Saturday, June 7, 2025

Matia Debuts Data Catalog for End-to-End Visibility

Related stories

Opsera Unveils DevOps for DataOps on Databricks Platform

New Built on Databricks solution will enable customers to streamline...

Genpact Acquires XponentL Data to Boost AI Innovation

Combination will fast-track Genpact's expansion of advanced technology solutions,...

Flex & MIT Partner to Advance AI-Driven Manufacturing

Flex has entered into a strategic partnership with the...

Chris Cope Joins CADDi as VP of Engineering

CADDi, the AI-powered data platform transforming manufacturing by democratizing...
spot_imgspot_img

Matia, the unified DataOps platform, announced, at Snowflake’s annual user conference, Snowflake Summit 2025, the general availability of its enhanced Data Catalog. The catalog marks a major milestone in the evolution of the platform, enabling teams to manage metadata, track lineage, and govern data from a single pane of glass.

“As adoption of Matia accelerates, we’re focused on deepening the core pillars that matter most to our users,” said Benjamin Segal, Co-founder and CEO of Matia. “We heard from startups to enterprises that they didn’t want to have to buy a separate tool to fully understand their data. The catalog is now fully embedded into the Matia experience, helping teams navigate their data with clarity, trust, and speed.”

This launch reinforces Matia’s commitment to streamlining the modern data stack. By embedding catalog functionality directly into its ETL, reverse ETL, and observability layers, Matia eliminates the need for disconnected tools and fragmented workflows. Unlike platforms that offer end-to-end lineage as a visual add-on, Matia’s Catalog delivers operational lineage, including run history, error tracking, and full data observability, because the catalog is built into the core of the unified platform.

Also Read: Quest Launches AI Governance for Enterprise Data Trust

With robust support for dbt, Snowflake, and all Matia’s 100+ supported connectors, Matia’s Catalog brings powerful capabilities into a streamlined interface:

  • End-to-End Lineage at the column and table level, enabling impact analysis, compliance tracking, and debugging
  • Operational Lineage, including run history, error logs, data freshness and other observability indicators, so teams can click on an asset in graphical pipeline authoring and understand not just where data flows but how it’s performing in real time
  • dbt Cataloging, automatically parsing dbt models, sources, jobs, and tests with rich metadata, documentation, ownership, and lineage.
  • Matia Tags and integration with dbt and Snowflake tags to organize assets and drive discoverability
  • Data Certification for marking assets as trusted, verified, and ready for use
  • Universal Search across all connected metadata and assets

Ramp, the leading financial operations platform, leverages Matia’s Catalog to manage its large-scale dbt project. “Most data catalog tools show you a diagram, but what we needed was context–what ran, what failed, what changed,” said Akshay Ajbani, Senior Analytics Engineer at Ramp. “Matia is unified so lineage isn’t just a visual, it’s actionable. We can trace data issues, understand ownership, and answer stakeholder questions without digging through five different tools.”

Source: Businesswire

Subscribe

- Never miss a story with notifications


    Latest stories

    spot_img