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and sustainability as they intersect with information and communication processes. Applicants working in other specialisations are encouraged to apply, provided they demonstrate a clear plan for a
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reputable peer-reviewed journals. More Information Location: Kent Ridge Campus Organization: College of Design and Engineering Department : Electrical and Computer Engineering Employee Referral Eligible
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on energy-efficient circuit design and software-hardware co-optimization, with exciting applications in graph-based prediction. What we’re looking for: A PhD in Electrical and Computer Engineering or a
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agencies. Qualifications • PhD in Robotics, Mechanical Engineering, Mechatronics, Computer Vision, or a closely related field. • Strong expertise in robot design and at least one of
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an active role in data management, processing, and quantitative analysis (e.g., longitudinal and multilevel modelling, time-series or high-frequency data analysis, machine learning or predictive
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research project as well as the applicant's potential to conduct high-quality research. Application Procedure Application should be submitted online with the following documents via the NUS career portal
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research proposals and reports. Job Requirements Possess a PhD degree obtained in a related discipline (transportation engineering, operations research, computer engineering/science, or related disciplines
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with industry research and requirements. More Information Location: Kent Ridge Campus Organization: College of Design and Engineering Department : Electrical and Computer Engineering Employee Referral
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) Project Management and Ethics • Manage IRB submissions, ethics documentation, and data governance processes. • Ensure data integrity, documentation, and reproducibility across research partners
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) and multimodal data integration models. • Conduct rigorous data processing, model training, validation, and explainable AI analysis. • Contribute to the development of harmonisation and bias-assessment