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Maven Analytics and Chris Dutton

This course introduces Microsoft Excel's powerful data prep, modeling, analytics and business intelligence tools: Power Query, Power Pivot, and Data Analysis Expressions (DAX).

If you're looking to become a power Excel user and absolutely supercharge your Excel analytics game, this course is the A-Z guide that you're looking for. I'll introduce the "Power Excel" landscape, and explore what these Excel tools are all about and why they are changing the world of self-service analytics and business intelligence.

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This course introduces Microsoft Excel's powerful data prep, modeling, analytics and business intelligence tools: Power Query, Power Pivot, and Data Analysis Expressions (DAX).

If you're looking to become a power Excel user and absolutely supercharge your Excel analytics game, this course is the A-Z guide that you're looking for. I'll introduce the "Power Excel" landscape, and explore what these Excel tools are all about and why they are changing the world of self-service analytics and business intelligence.

Together, we'll walk through the Excel BI workflow, and build an entire Excel data model from scratch:

  • First we'll get hands-on with Power Query; a tool to extract, transform, and load data into Excel from flat files, folders, databases, API services and more. We'll practice shaping, blending, cleaning and exploring our project files in Excel's query editor, and create completely automated loading procedures inside of Excel with only a few clicks.

  • From there we'll dive into Data Modeling 101, and cover the fundamentals of database design and normalization (including table relationships, cardinality, hierarchies and more). We'll take a tour through the Excel data model interface, introduce some best practices and pro tips, and then create our own relational database to analyze throughout the course.

  • Finally, we'll use Power Pivot and DAX to explore and analyze our Excel data model. Unlike traditional Excel Pivot Tables, Power Pivot allows you to analyze hundreds of millions of rows across multiple data tables (inside of Excel. ), and create supercharged calculated fields using a formula language called Data Analysis Expressions (or "DAX" for short). We'll cover basic DAX syntax, then introduce some of the most powerful and commonly-used functions – CALCULATE, FILTER, SUMX and more.

If you're ready to take your MS Excel game to new heights and join the leading edge of analytics & business intelligence, this course is for you. It's time to stop fighting with tedious, manual tasks and struggling with "old-school" Excel; join me on this journey and emerge a certified excel analytics NINJA.

See you in there.

-Chris (Founder, Maven Analytics)

IMPORTANT: Power Query and Power Pivot are currently NOT available in Excel for Mac. You'll need a PC version of Excel that is compatible with Power Pivot (Excel 2010 with plug-in, Excel 2013, Excel 2016, or Excel 2019 Standalone, Office 365 Pro Plus, Enterprise E3/E5, Office Professional 2016, etc.)

Looking for our full course library? Search "Maven Analytics" to browse our full collection of Excel, Power BI, SQL, Tableau, Python, Alteryx & Machine Learning courses.

Hear why this is one of the TOP-RATED Excel courses on Udemy, and the #1 Excel Power Query + Excel Power Pivot course:

"I am a self-taught Excel Power Query user and it took me a while to understand what each tool does and how it interacts with others. Thanks to your introduction I finally nailed it in a very clear, unambiguous way. You helped me build a method that I can confidently apply to my data in Excel. Thank you so much. "

-Francesca C.

"I'm less of an expert at breathing than Chris is at Excel. This course is thorough and well-planned, and he presents in a manner that simplifies the complicated. Well worth your time if you want to master Excel power query and power pivot. "

-Tim B.

"I'm geeking out, this is so cool. Where has this been all my life???"

-Karen P.

