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Cabrini/Monash Nursing and Midwifery PhD Scholarship Program – The Peter Meese Cabrini Oncology Nursing PhD Scholarship Job No.: 690199 Location: To be confirmed (Clayton/Malvern) Employment Type
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Program Manager - BloodCare CRE Job No.: 686995 Location: 553 St Kilda Road, Melbourne Employment Type: Full-time (negotiable from 0.6 FTE) Duration: 12 month fixed-term appointment Remuneration
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Senior Program Coordinator Job No.: 687380 Location: Clayton campus Employment Type: Full-time Duration: Continuing appointment Remuneration: $106,789 - $117,128 pa HEW Level 07 (plus 17% employer
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package should be prioritised are surprisingly difficult computational tasks. State-of-the-art high-performance algorithms are used to calculate routes for the vehicles in order to minimise costs and
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Senior Administrative Coordinator, UCAT ANZ Program Job No.: 686950 Location: Clayton campus Employment Type: Part-time, fraction (0.4) Duration: 3-year fixed-term appointment Remuneration: Pro-rata
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Lecturer/ Senior Lecturer - Electrical and Computer Systems Engineering Job No.: 688022 Location: Clayton campus Employment Type: Full-time Duration: Continuing appointment Remuneration: $114,951
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Indigenous Graduate Program Manager Job No.: 687292 Location: Clayton campus Employment Type: Full-time Duration: Continuing appointment Remuneration: $120,138 - $132,610 pa HEW Level 08 (plus 17
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Program Officer Job No.: 686768 Location: Melbourne CBD Employment Type: Full-time Duration: 2 year fixed-term appointment Remuneration: $83,424 - $95,825 pa HEW Level 05 (plus 17% employer
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anomalies in evolving graphs. In this research proposal, our aim is to explore the parallels of deep learning and anomaly detection in dynamic graphs. In particular we are interested to redesign deep neural
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cooperating with each other, but in many cases competing for individual gains. This structure may not always work for the benefit of science. The purpose of this project is to use game theory and computational