323 data-"https:"-"https:"-"https:"-"https:"-"NOVA.id" positions at Monash University
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, computer science, software/systems engineering, and data science. Experience with NLP/LLMs and/or requirements engineering is highly desirable; familiarity with model-based systems engineering, safety-critical
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(plus 17% employer superannuation) Drive research success as Senior Strategic Research Development Manager Collaborate across MNHS and University-wide portfolios Shape data-driven strategies for multi
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based on available funding. Selection criteria Based on academic achievement. How to apply Can be deferred if the Industry partner agrees. Further information is available on the Engineering Co-operative
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. These functions include coordinating trials, organising meetings and events, undertaking quantitative and qualitative data collection and contributing to the preparation of reports and documentation for research
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source of type errors. This project will explore interactive visual tools (e.g. plugins for modern editors and integrated development environments) which clearly communicate this information
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diabetes management system using a mobile app to rate foods based on the glycaemic response of an individual. AI models will be trained on both the food intake and blood glucose data, and learn from
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leaders to align learning initiatives with strategic business goals. End-to-end program delivery – From concept to impact, you will manage programs with precision, leveraging data data to measure impact and
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the delivery of a range of technical services. This position manages electrical and electronic design and assembly, providing integrated solutions involving computer interfacing equipment and systems
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on adopting, adapting and creating Open Educational Resources, delivery of information literacy workshops, and development of online learning resources. The position supports the study and learning
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cutting-edge AI methodologies, focusing on combining data-driven approaches with physics-informed models to tackle challenges in MRI reconstruction. By integrating MRI acquisition physics directly into