*This course includes Excel project files, quizzes & homework exercises, 1-on-1 instructor support

Enroll now

What's inside

Learning objectives

  • Get up and running with ms excel's powerful data modeling & business intelligence tools
  • Learn how to use power query, power pivot & dax to revolutionize your data analysis workflow in excel
  • Master unique tips, tools and case studies that you won't find in any other course
  • Explore fun, interactive, and highly effective lessons from a best-selling microsoft excel instructor
  • Get lifetime access to project files, quizzes and homework exercises, and 1-on-1 expert support
  • Build pro-quality business intelligence solutions to blend and analyze data from multiple sources

Syllabus

Getting Started
Course Structure & Outline

Before getting started with the course, it's important to make sure that you are using a version of Excel that is compatible with Power Pivot. Check the Microsoft Office Support website to make sure that you are using a proper version.

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In this lecture I'll introduce our course project, outline the downloadable files that we'll be working with, and demonstrate exactly how to access them from the course dashboard.

To wrap up the intro section, I'll explain exactly what to expect (and what NOT to expect) from the course.

This lecture is all about outlining the "Power Excel" landscape. I'll show you exactly how these new data modeling and business intelligence tools will fit into your workflow, from Power Query to Power Pivot and DAX.

In this lecture I'll explain why Power Query and Power Pivot are so awesome that they've been called the "best thing to happen to Excel in 20 years" from industry experts. We'll talk about the ability to load hundreds of millions of rows, build data models to blend data across sources, automate your data loading and ETL process, and create powerful calculated fields using data analysis expressions (DAX).

This lecture will help you understand when and why to use Excel Power Query and Power Pivot (i.e. when you are dealing with very large data sets, need to blend data across multiple tables, etc.)

In this lecture we'll introduce Power Query, which we'll connect and transform data from raw sources, edit it using the Query Editor, and load it straight into Excel.

The Query Editor is your command center when it comes to loading and transforming raw data in Excel using Power Query. In this lecture we'll take a tour of the tools that we'll use to transform and shape our data.

In this lecture we'll explore Excel's data loading options from Power Query, and talk about the difference between loading tables and only generating connections.

This lecture will cover some of the most common data transformation tools in Excel's Query Editor, such as adding or removing columns or rows, changing data types, etc.

In this lecture we'll cover Power Query tools designed specifically to work with text in Excel, such as merging or splitting columns, extracting characters, calculating string lengths, etc.

In this lecture we'll review Power Query tools designed specifically to work with numbers or data fields in Excel, such as returning aggregated values like sums or averages, creating new calculated columns, rounding numbers, etc.

In this lecture we'll cover Power Query tools specifically designed to work with date and time fields in Excel, like calculating months, weeks, weekdays, quarters, etc.

In this lecture I'll quickly demonstrate how you can use custom M queries in the Excel query editor to build a rolling calendar that will always update with dates through the current day.

This lecture will show you how to create new unique identifiers using index columns in the Excel Query Editor, as well as calculated fields based on custom user-defined conditions.

In this lecture we'll practice using "group by" tools in the Excel Query Editor to aggregate or roll up raw data to new levels of granularity.

This lecture demystifies the concept of "pivoting" or "unpivoting" a data table. I'll show you exactly what these tools do, and demonstrate with a sample table in the Excel Query Editor.

In this lecture, I'll show you how you can access, edit, and delete existing Excel workbook queries.

This lecture demonstrates how to merge Excel Power Query queries together to pull fields from one table into another based on common fields or "keys".

In this lecture, I'll show you how to append or "stack" data from multiple tables that share the same column structure and data types, using Excel's Power Query tools.

In this lecture I'll demonstrate how to connect to an entire folder and automatically append all of the files within in (including new files as they are added), and load to Excel.

In this lecture we'll review my personal favorite best practices for using Excel Power Query.

In this lecture I'll introduce Excel's "Data Model", which is where large data files can be compressed and modeled together using table relationships.

This lecture outlines the two views within the Excel data model: Data view and Diagram view. Data view allows you to access the data within tables (organized as tabs), and diagram view allows you to create and view your table relationships and overall data model.

This lecture covers one of the most important topics in the course: database normalization. Normalization is all about structuring tables to create efficient and effective data models in Excel.

