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learning-based computer vision algorithms and software for object detection, classification, and segmentation. Key Responsibilities Participate in and manage the research project together with the PI, Co-PI
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of Singapore is dedicated to the interdisciplinary study of humans and algorithms on the Internet, and its implications on the society of the future. This is an exciting opportunity to join us as a Research
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, manufacturability, and operational performance in pipeline environments. B. Defect Detection & Multimodal ML Oversee the development of vision-/LiDAR-based defect detection algorithms for cracks, chokage, deformation
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software architecture. Drive research and development of algorithms for natural language understanding, structured command generation, and domain-specific model adaptation or fine-tuning. Integrate NLP and
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management skills Interest in working in an interdisciplinary team, including sociologists, economists, algorithm engineers, and educational specialists Nice-to-Have: Experience in industry or applied research
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of the research group. Key Responsibilities: Conduct research in CV/ML/robotics for infrastructure monitoring and automation. Develop algorithms and/or systems for sensing, perception, and robotic applications
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optimize battery management systems (BMS) and energy management algorithms for dynamic flight conditions. Develop low-power embedded firmware for real-time sensing and control. Conduct hardware prototyping
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data. Designing mathematical models. Developing simulation program. Designing optimization or learning-based algorithms. Working on research projects, supervising research students, and preparing
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(OpelRT or Typhoon), electrical system design for better efficiency and system resiliency, and energy management algorithm development using MATLAB/Simulink for marine microgrid applications. Knowledge
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Responsibilities: Research and develop novel ML-based methodologies and algorithms in LLM-empowered Sub-Graph Learning for Large Graph Models. Working closely with other Postdoc/RA/PhD students to discuss the ideas