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synergistic approach, aligning environmental goals with corporate profitability and responsible stewardship, ensuring that clients attain substantial and sustained benefits. Internship Description At 2XE, we
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-year research project on generative AI and academic research develop a research proposal that responds to and aligns with the scholarship topic and articulates the contribution your research will make
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describing how your background and research area align with the project Degree certificates and relevant academic transcripts, with translations of non-English documentation Applications close on 10 November
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maintain satisfactory academic progress and actively engage in research aligned with the ARC Linkage Project Recipients must participate in regular meetings with the supervisory team and contribute
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-developed knowledge of Australian media and culture. Demonstrate excellent capacity and potential for research. You must develop a research proposal that responds to and aligns with the scholarship topic and
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are welcome, but these should be aligned with UniSQ's flagship areas . Students applying for a scholarship should discuss the flagship area most closely aligned to their proposed research with their potential
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are welcome, but these should be aligned with UniSQ Flagship Areas . Students applying for a scholarship should discuss with their potential supervisor the Flagship Area most closely aligned to their proposed
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experience and how this aligns with the PhD project) evidence of your enthusiasm for, and experience in, multidisciplinary research evidence of your ability to work independently and as part of a team to
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future autonomous instrument control and self-directed experimentation will be developed, recognizing the challenge presented by the integration of multiple complex systems. Coding and user interface
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materials systems at the molecular level with machine learning. The PhD Student will work with tumour sections to develop multiple instance learning and weak supervision / spatial transcriptomics models