In this lecture we'll compare and contrast the two primary types of tables in an Excel data model: data (or "fact") tables and lookup (or "dimension") tables.

In this lecture I'll explain the difference between manually merging fields from multiple tables and creating relationships to connect them using Excel's data model (which is much more efficient!)

In this lecture we'll use the Excel data model diagram view to create our first table relationships.

In this lecture I'll demonstrate how to modify or edit existing table relationships in the Excel data model diagram view, using several different methods.

In this lecture I'll demonstrate how to create multiple relationships against the same key, and how to determine which relationship is active vs. inactive in an Excel data model.

This lecture explores the concept of cardinality, and demonstrates the differences between 1-to-1, 1-to-many, and many-to-many relationships. I'll also show you exactly why 1-to-many relationships are critical when it comes to building normalized data models in Excel.

In this lecture I'll demonstrate exactly how to build an Excel model containing multiple data tables. Rather than connect those tables together, we'll connect them indirectly via relationships to shared lookup tables.

This lecture demonstrates the importance of filter direction within Excel's data model, and explains the concept of filter context flowing "downstream" to related tables.

In this lecture, we'll talk about when, why, and how to hide fields from Excel client tools such as PivotTables, using a number of different methods.

In this lecture we'll practice creating hierarchies within Excel's data model, which are new fields containing groups or sets of related fields (such as country, state, and city).

In this lecture I'll outline my personal favorite Excel data model best practices.

In this lecture I'll introduce Excel Power Pivot and outline some of the key benefits.

In this lecture I'll explore the similarities and differences between regular Excel PivotTables and "Power" PivotTables, which connect to entire data models.

In this lecture I'll introduce the formula language that enables you to create powerful calculated fields from a data model in Excel: Data Analysis Expressions (aka "DAX").

In this lecture I'll introduce the first method of using DAX to create new calculated fields: calculated columns. I'll showcase some "good" and "bad" examples, and demonstrate how they can be created within the Excel data model window.

In this lecture I'll introduce the second method of using DAX to create new calculated fields: measures. I'll explain how they can be used and why they are so powerful, especially when compared to traditional Excel PivotTable calculated fields. 

In this lecture I'll briefly introduce implicit measures, which are measures that are automatically created by Excel when you drag a field in the PivotTable field list.

In this lecture I'll demonstrate how to use the data model's "AutoSum" feature to quickly create basic measures using common functions in Excel (SUM, COUNT, AVERAGE, etc).

In this lecture I'll introduce the most powerful means of creating measures: building calculated explicit measures using the Power Pivot dialog box in Excel. This is where you can use complex combinations of DAX functions to create incredibly powerful and flexible measures.

This lecture introduces the concept of filter context, which is the set of filters passed by the Excel PivotTable layout. Understanding filter context is critical to understanding how measures are calculated.

In this lecture, I'll guide you through the exact steps that Excel takes behind the scenes to calculate each cell containing a measure. This demonstration will be critical to troubleshooting calculation errors and understanding precisely how measures work.

In this lecture I'll recap the similarities and differences between calculated columns and DAX measures, and explain when to use one approach vs the other in Excel.

In this lecture I'll outline some of my personal favorite Excel Power Pivot and DAX best practices.

In this lecture I'll walk through DAX formula syntax and outline the most common types of operators.

In this lecture I'll outline some of the most common DAX categories (Math & Stats, Logical, Text, Filter, and Date & Time), and compare them against traditional Excel formulas.

In this lecture I'll introduce and demonstrate several common math and statistics functions in DAX, such as SUM, DIVIDE, MAX, MIN, and AVERAGE.

In this lecture I'll demonstrate how to use a variety of COUNT functions in DAX, including COUNT, COUNTA, COUNTROWS, and DISTINCTCOUNT.

In this lecture I'll introduce and demonstrate several common logical functions in DAX, including IF, IFERROR, AND, OR, etc.

