Microsoft Fabric Updates Blog

Wondering how to incrementally amass data in your data destination? This is how!

In a lot of scenarios, you want to only get new data from your sources and append it to your data destination to report over. With Dataflows Gen2 that comes with support for data destinations, you can setup your own pattern to load new data, replace some old data and keep your reports up to date with your source data.

Screenshot of the Power Query Diagram View showcasing three queries

The pattern is simple, you create a dataflow that loads data from your source and appends it to your data destination. You then create a pipeline that runs this dataflow on a schedule. This way you can keep your data destination up to date with your source data. The key in this scenario is that you retrieve only the new data from your source. This can be done by getting the latest timestamp from your data destination and use that to filter the data from your source. This way you only get the new data from your source and append it to your data destination.

Screenshot of the diagram view inside of Data Pipelines where a notebook, a dataflow and Teams activities are being used

To replace data you loaded previously you can leverage a fabric notebook to run a query on your data destination to delete the data you want to replace. You can then run your dataflow to append the new data to your data destination. Within the pipeline you can first run the fabric notebook to delete the data and then run the dataflow to append the new data. This way you can replace data in your data destination and keep your reports up to date with your source data.

We have created a documentation page that explains this pattern in more detail and provides you with the code to get started. You can find the documentation page here: https://learn.microsoft.com/fabric/data-factory/tutorial-setup-incremental-refresh-with-dataflows-gen2

We hope this helps you to get started with incrementally amass data with Dataflows Gen2. We are developing a feature that would introduce a native incremental refresh feature in Dataflows Gen2. This has been one of our top voted ideas on the ideas website. Vote for it here: https://ideas.fabric.microsoft.com/ideas/idea/?ideaid=4814b098-efff-ed11-a81c-6045bdb98602

Susiję tinklaraščio įrašai

Wondering how to incrementally amass data in your data destination? This is how!

spalio 30, 2024 – Patrick LeBlanc

Welcome to the October 2024 Update! Here are a few, select highlights of the many we have for Fabric this month. API for GraphQL support for Service Principal Names (SPNs). Introducing a powerful new feature in Lakehouses: Sorting, Filtering, and Searching capabilities. An addition to KQL Queryset that will revolutionize the way you interact with … Continue reading “Fabric October 2024 Monthly Update”

spalio 29, 2024 – Leo Li

We’re excited to announce several powerful updates to the Virtual Network (VNET) Data Gateway, designed to further enhance performance and improve the overall user experience. These new features allow users to better manage increasing workloads, perform complex data transformations, and simplify log management. Expanded Cluster Size from 5 to 7 One of the key improvements … Continue reading “New Features and Enhancements for Virtual Network Data Gateway”