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. This work combines computational modelling and simulation with biological experiments that are analysed using cutting-edge computer vision techniques. We collaborate closely with Macquarie University where
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Maxwell King PhD Scholarship The Maxwell King Scholarship (MKS) is named after Professor Maxwell King, who has made an outstanding contribution to graduate research at Monash University, including
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the University. Enquiries: Professor Chen Chen, Deputy Head of Department, chen.chen2@monash.edu Applications Close: Applications will be accepted as they are received. Supporting a diverse workforce
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Duration: 3.5 years fixed-term appointment Supervisory Team: Professor Elizabeth Manias (Main Supervisor) The successful candidate will be supported by a multidisciplinary project team with expertise in
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. Enquiries: Associate Professor Markus Wagner, Interim Head of Department, markus.wagner@monash.edu Position Descriptions: Lecturer - Level B - DSAI AI in Health Senior Lecturer - Level C - DSAI AI in Health
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classification'', Computer Journal, Vol 11, No 2, August 1968, pp 185-194 Wallace, C.S. and D.L. Dowe (1999a). Minimum Message Length and Kolmogorov Complexity, Computer Journal (special issue on Kolmogorov
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Ashton Nixon Scholarship Sir John Monash Scholarship for Achievement The Ashton Nixon Scholarship is supported by Associate Professor Rosemary Nixon AM to support undergraduate students embarking
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methods dealing with model complexity - e.g., AIC, BIC, MDL, MML - can enhance deep learning. References: D. L. Dowe (2008a), "Foreword re C. S. Wallace", Computer Journal, Vol. 51, No. 5 (Sept. 2008
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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
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confidential discussion. Your employment is contingent upon the satisfactory completion of all pre-employment and/or background checks required for the role, as determined by the University. Enquiries: Professor