27 post-doc-image-engineering-computer-vision PhD positions at Queensland University of Technology
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to: Multimorbidity post-sepsis Health literacy and navigation in post-sepsis care Digital tools and technology-enabled follow-up Nurse-led models of care The successful candidate will join a dynamic and collaborative
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nutrition strategies to improve outcomes for people in the post-treatment survivorship phase. The successful candidate will be supervised by Doctor Megan Crichton and Distinguished Professor Patsy Yates and
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What you'll receive Doctor of Philosophy and Master of Philosophy students will receive up to $41,600 per annum (tax free for full-time students) and $20,840 in allowances (training, travel and
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eligible you: need to meet the entry requirements for a QUT Doctor of Philosophy including any English language requirements must enrol as a full-time, internal student (unless approval for part-time and/or
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Machine Learning for Image Classification. Eligibility You must: We would like you to have: sound knowledge of machine learning, computer vision and image processing strong programming skills. How to apply
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researchers, to undertake your own innovative research in and across the field. Eligibility How to apply Apply for this scholarship at the same time you apply for admission to a QUT research degree / Doctor
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for QUT's Doctor of Philosophy , including any English language requirements. Enrol as a full-time, internal student. Have a background in electrical, mechatronic, or biomedical engineering, expertise in
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research proposal aligned to the scholarship project to finalise your application. You must be accepted into QUT’s Doctor of Philosophy program to receive this scholarship. What happens next? Successful
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for a QUT Doctor of Philosophy , including any English language requirements not have previously completed a PhD be able to commence the program in the year of the offer enrol as a full-time PhD student
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What you'll receive The CSIRO Industry PhD Program (iPhD) aims to produce the next generation of innovation leaders with the skills to work at the interface of research and industry in Australia