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Council, and will have access to funding to travel and conference attendance. Second, the candidate will be embedded within an Early Career Researcher network connected to the grant project. This will
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Charles Sturt University | Charles Sturt University, New South Wales | Australia | about 1 month ago
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for tomagraphic imaging in tissue Neural network correction of distortions in acoustic transducers web page For further details or alternative project arrangements, please contact: alexis.bishop@monash.edu.
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opportunities to develop their skills, networks and careers. Supervisor Dr Anne-Marie Laslett - NHMRC Emerging Leadership Fellow CAPR Are you eligible to apply? To be eligible to apply for this scholarship
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. National Road Safety Partnership Program (NRSPP) offers a collaborative network to support Australian businesses in developing a positive road safety culture. It’s about saving lives without the red tape
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investigate online feature engineering, continual learning and uncertainty quantification. Balance performance with governance. Projects will evaluate risk-adjusted returns alongside interpretability
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and technology. Engaging in solving a real-world problem requires a real solution to enhance housing resilience. Applying research skills to optimise and innovate AI-driven solutions for the housing
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to their culture and pay our respects to their Elders past and present. View our vision towards reconciliation . Role highlights Apply your expertise in power systems to enhance Australia’s evolving energy networks
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in the top 100 universities worldwide. Monash has six globally networked campuses and international alliances in Europe and Asia. The applicant will be based at the Clayton campus in Melbourne
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Martin Australia invite applications for a project under this program, exploring the development of Physics Informed Neural Networks (PINNs) for efficient signal modelling in areas such as weather