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This research project is to understand how machine learning can be exploited in the areas of target detection and tracking. Develop tracking expertise in a new student who can subsequently work
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Development Package valued at $13,000. Maximum period of tenure of an award is 4 years. Periods of study already undertaken towards the degree will be deducted from the period of tenure Eligibility To be
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Australian Research Council (ARC) Funded PhD Opportunity at Faculty of Engineering: High-Speed Rail and Sustainable City Sizes in Australia Location: Clayton campus Department/Unit: Monash Institute
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the pathophysiology and management of disease. Value and Tenure: The award will be a major scholarship worth $38,830 per annum (2025 rate, tax-free and indexed annually). Applying: Please complete the below form and
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a PhD in Chemistry, Physics or Materials Science with a proven research track record and solid background enabling the study of completely new problems. The post is available until 30 September 2026
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development and training package. Value Stipend of AUD $47,000 (2025 rate). A project expense and development package of up to $13,000 per annum. Maximum period of tenure of an award is 4 years. Periods
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methods for elemental tracking of Ca under biotic and abiotic environments in a range of substrates and microbial metabolic pathways using stable isotopes. A 3 year PhD project available at Curtin
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a three-month industry engagement component with the industry partner (Toowoomba Grammar School). Value Stipend of AUD $47,000 Maximum period of tenure of an award is 4 years. Periods of study already
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-tracking, pupillometry), cognitive modelling, and regulatory analysis to assess how algorithmic explanations shape human judgement and how existing legal and ethical frameworks align with the evolution
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prediction, signal tracking, fluid dynamics, and space exploration. Advancing Signal Modelling with Physics-Informed Neural Networks This project aims to develop Physics Informed Neural Networks (PINNs