In this lecture I'll introduce the SWITCH function in DAX, and demonstrate how it can be combined with TRUE to eliminate the need for nested IF statements to test multiple criteria in Excel.

In this lecture I'll introduce and demonstrate a number of text-specific functions in DAX, including LEN, CONCATENATE, UPPER/LOWER/PROPER, LEFT/MID/RIGHT, SEARCH, and SUBSTITUTE.

In this lecture I'll introduce arguably the most powerful DAX function of all: CALCULATE. I'll explain exactly how this function can be used in Excel, and demonstrate several examples applied to our course project files.

In this lecture I'll demonstrate how to add a FILTER function within CALCULATE to create new filter context in DAX. 

In this lecture we'll revisit the use of FILTER within a CALCULATE function, and illustrate exactly how the FILTER function impacts the way measures are calculated behind the scenes. 

In this lecture I'll explain how to use the ALL function to remove filter context within a PivotTable, and demonstrate how it is commonly used for "% of whole" calculations defined by DAX measures.

In this lecture I'll show you how to use the RELATED function to create new calculated columns that retrieve values from related tables in the Excel data model (just like a VLOOKUP!).

In this lecture I'll introduce you to iterator, or "X" functions, which operate by repeating a calculation across all rows in a table and aggregating the results. In this demo we'll look at the SUMX function specifically, and compare it against the traditional Excel SUMPRODUCT function.

In this lecture we'll take a look at the RANKX iterator function, which allows you to calculate an item's rank based on a given set of conditions or criteria.

In this lecture we'll review the most common date and time DAX functions, including DAY/MONTH/YEAR, HOUR/MINUTE/SECOND, TODAY/NOW, WEEKDAY/WEEKNUM, EOMONTH and DATEDIFF.

In this lecture we'll introduce DAX's powerful time intelligence formulas, and demonstrate how to use them to measure performance-to-date, make period-over-period comparisons, and calculate running totals and moving averages.

In this lecture I'll quickly review some of the key considerations when it comes to Excel data model performance and speed, including the use of slicers, iterator functions, and redundant columns.

In this lecture I'll outline some of my personal favorite DAX best practices.

In this lecture I'll quickly outline a few common options when it comes to visualizing data from your Excel data model, including PivotTables and PivotCharts, Power View, CUBE functions, and Microsoft Power BI.

In this lecture I'll provide a quick sneak peek into Microsoft Power BI, a standalone application built on the same exact tools covered in this course (Power Query, Power Pivot and DAX).

Traffic lights

Read about what's good
what should give you pause
and possible dealbreakers
Explores Power Query, Power Pivot, and DAX, which are essential tools for advanced data modeling and business intelligence in Excel
Teaches how to build an entire Excel data model from scratch, covering database design and normalization, which are crucial for effective data analysis
Demonstrates how to use Power Query to extract, transform, and load data from various sources, automating loading procedures within Excel
Covers DAX syntax and commonly-used functions like CALCULATE, FILTER, and SUMX, enabling the creation of supercharged calculated fields in Power Pivot
Power Query and Power Pivot are not available in Excel for Mac, which may limit accessibility for some users
Briefly outlines options for visualizing data from an Excel data model, including PivotTables, PivotCharts, Power View, CUBE functions, and Microsoft Power BI

