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documents to adms@rmit.edu.au A cover letter (research statement) A copy of electronic academic transcripts A CV that includes any publications/awards and the contact details of two referees. Please put “PhD
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to trick AI-based models, pay little attention to fake-normal data traffic generated by Generative Adversarial Networks (GAN). This PhD research will address a major vulnerability in AI based smart grids by
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to undertake a PhD (maximum one page) A CV including qualifications, academic achievements, list of publications, work history and references A copy of your academic transcript(s) Enquiries: For further
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@rmit.edu.au A cover letter (research statement) A copy of electronic academic transcripts A CV that includes any publications/awards and the contact details of two referees Thesis or research reports
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skills demonstrate the ability to work as part of a multi-disciplinary research team meet RMIT’s entry requirements for the PhD by research degree Eligibility requirements: have a first-class Honours or
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Kerryn Butler-Henderson via kerryn.butler-henderson@rmit.edu.au by 31 October 2022, with: A cover letter - outlining interest and alignment with the proposed research (see Further Information) A copy of
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cover letter briefly outlining your interest in the project Evidence of research ability, such as a digital copy of a Masters or Honours thesis A digital copy of academic transcripts A CV including any
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. Magdalena Plenbanski via magdalena.plebanski@rmit.edu.au and Dr April Kartikasari via april.kartikasari@rmit.edu.au . A copy of electronic academic transcripts A CV that includes any publications/awards and
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upon commencement of the PhD To be eligible for this scholarship you must: Have a first-class Honours degree (or equivalent) in a relevant discipline (e.g., information science, sociology, digital
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opportunity to internship with an emerging med-tech start-up in the USA. DASI Simulation is based in Atlanta, Georgia and focuses on using AI techniques to predict procedural outcomes using cardiac CT imaging