40 algorithm-development-"The-University-of-Edinburgh" Fellowship positions at Monash University in Australia
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engineering. Be part of ARMI’s mission to address the unanswered questions with a multi-centre, cross disciplinary and highly focused approach, for the development of innovative clinical protocols as
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to the preparation of publications and grant applications under the guidance of Professor Kim Good-Jacobson. This is a unique opportunity to develop your research career in a collaborative, high-impact environment
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ultrafast light-matter interactions in graphene metamaterials, with the aim of developing efficient thermoradiative devices for harvesting energy from the cold night sky. The Research Fellow will work with
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Fellow. This role offers the chance to be at the forefront of innovation in chemical biology, with a focus on developing cutting-edge tools for molecular sensing and imaging. Under the guidance of Dr
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research facility, and working in collaboration with both academic experts and the Australian Eating Disorders Research and Translation Centre , this role is critical in developing meaningful interventions
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the Faculty of Information Technology. As a Research Fellow, you’ll be at the forefront of developing innovative AI solutions to tackle some of the most pressing environmental challenges of our time. Working
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part in developing and evaluating neuroimaging-guided brain stimulation techniques. Situated within the vibrant Addiction and Impulsivity Research Lab , the position contributes to a global initiative
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Econometrics and Business Statistics at Monash University is globally recognised for its excellence in research and teaching. Our department is a leader in developing cutting-edge methodologies in econometrics
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the University’s research capacity in a globally relevant field. The role provides the opportunity to develop and publish a monograph based on Korean Studies-related PhD research or, if already published
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: Developing and deploying machine learning models (e.g. graph neural networks, neural force fields, diffusion models) for molecular property prediction and molecular generation. Integrating quantum chemistry