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Vulnerability Detection of Smart Grids with a Specific Focus on Generative Adversarial Networks (GAN) Attacks Primary supervisors: Professor Damminda Alahakoon & Dr Shalinka Jayatilleke Other supervisors
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of Excellence, the successful applicant will also be part of dynamic, national network of collaborating universities and industry partners, offering ample opportunities for national / international collaborations
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Learning (AIML). This PhD project will contribute to the AAGI HDR program where there will be an opportunity to grow your collaborative research within a vibrant network of national and international AAGI
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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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(University of Adelaide). Project 1.4. Quantum biosensor development (University of Adelaide). Project 1.5. Quantum chemical sensor development (University of Adelaide). Project 2.1. Superconducting quantum
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Framework (2019-2023) Indigenous-engagement/initiatives Monash University is the largest university in Australia and regularly ranks in the top 100 universities worldwide. Monash has six globally networked
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, investigate their capabilities, and assess whether they can be replicated to protect our networks and systems. Bringing significant industry experience to the project, CyberCX is a well-respected and leading
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assessed through a network of long-term trials across the pastoral, low, medium, and high rainfall zones of South Australia. Receive a $40,000 (2024 full-time rate) per annum scholarship tax free, for up
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this group, and externally via various collaborations, connections and networks. Data processing requirements are not expected to be significant, and can be met on any number of existing machines or facilities
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, the internal workings of deep neural networks remain largely mysterious, posing a significant challenge to the interpretability, reliability, and further advancement of these models. This project seeks deep