Microsoft Fabric Updates Blog

Mastering Declarative Data Transformations with Materialized Lake Views

Organizations often face challenges when trying to scale analytics across large volumes of data stored in centralized SQL databases. As business teams demand faster, more tailored insights, traditional reporting pipelines can become bottlenecks. By adopting Lakehouse architecture with Microsoft Fabric, business groups can mirror their SQL data into OneLake and organize it using the Medallion architecture—Bronze, Silver, and Gold layers. Materialized lake views play a crucial role in this setup, enabling automated, declarative transformations that clean and enrich data in the Silver layer. This empowers teams to build reliable dashboards and AI-driven insights on top of curated data, all while maintaining performance, governance, and security on a scale.

In this post, we will cover how enterprises can use materialized lake views to streamline data orchestration and enhance data quality, monitoring across silver and gold layers, while mirroring their SQL DB tables to Fabric in the Bronze layer.

Steps

Step 1: Mirror your Azure SQL database to Fabric using this tutorial into your desired Workspace (Workspace A)

Step 2: Create a shortcut from the Bronze Tables (with filters required) into your Workspace (Workspace B)

Step 3: Build Silver and Gold materialized lake views, with required filters applied on the bronze layer, by using the MLV syntax in your notebook.

Step 4: Once your Silver and Gold materialized lake views are completed, navigate to the Lakehouse where you have built your Silver and Gold Materialized Lake views, you can navigate to the ‘Manage materialized lake views’ pane to view the lineage.

Step 5: Continue on to schedule the materialized lake view runs as per your business needs.

With these steps you can continue to bring in your SQL Server data into Fabric, and materialize them in your Lakehouse, while turning the transactional data into insights using Fabric materialized lake views.

Learn more

Refer to the Materialized Lake Views documentation.

Coming soon

Stay tuned for updates and feature enhancements in materialized lake views, including viewing the bronze layer leaf nodes across Workspace / Lakehouse in your lineage.

Suggest an idea

Provide your feedback and suggest ideas via Fabric Ideas.

Liittyvät blogikirjoitukset

Mastering Declarative Data Transformations with Materialized Lake Views

marraskuuta 4, 2025 tekijä Misha Desai

We’re introducing a set of new enhancements for Data Agent creators — designed to make it easier to debug, improve, and express your agent’s logic. Whether you’re tuning example queries, refining instructions, or validating performance, these updates make it faster to iterate and deliver high-quality experiences to your users. New Debugging Tools View referenced example … Continue reading “Creator Improvements in the Data Agent”

marraskuuta 3, 2025 tekijä Arshad Ali

Additional authors – Madhu Bhowal, Ashit Gosalia, Aniket Adnaik, Kevin Cheung, Sarah Battersby, Michael Park Esri is recognized as the global market leader in geographic information system (GIS) technology, location intelligence, and mapping, primarily through its flagship software, ArcGIS. Esri empowers businesses, governments, and communities to tackle the world’s most pressing challenges through spatial analysis. … Continue reading “ArcGIS GeoAnalytics for Microsoft Fabric Spark (Generally Available)”