This Advanced Power BI course is meticulously designed to equip professionals with the expertise needed to master data analytics and visualization at an advanced level. By delving into critical aspects such as data transformation, modeling, and visualization, this course ensures you gain comprehensive skills to handle complex data scenarios effectively. Participants will learn to connect and consolidate data from diverse sources, automate data processes, and build robust data models. The course also covers advanced topics like role-level security, fuzzy matching, and the creation of transformation tables, enabling you to manage and protect data with confidence.
Taking this course will provide you with practical, hands-on experience through real-world applications and case studies. You will learn to create insightful reports and compelling visualizations that drive informed decision-making. By the end of the course, you will be equipped not only with advanced technical skills but also with the ability to apply these techniques to solve business problems and optimize data-driven strategies. This course is ideal for professionals looking to elevate their Power BI capabilities and leverage data analytics to achieve business success.
Course Outline:
Introduction to Advanced Power BI Course
Introduction to the trainer
Overview of the course
Common challenges in mastering Power BI
Importance of core concepts
Data Cycle: Getting Data
Starting with a vision and end goals
Identifying data sources
Connecting to disparate systems
Centralized data warehouses
Methods for importing data
Data Cycle: Data Transformation
Importance of data transformation
Common data issues
Automating data transformation
Data wrangling and munging
Data Cycle: Data Consolidation
Importance of data consolidation
Data flattening vs. data modeling
Benefits of data modeling
Handling large datasets
Data Cycle: Enrichment, Visualization & Sharing
Data enrichment techniques
Creating compelling visualizations
Effective data sharing methods
Data Transformation: Finding Problems & Understanding Column Profile
Identifying data problems
Understanding column profiles
Using data profiling tools
Data Transformation: Fuzzy Match
Concept of fuzzy matching
Implementing fuzzy matching in Power BI
Handling data quality issues
Data Transformation: Transformation Table with Fuzzy Match
Creating transformation tables
Using transformation tables with fuzzy matching
Best practices for accurate data mapping
Data Transformation: Fuzzy, Transformation Table Practice
Hands-on practice with transformation tables
Troubleshooting common problems
Performing sense checks
Data Transformation: Transforming City Data Set
Case study: transforming city data
Applying learned techniques
Reinforcing key concepts through practical application
Data Transformation: Completing Sales File
Cleaning and transforming sales data
Handling errors and missing values
Making executive decisions on data handling
Data Transformation: Product File
Importing and cleaning product data
Standardizing product information
Dealing with inconsistent data entries
Data Consolidation: Model Formatting
Understanding automatic relationship detection
Deactivating auto-detect for manual relationship management
Formatting and enriching data
Data Enrichment: Calendar Table (Simple)
Creating a simple calendar table
Using DAX for date-related calculations
Enhancing reports with date intelligence
Data Enrichment: Calendar Table (Fiscal Year)
Creating a fiscal year calendar table
Customizing date intelligence for fiscal reporting
Utilizing DAX for advanced date calculations
Q&A Session
Recap of previous sessions
Addressing participant questions and concerns
Practical tips and insights from real-world use cases
Data Model: Fact Table
Understanding fact tables
Characteristics and purpose of fact tables
Creating and managing fact tables in Power BI
Data Model: Dimension Table & Star Schema
Understanding dimension tables
Characteristics and purpose of dimension tables
Implementing star schema in data modeling
Data Model: Cardinality and Cross Filter Direction
Understanding cardinality in relationships
Managing cross-filter direction
Best practices for relationship management
Data Model: Merge and Role-Playing Dimensions
Merging tables for optimized data models
Creating role-playing dimensions
Advanced data modeling techniques
Data Model: Comparing 2 Fact Tables (Theory)
Theoretical concepts of comparing fact tables
Understanding common grains
Implications of comparing different grains
Data Model: Comparing 2 Fact Tables (Practice)
Practical application of comparing fact tables
Handling many-to-many relationships
Best practices for accurate comparisons
Comparing Sales and Inventory (Considerations & Reporting)
Comparing sales and inventory data
Managing data discrepancies
Effective reporting techniques
Recap and Data Enrichment Using Custom Columns CC
Recap of key concepts
Data enrichment techniques using custom columns (CC)
Practical examples and hands-on exercises
Comparing Order Date and Ship Date
Comparing different date fields
Handling date discrepancies
Creating meaningful insights from date comparisons
Comparing Target Sales vs Actual Sales Part 1
Introduction to target vs actual sales comparison
Setting up the data model
Creating relationships and calculations
Comparing Target Sales vs Actual Sales Part 2
Advanced techniques for comparing target vs actual sales
Handling complex data models
Best practices for accurate reporting
Role Level Security
Implementing role-level security in Power BI
Managing user access and permissions
Best practices for secure data models
Normalizing a Flat File
Introduction to normalizing flat files
Step-by-step process for creating dimension tables
Best practices for efficient data modeling
Closing and Q&A
Recap of the entire course
Final questions and answers
In this module, Ali Noorani will introduce himself and sets the stage for the advanced Power BI course. He will outline the common challenges faced by users transitioning from basic to advanced Power BI, particularly those with a business rather than an IT background.
