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Nanotechnology (IF=39.21), Brief in Bioinformatics (IF=11.62), Hypertension (IF=10.19), IEEE Transactions on Pattern Analysis and Machine Intelligence (IF=24.31), IEEE Transactions on Medical Imaging (TMI
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reconstruction and data analysis. The PhD students will be working at Monash Biomedical Imaging and Faculty of Information Technology, Monash University. Monash Biomedical Imaging is one of the most advanced
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points of study) for the Master of Engineering component. Number offered 10 scholarships available per year. Selection criteria Award to the highest-achieving Year 12 students, based on academic
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are expected to be both (a) evidence of validated (or otherwise) replicated studies, and (more importantly) (b) an analysis of factors underlying the multi-dimensional space of experimental methodologies
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quantum computing technology. This project investigates the design, analysis and efficient implementation of alternative `quantum-resistant' public-key cryptosystems and protocols, focusing
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development process for DL, covering requirement analysis, data collection and labeling, data cleaning, network design, training, testing, and operation. Required knowledge deep learning, natural
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at the devices, and even if encryption is used to protect ML models, those models can be extracted during dynamic analysis. To secure on-device ML models, in this project, we aim to employ privacy-enhancing
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across a variety of sectors, the use of AI in LE is markedly different. The power of state coupled with the potential for broad-based data collection for AI analysis has implications for free, open, and
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behavioural apparatuses. Make an analysis pipeline which connects raw videos to behavioural predictions in Google Colab 15 . This may eliminate the need for coding expertise. If there is time, generalise
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. The latest advanced techniques in machine learning and computer vision for image content analysis will be applied to generate data for dynamic species distribution models. This data will in turn be used