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of computer science. To be eligible for this scholarship you must: Hold a first-class honours or 2A honours or equivalent or a Masters by research degree in a relevant discipline Be an Australian citizen, Australian
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. Demonstrated high level of computing skills, including competency with qualitative analysis software (NVivo), spreadsheets and data management systems. Experience in contributing towards producing conference
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the established theory, and apply the theory to a series of datasets consisting of configurations of individuals in space and time. The project will also develop and disseminate software to fit models and evaluate
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, conducting interviews and focus groups, developing and managing surveys, and analysing qualitative and quantitative data including skills with appropriate software would be valuable. An interest in mental
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record in medical research and innovation. The project will benefit from access to advanced computing facilities and specialized software for deep learning model development and CT scan analysis
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researchers, to undertake your own innovative research in and across the field. This scholarship is part of a Next Generation Graduates Program grant, which means that your study will be linked to an industry
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, and Ability Heroes. This research programme is supported by a two-year research fellow post, and $50,000 in research expenses each year over this period. We have an established training programme with
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image diagnosis. The expected outcomes are development of a software prototype, technical advancement in medical image diagnosis and the creation of novel AI algorithms. Potential project benefits
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The National Industry PhD Program will support PhD candidates to undertake industry-focused research projects and be equipped with the knowledge and skills to better translate university research
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developing scientific software (using any of these languages/libraries: Python, Julia, C++, C, Fortran, Matlab, Fenics/FeniX, MFem, deal.II, libMesh, PETSc, Trilinos, Pytorch, TensorFlow, Jax, Keras, Pandas