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Reviews summary

Excel bi with power query and dax

According to students, this course offers a transformative guide to Excel BI using Power Query, Power Pivot, and DAX. The excellent instructor is highly praised for clear explanations simplifying complex topics. Many found it highly practical and immediately applicable for business, helping automate processes and save time. Project files aid learning. While DAX can be challenging, requiring practice, the course builds a solid foundation. Note a compatible PC Excel version is needed. Reviews are overwhelmingly positive.
Course needs PC version of Excel.
"Also, the PC-only requirement is a limitation."
"Make sure you have a compatible Excel version before starting."
Covers core BI tools effectively.
"Power Query and DAX were explained clearly with practical examples."
"Absolutely brilliant! ... explanations of complex topics like filter context and CALCULATE were the clearest I've encountered."
"I finally understand data modeling in Excel and how Power Pivot works with DAX measures."
"Power Query section was very clear and immediately applicable."
"The step-by-step approach and clear explanations were perfect."
Clear explanations simplifying complex topics.
"Chris is an excellent instructor, easy to follow..."
"The instructor's explanations of complex topics like filter context and CALCULATE were the clearest I've encountered."
"Chris breaks down intimidating topics into manageable chunks."
"Excellent teaching! Chris is a master at explaining complex topics simply."
"Instructor is top-notch."
Immediately applicable to work tasks.
"This course fundamentally changed how I use Excel for data analysis."
"This course saves me hours of manual work every week."
"Game changer! This course has revolutionized my data cleaning and reporting process."
"The course is definitely geared towards practical business use."
"Learners found it highly practical and immediately applicable for business tasks..."
Concepts require rewatching and practice.
"Some of the DAX concepts, especially the 'X' functions and complex filters, required rewatching and practice..."
"The pace felt a bit fast in places, especially the DAX section..."
"Power Pivot and DAX are more complex, as expected. ... it takes significant practice."
"DAX is challenging, but the course provides a solid introduction."

Activities

Be better prepared before your course. Deepen your understanding during and after it. Supplement your coursework and achieve mastery of the topics covered in Microsoft Excel: Business Intelligence w/ Power Query & DAX with these activities:
Review Excel Fundamentals
Strengthen your foundational Excel skills to better understand Power Query and DAX concepts. A solid understanding of basic Excel will make learning the advanced features easier.
Browse courses on Excel Formulas
Show steps
  • Review basic Excel functions and formulas.
  • Practice creating pivot tables and charts.
  • Familiarize yourself with data validation techniques.
Read 'M is for Data Monkey'
Deepen your understanding of Power Query by studying the M language. This book provides a comprehensive guide to the M language, which is essential for advanced Power Query users.
Show steps
  • Obtain a copy of 'M is for Data Monkey'.
  • Read the book and practice the examples.
  • Experiment with writing your own M code.
DAX Function Exercises
Reinforce your DAX skills through targeted practice exercises. Consistent practice will improve your ability to write complex DAX formulas and solve real-world business problems.
Show steps
  • Find online resources with DAX practice problems.
  • Work through the exercises, focusing on CALCULATE, FILTER, and SUMX.
  • Review your solutions and identify areas for improvement.
Four other activities
Expand to see all activities and additional details
Show all seven activities
Write a Blog Post on Power Query
Solidify your understanding of Power Query by explaining its features and benefits in a blog post. Teaching others is a great way to reinforce your own knowledge.
Show steps
  • Choose a specific Power Query topic to focus on.
  • Research the topic and gather relevant information.
  • Write a clear and concise blog post explaining the topic.
  • Include examples and screenshots to illustrate your points.
Build a Sales Dashboard
Apply your Power Query and DAX skills to create a comprehensive sales dashboard. This project will solidify your understanding of the entire Excel BI workflow.
Show steps
  • Gather sales data from multiple sources.
  • Use Power Query to clean and transform the data.
  • Create a data model with appropriate relationships.
  • Write DAX measures to calculate key performance indicators (KPIs).
  • Design and build an interactive dashboard using Power Pivot.
Read 'The Definitive Guide to DAX'
Master DAX by studying this comprehensive guide. This book covers all aspects of DAX, from basic syntax to advanced techniques.
Show steps
  • Obtain a copy of 'The Definitive Guide to DAX'.
  • Read the book and work through the examples.
  • Focus on the chapters covering advanced DAX concepts.
Contribute to a Power BI Community Project
Enhance your skills by contributing to an open-source Power BI project. This will give you practical experience working with real-world data and collaborating with other professionals.
Show steps
  • Find an open-source Power BI project on platforms like GitHub.
  • Review the project's documentation and identify areas where you can contribute.
  • Submit your contributions and participate in code reviews.

