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. Situated in the heart of Singapore’s Singhealth Academic Medical Center, Duke-NUS offers postdocs access to advanced core facilities, integration with national clinical networks, and a uniquely collaborative
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autonomous robots or network localization. Experienced on multi-agent systems, trajectory planning, learning or control. Good publication records and demonstrable intellectual excellence. Familiar with various
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of performance, speed, and precision. Key Responsibilities: Design and implement genAI models for embodied AI systems. Develop and optimize deep learning algorithms to enable robotic arms to perform complex tasks
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Duke University and the National University of Singapore. It works closely with the Singapore Health Services cluster, a network of national specialty disease centres, hospitals, and polyclinics
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, timely, and comparable estimates of health loss due to diseases, injuries, and risk factors worldwide. This role offers an opportunity to be part of a global network advancing data-driven health policy and
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70 research staff and PhD students, along with a strong network of industry affiliates, the department fosters a comprehensive and engaging research and educational environment in the areas
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to work effectively in multidisciplinary teams and manage complex research activities. Interested candidates should apply via the portal and also submit the following to Associate Professor Adrian Chong
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on complex system subject to various constraints. Design and develop real-time algorithms. Simulate and evaluate system performance. Document research outcome to publish at international conference / journal
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experience in data-knowledge fusion-driven dynamic modeling of complex structures, specializing in uncertainty quantification of nonlinear systems and intelligent model order reduction methods, with at least
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additional skills in Regex, C++ and JavaScript a bonus. • Proficiency with Python-based neural network frameworks, especially PyTorch, and training LLMs on parallelised Nvidia architectures. • Strong