Microsoft Fabric Updates Blog

Fabric Environment Library Management Performance Improvement

Major performance improvements are here for Fabric Environment! Environment publishing is now up to 2.5x faster, and session startup speeds have improved by up to 3x, delivering a smoother and more reliable experience for developers.

What’s Improved

  • Lightning-fast publishing for JAR and Python files – What used to take minutes now completes in under a minute, giving you near-instant turnaround for custom JAR or .py installations.
  • Faster publishing for Python packages – Publishing Python packages is now up to 2.5x faster for public and custom packages.
  • Significantly reduced Spark session startup times – Spark sessions attached to environments with Python libraries now start up to 70% faster with both live sessions and on-demand sessions, providing a more predictable and responsive experience for both interactive and production workloads.
Publishing environment

What’s Next?

New library installation mode for lightweight packages and quick iteration is around the corner. Stay tuned for even more enhancements to Environments and library management.

Next Steps

Start exploring these improvements today and experience the difference! To learn more, refer to our documentation Manage Apache Spark libraries in Microsoft Fabric.

Entradas de blog relacionadas

Fabric Environment Library Management Performance Improvement

abril 6, 2026 por Arshad Ali

ADO.NET is a widely adopted data access technology in the .NET ecosystem that enables applications to connect to and work with data from databases and big data platforms. The Microsoft ADO.NET Driver for Fabric Data Engineering lets you connect, query, and manage Spark workloads in Microsoft Fabric with the reliability and simplicity of standard ADO.NET … Continue reading “Microsoft ADO.NET Driver for Microsoft Fabric Data Engineering (Preview)”

marzo 27, 2026 por Avinanda Chattapadday

The enterprise-grade JDBC driver enables secure, flexible, and performant connectivity to Spark SQL workloads running in Microsoft Fabric, using Fabric’s Livy APIs as the execution layer.