Microsoft Fabric Updates Blog

Notebook Live Versioning

The Fabric notebook version history feature has launched! This new feature is designed to significantly improve your experience in developing and managing notebooks by providing robust built-in version control capabilities. 

Highlights

  • Automatic Checkpoints: These checkpoints are created automatically every 5 minutes based on the editing time, ensuring that your work is consistently saved and versioned. 
  • Manual Checkpoints: You can manually create checkpoints to record your development milestones, providing flexibility in how you manage your notebook versions. 
  • Track History of Changes: Users can now view a list of previous notebook versions, see what changes were made, contributed by whom, and when. 
  • Compare Different Versions: Easily compare different versions of a notebook through a diff view to understand the evolution of your work. 
  • Restore Previous Versions: If you make a mistake or want to explore a different approach, you can restore previous versions of your notebook or save a new copy of it. 
Walk through Notebook Live Versioning

These enhancements are part of our ongoing efforts to improve collaboration, reproducibility, and the overall user experience within Fabric. We believe these updates will greatly enhance your workflow and productivity. Looking forward to hearing your feedback

関連するブログ記事

Notebook Live Versioning

2月 10, 2026 作成者: Ruixin Xu

Great technology does not succeed on design alone—it succeeds when it helps people solve real problems. Semantic Link is one of those transformative capabilities in Microsoft Fabric: it brings AI, BI, and data engineering together through a shared semantic layer, enabling teams to work faster and more intelligently on the data they already trust. From … Continue reading “Supercharge AI, BI, and data engineering with Semantic Link (Generally Available)”

2月 3, 2026 作成者: 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 “