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health outcomes through our biomedical research programs, including cancer, cardiovascular disease, diabetes, neurological disorders, metabolic diseases, and reproductive health. This is a great
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The existing deep learning based time series classification (TSC) algorithms have some success in multivariate time series, their accuracy is not high when we apply them on brain EEG time series (65
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passion for mentoring early-career researchers and working in a collegial team environment. This is a rare opportunity to take on a senior academic role in a fast-moving international project and contribute
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17% employer superannuation Be part of a collaborative and passionate team making a real impact Work on meaningful projects that connect backend systems with real-world applications Thrive in a small
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them The University Marketing, Admissions and Communications (UMAC) Division is all about making an impact. This means we set new trends and we get things done. Marketing and Communications at Monash is
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of belonging, from contributing to something groundbreaking – a place where great things happen. We make tangible contributions because our purpose is clear; to deliver positive economic, social and
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Current reseach is in the areas of: Development of biomimetic structures as ultrasound contrast agents Deep tissue imaging using photoacoustic contrast agents All optical photoacoustic sensors
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Future of Cloud and Compute at Monash University The Opportunity Monash University is seeking a driven and energetic Group Manager – Server, Cloud & Compute Platforms to spearhead the transformation of our
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biological networks as a form of relational and structural learning. Given a network dataset, we wish to infer a model of the distribution of the elements of this data-set, possibly as a mixture of several
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, rewarding directions About the project Australia's population and its workforce are ageing. In physically demanding workplaces, this trend is particularly concerning, as older workers are more prone to injury