Transportation infrastructure generates massive amounts of data, but turning sensor feeds into actionable insights for congestion, safety, and emissions remains a persistent challenge. I build open platforms and AI models that bridge research and operations—tools that work with messy, real-world data and deliver value to public agencies.
My journey started with computer science foundations and early work on large-scale digital infrastructure—civil registry systems, healthcare data platforms, and government service delivery—where I learned to design technology that scales to millions while meeting operational constraints like incomplete data, regulatory requirements, and 24/7 uptime across diverse stakeholders.
At the University of Nevada, Las Vegas, I shifted focus to U.S. transportation infrastructure through the USDOT REPS Tier 1 University Transportation Center, publishing in top IEEE venues:
IEEE ITSC 2024: "Using Deep Traffic Prediction for EMFAC Emission Estimation and Visualization"
IEEE ICVES 2024: "Benchmarking/Limitations of Traffic Prediction with Noisy Field Measurements"
My core innovation is graph neural networks with masked training that predict traffic patterns from noisy/missing sensor data—deployed across ~1,000 Nevada DOT freeway sensors.
Currently building Lattice, an open transportation analytics platform hosted at UNLV that provides real-time traffic prediction, corridor-level emissions estimation (EMFAC integration), interactive visualization, and REST API for agency use.