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PhD scholarship in CSIRO Next Generation Graduate Program (AI in Mental Health) Job No.: 664722 Location: Clayton campus Employment Type: Full-time Duration: 3.5-year fixed-term appointment
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The Adelaide Graduate Research School (AGRS) and Catholic Education South Australia (CESA) are partnering to create an internship opportunityfor University of Adelaide PhD students, to contribute
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three main projects. (1) The recruited PhD student will perform natural language processing and machine learning research into AI-augmented coaching to provide a pre-coaching session AI-based question and
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research activities on an ARC Discovery Project. You will work with an increasing degree of autonomy as skills and experience develop. To be successful in this position, you will have: PhD degree in
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within the field of research to post-graduate students in consultation with the senior researcher To be successful you will need: PhD in Computer Science, Software/System Engineering or closely related
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applications from researchers who have an interest in this area. The scholarship will offer a generous stipend and tuition fee scholarship for a financially disadvantaged graduate researcher to support their PhD
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Duration: The scholarship may be held for up to 3.5 years (full-time) for Research Doctorate (PhD) studies; up to two years for Research Masters studies (MPhil); and up to one year for Honours (Hons) and
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to deliver client centric results. Qualifications: A higher degree by research (i.e. PhD or MPhil) would be highly regarded Extensive experience and specialist expertise or broad knowledge in technical
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on disadvantaged ones. You will work with top researchers in data science (UTS) and social sciences (WSU and ANU) to develop statistical machine learning solutions for social good. This 3.5-year PhD project focuses
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have the opportunity to work with a team of leading researchers, to undertake your own innovative research in and across the fields of robotics, electrical power and signal processing, machine learning