AI-Powered Infrastructure Intelligence
Municipal governments sit on decades of as-built drawings, handwritten service records, and construction documents that are trapped in paper or unstructured PDFs — invisible to the GIS systems staff rely on every day.
Building a suite of computer vision and AI pipelines that extract structured data from these documents at scale — from vision language models that read handwritten water service cards to automated as-built ingestion systems that pull metadata, organize files, and feed results directly into ArcGIS Pro catalogs.
Decades of paper became a living, queryable system — from scanned drawing, to georeferenced GIS feature, to natural-language answer. For the municipalities it serves, that means higher-quality infrastructure data with traceable lineage back to the source record — and with it, smoother day-to-day operations and the decision-readiness that comes from trusting the data underneath you. Building it stretched me across the full stack along the way: computer vision, model training, cloud architecture, agentic AI, and RAG.