10 phd in power electronics positions at Queensland University of Technology in Australia
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have: a strong background in one of these areas: power system dynamic simulation and analysis grid integration of renewable energy sources power converter/inverter for renewable energy sources AI
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enthusiasm and ability to engage with diverse stakeholders including affected communities, researchers from other disciplines, and government peer reviewed publication/s ability to undertaken fieldwork
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Application dates Applications close30 April 2024 What you'll receive You'll receive a stipend scholarship of $33,637 per annum for a maximum duration of 3.5 years while undertaking a QUT PhD. The
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Application dates Applications close30 April 2024 What you'll receive You'll receive a stipend scholarship of $32,192 per annum for a maximum duration of 3.5 years while undertaking a QUT PhD. The
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will: hold a master degree or honours degree in materials science, chemistry, or chemical engineering with a strong background in polymer and organic electronics have specific experience synthesizing
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Aerospace Engineering education.. What you need to succeed Completion of a PhD in a relevant discipline preferably in Power systems or Power Electronics. Experience and research track record in power system
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Application dates Applications close31 March 2024 What you'll receive You'll receive a stipend scholarship of $30,000 per annum for a maximum duration of 3.5 years while undertaking a QUT PhD. The
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What you'll receive You'll receive a stipend scholarship of $32,500 per annum for a maximum duration of 3.5 years while undertaking a QUT PhD. This is the full-time, tax-free rate. If you're
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Power (EER) Mechatronics (EER) Computer and Software Systems (EER) Civil Engineering (CEE) Environmental Engineering (CEE) Architecture (ABE) Interior Architecture (ABE) Landscape Architecture (ABE
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Machine Learning for Image Classification. Eligibility You must: We would like you to have: sound knowledge of machine learning, computer vision and image processing strong programming skills. How to apply