Topics include:
· Knowledge gaps and how to address them
· The scarcity of specific problem-solving content for Power BI
· The rapid pace of updates and how to keep up
· Emphasizing the importance of mastering 20% of core concepts to solve 80% of Power BI challenges
This session will cover the initial step in the Power BI data cycle: obtaining data. The module highlights the importance of starting with a clear vision and end goals for your report or dashboard.
Key topics include:
· Identifying data sources and their challenges
· Methods for importing data into Power BI
o Using Excel and CSV files
o Leveraging third-party tools and APIs
· Centralized data warehouses for streamlined data management
· Automating data imports with scheduling tools for efficient data management.
This module delves into the critical step of data transformation. Participants will learn about identifying and cleaning raw data to ensure it is useful and structured.
The session covers:
· Common data issues such as inconsistent data formats, duplicates, and missing values
· Techniques for automating data transformation
· Terms associated with data transformation, such as data wrangling and munging
In this module, the focus shifts to data consolidation. Participants will learn the importance of consolidating data from multiple sources into a coherent data model.
The session discusses:
· The drawbacks of data flattening, including data redundancy and scalability issues
· The benefits of data modeling over data flattening
· How data modeling reduces redundancy, improves scalability, and handles large datasets and perform cross-transaction data comparisons
This session explores the final steps of the data cycle: enrichment, visualization, and sharing. Participants will learn how to enhance their data with additional information and insights.
Key topics include:
· Techniques for enriching data
· Creating compelling and informative visualizations in Power BI
· Effective methods for sharing reports and dashboards with stakeholders
This module focuses on the initial steps of data transformation, specifically identifying problems and understanding column profiles.
Participants will learn techniques for detecting issues in their datasets, such as:
· Data type mismatches and inconsistencies
· Using Power BI's data profiling tools to assess data quality
· Identifying and addressing common data problems
This module builds on the previous session by introducing the concept of a transformation table. Participants learn how to create and use transformation tables in conjunction with fuzzy matching to automate and scale data cleaning processes.
The session covers:
· Best practices for setting up transformation tables
· Ensuring case sensitivity and accurate data mappings
· Integrating transformation tables with fuzzy matching for efficient data cleaning
In this practical session, participants will apply their knowledge of fuzzy matching and transformation tables to real-world scenarios.
The module provides hands-on practice, including:
· Creating and using transformation tables to address data quality issues
· Troubleshooting common problems
· Performing sense checks to ensure data accuracy and efficiency
This module in this series focuses on a specific case study: transforming a city dataset. Participants apply all the techniques learned in previous sessions to clean, consolidate, and transform city-related data.
The session emphasizes:
· Practical application of learned techniques
· Problem-solving in a real-world context
· Reinforcing key concepts through hands-on practice and case study analysis
In this session, participants delve into the concept of fuzzy matching.
The module explains how fuzzy matching can be used to identify and correct inconsistencies in data entries, such as:
· Variations in spelling or formatting
· Implementing fuzzy matching techniques in Power BI
· Effectively handling common data quality issues
In this module, participants will focus on completing the transformation of sales data.
The session covers:
· Cleaning and transforming sales data
· Handling errors and missing values
· Making executive decisions on data handling based on error ratios and business context
This session focuses on importing and cleaning product data.
