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-disciplinary team of clinician scientists and computer scientists to develop diagnosis/predictive/treatment/robotics surgery models of diseases of interest using multimodal medical data, consisting of images
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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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. Wallace", Computer Journal, Vol. 51, No. 5 (Sept. 2008) [Christopher Stewart WALLACE (1933-2004) memorial special issue [and front cover and back cover]], pp523-560 (and here). www.doi.org: 10.1093/comjnl
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with generous top-up scholarships. We're looking for talented students with a background in mathematics, computer science, statistics, economics, engineering or other related fields. These positions
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diverse research clients. About you You will bring: A Diploma of Applied Science (Animal Technology) or progression toward completion with relevant experience Practical experience performing animal
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Women in Engineering Scholarship Sir John Monash Scholarship for Achievement At Monash, we support bright young women who wish to study engineering. If you are a high-achieving student intending
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intelligence”, Business Horizons 62(1) • November 2018. Heidegger, Martin. The Question Concerning Technology and Other Essays. Harper and Row, New York, 1977. Ihde, Don. “Philosophy of technology.” In
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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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., Pan, S., Aggarwal, C., & Salehi, M. (2022). Deep learning for time series anomaly detection: A survey. ACM Computing Surveys.
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. Required knowledge Strong background in machine/deep learning, computer vision, or applied statistics. Solid programming skills in Python and experience with deep learning frameworks (e.g., PyTorch