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and research potential Desirable expertise in one or more of the following areas: Applied microeconometrics Indigenous or economic history Economic Geography/ArcGis Machine learning Structural
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or more of the following areas: Applied microeconometrics Indigenous or economic history Economic Geography/ArcGis Machine learning Structural estimation Sponsorship / work rights for Australia Visa
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to developing nanostructured single atom materials from solid wastes, improving catalyst performances in advanced oxidation processes and materials yield during synthesis, conducting mechanistic studies in device
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mechanisms of tumour progression. experience with standard molecular biology and cell-based assays; experience with omics data analysis or animal models will be advantageous. evidence of original research
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at the interface of polymer chemistry, solid-state materials and electrochemistry develop and optimise templating techniques for controlled structure formation and material design design, characterise, and optimise
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candidate will help characterise a novel oxygen sensing enzyme implicated in hypoxic disease using a range of biochemical, biophysical and structural techniques, with the aim of elucidating enzyme mechanism
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and infectious disease models, with a focus on tuberculosis. demonstrated understanding of the subject-matter within the discipline experience conducting original research and/or engaging in scholarly
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cancer therapies, including gene- and cell-based immunotherapies. You will work with state-of-the-art technologies such as single-cell multiomics, stem cell models, and nanotechnology, within a
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, stem cell models, and nanotechnology, within a collaborative and innovative research environment. It is an exciting opportunity to be at the forefront of translational cancer research. Key
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understanding of non-stationary complex systems through theoretical analysis and numerical simulation develop efficient statistical algorithms for analyzing and inferring dynamical models from multivariate time