood oxygenation in the brain and tells the CPR
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national science agency, CSIRO, will fund a $1.2 million scholarship program at Queensland University of Technology (QUT) to train the next generation of aspiring Australian roboticists. The Alberto Elfes
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, hyperspectral imaging provides an opportunity to develop fast and non-invasive methods of detecting plant diseases and potentially discriminating between different disease types (e.g. virus, fungus, bacteria