Foundational guides to context graphs, use cases, and solutions for enterprise AI
Ontologies and graph-enhanced context power an agentic shopping experience for customers that enables retailers and brands to catch every decision providing unparalleled customer pattern intelligence.
Context graphs can enable explainable AI and improve accuracy, precision, and most importantly efficiency in agent design for mission-critical agentic workloads.
Enterprises are struggling to realize value from AI. We explore the critical challenges of ROI, unpredictable costs, and the trust deficit—and how a systems engineering approach can fix them.
Three steps to grounded, reliable AI agents
Load documents, databases, and data sources into TrustGraph's multi-model store. Automated semantic indexing and ontology structuring prepare your data for precision retrieval.
TrustGraph constructs a holonic context graph from your data, linking entities and relationships into structured, queryable knowledge your agents can trust.
Deploy AI agents backed by durable, grounded context. Every response, tool call, and decision is driven by verified, connected knowledge—not guesswork.
Built-in features for production-ready AI agents—no assembly required
Intelligent data structuring and retrieval
Flexible single and multi-agent systems
Advanced search and information retrieval
Enterprise-grade data ingestion and processing
Run anywhere, from local to enterprise cloud
Connect to your existing stack seamlessly
Production-ready monitoring and operations
Built for compliance and data sovereignty
Learn how Context Graphs power smarter, more accurate AI
See how Holonic Context Graphs unlock the potential of AI