Participants will learn techniques for:
· Standardizing product information
· Dealing with inconsistent data entries
· Ensuring the accuracy and reliability of product data
In this module, participants delve into data model formatting.
The session covers:
· Understanding automatic relationship detection in Power BI
· Deactivating auto-detect for manual relationship management
· Formatting and enriching data for better reporting outcomes
This session introduces the creation of a simple calendar table using DAX.
Key topics include:
· Creating a simple calendar table
· Using DAX for date-related calculations
· Enhancing reports with date intelligence
Building on the previous module, this session focuses on creating a fiscal year calendar table.
Participants will learn:
· Customizing date intelligence for fiscal reporting
· Utilizing DAX for advanced date calculations
· Enhancing reports with fiscal year insights
In this interactive session, participants will have the opportunity to recap previous sessions and address their questions and concerns.
The module includes:
· Practical tips and insights from real-world use cases
· Addressing specific challenges faced by participants
· Sharing best practices and solutions
This module will introduce the concept of fact tables in data modeling.
Participants will learn:
· Understanding fact tables and their characteristics
· The purpose of fact tables in data models
· Creating and managing fact tables in Power BI
In this module, participants will explore dimension tables and the star schema in data modeling.
The session covers:
· Understanding dimension tables and their characteristics
· Implementing the star schema in data modeling
· Best practices for organizing and managing dimension tables
This session focuses on cardinality and cross-filter direction in relationships.
Participants will learn:
· Understanding different types of cardinality in relationships
· Managing cross-filter direction for optimal data model performance
· Best practices for relationship management in Power BI
In this module, participants will explore advanced data modeling techniques, including merging tables and creating role-playing dimensions.
The session covers:
· Merging tables for optimized data models
· Creating and managing role-playing dimensions
· Advanced techniques for complex data modeling scenarios
This module covers the theoretical concepts of comparing two fact tables.
Participants will learn about:
· The importance of understanding common grains in data
· The implications of comparing data with different grains
· Strategies for managing data discrepancies and ensuring accurate comparisons
In this practical session, participants will apply their theoretical knowledge to compare two fact tables.
The module covers:
· Hands-on practice with many-to-many relationships
· Techniques for creating accurate comparisons
· Best practices for ensuring data integrity
This module focuses on comparing sales and inventory data.
Participants will learn about:
· The challenges and implications of comparing sales and inventory quantities
· Techniques for managing data discrepancies and ensuring accurate reporting
· Best practices for creating effective and insightful reports
In this session, participants recap key concepts covered in the course. The module also introduces data enrichment techniques using custom columns.
Key topics include:
· Practical examples and hands-on exercises for data enrichment
· Techniques for creating custom columns in Power BI
· Best practices for enhancing data and creating meaningful insights
This module covers the comparison of different date fields, specifically order date and ship date.
Participants will learn about:
· Techniques for comparing date fields and handling discrepancies
· Creating meaningful insights from date comparisons
· Practical examples and hands-on exercises for date field comparisons
This session introduces the concept of comparing target sales versus actual sales.
Participants will learn about:
· Setting up the data model for target vs actual sales comparison
· Creating relationships and necessary calculations
· Practical examples and hands-on exercises for setting up comparisons
Building on the previous session, this module will cover advanced techniques for comparing target sales versus actual sales.
Key topics include:
· Handling complex data models and relationships
· Best practices for ensuring accurate comparisons and reporting
· Practical examples and hands-on exercises for advanced comparisons
This module focuses on implementing role-level security in Power BI.
Participants will learn about:
· Techniques for managing user access and permissions
· Best practices for ensuring secure data models
· Practical examples and hands-on exercises for implementing role-level security
In this module, participants will learn the process of normalizing a flat file. Key topics include:
· Introduction to the concept of normalization
· Step-by-step process for creating dimension tables from a flat file
· Best practices for efficient data modeling, including:
o Removing unnecessary columns
o Creating primary keys
o Using merges to bring in relevant data
· Practical exercises to reinforce the concepts and techniques discussed
In the final session of the course, Ali will recap the entire course and have the opportunity to ask final questions. The module includes:
· A recap of key concepts covered in the course
· Addressing final questions and concerns from participants
· Providing feedback and discussing next steps for continued learning and application