Book Image

Data Cleaning with Power BI

By : Gus Frazer
Book Image

Data Cleaning with Power BI

By: Gus Frazer

Overview of this book

Microsoft Power BI offers a range of powerful data cleaning and preparation options through tools such as DAX, Power Query, and the M language. However, despite its user-friendly interface, mastering it can be challenging. Whether you're a seasoned analyst or a novice exploring the potential of Power BI, this comprehensive guide equips you with techniques to transform raw data into a reliable foundation for insightful analysis and visualization. This book serves as a comprehensive guide to data cleaning, starting with data quality, common data challenges, and best practices for handling data. You’ll learn how to import and clean data with Query Editor and transform data using the M query language. As you advance, you’ll explore Power BI’s data modeling capabilities for efficient cleaning and establishing relationships. Later chapters cover best practices for using Power Automate for data cleaning and task automation. Finally, you’ll discover how OpenAI and ChatGPT can make data cleaning in Power BI easier. By the end of the book, you will have a comprehensive understanding of data cleaning concepts, techniques, and how to use Power BI and its tools for effective data preparation.
Table of Contents (23 chapters)
Free Chapter
1
Part 1 – Introduction and Fundamentals
6
Part 2 – Data Import and Query Editor
11
Part 3 – Advanced Data Cleaning and Optimizations
16
Part 4 – Paginated Reports, Automations, and OpenAI

Where do data quality issues come from?

Data quality issues can arise from various sources throughout the data life cycle. Some common origins of data quality issues include the following:

  • Data entry errors: Mistakes made during manual data entry processes can introduce errors such as typos, misspellings, or incorrect values. Human error, lack of training, or inadequate validation mechanisms can contribute to data entry issues.
  • Incomplete or missing data: Data may be incomplete or have missing values due to various reasons, such as data collection processes that fail to capture all required information, data entry omissions, or system limitations that prevent data collection.
  • Data integration challenges: When combining data from multiple sources or systems, inconsistencies can arise due to differences in data formats, naming conventions, or data structures. Mismatched or incompatible data elements can lead to data quality issues.
  • Data transformation and manipulation...