Microsoft Fabric Updates Blog

Azure Synapse Runtime for Apache Spark 3.5 (Preview)

We’re thrilled to announce that we have made Azure Synapse Runtime for Apache Spark 3.5 for our Azure Synapse Spark customers in preview, while they get ready and prepare for migrating to Microsoft Fabric Spark.

Apache Spark 3.5

You can now create Azure Synapse Runtime for Apache Spark 3.5. The essential changes include features which come from upgrading Apache Spark to version 3.5 and Delta Lake 3.2. Please review the official release notes for Apache Spark 3.5 to check the complete list of fixes and features. In addition, review the migration guidelines between Spark 3.4 and 3.5 to assess potential changes to your applications, jobs and notebooks. 

For additional details check Azure Synapse Runtime for Apache Spark 3.5 documentation. 

Azure Synapse Users

We offer Azure Synapse Runtime for Apache Spark 3.5 to our Azure Synapse Spark customers. However, we strongly recommend that customers plan to migrate to Microsoft Fabric Spark to benefit from the latest innovations and optimizations exclusive to Microsoft Fabric Spark. For example, the Native Execution Engine (NEE) significantly enhances query performance at no additional cost. Starter pools allow the creation of a Spark session within seconds, unified security in the lakehouse enables the definition of RLS (Row-Level Security) and CLS (Column-Level Security) for objects in the lakehouse. Additionally, newly announced Materialized Views and many other features are available.

Related blog posts

Azure Synapse Runtime for Apache Spark 3.5 (Preview)

December 10, 2025 by Ted Vilutis

Schema lakehouses are now Generally Available. By using schemas in lakehouses, users can arrange their tables more efficiently and make it easier to find data. When creating new lakehouses, schema-enabled lakehouses will now be the default choice. However, users still have the option to create lakehouses without a schema if they prefer. What do schema … Continue reading “Lakehouse Schemas (Generally Available)”

December 9, 2025 by Kunal Parekh

Discover how Microsoft Fabric’s Forecasting Service system reduces Spark startup latency and cloud costs through proactive AI and ML-driven resource provisioning. Context & Relevance Waiting minutes for a Spark cluster to become available can throttle analytics velocity, delay insights, and drive-up cloud spend. In a world where data teams expect near‐instant execution and seamless burst … Continue reading “How does Fabric make Spark Notebooks Instant?”