Get certified for free when you join Fabric Data Days 2026 and dive into Fabric, Power BI, SQL, AI, and other essential data skills.
Join nowData Days is here! Join us now for 60+ days of learning, challenges, and connection. Learn more
We’ve completed a set of improvements to the monitoring experience for Notebooks running in high concurrency mode, whether triggered manually or as part of a pipeline using the high concurrency execution model. These updates provide deeper visibility into Spark applications, improve observability across multiple Notebooks, and enable more efficient debugging and performance tuning.
We’ve introduced several key enhancements to the Spark application detail view to support high concurrency workloads more effectively:
In the Jobs tab, you can now drill into individual Spark jobs executed under a high concurrency application.
Key improvements include:
To support easier debugging in high concurrency Spark sessions:
The Item Snapshots tab introduces a hierarchical tree view of all Notebooks participating in a shared high concurrency Spark session:
These enhancements are now optimized for multi-Notebook awareness, allowing you to monitor high-concurrency Spark workloads with more granular, per-Notebook insights.
Refer to the full documentation Apache Spark application detail monitoring - Microsoft Fabric for more information.
You must be a registered user to add a comment. If you've already registered, sign in. Otherwise, register and sign in.