End-to-end tutorials in Microsoft Fabric
In this article, you find a comprehensive list of end-to-end tutorials available in Microsoft Fabric. These tutorials guide you through a scenario that covers the entire process, from data acquisition to data consumption. They're designed to help you develop a foundational understanding of the Fabric UI, the various experiences supported by Fabric and their integration points, and the professional and citizen developer experiences that are available.
Multi-experience tutorials
The following table lists tutorials that span multiple Fabric experiences.
Tutorial name | Scenario |
---|---|
Lakehouse | In this tutorial, you ingest, transform, and load the data of a fictional retail company, Wide World Importers, into the lakehouse and analyze sales data across various dimensions. |
Data Science | In this tutorial, you explore, clean, and transform a taxicab trip semantic model, and build a machine learning model to predict trip duration at scale on a large semantic model. |
Real-Time Intelligence | In this tutorial, you use the streaming and query capabilities of Real-Time Intelligence to analyze London bike share data. You learn how to stream and transform the data, run KQL queries, build a Real-Time Dashboard and a Power BI report to gain insights and respond to this real-time data. |
Data warehouse | In this tutorial, you build an end-to-end data warehouse for the fictional Wide World Importers company. You ingest data into data warehouse, transform it using T-SQL and pipelines, run queries, and build reports. |
Experience-specific tutorials
The following tutorials walk you through scenarios within specific Fabric experiences.
Tutorial name | Scenario |
---|---|
Power BI | In this tutorial, you build a dataflow and pipeline to bring data into a lakehouse, create a dimensional model, and generate a compelling report. |
Data Factory | In this tutorial, you ingest data with data pipelines and transform data with dataflows, then use the automation and notification to create a complete data integration scenario. |
Data Science end-to-end AI samples | In this set of tutorials, learn about the different Data Science experience capabilities and examples of how ML models can address your common business problems. |
Data Science - Price prediction with R | In this tutorial, you build a machine learning model to analyze and visualize the avocado prices in the US and predict future prices. |
Application lifecycle management | In this tutorial, you learn how to use deployment pipelines together with git integration to collaborate with others in the development, testing and publication of your data and reports. |
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