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Field
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. Safety assurance and risk management frameworks are crucial to validate AI models against rigorous safety standards, addressing potential failures and ensuring safe operations in critical environments
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-use or inconsistent use of contraception or contraceptive failure. Women in Australia may also have limited knowledge of their contraceptive options or encounter misinformation that can negatively
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the best interest of our communities. We are encouraged to Be Curious about opportunities for learning, creating, discovering, and innovating, and are encouraged to learn from failure. Show Your Fire by
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systems that continuously assess the health of components, predicting failures before they occur. Compliance Assurance Techniques: Design AI-driven methods to ensure ongoing compliance with industry
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than 3 months after accession. Termination may be considered if admission to the doctoral program is not available within this deadline, due to lack of annual reporting of progress and/or serious failure
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on wave-induced forces and potential failure modes of vegetation, supporting restoration feasibility studies (e.g. seagrass survival under seasonal/site-specific conditions). Qualifications Ideal candidates
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and machine learning to tackle the complexity of force allocation and motion planning under uncertainty and actuator failures. The project combines theoretical research in stochastic optimal control
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not available within this deadline, due to lack of annual reporting of progress and/or serious failure in progress and in duty work. For admission requirements and regulations, see our web page It is an
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structural failures. Duties We are looking for a motivated PhD student to join a cutting-edge research project. As a PhD student, you will conduct both experimental and theoretical work within the framework
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and machine learning, you will help develop new methods for understanding complex failure mechanisms—an area where existing industrial knowledge remains limited. The project will be executed in three