AI Data Management Platform That Eliminates Busywork
Busywork shouldn’t block high-impact work. DataHub Cloud delivers context-aware AI that automates documentation generation, metadata enrichment, and quality monitoring. Intelligent workflows across your entire data estate mean your teams focus on insights while AI handles the tedious work.

Automate the metadata work that slows teams down
Connect AI agents to your data stack
DataHub’s hosted MCP Server connects AI tools like Claude, Cursor, and Windsurf to your metadata. Agents search datasets, understand lineage, and generate documentation.


Find data instantly with conversational AI
Ask DataHub answers questions in Slack , Teams, and DataHub using natural language. Find trustworthy datasets, assess data quality, generate SQL, and understand impact analysis without memorizing table names or catalog structures.
Generate documentation automatically
AI analyzes schema, lineage, sample values, and usage patterns to create comprehensive table and column descriptions. Click once and get context-aware documentation that refreshes as your data landscape evolves.


Catch data quality issues before they break pipelines
AI analyzes historical patterns to suggest freshness thresholds, volume expectations, and quality checks with one-click setup. Assertions adapt automatically as your data evolves.
React to data changes with automated workflows
DataHub Actions Framework executes workflows when quality alerts fire, schemas evolve, or data changes. Send notifications, create tickets, or run custom actions with event-driven rules.

How teams use DataHub to eliminate data incidents

Data analysts find data in seconds using natural language
Ask DataHub answers questions in natural language with complete business context. Find datasets using business terms instead of technical table names.
Data engineers eliminate hours of manual documentation work
AI generates docs, propagates changes, and fields data consumer questions. Manual enrichment becomes automated background operation.


Data scientists vet training data without manual checks
Assess freshness, quality scores, and validation status through Ask DataHub. Vet datasets before feature engineering begins.
Real automated data management results from enterprise teams
Block accelerates incident response from hours to minutes

“Something that might have taken hours, or days, or even weeks turns into just a few simple, short conversation messages.”
SAM OSBORN
Senior Software Engineer, Block
CHALLENGE
Block manages 50+ data platforms under strict financial compliance. Engineers spent hours searching internal docs, checking Slack channels, manually tracing dependencies, and hunting for stakeholder contact information during incidents.
SOLUTION
Integrated their open source AI agent Goose with DataHub’s MCP Server, enabling conversational access to schema, lineage, ownership, and documentation. Engineers query metadata through natural language without leaving their workflow.
IMPACT
Incident response that previously took hours or weeks now completes in minutes. Engineers verify tables, assess downstream impact, identify data owners, and retrieve stakeholder contact information through simple conversational messages.
Built to meet enterprise AI data management requirements
Context-aware automations
Enterprise performance
Security and extensibility
Ready to let AI handle data management busywork?
Data teams shouldn’t spend hours documenting tables and answering the same questions daily.
DataHub Cloud delivers AI data management processes that generate documentation, monitor data quality, answer user questions, and enrich metadata across your data ecosystem.

