Introducing the Arango Contextual Data Platform
The fastest path to production AI agents—without the Frankenstack.
One governed platform that automatically turns your enterprise data into the contextual data layer your agents need to reason and act.
70%
less infrastructure to maintain
20+
AI services built in
Billions
of connected records at scale
Proven in 200+ production environments worldwide
There’s a simpler way
Five systems. Twenty-three integration steps. One platform replaces them all.
Most teams building enterprise AI end up with a Frankenstack. A vector store bolted to a graph database bolted to a search index, held together by custom retrieval pipelines and a governance layer added as an afterthought.
93%
of business leaders say insights need business context
The Frankenstack
Separate vector store
Pinecone, Weaviate, or Qdrant bolted onto a database not built for it
Graph database bolt-on
Neo4j or Tigergraph without a shared query language
Separate search index
Elasticsearch or OpenSearch maintained independently
Custom RAG pipelines
LangChain or LlamaIndex stitching, brittle at scale
Governance bolted on
Access control, data privacy, and security as afterthoughts
Arango Contextual Data Platform
Vector built-in
No separate vector database needed.
Graph built-in
Traverse relationships natively without a separate graph database.
ArangoSearch built in
Full-text search natively integrated. No extra cluster.
AutoRAG built in
GraphRAG, HybridRAG, VectorRAG selected automatically.
Governance built in
RBAC, lineage, observability from day one.
What’s new in version 4.0
Arango Contextual Data Platform.
Five new capabilities.
Arango Contextual Data Platform 4.0 adds natural language interaction, automatic graph building, intelligent retrieval, and visual exploration — delivering the context AI needs to reason, the trust your enterprise demands, and the scale to run it all in production.
Ada
AI digital assistant for natural language development
AQLizer
Natural language to optimized AQL queries
Graph Visualizer
See and explore contextual relationships visually
AutoGraph
Automatically build contextual knowledge graphs
AutoRAG
Intelligent retrieval across graph, vector, and document data
How it works
From raw data to production agents.
Automatically.
Data flows in from any source. AutoGraph builds the knowledge graph. AutoRAG picks the right retrieval strategy. Your agents get the business context that’s connected, governed, and traceable.
Data Sources
Databases
Stores
Databases
Warehouses
& Lakes
Applications
Content
Management
Unstructured
Data
Ingestion
Layer
Retrievers
Contextual Data for AI
Agentic AI Suite
20+ AI services that turn raw data into production-ready context including AutoGraph, AutoRAG, ContextRAG.
Contextual Operations
Platform Suite
Enterprise operations: security, governance, scaling, observability, and deployment tooling.
Contextual Data Foundation
ArangoDB
Graph, vector, document, key-value, and search in one system, one query language .
New in 4.0
Arango Agentic AI Suite
AutoGraph
AutoRAG
ContextRAG
Governance
+ more...
Vector finds similar.
Graph finds what’s actually connected.
Standard RAG retrieves documents by semantic similarity. GraphRAG traverses entity relationships—multi-hop paths and business context that vector search alone can’t surface. AutoRAG selects between GraphRAG, HybridRAG, and VectorRAG at query time.
What GraphRAG delivers
- Traverses entity relationships vector search can’t see
- Multi-hop reasoning across documents, graphs, and operational signals
- Every answer traceable—explainable, auditable, governed
- Graph + vector in one query.
Context changes the outcome.
Every use case below has the same root problem: fragmented data across systems, no understanding of relationships, and unexplainable decisions. Arango solves all three.
Customer Support
Agents need to connect customer records, product history, known issues, and resolution policies across systems.
With Arango: Relationship-aware retrieval traces a customer issue across ticket history, product logs, known defects, and policy rules—in a single query.
Fraud Detection
Agents need to trace relationships across accounts, devices, identities, and events in real time, with full auditability.
With Arango: Graph traversal surfaces fraud rings and anomaly patterns that vector-only retrieval misses. RBAC ensures every query respects access policy.
Knowledge Assistants
Agents need to know what your organization knows—how concepts relate across teams, systems, and time.
With Arango: AQLizer translates natural language into queries spanning structured and unstructured data. Answers from the full picture.
AIOps & Root Cause
Agents need to correlate alerts, trace incidents across infrastructure dependencies, and recommend resolution paths in real time.
With Arango: Logs, topology, alerts, and change history queried together in one platform. Graph traversal traces a degraded service back through every dependency to the root cause.
Engineering AI
Agents need access to code, architecture decisions, runbooks, and engineering context with enough relationship awareness to give applicable answers.
With Arango: Deep Search traces dependencies across codebases, docs, and incident history to surface context semantic search would miss.
Infrastructure Graph
Agents need a live, connected view of infrastructure—assets, dependencies, alerts, and change history.
With Arango: A unified graph of infrastructure topology lets agents trace a degraded service back to a configuration change three hops away.
New in 4.0
Bring your LLM. Bring your framework.Arango connects to all of it.
LLM + Agentic Framework Integrations
OpenAI
Anthropic
Mistral
LiteLLM
LangChain
LlamaIndex
NVIDIA Triton
Any LLM
Driver Support
Python
JavaScript
Java
Go
.NET
Spring
Deployment options
Self-service cloud
VPC
On-premises
Air-gapped
Stop building Frankenstacks.
Start building with Arango.
Talk to our team and see how Arango gives your AI agents, assistants, and apps the trusted data foundation they need to work in production.