A graph database built for queries others can't answer.
Deep, complex graph queries that take other databases hours or days, answered in seconds. That's not a benchmark curiosity. It means real-time systems instead of batch pipelines, AI agents that can reason across your entire graph, and architectural simplicity where others need caching, pre-computation, and workarounds.
Performance that changes what you can build
Real-time instead of batch
Queries across 5, 10, 20+ relationship hops execute in milliseconds. Build real-time applications where others require overnight batch processing.
No architectural workarounds
No need for pre-computation, caching layers, or denormalization. The database is fast enough that your architecture can be simple.
AI agents that reason at depth
AI and MCP agents can traverse your full graph in real time. No incomplete results, no hallucination from truncated traversals.
Queries that were impossible, now operational
Multi-hop relationship queries that other databases literally cannot answer in production become routine operations.
Log scale. Query performance measured on identical hardware, same benchmark dataset.
When a global manufacturer needed real-time supply chain traceability
The use case: traverse deeply connected supply chain data across components, sub-assemblies, raw materials, suppliers, certifications, and regulatory requirements. Queries spanning multi-tier supplier networks, from finished product back to source material across 10 to 15 relationship layers. Results needed in real time to support compliance checks, risk assessment, and regulatory reporting.
Traditional graph database approaches could not deliver. Queries became too slow beyond a few hops. Manual workarounds and pre-processing pipelines were required. The system broke under the depth and complexity of the supply chain relationships. It could not support real-time traceability at production scale.
This is not a marginal improvement. It is a capability shift: from graph as a storage layer to graph as an execution layer.
Graph performance directly impacts AI reliability
When an AI agent needs to traverse your knowledge graph to answer a question, slow graph queries mean incomplete traversals, which mean incomplete context, which mean hallucinated or wrong answers.
Data Graphs enables real-time multi-hop reasoning for AI agents. It replaces brittle RAG pipelines with structured, deterministic queries. AI outputs become traceable, explainable, and reliable because the underlying graph can actually be traversed in full, in real time, at production scale.
Deploy anywhere. Your data stays where you put it.
Cloud-managed
Fully managed within the Data Graphs SaaS platform. Zero infrastructure to maintain.
Included in platformOn-prem / Sovereign Cloud
Deploy standalone on your own infrastructure. Full data sovereignty and control.
Enterprise licenseOn-device
Compiled natively for Android and other targets. Sub-millisecond retrieval. Tiny footprint.
Edge deploymentSee the performance difference for yourself
Request benchmark data or talk to our team about how the Data Graphs engine can power your most demanding workloads.