Unlock the Power of Graph Neural Networks: Understanding the Fundamentals and Knowing When to Implement

Graph Neural Networks (GNNs) are a powerful tool for analyzing and processing graph-structured data. This course covers the basics of GNNs, including graph convolutional networks, graph attention networks and graph wavelet networks, including how they work and how to implement them. The session aims to provide a solid understanding of GNN modeling for machine learning practitioners, data scientists, and anyone interested in AI advancements.

5th Women in Transportation Panel Discussion and Networking Event

Hybrid Hybrid Event

The C2SMART Center and the NYU chapter of the Institute of Transportation Engineers (ITE) are excited to host our annual Women in Transportation Panel Discussion, including an opportunity for attendees to network and socialize. This year's panel boasts three amazing women working in the transportation industry who will share their perspectives and experiences.

Unleash Your Creativity with Unity 3D Simulation and Transportation Network Modeling

In this hands-on course, you’ll learn how to use Unity 3D to build 3D models of road networks. You’ll start with the basics of Unity 3D, including its interface, GameObjects, components, and scripting. From there, you’ll dive into building 3D models of road networks, covering elements such as roads, buildings, and terrain.

Optimal dispatching of electric vehicles for providing charging on- demand service leveraging charging-on-the-move technology

Virtual Event Virtual Event

Dr. Lili Du will discuss the EP fleet management problem, which is mathematically modeled as a vehicle routing problem (i.e., mE2-VRP), aiming to optimally dispatch the minimum number of EPs to approach and serve the EDs using different proportions of EV flows to save EDs’ travel time and mitigate traffic congestion to different extents in different network congestion and charging station coverage scenarios. She will also discuss suggestions for improving the service efficiency of CaaS + .

Stairway Towards Systematic Review: Utilizing Rayyan Software & PRISMA Guidelines

Virtual 6 MetroTech Center, Brooklyn, NY, United States

This course covers the basics of graph neural networks (GNNs), including graph  convolutional networks, graph attention networks and graph wavelet networks. The  session aims to provide a solid understanding of GNN modeling for machine  learning practitioners, data scientists, and anyone interested in AI advancements. 

Python for GIS: An Introduction to OSMnx

Virtual 6 MetroTech Center, Brooklyn, NY, United States

In this course, you will learn how to harness the power of OSMnx, a Python library for extracting and visualizing Open Street Maps data. Through hands-on exercises, you will gain practical experience in using OSMnx to model and simulate projects and have a solid understanding of this Python library and be able to apply OSMnx to real-world problems.

Old Models with New Tricks: Bridging the Gap in Bureau of Public Roads (BPR) Functions with A Cross-Resolution Perspective of Theoretical Fundamentals and Emerging Applications

Virtual 6 MetroTech Center, Brooklyn, NY, United States
Virtual Event Virtual Event

  In transportation planning, volume-delay functions (VDFs) are essential functions used for traffic assignment and network design problems. However, the static Bureau of Public Roads (BPR) function, created by the

KAIST-NYU: KN-C³ Workshop

C2SMART Center Viz Lab 6 Metrotech Center, Room 460, Brooklyn

C2SMART is thrilled to welcome members of faculty from KAIST (Korea Institute for Advanced Study of Science and Technology).

Learning from big and small data for transportation planning and resilience analysis

C2SMART Center Viz Lab 6 Metrotech Center, Room 460, Brooklyn
Virtual Event Hybrid Event

COVID has exacerbated two emerging trends in transportation analysis: (1) the rise of passively-generated big data; and (2) the increasing need to deal with the “unexpected” disruptions. This talk emphasizes the need for learning big and small data for transportation planning and resilience analysis. Different ways of learning are described, with applications ranging from long-term planning analysis to rapid responses under disruptions.

Deep Neural Networks for Choice Analysis

C2SMART Center Viz Lab 6 Metrotech Center, Room 460, Brooklyn
Virtual Event Hybrid Event

This presentation introduces a deep choice framework that synergizes DNNs and DCMs to model individual travel decision.