Microsoft Fabric Updates Blog

Spark Connector for Fabric Data Warehouse (Preview)

We are pleased to announce the availability of the Fabric Spark connector for Fabric Data Warehouse (DW) in the Fabric Spark runtime. This connector enables Spark developers and data scientists to access and work with data from Fabric DW and the SQL analytics endpoint of the lakehouse, either within the same workspace or across different workspaces, using a simplified Spark API. The connector will be included as a default library within the Fabric Runtime, eliminating the need for separate installation.

Read Support

The connector supports reading data from tables or views from both the Data Warehouse and the SQL analytics endpoint. It is designed with security in mind, requiring minimal permission to work with Fabric SQL engines and adhering to security models such as Object Level Security (OLS), Row Level Security (RLS), and Column Level Security (CLS) defined at the SQL engine level.

Write Support

The connector now supports writing data of a dataframe to a Fabric DW table. It employs a two-phase write process: initially staging the Spark dataframe data into intermediate storage, followed by using the COPY INTO command to ingest the data into the Fabric DW table. This approach ensures scalability with increasing data volumes and supports multiple modes for writing data to a DW table.

PySpark Support

We are also excited to announce PySpark support for this connector, in addition to Scala. This means that you no longer need to use a workaround to utilize this connector in PySpark, as it is now available as a native capability.

To learn more about Spark Connector for Fabric Data Warehouse (DW), please refer to the documentation at: Spark connector for Fabric Data Warehouse

Entradas de blog relacionadas

Spark Connector for Fabric Data Warehouse (Preview)

febrero 3, 2026 por Bogdan Crivat

As executives plan the next phase of their data and AI transformation, the bar for analytics infrastructure continues to rise. Enterprises are expected to support traditional business intelligence, increasingly complex analytics, and a new generation of AI-driven workloads—often on the same data, at the same time, and with far greater expectations for speed and cost … Continue reading “A turning point for enterprise data warehousing “

febrero 2, 2026 por Arindam Chatterjee

Coauthored by QiXiao Wang Building event-driven, real-time applications using Fabric Eventstreams and Spark Notebooks just got a whole lot easier. With the Preview of Spark Notebooks and Real-Time Intelligence integration — a new capability that brings together the open-source community supported richness of Spark Structured Streaming with the real-time stream processing power of Fabric Eventstreams … Continue reading “Bringing together Fabric Real-time Intelligence, Notebook and Spark Structured Streaming (Preview)”