Microsoft Fabric Updates Blog

Create Metadata Driven Data Pipelines in Microsoft Fabric

Metadata-driven pipelines in Azure Data Factory and Synapse Pipelines, and now, Microsoft Fabric, give you the capability to ingest and transform data with less code, reduced maintenance and greater scalability than writing code or pipelines for every data source that needs to be ingested and transformed. The key lies in identifying the data loading and transformation pattern(s) for your data sources and destinations and then building the framework to support each pattern.

I recently posted 2 blogs about a Metadata driven pipeline solution I created in Fabric.

A screenshot of a computer

Description automatically generated

Features include:

  • Metadata driven pipelines
  • Star schema design for Gold layer tables
  • Source data loaded into Fabric Lakehouse with Copy Data
  • Incremental loads and watermarking for large transaction tables and fact tables
  • 2 patterns for Gold layer
    • Fabric Lakehouse loaded with Copy Data activities and Spark notebooks
    • Fabric Data Warehouse loaded with Copy Data activities and SQL Stored Procedures

Why two options for the Gold layer? If you want to use T-SQL Stored Procedures for transformations, or have existing Stored Procedures to migrate to Fabric, Fabric Data Warehouse may be your best option, since it supports multi-table transactions and INSERT/UPDATE/DELETE statements. Comfortable with Spark notebooks? Then consider Fabric Lakehouse, which has the added bonus of Direct Lake connection from Power BI.

Check out the posts below to learn about building Metadata Driven Pipelines in Microsoft Fabric!

Part 1 – Metadata Driven Pipelines for Fabric with Lakehouse as Gold Layer

Part 2 – Metadata Driven Pipelines for Fabric with Data Warehouse as Gold Layer

โพสต์ในบล็อกที่เกี่ยวข้อง

Create Metadata Driven Data Pipelines in Microsoft Fabric

กรกฎาคม 3, 2567 โดย Penny Zhou

We are excited to share that the new modern get data experience of data pipeline now supports copying to Lakehouse and Datawarehouse across different workspaces with an extremely intuitive experience. When you are building a medallion architecture, you can easily leverage Data Pipeline to copy your data into Bronze Lakehouse/Warehouse across different workspaces. This feature … Continue reading “Easily Move Your Data Across Workspaces Using Modern Get Data of Fabric Data Pipeline”

มิถุนายน 24, 2567 โดย Justin Barry

When we talk about Microsoft Fabric workspace collaboration, a common scenario is developers and their teams using a shared workspace environment, which means they have access to “live items”. A change made directly within a workspace would override and affect all other developers or users utilizing that workspace. This is where git becomes increasingly important … Continue reading “Microsoft Fabric Lifecycle Management: Getting started with development in isolation using a Private Workspace”