|
Live Demo of AI Copilot This Wednesday
|
Develop data models collaboratively in the cloud and share them with your organization in various modeling styles and formats with no coding or conversion required
Create and manage business metadata using a dedicated project role
Track and get notified of schema changes in live database environments

The Data Warrior, Strategic Advisor, Data Vault Master, Author, Speaker, and Tae Kwon Do Grandmaster

Leading organizations through analytics transformations, preference for social missions, healthcare, energy, education, and civic engagement
Develop data models collaboratively in the cloud and share them with your organization in various modeling styles and formats with no coding or conversion required
Create and manage business metadata using a dedicated project role
Track and get notified of schema changes in live database environments
Metcash Limited, one of Australia’s largest distribution and wholesale companies, sits at the center of a sprawling supply chain that spans food, liquor, and hardware. As the backbone behind thousands of retail stores and independent business partners, Metcash’s operations depend on reliable data to track suppliers, manage warehouses, and report across its three major business pillars.
At the heart of the company’s data transformation is Sivaranjani “Shiva” Nainar, a Senior Analytics Engineer tasked with guiding both the design and reporting sides of Metcash’s evolving data ecosystem. Shiva and her team are responsible for creating the semantic models and data warehouse structures that power analytics across the enterprise; this work has only grown more complex as the company modernizes its systems.
That modernization is no small lift. Metcash is in the midst of a multi-year ERP migration alongside a shift in data platforms from SAP to Azure Synapse and, ultimately, to Microsoft Fabric. To navigate this high-stakes transition, the team adopted SqlDBM as their core data modeling tool, introducing a “design-first” discipline that ensures hundreds of ERP tables are structured, governed, and ready for downstream analytics.
Before adopting SqlDBM, Metcash’s data modeling practices were fragmented and largely manual. In many cases, design work skipped the modeling step altogether, moving directly from “paper to code.” This created a fragile foundation where dependencies between tables were unclear, standards were inconsistent, and new projects lacked the visibility required for long-term stability.
The challenge was amplified by scale. With the ERP migration underway, the team faced the task of managing hundreds of database tables across food, liquor, and hardware domains. Translating these raw ERP structures into well-defined facts and dimensions was not only technically complex but also critical to ensuring accurate reporting in Power BI and other downstream systems.
Without a formal modeling process, the risks multiplied:
Ultimately, Metcash needed more than just a tool – it needed a standardized, collaborative approach to data modeling that could align IT and business teams, reduce risk, and provide a strong foundation for analytics.
Before SqlDBM, we couldn’t really see how everything connected. Each engineer had their own way of designing tables, and there was no clear visibility into dependencies. Now, with SqlDBM, we can visualize the entire data warehouse design and understand relationships between tables before we build anything. It’s brought real structure and consistency to how our team works.
Sivaranjani Nainar,
Senior Analytics Engineer
The decision to adopt SqlDBM was first championed by Ronald Singh, Analytics Engineer Lead at Metcash, who recognized the need for a more disciplined and collaborative approach to modeling. The team had reached a point where informal, ad hoc practices could no longer keep pace with the scale of their ERP migration and data warehouse redesign.
SqlDBM stood out as the right fit because it enabled Metcash to adopt a design-first mindset. With SqlDBM, the team could:
“Before SqlDBM, we couldn’t really see how everything connected. Each engineer had their own way of designing tables, and there was no clear visibility into dependencies. Now, with SqlDBM, we can visualize the entire data warehouse design and understand relationships between tables before we build anything. It’s brought real structure and consistency to how our team works.” – Sivaranjani Nainar, Senior Analytics Engineer
By bringing structure, visibility, and collaboration into the modeling process, SqlDBM became the cornerstone of Metcash’s modernization efforts and a foundation for its future-state data architecture.
Losing hours on duplicate work because modeling is not done at all or done siloed in Visio/Excel, with no real-time collaboration or shared updates
SqlDBM acts as the team’s single source of truth for Synapse/Fabric design, with
visual ERDs documented and accessible across domains
Risk of data exposure without governance checks.
Standards are enforced: dimensions/facts modeled cleanly for Power BI.
SqlDBM serves as the data model and catalog of definitions
New team members added to the build have no clear visibility into existing models or definitions, leading to long ramp-up times and inconsistent understanding.
SqlDBM serves as the data model and catalog of definitions, giving new team members instant access to context, table designs and approved standards.
Our site uses cookies to support its functionality and personalize the user experience. The following types of cookies are used:
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.
Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

The Data Warrior, Strategic Advisor, Data Vault Master, Author, Speaker, and Tae Kwon Do Grandmaster

Leading organizations through analytics transformations, preference for social missions, healthcare, energy, education, and civic engagement
Develop data models collaboratively in the cloud and share them with your organization in various modeling styles and formats with no coding or conversion required
Create and manage business metadata using a dedicated project role
Track and get notified of schema changes in live database environments