Mapping the Invisible Graph Powered Archaeology with Neo4j, LiDAR, and LLMs

Archaeology often begins with clues hidden in terrain (a raised mound here, a linear depression there)—the silent traces of a vanished world. This talk introduces Archaios, a graph-driven platform that uses Neo4j to represent, reason about, and orchestrate the discovery of archaeological features from LiDAR and historical data.

The system combines a semantic graph model of terrain features, place names, and historic references with a multiagent framework powered by Autogen. Agents coordinate tasks like terrain segmentation, image analysis via GPT-4 Vision, and classification of possible man-made features. When candidates are found, they’re logged in Neo4j as hypotheses and routed to archaeologists via a notification system for final confirmation.

You’ll learn how Neo4j serves as a central semantic hub—encoding spatial relationships, human feedback, and interpretive hypotheses—while agentic LLMs act as flexible analysts. We’ll explore how to combine structured and unstructured reasoning in a graph-native architecture, and how feedback loops improve both discovery and trust in AI-supported domains.

Speaker: Divakar Kumar

Resources:
Get Started with Aura – https://bit.ly/3LOLrjh
Deployment Center – https://bit.ly/4jOelM3
Ground AI Systems and Agents with Neo4j – https://bit.ly/4oVsnyb

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