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for tomagraphic imaging in tissue Neural network correction of distortions in acoustic transducers web page For further details or alternative project arrangements, please contact: alexis.bishop@monash.edu.
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Martin Australia invite applications for a project under this program, exploring the development of Physics Informed Neural Networks (PINNs) for efficient signal modelling in areas such as weather
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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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that equips and empowers children, adults, families, and communities to understand and intentionally apply the science of wellbeing, intentional practice, trauma, resilience and growth for themselves
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the demographic profiles and contact networks of the individual simulation model will be drawn from Virtual WA: a geospatial analysis platform built in-house by A/Prof Cameron and Camilo Vargas at The Kids. Student
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PhD Scholarship in Digital Mapping of Homemade & DIY Cultural Economies in First Nations Communities
conference attendance. Monash University is the largest university in Australia and regularly ranks in the top 100 universities worldwide. Monash has six globally networked campuses and international alliances
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PhD Scholarship – Modelling the social and political drivers of net zero transitions Job No.: 670767 Location: Clayton campus Employment Type: Full-time Duration: 3.5-year fixed-term appointment
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success for reactions that involve a net gain or loss of electrons: electrochemical reactions. These are an important class of reactions as they can be driven directly by renewable electricity, contributing
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, design, futures or speculative ethnographic methodologies. The proposal should demonstrate an enthusiasm for theoretical research into digital, emerging technology and net zero futures, with reference
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to simulate sewer networks as dynamic systems, targeting ≥90% modelling accuracy. Train an explainable decision-making agent to optimize interventions (e.g., pipe upgrades), balancing cost, equity, and