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an understanding of how students make use of the received feedback or the #sustainability of such feedback practice. As technology-mediated feedback becomes an integral part of learning, there is growing urgency in
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undergraduate degree (Science, Engineering or Business & Economics) at a Monash campus in Australia, and Selected to be an Access Monash Mentor , and From one or more of the following educational disadvantage
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intelligence (XAI). This project will build on the methodology of formal explainable AI (FXAI) and aim at advancing FXAI technology and broadening its use by seeking (1) how to efficiently represent an AI system
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based on available funding. Selection criteria Based on academic achievement. How to apply Can be deferred if the Industry partner agrees. Further information is available on the Engineering Co-operative
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: Current student enrolled in an undergraduate degree in the Faculty of Engineering or other STEM faculties at a Monash campus in Australia. Are an Indigenous Australian ** **To be eligible you must provide a
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studying Engineering to pursue undergraduate studies specialising in electrical engineering. Applications Not awarded in 2025 Total scholarship value Up to $20,000 Number offered Two at any time See details
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) disciplines. one in the Science, Technology, Engineering and Mathematics (STEM) disciplines. Selection criteria Monash scholarships are very competitive and are awarded based on your academic record, any
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intending to enrol in the Bachelor of Music (and Double Degrees) with a specialisation in any stream (Classical Music Performance, Composition and Music Technology, Jazz and Improvisation Performance, Popular
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J K Ellis Scholarship Industry Leaders Scholarship This scholarship has been generously supported by Jerry Ellis and his wife Ann. It is intended to support an Engineering undergraduate student
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Ltd. FWG is an Australian technology company that has developed novel techniques and processes that predict when an individual is most likely to have a chronic condition or illness, in their future