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                that both parameter estimation and model selection can be interpreted as problems of data compression. The principle is simple: if we can compress data, we have learned something about its underlying 
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                is like Ockham's razor, seeking a simple theory that fits the data well. It can also be thought of as file compression - where data has structure, it is more likely to compress, and the greater 
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                17 Oct 2025 Job Information Organisation/Company UNIVERSITY OF ADELAIDE Research Field Engineering Researcher Profile Recognised Researcher (R2) First Stage Researcher (R1) Country Australia 
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                . Thermodynamics and Fluid Mechanics: Aerodynamics and hydrodynamics, Computational fluid dynamics (CFD), Compressible flows, Environmental fluid mechanics, Flow control and optimisation, Fluid-structure interaction 
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                The Opportunity Imagine human–AI teams working alongside scientists and clinicians to turn complex data into testable hypotheses overnight and to move those insights into better experiments, clearer 
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                Basic computer skills. Be available to take part in an after-hours on call roster. Strong understanding of WHS and environmental legislation, codes and standards. Problem-solving skills with the ability 
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                systems; First-in fault-finding on fume cupboards; Compressed air and vacuum systems; Building management systems / Heating Ventilation and Air Conditioning. Ability to apply structured problem solving 
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                Status: Closed Applications open: 1/07/2024 Applications close: 18/08/2024 View printable version [.pdf] About this scholarship Description/Applicant information Project Overview Proton-conducting 
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                to cloud-based machine learning services, on-device ML is privacy-friendly, of low latency, and can work offline. User data will remain at the mobile device for ML inference. Problems: In order to enable