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members. Participate in traffic scenario generation project and pedestrian modeling project. Develop sophisticated AI-driven algorithms that create realistic, safety-critical test scenarios for autonomous
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. Work Environment: Open office environment. Moderate noise and foot traffic. Rutgers University is an equal opportunity employer committed to creating a diverse, cooperative work environment. Special
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impact. Research Responsibilities Responsibilities will vary depending on the candidate’s background, but may include: • Developing new transportation modeling methods, including dynamic traffic assignment
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the operations of transportation systems, including multiple transportation modes. Particular attention is paid to new vehicle technologies and data sources; as well as the combination of traditional traffic flow
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(CAVs) Traffic control and signal optimisation Navigation and routing strategies Operations research and network optimisation Big data analytics and machine learning Mōu | Who You Are To be successful in
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nanoparticles contribute to diseases. Environmental Nanoparticles of interest include those emitted from wildfires, traffic and micro-nanoplastics, the byproduct of degradation of plastics in environmental media
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on the candidate’s background, but may include: Developing new transportation modeling methods, including dynamic traffic assignment, AI-enhanced forecasting, optimization, or simulation-based analysis Building and
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(meteorological, hydrological, hydraulic, traffic, LiDAR, and DEM/BLE datasets). Build reproducible pipelines in Python/R/Julia/SQL for big data geospatial applications. Utilize cloud and HPC resources for model
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engineering, applied earth sciences, traffic and transport, water technology, and delta technology. Our research feeds into our educational programmes and covers societal challenges such as climate change
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models of complex physical systems starting from data, ranging from robotic systems to traffic and turbulent flows. We are implementing these methods in high-performance open-source libraries to make them