Skip to content

Latest commit

 

History

History
92 lines (60 loc) · 6.07 KB

File metadata and controls

92 lines (60 loc) · 6.07 KB

Demonstration: Data Agents in Microsoft Fabric (Preview)

Costa Rica

GitHub Cloud2BR OSS - Learning Hub

Last updated: 2025-05-02


List of References (Click to expand)
Table of Content (Click to expand)

AI skills in Microsoft Fabric enable users to create conversational AI experiences that answer questions about data stored in lakehouses, warehouses, Power BI semantic models, and KQL databases. These skills make data insights accessible and actionable, allowing users to interact with data naturally and receive relevant answers without needing technical expertise. You can create custom Q&A systems using generative AI, guiding the AI with instructions and examples to ensure it understands your organization's context and data.

Key Features:

  • Customizable Q&A Systems: Tailor the AI to answer specific questions relevant to your organization.
  • Generative AI: Leverage advanced AI to interact with your data, enhancing data-driven decision-making.
  • Ease of Use: Once set up, users can simply ask questions and get accurate answers without needing deep technical knowledge.

Setup required

  1. Please ensure you read all the prerequisites

  2. Tenant switch enabled: These features must be activated as mentioned here prerequisites

    Tenant.switch.enabled.-.How.to.mp4
  3. F2 Fabric capacity or higher: Ensure you have the appropriate Fabric capacity.

  4. Workspace configured with Fabric Capacity:

    image image
  5. At least one of these: A warehouse, a lakehouse, one or more Power BI semantic models, or a KQL database with data.

How it works

  1. Go to the workspace, click on + New item, search for Data agent, and select it.

    image
  2. Choose the name for the Data agent instance:

    Choose.name.for.data.agent.and.how.to.solve.capacity.pause.error.mp4
  3. Add data:

    How.to.add.data.and.select.specific.information.limit.agent.access.mp4
  4. Relate tables, and start asking!

    image

Examples of what to ask

Question Example of it looks
Data Exploration
- Can you provide an overview of this dataset?
- Are there any missing values or anomalies in this dataset?
image
What are the key variables in this data? image
Data Insights
What patterns or trends can you identify in this data? image
Can you highlight any correlations between variables? image
What are the outliers in this dataset? image
Total views

Refresh Date: 2025-10-15