Zum Inhalt springen

Details

Fixing automotive supply chain risk with graphs, vectors, and agents A chip shortage hits and one part goes dark. Vector search finds parts that look alike. It can't tell you which vehicles are affected, whether a substitute clears compliance, or where supplier concentration creates risk. In this stream, we build a dual-store architecture - Neo4j for graph reasoning, Qdrant for semantic search - orchestrated by a LangGraph agent that runs impact analysis, validates alternatives against compliance and BOM constraints, and flags supplier risk, end to end. If you build with graphs, vectors, or agentic pipelines, come see how they hold up under pressure.

Guest: Pavan Vemuri ( https://www.linkedin.com/in/pavan-vemuri-77419723/ )

#neo4j #graphdatabase #agenticai #knowledgelayer #knowledgegraph #graphrag #AIAgents #automotive

Sponsoren

Building Neo4j-Powered Apps with Gen-AI

Building Neo4j-Powered Apps with Gen-AI

A comprehensive guide to building GenAI applications using Neo4j's KGs.

Free Hands-on Online Training

Free Hands-on Online Training

Learn about LLMs + Knowledge Graphs, RAG and more

Neo4j Community Forum

Neo4j Community Forum

Join the Neo4j experts in the forum for Graph Database knowledge & more!

Essential GraphRAG Ebook

Essential GraphRAG Ebook

A comprehensive guide on how to build a GraphRAG system from scratch.

Das könnte dir auch gefallen