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CNC machines is advantageous) experience in or willingness to learn to use CAD and CAM software (SolidWorks and Mastercam or similar) proven ability in CAD/CAM programming, with experience
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). The AI Hub’s services include robotic process automation (virtual robots that perform complex tasks on a computer), chatbots, dashboards and other bespoke programs leveraging AI and Machine Learning
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treatments and emergency medical procedures, focusing on student learning and engagement participate in RECOVER-based CPR triage of incoming emergency patients, assist with stabilisation and managing workflow
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records across relevant systems (e.g. LMS and Sydney Student), ensuring accuracy and compliance liaise with internal stakeholders to ensure learning and teaching activities run seamlessly and meet the
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1 Full-time, continuing position 2 Part time (0.6 FTE), Continuing positions. Working days open to negotiation The opportunity to support a learning environment catering for beginners right through
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Engineering School of Computer Science School of Electrical and Computer Engineering All positions are full-time continuing (tenure-track), teaching and research roles based in Sydney, however flexible working
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to support and enhance student placements and multidisciplinary learning experiences in rural areas in accordance with the Rural Health Multidisciplinary Training (RHMT) Program parameters, Murray Darling
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Postdoctoral Research Associate in Global Environment Modelling of Soil Organic and Inorganic Carbon
. The project is aimed to improve our in-house developed process-based computer model and use it to represent the soil ecohydrological and biogeochemical interactions across various carbon and nitrogen soil pools
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position will collaborate with other School staff to support and enhance student placements and multidisciplinary learning experiences in rural areas in accordance with the Rural Health Multidisciplinary
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: developing and testing new approaches to water resources modelling, application of Bayesian inference methods to environmental problems, machine learning and data science applications, undertaking analysis and