48 postdoc-computational-fluid-dynamics Fellowship positions at The University of Queensland
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Conduct research and develop a research program in experimental quantum turbulence and manipulation of quantum vortices to enable studies of 2D melting. Innovate and pursue the aims of the Discovery Project
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or metabolomics. Experience using ‘R’ and high-performance computing preferred. Evidence of publications in reputed refereed journals and presenting at conferences. Evidence of contributions towards successfully
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. Key responsibilities will include: Research: Establish a research program, collaborate on research projects, seek and manage research funding, publish in reputable journals, utilize best practice
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responsibilities will include: Research: Develop an independent or collaborative research program to achieve national recognition, produce quality research outputs, and lead in publishing/exhibiting in national
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engagement roles and activities within the School of Communication and Arts at the University of Queensland. Key responsibilities will include: Research: Establish a research program, collaborate on research
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profile in polymer science/engineering. In this position you will work with Professor Bronwyn Laycock on delivering against the research program of the newly awarded ARC Discovery grant on Controlling
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for a recently awarded Quantum 2032 Challenge Program grant, working on plasmonic nanomaterials for detection of chemical and biochemical agents. Key responsibilities will include: Research: Contribute
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statistical analyses of large genomics datasets related to cardiovascular disease. Establish a research program, collaborate on research projects, seek and manage research funding, publish in reputable journals
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their academic pursuits. Key responsibilities will include: Research: Establish a research program in MND, collaborate on research projects, seek and manage research funding, publish in reputable journals, utilise
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projects on time and within budget. Expertise in quantitative genetics, genomics, breeding program simulations, or related areas, preferably in grain crops, with a focus on modelling genetic-environment