18 phd-agent-based-modelling Fellowship positions at University of Adelaide in Australia
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This PhD scholarship is funded by an Australian Research Council Industry Fellowship grant. It is a 3.5-year research training program. The ARC Industry Fellowship program aims to develop a strong
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need: A PhD in epidemiology, public health, medical sciences or other areas relevant to primary health care Demonstrated experience contributing to the coordination of quantitative health research
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you will need: A PhD in Quantum Physics, good knowledge in the Physics of Quantum devices. Demonstrated knowledge and experience in Advanced Physical Models such as the ones typical used in Many Body
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metapopulation and/or individual based models Knowledge of Bayesian methods, including Approximate Bayesian Computation Experience with big data analysis and HPC environments Knowledge of additional programming
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. To be successful you will need: PhD in Educational Technology (in the final stages), or equivalent qualification Emerging record of research excellence in educational technology with recent high-quality
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, providing evidence-based analysis for determining force effectiveness. The applicant will work with other researchers and engineers in A/Prof Szabo’s team who share broad goals in modelling and simulation and
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an employer contribution of 17% superannuation applies. Four Full Time Positions Available | 24 Months Fixed Term | Expected to commence February 2026. Be part of a world class, outcome-based research centre
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or nearly completed PhD graduate with experience in protein biochemistry to join the Herbicide and Antimicrobial Innovation Laboratory led by ARC Future Fellow Dr Tatiana Soares da Costa. Working
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contribution of 17% superannuation applies. Full Time, Fixed Term position for 12 Months! We are seeking a Postdoctoral Research Fellow (Structural Engineering) to be based within the School of Architecture and
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/research/about-us/ AIML is the largest University based computer vision and machine learning research group in Australia, with over two hundred members including academics, engineers, research staff and