Power BI Training
At Boweyon Tech, our Power BI program is built to transform beginners into confident data analysts. Learn how to clean, model, visualize, and present real business data using industry-standard tools and real-time projects.
Learn From Anywhere. Build Skills That Companies Hire For.
8+ Years Experince
Transform Data into Business Intelligence
Power BI is one of the most in-demand data visualization tools used by organizations worldwide to make smarter decisions. At Boweyon Tech, our Power BI training program is designed to help learners move beyond theory and develop real analytical skills used in modern companies.
Through structured training, practical dashboards, and real-world datasets, students learn how to collect, transform, analyze, and visualize data effectively. This program helps learners build a strong portfolio and prepares them for roles in data analytics and business intelligence.
Why Choose Boweyon PowerBi Training
At Boweyon Tech, our Power BI training is designed to help learners move beyond basic concepts and develop practical data analysis skills. The program focuses on real-world dashboards, structured learning, and building the expertise required for modern data-driven roles.
100%
Premium
Our Power BI training at Boweyon Tech is designed to help learners build strong data analysis and visualization skills used in modern businesses. The program focuses on practical learning, enabling students to work with real datasets and develop professional dashboards.
Data Analysis Fundamentals
Data Transformation
Data Modeling in Power BI
DAX Calculations
Interactive Dashboards
BI Reporting
From Learning to Earning — Proven Placement Outcomes
Not Just Training. Measurable Career Results.
At Boweyon Tech, we focus on making every learner job-ready no matter their background. Our structured training, real-time projects, and interview support help students confidently enter the data analytics field.
90% - Fresher
100% - Experienced
80% - Career Gap
🎓 Freshers
💼 Experienced
Career Gap
Power BI Training Syllabus – From Data to Decision Making
• OLTP vs OLAP
• Reporting vs Analytics vs Dashboards
• Power BI ecosystem overview
• Power BI Desktop, Service, Mobile
• Dataset vs Report vs Dashboard
• Import vs DirectQuery vs Live Connection
• Enterprise BI architecture
• Power BI in Microsoft Fabric
• Where Power BI fits in Microsoft Fabric
• Interface: Report, Data, Model views
• File formats: PBIX, PBIT, PBIR
• Options & global settings
• Auto Date/Time behavior
• Development workflow best practices
• First dataset load & save
• SQL Server, Azure SQL
• SharePoint, OneDrive
• Web & REST APIs
• Authentication methods
• Import vs DirectQuery behavior
• Source performance considerations
• ETL lifecycle (Extract, Transform, Load)
Data Profiling
• Column Quality
• Column Distribution
• Column Profile
Column Operations
• Rename columns
• Split columns
• Merge columns
• Extract values
• Replace values
Row Operations
• Filter rows
• Remove rows
• Keep rows
• Sort rows
• Append queries vs Merge queries
• Group By & aggregations
• Applied steps management
• Query folding concepts
• Transformation performance impact
Parameters
• What parameters are
• Why parameters are used
• Where parameters are applied
• Custom columns
• Index columns
• Pivot & Unpivot
• Error handling strategies
• M language fundamentals
• Reusable queries
• Template-based PBIX design
• API pagination handling
• Power Query performance tuning
• Fact vs Dimension tables
• Star schema design
• Snowflake schema design
• Relationships & cardinality
• Cross-filter direction
• Active vs inactive relationships
• Date dimension importance
• Model performance best practices
• Role-playing dimensions
• Bridge tables
• Many-to-many patterns
• Slowly Changing Dimensions (Type 1)
• Calculated columns vs calculated tables
• Composite models (Import & DirectQuery)
• Row context
• Filter context
• Evaluation context
• Aggregation functions
• Logical, text & math functions
• Iterator (X) functions
• CALCULATE introduction
• Basic time intelligence
• Context transition
• FILTER vs ALL vs ALLEXCEPT
• REMOVEFILTERS
• USERELATIONSHIP
• CROSSFILTER
• Semi-additive measures
• Ranking & percentiles
• Moving averages
• Advanced iterator usage
• SUMMARIZE
• ADDCOLUMNS
• SELECTCOLUMNS
• TOPN
• CROSSJOIN
• Virtual tables inside measures
• DAX debugging techniques
• YTD, QTD, MTD
• SAMEPERIODLASTYEAR
• DATEADD
• Parallel period analysis
• Fiscal calendar handling
• Custom time calculations
• Tables & Matrix
• Cards & KPIs
• Slicers
• Filters pane
• Visual interactions
• Sorting & formatting
• Report layout fundamentals
• Drill-through
• Tooltips
• Bookmarks
• Buttons & navigation
• Field parameters
• Small multiples
• Custom visuals (enterprise rules)
• UX best practices
• Visual performance tuning
• Model size reduction
• Cardinality control
• Star schema optimization
• VertiPaq fundamentals
• Storage engine vs Formula engine
• Performance troubleshooting checklist
• Dynamic Row Level Security
• USERNAME & USERPRINCIPALNAME
• Object Level Security
• Security testing methodology
• Apps vs direct sharing
• Dataset endorsement
• Thin report architecture
• Shared semantic models
• Scheduled refresh
• Versioning mindset
Licensing
• Free vs Pro vs PPU
• Premium vs Fabric capacity
• Creator vs consumer licensing
• Licensing impact on:
Workspaces
Apps
Row Level Security
Deployment pipelines
Dataflows
• Common licensing mistakes
• Installation & configuration
• Data source mapping
• Credential handling
• Refresh failure troubleshooting
• RangeStart & RangeEnd
• Partition behavior
• Refresh testing
• Enterprise-scale use cases
• Responsive visuals
• Device-specific UX
• Testing strategies
• Centralized ETL design
• Linked tables
• Parameterized dataflows
• Dataflows vs PBIX Power Query
• Performance & governance
• Enterprise reuse scenarios
• Deployment pipelines
• Git integration overview
• PBIX versioning limitations
• Naming & branching strategy
• Release & rollback practices
• Push datasets
• DirectQuery latency
• Near real-time vs true real-time
• Event-driven vs refresh-driven models
• When Power BI should not be used
• Decomposition Tree visual
• Smart Narrative
• Forecasting (built-in analytics)
• Q&A visual (going to deprecated - legacy - not recommended for new builds)
• Production-safe vs demo-only AI features
• Power BI with SharePoint
• Power BI with Power Apps
• Power Automate integration
• Dataverse integration
• Tenant settings
• Sensitivity labels
• Data lineage
• Compliance & audit readiness
• Excessive calculated columns
• DISTINCTCOUNT traps
• Poor date table design
• Visual overloading
• Bad RLS patterns
• Dashboard rejection reasons
• Model refactoring techniques
• RDL overview
• Power BI Report Server
• On-premises reporting scenarios
• Finance performance
• HR analytics
• Inventory management
• Marketing analytics
• Customer churn
• Manufacturing OEE
Each project includes:
• Business problem statement
• KPIs and success metrics
• Data volume & refresh constraints
• Security model and access model
• Performance considerations
• Stakeholder personas


