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PhD in Economics is a desirable criterion, we will consider candidates currently completing a PhD in Economics or a related field (such as Statistics or Applied Data Science) and who have a strong
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, anthropological and sociological experience as well as experience in survey design and other qualitative methods. To be successful you will need: A PhD in the relevant discipline or have equivalent qualifications
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(including British) History. Eligibility: Applicants must be Australian citizens, permanent residents of Australia or international students who are acceptable as candidates for a PhD/MPhil degree at
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technologies, with a specific focus on electrode/electrolyte interface studies for secondary batteries. The successful candidate will have recently completed, or be nearing completion of, a PhD in a relevant
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to lead to improved predictive design of biomass crops for the production of sustainable aviation fuel. The postdoc will also co-supervise PhD students and Honours students. To be successful you will need
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to engage and collaborate with the broader University, school and discipline group to establish collaborative multi-disciplinary research outcomes. Qualification/s: A PhD in Civil Engineering specialising in
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or discipline. To be successful you will need: A PhD in Landscape Architecture or a related area of Architectural Research. Established undergraduate and postgraduate level teaching skills including design studio
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undergraduate courses, including Astronomy I, Physics III, Atmospheric & Astrophysics III, and Classical Physics II, with additional involvement in Honours-level teaching and assessment. They should hold a PhD in
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focused on understanding and countering harmful narratives and, mis/disinformation, and applying social network analysis. To be successful you will need: PhD in a relevant discipline such as computer
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research community. Selection Criteria (Level B) Essential A PhD in Biometry, Statistics, or related field. Proven skills in the application of biometry/statistics to plant phenotyping datasets, including