Business Professionals
Techno-Business Professionals
Power BI | Power Query | Advanced DAX | SQL - Query &
Programming
Microsoft Fabric | Power BI | Power Query | Advanced DAX |
SQL - Query & Programming
Power BI | Power Apps | Power Automate | Copilot Studio | Power Pages | Dataverse
Microsoft Power Apps | Microsoft Power Automate
Power BI | Adv. DAX | SQL (Query & Programming) |
VBA | Python | Web Scrapping | API Integration
Power BI | Power Apps | Power Automate |
SQL (Query & Programming)
Power BI | Adv. DAX | Power Apps | Power Automate |
SQL (Query & Programming) | VBA | Python | Web Scrapping | API Integration
Power Apps | Power Automate | SQL | VBA | Python |
Web Scraping | RPA | API Integration
Technology Professionals
Power BI | DAX | SQL | ETL with SSIS | SSAS | VBA | Python
Power BI | SQL | Azure Data Lake | Synapse Analytics |
Data Factory | Databricks | Power Apps | Power Automate |
Azure Analysis Services
Microsoft Fabric | Power BI | SQL | Lakehouse |
Data Factory (Pipelines) | Dataflows Gen2 | KQL | Delta Tables | Power Apps | Power Automate
Power BI | Power Apps | Power Automate | SQL | VBA | Python | API Integration
Power BI | Advanced DAX | Databricks | SQL | Lakehouse Architecture
Business Professionals
Techno-Business Professionals
Power BI | Power Query | Advanced DAX | SQL - Query &
Programming
Microsoft Fabric | Power BI | Power Query | Advanced DAX |
SQL - Query & Programming
Power BI | Power Apps | Power Automate | Copilot Studio | Power Pages | Dataverse
Microsoft Power Apps | Microsoft Power Automate
Power BI | Adv. DAX | SQL (Query & Programming) |
VBA | Web Scrapping | API Integration
Power BI | Power Apps | Power Automate |
SQL (Query & Programming)
Power BI | Adv. DAX | Power Apps | Power Automate |
SQL (Query & Programming) | VBA | Web Scrapping | API Integration
Power Apps | Power Automate | SQL | VBA |
Web Scraping | RPA | API Integration
Technology Professionals
Power BI | DAX | SQL | ETL with SSIS | SSAS | VBA
Power BI | SQL | Azure Data Lake | Synapse Analytics |
Data Factory | Azure Analysis Services
Microsoft Fabric | Power BI | SQL | Lakehouse |
Data Factory (Pipelines) | Dataflows Gen2 | KQL | Delta Tables
Power BI | Power Apps | Power Automate | SQL | VBA | API Integration
Power BI | Advanced DAX | Databricks | SQL | Lakehouse Architecture

Practicing with real datasets is one of the most effective ways to develop Power BI skills.
Working with realistic data allows learners to build dashboards, apply transformations, and perform meaningful analysis.
Many governments publish open datasets related to population, transportation, and economic indicators.
These datasets are often large and ideal for analytics practice.
Kaggle provides thousands of datasets covering topics such as finance, healthcare, retail, and sports analytics.
Datasets related to sales performance, marketing campaigns, and financial metrics are especially useful for Power BI practice.
Practicing with datasets allows learners to build portfolio projects that demonstrate analytical skills.
If you are building a portfolio, our guide on Power BI Projects for Data Analyst Portfolio provides examples of dashboards you can develop.
Editor’s NoteThis article highlights some sources for Power BI practice datasets.
For learners interested in guided project-based learning, structured training programs such as the Power BI training offered by Excelgoodies combine real datasets with hands-on reporting scenarios.
Power BI
New
Next Batches Now Live
Power BI
SQL
Power Apps
Power Automate
Microsoft Fabrics
Azure Data Engineering