42 software-formal-method-phd positions at UNIVERSITY OF WESTERN AUSTRALIA in Australia
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-world applications within the RoadSense Analytics platform. Mentor junior researchers, collaborate with engineers, and contribute to knowledge building while pioneering state-of-the-art methods in multi
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PhD in an academic field relevant to the discipline or other higher professional qualifications appropriate to their discipline, and/or appropriate professional and industry experience. Proven
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. Oversee the performance program as a core teaching and recruitment tool, while fostering community engagement and representing UWA in professional and external partnerships. About you PhD in an academic
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mentorship from experienced academic staff. Develop your academic career with increasing independence in both research and teaching as your experience grows. About you PhD in an area related to the research
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independence in both research and teaching as your experience grows. About you PhD in an area related to the research project “Minimal surfaces, free boundaries, and partial differential equations”. Demonstrated
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broader community in Western Australia. About you PhD in Earth Science relevant to the role. Demonstrated ability to deliver innovative teaching including online and field-based teaching to support
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Honours, Masters, and PhD students, contributing to their academic development. Maintain and build professional relationships with external partners (e.g., industry, government) to secure opportunities
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of postgraduate programs including unit coordination and placement supervision/coordination Conduct independent research and supervise Honours, Masters, and PhD students, contributing to their academic development
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pioneering state-of-the-art methods in multi-object tracking, trajectory reconstruction, and error reduction. About you Tertiary degree in Computer Science, Applied Mathematics/Statistics, Robotics, Physics
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-processing methods to improve traffic video analytics in complex environments. Drive benchmarking, evaluation, and deployment optimisation of AI models, ensuring scalability and real-world performance. Publish