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compartmental models for RSV developed within the STAMP-RSV program by tailoring an established software library for individual simulation to the Australian RSV transmission context. Information to parameterise
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). The student will have an industry placement opportunity (up to 3 months) to gain experience and network with industry professionals. Student type Future Students Faculties and centres Faculty of Science
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relevant mentoring and networking opportunities with leading innovators operating in the minerals industry. Student type Current Students Future Students Faculties and centres Centre for Aboriginal Studies
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to $5000 (total) for computer / software / conference attendance to present PhD results. Scholarship Details Maximum number awarded 1 Eligible courses Higher degree by Research (PhD) – in Health Sciences
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technologies, social structures, and networks. Effective C2 organisational systems are critical not only to military settings, but also to the operation of many civil domains, including emergency response
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sky research’ to projects focused on commercialisation and policy. We have no defining theme but draw researchers from across disciplines. Our essential selection criteria are excellence, engagement and
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qualitative research methodologies including research skills and some experience with the use of qualitative data software such as NVivo. The candidate: Must meet all Curtin University HDR enrolment
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investigate the optimal methods for combining multi-satellite InSAR with a network of Kurloo GNSS devices to provide robust 3D ground motion monitoring from space. The potential benefits may include
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for these scholarships is by a competitive process and shortlisted applicants will be notified of outcomes in due course. As a recipient of this scholarship, you will also have exclusive access to PhD (RTP defined
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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