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these challenges, calling for the development of responsible AI systems that are transparent, trustworthy, and aligned with human values in educational contexts. This PhD project aims to design, develop, and
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period to a 'developing' country. Total scholarship value $6000 Number offered Two See details Bachelor of Education (Honours) in Secondary Education and Bachelor of Arts Rebecca Having a scholarship has
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the Universe, e.g., where did the carbon in your bodies come from? What type of star made it? Generally we study stars in their final phases of evolution, when they become ageing red giants which is when
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) within the School of Public Health and Preventive Medicine at the Alfred campus. We are seeking an outstanding Level B Research Fellow to join a dynamic, multidisciplinary team leading the development
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a unique opportunity to influence and develop the Faculty’s curriculum and research training programs, thereby shaping the future of educational research and practice. This position demands a special
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The United Nations Development Programme has identified access to information as an essential element to support poverty eradication. People living in poverty are often unable to access information
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, yielding negligible performance gains or even inducing catastrophic forgetting. To bridge the gap between theoretical AL and real-world deployment, this PhD project will develop resilient active learning
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-disciplinary team of clinician scientists and computer scientists to develop diagnosis/predictive/treatment/robotics surgery models of diseases of interest using multimodal medical data, consisting of images
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development initiatives within the Careers and Employability (C&E) team, operating under the Rich Experiences division in the Student Experience Portfolio. The position ensures the successful implementation
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these issues is critical for building trustworthy multimodal AI systems. Research Objectives The goal of this PhD project is to develop scalable Bayesian uncertainty estimation frameworks for single- and multi