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(or equivalent) in a relevant discipline (e.g., information science, sociology, digital humanities, digital health, computer science, information systems, user experience design) Have strong social research
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jampaiah.deshetti@rmit.edu.au Experience with metal/metal oxide catalysts, heterogeneous catalysis, and material characterization techniques such as XRD, XRF, N₂-BET, chemisorption, TEM, and XPS, along with hands
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in biomedical engineering, mechanical engineering, or a related field. Experience in finite element modelling, biomechanics, or orthopaedic research is desirable. Strong analytical and problem-solving
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plug ins, using mixed research methods to understand user experience, and engaging with the disability community to understand their perspectives toward social aspects of video games. This research seeks
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Successful candidates will be expected to have a solid background in finance and sustainable finance, research methods, strong data analytic skills, and experience working with large datasets. RMIT
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research thesis component (25% of a full-time academic year). Applicants must also fully meet English language proficiency requirements without exceptions (IELTS or equivalent). Experience or interest in
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) score during an Honours degree in mathematics or computer science Preference will be given to onshore students from RMIT University and other top-ranked universities Must have research experience in
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. Applicants with research experience in IoT, security, and/or machine learning are preferred. To be eligible for this scholarship you must: Have a Master by Research degree; or a Master by Coursework degree
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stiffness by changing their composition and self-assembly process. The relationship between nanoparticle structure and stiffness will be determined both through experimental and modelling approaches. Finally
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@rmit.edu.au Please send your CV to akram.hourani@rmit.edu.au Required Skills: Programming and simulation: strong experience in Python or MATLAB. Mathematical modelling: probability, optimization, or multi-agent