105 postdoc-computational-fluid-dynamics-2017 positions at University of Adelaide in Australia
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The National Industry PhD Program is an Australian Government initiative to enhance workforce mobility among higher degree by research students, and to promote knowledge transfer between academia
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. Thermodynamics and Fluid Mechanics: Aerodynamics and hydrodynamics, Computational fluid dynamics (CFD), Compressible flows, Environmental fluid mechanics, Flow control and optimisation, Fluid-structure interaction
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The National Industry PhD Program is an Australian Government initiative to enhance workforce mobility among graduate researchers, and to promote knowledge transfer between academia and industries
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Watch the latest Information Session held 16 June 2025 for an overview of the program’s aims and objectives, tips and tricks for applying for the program, followed by a Q&A of frequently asked
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contribution of 17% superannuation applies. Full-time, fixed term position for 13 months. We are seeking a Postdoctoral Research Fellow (Level B) to join the School of Computer and Mathematical Sciences
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contribution of 17% superannuation applies. Fixed term position for 24 Months. Postdoc opportunity - Open for Applications Until Filled. We are seeking a dynamic and motivated Postdoctoral Fellow in Ecological
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, graduate students, postdocs and senior academic staff. Excellent track record in scientific journal publications. The path to Adelaide University We are on an exciting path to Adelaide University as we
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government and industries in South Australia, and overseeing Centre performance. The appointee will also be supported to establish and build a dynamic research program in machine learning or artificial
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Talent Acquisition team. This role plays a critical part in attracting, engaging, and recruiting the exceptional people who will drive our talent strategy forward. If you thrive in a dynamic environment
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decision making in contested and dynamic environments, involving extensively applied work at the intersection of data fusion, decision making and machine learning, with real-world testing and feedback