Career center

Learners who complete Microsoft Excel: Business Intelligence w/ Power Query & DAX will develop knowledge and skills that may be useful to these careers:
Data Analyst
A data analyst is responsible for collecting, cleaning, and interpreting data to find actionable insights. This course is particularly useful for aspiring data analysts, as it introduces core Excel tools like Power Query for data preparation, Power Pivot for data modeling, and DAX for advanced analytics. Data analysts use these tools to transform raw data into a format suitable for analysis, build relational databases to blend data across sources, and create powerful calculated fields for analysis. The course's focus on building data models from scratch and creating complex calculations with DAX makes it especially beneficial for data analysts who work with large complex datasets.
Business Analyst
A business analyst uses data to understand business performance and identify areas for improvement. This course helps a business analyst to effectively use Microsoft Excel's Power Query to extract, transform, and load data from multiple sources, and to build data models with Power Pivot. Furthermore, the data analysis expressions (DAX) knowledge gained can help the analyst create powerful calculated fields and perform insightful analyses. This course is highly relevant for a business analyst seeking to enhance their analytical capabilities and improve data-driven decision making, particularly when working with large or complex datasets. The course's focus on automation also reduces time spent on manual tasks.
Financial Analyst
A financial analyst interprets financial data, builds financial models, and reports on financial performance. This course helps a financial analyst utilize Microsoft Excel for advanced analysis by learning to use Power Query to import data from diverse sources, Power Pivot to build relational data models, and DAX to create robust financial calculations and metrics. By taking this course, a financial analyst can automate data loading procedures, handle large datasets, and perform more sophisticated analysis. The ability to create calculated fields with DAX expands the analytical capacity of a financial analyst beyond traditional Excel limitations.
Sales Operations Analyst
A sales operations analyst improves sales effectiveness through data analysis, process optimization, and sales tool management. This course helps a sales operations analyst to use Excel for advanced analysis, leveraging Power Query to import data, Power Pivot to build relational databases, and DAX to create powerful sales metrics and performance analysis. This course makes it easier to automate data loading and build sophisticated sales reports. A sales operations analyst interested in advanced data analysis should consider taking this course.
Marketing Analyst
A marketing analyst measures the effectiveness of marketing campaigns, analyzes customer behavior, and provides insights to optimize marketing strategies. This course is helpful for a market analyst, by teaching them how to use Microsoft Excel to analyze marketing data, using Power Query to import data from multiple sources, Power Pivot for data modeling, and DAX for creating custom marketing metrics. The ability to automate data loading and to perform complex analysis can help a marketing analyst to work more efficiently and make informed decisions. This course provides tools to improve Excel's capacity for analysis.
Operations Analyst
An operations analyst focuses on improving business processes and efficiency through data analysis. This course is very beneficial for an operations analyst, who can greatly benefit from the Excel skills taught in this course. By learning about Power Query, the analyst can import and transform data from multiple sources easily. Power Pivot allows for creating relational databases in Excel, and Data Analysis Expressions enable the creation of advanced calculations. This can help an operations analyst identify bottlenecks and areas for improvement within business operations using Excel.
Supply Chain Analyst
A supply chain analyst analyzes data to optimize supply chain operations, manage inventory, and improve logistics. This course helps a supply chain analyst use Microsoft Excel to analyze data. With Power Query, a supply chain analyst can transform data from multiple sources. Power Pivot enables the analyst to build relational models, and DAX can be used to create custom metrics. This course provides valuable skills for streamlining data workflows and enhancing decision making, particularly for those who frequently use Excel in their roles.
Data Scientist
A data scientist uses various techniques to extract knowledge from data, build predictive models, and generate insights to guide business strategy. While data scientists often use programming languages like Python, this course allows a data scientist to use Microsoft Excel for data preparation, exploration, and modeling with the help of Power Query, Power Pivot, and DAX. This course may improve a data scientist's understanding of data transformation, building relational models, and creating custom calculations. The course is a helpful introduction to working with large datasets in a business environment, specifically using Excel.
