83 algorithm-development-"Multiple"-"Simons-Foundation"-"Prof"-"UNIS" positions at Monash University in Australia
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research teams Working under broad direction, the Research Fellow will help drive research outcomes and continue developing their expertise in an internationally recognised academic environment. About Monash
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is responsible for developing and conducting experiments, analysing neurophysiological data and contributing to the design and delivery of visual stimuli using programming environments such as MATLAB
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Current reseach is in the areas of: Development of biomimetic structures as ultrasound contrast agents Deep tissue imaging using photoacoustic contrast agents All optical photoacoustic sensors
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opportunity to work within collaborative team under the leadership of Professor Jayashri Kulkarni (AM). You will contribute to the development, implementation and dissemination of impactful research projects
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Remuneration: $118,974 - $141,283 p.a. Level B plus 17% employer superannuation Develop data management protocols for data analysis Analyse high-frequency neuro data from ICU trials Drive innovation in
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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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The Level A Research Fellow is responsible for advancing the University’s research objectives by contributing to a defined project in the field of applied econometrics. This position supports the development
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direction, the Research Fellow will help drive research outcomes and continue developing their expertise in an internationally recognised academic environment. About Monash University At Monash, work feels
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protocol development, psychotherapy coordination, database design and participant engagement strategies. This position sits within a collaborative team of neuroimagers, modellers, psychedelic-based
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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