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Services, who is the industry partner supporting this exciting R&D project. You will also enjoy a 12-week specialised training program that will enhance your industry engagement and collaboration skills
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Research scholarship funded by RMIT School of Computing Technologies. The scholarship is for 3 years; there would be a fee waiver and the standard stipend. Research scholarship funded by RMIT School
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Safety Products, from their Australian manufacturing facilities supporting this exciting R&D project. Receive continuous mentorship from the best in academia and industry. Enjoy a 12-week training program
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technological solutions for the recycling of waste heat in specific food industry settings, using computational fluid dynamics modelling, lab experiments and field work To disseminate finding in high impact
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The Opportunity The CSIRO Industry PhD Program (iPhD) is a four-year research training program, focusing on applied research that benefits industry by solving real-world challenges. It aims
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PhD project to develop theoretical computations and modelling methods to guide and optimise the synthesis conditions and composition of electrocatalysts. PhD project to develop theoretical
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? RMIT Engineering PhD candidates get a laptop, world-class labs, research funding, travel support, and seminars. Join RMIT’s PhD project in non-Newtonian fluid dynamics with a $35,888/year stipend for 3.5
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$40,500 $40,500 Open now Open now 30th September 2023 30th September 2023 One scholarship available. One scholarship available. Australian local students only. Australian local students only. Prospective applicants are invited to submit their curriculum vitae, a letter outlining their motivation...
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This scholarship is jointly funded by a leading computer vision company in Australia and the STEM College of RMIT University. The research includes investigation into automated product quality
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developing robust and feasible mathematical models for differential privacy by investigating the data dynamics (IID and Non-IID) of distributed machine learning. Besides, trustworthiness is another major