Get trial

English

All about Azure and Power BI data automation

This session shows how AnalyticsCreator automates Azure and Power BI data warehouse delivery from one metadata model. The demo creates a data warehouse from AdventureWorks, deploys it on-premise and to Azure SQL Database, generates Azure Data Factory pipelines, creates a Power BI model, and shows how model changes can be redeployed. 
Duration: 1:30:30 Updated: Aug 2021 Level: intermediate Platform: Microsoft Azure, Azure SQL Database, Azure Data Factory, Power BI, SQL Server For: BI Developers, Data Engineers, Azure Analytics Team, Power BI Model Developers

Questions

  • How can AnalyticsCreator automate Azure and Power BI data warehouse delivery?
  • How does AnalyticsCreator generate Azure Data Factory pipelines?
  • Can AnalyticsCreator deploy the same model on-premise and to Azure?
  • How are Power BI models generated from AnalyticsCreator?
  • How does AnalyticsCreator handle fact transformations and calendar dimensions?
  • How can model changes be redeployed with AnalyticsCreator?
Platform shown AnalyticsCreator
Related tooling Microsoft Azure, Azure SQL Database, Azure Data Factory, Power BI, SQL Server

Key Takeaways

  • AnalyticsCreator is a metadata-driven design application for data warehouse automation.
  • It generates source code instead of requiring manual development.
  • The application focuses on Microsoft target environments such as SQL Server, Azure SQL Database, Azure Data Factory, and Power BI.
  • AnalyticsCreator is a design-time application with no runtime dependency.
  • The demo uses AdventureWorks as the source database.
  • The Data Warehouse Wizard creates a draft model from source metadata.
  • Fact transformations can be created from related source tables.
  • Calendar dimensions and macros convert date fields into calendar keys.
  • Persisting stores complex transformation views physically in tables.
  • Deployment packages can generate DACPAC files, SSIS packages, Azure Data Factory ARM templates, and Power BI models.
  • The same model can be deployed on-premise or to Azure.
  • Azure Data Factory pipelines can be generated and executed to load, historize, and persist data.
  • Model changes can be redeployed, although deployment constraints such as non-nullable columns on populated tables must be handled carefully.

Transcript

Hello everyone, and welcome to our AnalyticsCreator classroom on Azure and Power BI data automation.

We begin with customer examples from Bosch, MyMuesli, and an SAP-based customer. Bosch reported saving more than 80 percent in time and cost, MyMuesli built a company-wide data warehouse after only a few days of training, and another customer created an Azure staging layer from SAP data much faster than originally estimated.