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: Experience in physical system modelling including finite element modelling Experience working with large codebases in open source software environments Proficient user of HPC environments including MPI
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applicants who hold an Australian (or equivalent international) Honours or Master's degree (both in a relevant field), with a significant research component and with first-class honours/H1 awarded. Details
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component of the position (20%) will involve teaching subjects relating to your research. About You You hold a doctoral qualification in a relevant discipline (or equivalent) and bring demonstrated expertise
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hold an Australian (or equivalent international) Honour’s or Master’s degree (in a cognate field) with evidence of a significant research component, and with first-class Honours/H1 awarded. Details
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an Australian (or equivalent international) Honours or Masters degree in a relevant field, with a significant research component and with first-class Honours/H1 awarded. Details of eligibility
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Multiple PhD Scholarships available - Cutting-edge research at the frontiers of Whole Cell Modelling
to modulate protein translation. This project will use RNA cross-linking technology to understand all of the RNA-mediated control elements that contribute to the system of regulation that links metabolic needs
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for opioid use disorder within clinical trials by the Computational Neuroscience Laboratory and the Addiction and Impulsivity Research Group . This position implements the psychotherapy component of
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PhD student(s) will join a vibrant team of postdocs, academics, and up to four PhD students working collaboratively across modelling, qualitative fieldwork, and optimisation techniques. PhD Research
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overall, with no less than 6.0 in each component How to apply For general instructions on how to apply for roles at Monash, please refer to 'How to apply for Monash Jobs '. To express your interest in
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Dowe, 1999a) ensures that - at least in principle, given enough search time - MML can infer any underlying computable model in a data-set. A consequence of this is that we can (e.g.) put latent factor