14 postdoc-machine-learning Fellowship positions at The University of Queensland in Australia
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Faculty of Science / School of the Environment Full-time fixed-term position through to mid 2028 Base salary will be in the range $82,057.75 - $109,246.18 (Academic Level A) and $114,824.05 - $136,048.72 (Academic Level B) + 17% Superannuation Based at our St Lucia Campus About This...
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the application of AI and machine learning to identify novel therapeutic targets and advance precision medicine approaches. For further information, please click here to view the full appointment
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in advanced signal processing techniques and good understanding of emerging machine learning methodologies used in NDE. You will work in close collaboration with project partners at the University
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), clinical trials, disease surveillance, and the use of novel methods including Bayesian network, machine learning, social network analysis and dynamic data visualisation tools. Further information is
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, cluster randomised controlled trials implementation science, data linkage, data science, machine learning and artificial intelligence. In this role, you will have the opportunity to engage in a series of
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simulations using DFT (particularly of surface processes); kinetic Monte Carlo simulations; molecular dynamics simulations; classical and machine-learned force fields. Highly developed skills in scientific
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of advanced understanding of statistical analysis. Ability to quickly acquire skills to implement new clinical and laboratory assessment techniques and to perform them routinely at a high level of
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discipline, including publications in high-quality peer-reviewed journals and presentations at major conferences. Demonstrated high-level mathematical and computer programming skills. Where PhD has been
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geomechanics, or ability to quickly acquire relevant domain knowledge. Proficiency in high-performance computing (HPC) for large-scale parallel simulations. Experience with advanced constitutive models and their
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to quickly acquire it. Familiarity with advanced statistical techniques (e.g. GAMLSS), or capacity to gain this knowledge rapidly. Proven ability to publish research, write technical reports, and communicate