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Duration: 4.5-year fixed-term appointment Employment type: Full-time Remuneration: You will receive a generous scholarship covering tuition fees and a tax-free stipend at current value of AU$37,000 per annum
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PhD Scholarship – Modelling the social and political drivers of net zero transitions Job No.: 670767 Location: Clayton campus Employment Type: Full-time Duration: 3.5-year fixed-term appointment
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energy. The organisation is currently seeking PhD students to undertake the following research projects: Project 1 – Primary Frequency Response: There is an open rule change relating to primary frequency
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publication Strong programming skills and familiarity with machine learning or finite element modelling Not currently receiving another scholarship of equal or higher value Application process Future student
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applied physics other related disciplines. Demonstrated knowledge in at least one of the following areas: porous media flow computational fluid dynamics (CFD) pore-network modelling lattice Boltzmann method
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of the role of chromatin in development and diseases like cancer. We seek a highly motivated, creative scientist to spearhead a project using stem cell and models to address a fundamental question in chromatin
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eligible applicants must: • have completed an Honours Degree with First Class or 2A Honours, or equivalent level, or a Master's degree with a significant research component; • have applied, or currently
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an ARC Discovery Project in conjunction with support from Curtin University. The purpose of the scholarship is to support a PhD student to carry out research in quantum collision theory. Currently
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: Caulfield campus Duration: 4.5-year fixed-term appointment Employment type: Full-time Remuneration: You will receive a generous scholarship covering all tuition fees and a tax-free stipend at current value
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ability to predict locust band movement. This project will focus on modelling the collective movement of locust hopper bands (thousands to millions of organisms). We will improve on current models through