This time we’re going bigger than ever. Fabric, Power BI, SQL, AI and more. We're covering it all. You won't want to miss it.
Learn moreDid you hear? There's a new SQL AI Developer certification (DP-800). Start preparing now and be one of the first to get certified. Register now
Copy job is the go-to solution in Microsoft Fabric Data Factory for simplified data movement. With native support for multiple delivery styles, including bulk copy, incremental copy, and change data capture (CDC) replication, Copy job offers the flexibility to handle a wide range of scenarios—all through an intuitive, easy-to-use experience.
This update introduces several enhancements, including connection parameterization, expanded CDC capabilities, new connectors, and a streamlined Copy Assistant powered by Copy job.
This powerful capability helps automate your CI/CD processes by externalizing connection values. With it, you can deploy the same Copy job across multiple environments while relying on the Variable Library to inject the correct connection for each stage. Meaning, you can seamlessly use different data stores for development, testing, and production—without modifying your Copy job each time.
Capabilities:
Simplifying_Data_Ingestion_with_Copy_Job_Connection_Parameterization_Expanded_CD
To learn more, refer to the CI/CD for Copy Job in Data CI/CD for Copy job in Data Factory in Microsoft Fabric Factory documentation.
Copy job now supports Fabric Lakehouse Table connector with native CDC support. This connector enables efficient, automated replication of changed data—including inserts, updates, and deletes—from a Fabric Lakehouse via Delta Change Data Feed (CDF) to supported destinations. With this enhancement, your destination data stays continuously up to date—no manual refreshes, no extra effort—making your data integration workflows more efficient and reliable.
Simplifying_Data_Ingestion_with_Copy_Job_Connection_Parameterization_Expanded_CD
This new CDC connector brings you the flexibility to keep downstream systems in multi-cloud environment in sync—ensuring your data is always accurate, timely, and ready for action.
To learn more, refer to the Change data capture (CDC) in Copy Job (Preview) documentation.
You now have the ability to choose to merge changed data—including inserts, updates, and deletions—into Snowflake, when the data originates from any CDC source connectors such as Azure SQL DB, SQL Server, SQL MI, or Fabric Lakehouse tables.
Simplifying_Data_Ingestion_with_Copy_Job_Connection_Parameterization_Expanded_CD
What’s more, with Storage Integration support in the Snowflake connector for Copy job, you gain enhanced security through a Snowflake-assigned role. This eliminates the need to expose sensitive credentials and allows you to implement more secure authentication methods when connecting to Azure Blob Storage.
Find more details in the CREATE STORAGE INTEGRATION or Change data capture (CDC) in Copy Job documentation.
More source and destination connections are now available, giving you greater flexibility for data ingestion with Copy job. We’re not stopping here—even more connectors are coming soon!
Simplifying_Data_Ingestion_with_Copy_Job_Connection_Parameterization_Expanded_CD
Learn more in What is Copy job in Data Factory - Microsoft Fabric | Microsoft Learn
Access the full power of Copy job by selecting Copy Assistant from a pipeline; eliminating the need for unnecessary parameterized foreach loops and copy activities as before for simple data copying. It also empowers you to benefit from all Copy job capabilities, including native incremental copy and Change Data Capture (CDC).
Simplifying_Data_Ingestion_with_Copy_Job_Connection_Parameterization_Expanded_CD
To learn more, refer to the What is Copy job in Data Factory for Microsoft Fabric? documentation.
To learn more, explore Microsoft Fabric Copy Job documentation.
Submit your feedback on Fabric Ideas and join the conversation in the Fabric Community.
To get into the technical details, check out the Fabric documentation.
If you have a question or want to share your feedback, please leave us a comment.
You must be a registered user to add a comment. If you've already registered, sign in. Otherwise, register and sign in.