377 engineering-computation-"https:" "https:" "https:" "https:" "https:" "UCL" "UCL" uni jobs at Monash University
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to facilitate novel bodily water play interactions in-water, on-water and underwater. An interest and experience with water-based activities, interactive technology, hardware prototyping (including actuators
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area Software Engineering The objective of this project is to design automated approach to detect bugs in various software, e.g., compilers, data libraries and so on. The project may involve LLMs
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& Research Access Support: support with accessing research materials or sites, such as scanning, photocopying, retrieving physical texts, or navigating library systems. Accessible Technology, Materials
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compliance assurance program across the Monash Group, working in close collaboration with central portfolios, controlled entities and faculties to ensure that Monash complies with its regulatory and other
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. one in the Science, Technology, Engineering and Mathematics (STEM) disciplines. Selection criteria Relevance, quality and achievability of projects to the Monash-Museums Victoria collaborative research
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Research Training Program (RTP) Stipend Research Training Program (RTP) Scholarships, funded by the Australian Government, support both domestic and international students undertaking Research
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We have a range of potential research projects on offer in partnership with VIFM - https://www.vifm.org/ - looking at ML techniques in predicting forensic diagnoses / image analysis, across
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Microbiology in Water Engineering Scholarship The Microbiology in Water Engineering scholarship be introduced to encourage students to begin thinking about the interdisciplinary of planetary health
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Computational simulations are now widely employed to study the behaviour of social systems, examples being market behaviours, and social media population behaviours. These methods rely heavily
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Technology: Theory and Applications, pages 123–149. Springer, 2010. O. Biran and K. McKeown. Human-Centric Justification of ML Predictions. In IJCAI2017, pages 1461–1467, 2017. L. Cavazos Quero et al.˙ Jido: A