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School of Civil & Environmental Engineering (CEE@NTU)
CEE plays an integral role in spearheading tertiary education, advancing research innovations and providing professional services in a number of key disciplines in Civil and Environmental Engineering and Maritime Studies fields, with the objective of contributing to the technological and economic advancement of Singapore and beyond.
We are looking for aresearch fellow (RF) who shall research intosafety assessment and accident prediction models using AI technology for mixed-traffic environments.
Key Job purpose
Research into safety assessment and accident prediction models using AI technology for mixed-traffic environments. Insights shall be distilled into clear, evidence-based recommendations to guide Singapore's transition toward a safer, more efficient, and sustainable mixed-traffic future.
Key Responsibilities:
Design and conduct driving simulation experiments for risk scenario analysis.
Develop deep learning models, such as GNNs and TCNs, for safety assessment and accident prediction.
Process and analyse multi-source traffic data for model training and validation.
Publish technical findings in top-tier journals.
Job Requirements:
A Ph.D. degree in a related discipline (transportation engineering, computer engineering/science, or related disciplines) by December 2025.
Expertise in AI, deep learning, and programming (e.g., Python, PyTorch).
Practical experience in at least one of: driving simulation, spatiotemporal AI models, or traffic safety analysis.
Strong publication record is an advantage.
Excellent English communication - essential for data analysis and communication with stakeholders
Strong teamwork under deadlines grant writing experience is a plus
We regret to inform that only shortlisted candidates will be notified.
Hiring Institution: NTUJob ID: 136222997