Microsoft Fabric Updates Blog

AI-powered troubleshooting for Fabric pipeline error messages

Troubleshooting pipeline failures can be overwhelming, especially when a single run throws dozens or even hundreds of errors. The new Error Insights Copilot in Fabric makes this process faster, smarter, and easier. Powered by AI, Copilot provides clear explanations, root cause analysis, and actionable recommendations, so you can resolve issues without getting lost in technical details.

Copilot Insights for All Errors in a Pipeline Run

Instead of clicking through every error one by one, Copilot gives you a concise summary of all errors in a failed pipeline run.

  • Categorized error groups for better clarity.
  • Root cause analysis for each category.
  • Recommended actions to fix issues quickly.

Simply select the ‘error Insights’ button on the Pipeline Monitoring or Authoring page. For example, if a pipeline fails with 100+ errors, Copilot can group them into categories and provide actionable insights—saving you hours of manual investigation.

Summarize all the errors in a pipeline

Copilot Insights for a Single Activity Error

To address a specific activity error, use the Copilot button next to the activity to get error-specific insights, including explanations and suggested fixes. This targeted approach helps you resolve issues quickly without digging through unrelated errors.

A single activity error

Learn more about Copilot for Data Factory

Copilot for Data Factory What is Copilot in Fabric in the Data Factory workload?

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