https://catalogartifact.azureedge.net/publicartifacts/quest.quest_dm-38c5e534-14e4-4966-8220-ec06e7e770d7/image3_QuestLogo216x216.png
Quest Data Modeler
durch Quest
Just a moment, logging you in...
Cloud-native data modeling with AI assistance and real-time collaboration for modern data teams.
Quest Data Modeler: From Data Models to Data Meaning
Quest Data Modeler is a cloud-native SaaS data modeling platform purpose-built for modern data teams. It combines AI-assisted modeling, real-time collaboration, and enterprise-grade governance in a single browser-native environment — delivering the governed definitions, naming standards, and conceptual-to-physical modeling depth that make every downstream tool, semantic layer, and AI system in your organization dependable.
Built on more than 30 years of erwin modeling heritage and delivered in the deployment model the market now demands, Quest Data Modeler bridges the gap between legacy desktop modeling tools and the way modern data teams actually work: collaboratively, iteratively, and with AI assistance at every step.
The Problem We Solve
Data modeling is undergoing a fundamental shift. Organizations are no longer asking how to design better schemas — they are asking how to ensure that data means the same things everywhere it is used: across teams, tools, dashboards, and AI systems.
Without a governed, shared modeling foundation, organizations face:
- Semantic drift — "Customer" and "revenue" mean different things across teams, eroding trust in every dashboard and AI output.
- Fragmented data stacks — Business definitions scattered across tools, spreadsheets, and tribal knowledge, with no single source of truth.
- Slow time-to-value — Teams spend more time reconciling definitions than building, delaying every analytics initiative and data product.
- Limited collaboration — Business stakeholders excluded from modeling, widening the gap between business intent and technical implementation.
- AI readiness gaps — AI systems trained on inconsistent definitions amplify bad data foundations instead of fixing them.
Who Benefits
Quest Data Modeler serves modern, data-driven organizations operating in cloud-first or hybrid environments — typically mid-market to enterprise companies with 1,000+ employees, multiple data platforms in use (Microsoft Fabric, Databricks, Snowflake, PostgreSQL), and active investment in analytics, AI, or data products.
Key users include:
- Data Architects who need to move from static documentation to living, governed models connected to their stack
- Analytics Engineers and Data Engineers who need to model once and align everywhere, reducing rework and accelerating delivery
- Heads of Data and CDOs who need a shared data language across the organization
- Business Analysts and Data Stewards who need to bridge business meaning and technical data
- AI and Data Science Leaders who need to ensure AI is trained on consistent, trusted data definitions
Key Capabilities
- AI-Assisted Modeling — Generate, refine, and document data models from natural language using the AI Copilot, accelerating model creation and reducing manual documentation overhead.
- Real-Time Collaborative Modeling — Multiple users edit a single live model in a shared, browser-native environment, with comments, versioning, and zero desktop installs.
- Enterprise Model Repository — A centralized Mart repository with model check-in/check-out, version history, and conflict resolution, providing the governance infrastructure required for multi-team, enterprise-scale modeling programs.
- Full-Stack Modeling — Conceptual, logical, and physical modeling in one platform, with full traceability from business meaning to physical database implementation.
- Native Microsoft Fabric Support — Design, reverse engineer, and maintain physical data models directly connected to Microsoft Fabric and other cloud data platforms including Databricks and PostgreSQL.
- erwin Heritage and Hybrid Coexistence — Organizations with existing erwin Desktop investments can migrate assets, maintain hybrid desktop-and-cloud workflows, and transition to the cloud at their own pace, without abandoning years of modeling discipline.
- Open, Connected Architecture — Native integration with dbt, Git, and REST APIs, designed to be part of the modern data stack rather than a standalone silo.
Built for the Modern Data Stack
Quest Data Modeler is a native component of the Quest Trusted Data Management Platform, a comprehensive unified solution spanning data modeling, governance, catalog, and quality. Whether your organization needs best-in-class modeling or a complete enterprise data management strategy, Quest delivers a path that fits.
The Result
Faster time-to-value. Stronger data trust. Business meaning and technical implementation, aligned across every team, every tool, and every AI system in your organization.Stop modeling tables. Start modeling meaning.
Auf einen Blick
https://catalogartifact.azureedge.net/publicartifacts/quest.quest_dm-38c5e534-14e4-4966-8220-ec06e7e770d7/trailer_3000804117167724066_thumbnail.png
https://catalogartifact.azureedge.net/publicartifacts/quest.quest_dm-38c5e534-14e4-4966-8220-ec06e7e770d7/image0_01churnanalysisscreenshot1280x720.png
https://catalogartifact.azureedge.net/publicartifacts/quest.quest_dm-38c5e534-14e4-4966-8220-ec06e7e770d7/image2_02diagramviewscreenshot1280x720.png