23 algorithm-development-"Prof"-"Washington-University-in-St" research jobs at UNIVERSITY OF SYDNEY in Australia
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a Research Infrastructure? No Offer Description Work on collaborative research projects as a Research Assistant to coordinate and support the projects associated with the Child Development and Mental
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Work on collaborative research projects as a Research Assistant to coordinate and support the projects associated with the Child Development and Mental Health Clinical Academic Group and the
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in physics, geomechanics, geotechnical engineering, experimental methods, and simulation techniques, as well as access to state-of-the-art experimental facilities. Supervisors: A/Prof Pierre Rognon
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, experimental methods, and simulation techniques, as well as access to state-of-the-art experimental facilities. Supervisors: A/Prof Pierre Rognon, Prof David Airey, Dr Benjy Marks Institution: SciGEM, School
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of Engineering are seeking to appoint a Postdoctoral Research Associate in surface engineering and materials science to work within a research group led by Prof. Antonio Tricoli at the University of Sydney
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-based algorithms (e.g., GNNs, deep reinforcement learning) design and simulate dynamic models of megaproject systems prepare and submit journal articles to high-impact publications contribute
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, oxy-combustion and quenching of radicals on solid surfaces. Many of the burners developed by the group are now established as international benchmarks for the development and validation of numerical
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learning at scale. Research directions include designing algorithms and methods for adaptive and personalised feedback, modelling learning behaviours with sequence and deep learning methods, and generating
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, or rural and remote areas. Mentoring and career development opportunities will be provided. Your key responsibilities as an Academic Level B Research Fellow will be to: Conduct original research
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on the detection and analysis of bacterial pathogens in respiratory samples develop novel approaches to analyse metagenomic data in the context of bacterial colonisation and infection produce high-quality research