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coupled nuclear engineering problems, using techniques such as (but not limited to) molecular dynamics, computational fluid dynamics, activation decay codes, kinetic Monte Carlo codes, particle transport
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Full time, 2 years fixed term opportunity (with the possibility of extension). Located on the Darlington Campus at the School of Aerospace, Mechanical and Mechatronic Engineering (AMME) Contribute
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Souza. We are looking for candidates with a background in Electrical Engineering focusing on electronics and instrumentation. The ideal candidate will have expertise in micro-electronics design, including
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of research outcomes through appropriate channels and outlets. Undertake discipline-appropriate research activities, e.g. trial design, surveys, literature reviews, data gathering and/or recording of results
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stakeholders. This will be one of a potential six postdoc hires in the research group for 2025. At ANSTO, you will have the opportunity to work closely with both the Nuclear Materials Research and Technology
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statistical ecology Demonstrated track record in research publication Demonstrated experience with data and code management As this is a fixed-term contract, you will require current work rights in Australia
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. Support the dissemination of research outcomes through appropriate channels and outlets. Undertake discipline-appropriate research activities, e.g. surveys, literature reviews, data gathering and/or
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to $135,932 per annum plus an employer contribution of 17% Superannuation applies. Fixed-term, full-time position for 2 years. The School of Electrical and Mechanical Engineering (EME)is seeking a highly
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writing and funding applications. Qualifications and Experience Essential: PhD in Food Science and Technology, Food Engineering, Chemical Engineering, or a closely related field (applications can be
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-carbon electric power systems, taking into account wake interactions between individual wind turbines. The project focus is on how to generate and utilize reduced-complexity predictive models for windfarm