Human Resources Analyst
A human resources analyst analyzes employee data, identifies trends, and provides insights to support HR functions. This course helps a human resources analyst to better use Microsoft Excel in day-to-day tasks by using Power Query, Power Pivot, and DAX to analyze HR data and develop workforce metrics. This can lead to more efficient data workflows and informed decision making. This course may be a good option for those who are interested in using Excel to analyze and model HR data.
Market Research Analyst
A market research analyst studies consumer behavior and market trends to provide strategic recommendations. This course may help a market research analyst to analyze market data by leveraging Power Query to import and prepare data from various sources, Power Pivot to build data models, and DAX to perform advanced calculations. The ability to automate data processes and to analyze large datasets with Excel can help a market research analyst work more efficiently. This course is helpful for those looking to expand their Microsoft Excel analysis skills.
Management Consultant
A management consultant works with organizations to improve their performance by solving business problems and providing strategic advice. This course may be useful for a management consultant, by making it easier to analyze data using Microsoft Excel's Power Query, Power Pivot, and DAX. The knowledge gained from this course can help a consultant to process large datasets, identify key insights, and build data-driven recommendations. While management consulting involves more than just data analysis, this course provides essential skills for leveraging data in decision-making processes, particularly when working with client data in Excel.
Project Manager
A project manager is responsible for planning, executing, and overseeing projects. This course may benefit a project manager by enhancing their ability to analyze project data, manage resources, and track key performance indicators in Microsoft Excel using Power Query and Power Pivot. The data analysis skills developed in this course can enable project managers to more effectively manage project budgets and timelines. This course offers the ability to use calculated fields with DAX and streamline data workflows.
Actuary
An actuary analyzes risk and uncertainty to assess the financial implications of uncertain future events. While actuaries typically use specialized software, this course may be useful to those who use Microsoft Excel in their work by teaching them how to use Power Query, Power Pivot, and DAX. This course provides tools to help actuaries to manipulate, model, and analyze large sets of data. This course may be helpful for an actuary looking to enhance their Excel skills.
Data Visualization Specialist
A data visualization specialist creates visual representations of data, such as charts, graphs, and dashboards. While this course does not directly cover data visualization techniques, it helps build a foundation for data manipulation and analysis using Microsoft Excel's Power Query, Power Pivot, and DAX. Data visualization specialists need to be able to extract, transform, and model data, skills that are taught in this course. This course may be an initial step to entering the data visualization field, by providing the means to prepare data for visualization work.
Database Administrator
A database administrator is responsible for the maintenance, security, and performance of databases. While this course is about using Microsoft Excel for data analysis, and not database administration, it introduces concepts like data modeling, normalization, and table relationships. Although this course does not cover the responsibilities of a database administrator directly, it may provide some understanding of database structures and help build a foundation for working with data in Excel.

Featured in The Course Notes

This course is mentioned in our blog, The Course Notes. Read one article that features Microsoft Excel: Business Intelligence w/ Power Query & DAX:

Reading list

We've selected two books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in Microsoft Excel: Business Intelligence w/ Power Query & DAX.
Is widely regarded as the definitive guide to DAX. It covers all aspects of the language, from basic syntax to advanced techniques. It is an excellent resource for anyone who wants to become a DAX expert. This book is commonly used by industry professionals and is often recommended as a textbook at academic institutions.
Comprehensive guide to the M language used in Power Query. It provides a deep dive into the language's syntax, functions, and capabilities. Reading this book will significantly enhance your ability to write custom Power Query scripts and perform advanced data transformations. It is highly recommended for those who want to master Power Query.

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