Hoppa till huvudinnehållet
HemBusiness Intelligence

Kurs

Data Preparation in Power BI

GrundläggandeKunskapsnivå
Uppdaterad 2025-12
In this interactive Power BI course, you’ll learn how to use Power Query Editor to transform and shape your data to be ready for analysis.
Starta kursen gratis
Power BIData Preparation
3 tim
9 videor
26 Övningar
2,050 XP
87,466
Intyg om genomförande

Skapa ditt kostnadsfria konto

Fortsätt med GoogleVisa fler alternativ

eller


Genom att fortsätta godkänner du våra Användarvillkor, vår Integritetspolicy och att dina uppgifter lagras i USA.

Omtyckt av lärande på tusentals företag

Group

Utbildar du ett team?

Prova för företag

Kursbeskrivning

Learn How to Use Power Query Editor

Transform and shape your data in Power BI. In just 3 hours, you’ll cover essential data preparation steps, previewing data in power query, and transformations.

By the end of this course, you’ll feel confident using a range of Power Query Editor tools and techniques and know how to clean and prepare your data for the next stage in the data analysis workflow.

Manipulate Data in Power BI

Power Query is a powerful data manipulation framework available throughout a number of Microsoft tools, which allows you to clean different data types ready for analysis. You’ll learn how to deal with duplicates, missing values, and profiling to find anomalies. After each new topic is introduced, you'll have the opportunity to put your new knowledge into practice with hands-on exercises, such as splitting and merging text columns.

Master Data Transformation in Power Query

The last two chapters of this course are focused on helping you with transformations in Power BI, allowing you to transform text, apply logarithmic and square root transformations, and date transformations.

This course is part of the Data Analyst and Power BI tracks, offering you plenty of ways to improve your Power BI skills or even build towards a career in data analysis.

Förkunskapskrav

Introduction to Power BI
1

Profiling your Data and Introduction to Power Query

Data preparation is key to becoming a successful data analyst. You’ll learn how to do essential data preparation steps such as filtering and renaming columns and how to use data preview in Power BI to identify common errors that appear in datasets.
Starta kapitel
2

Data Preview features in Power Query

In this chapter, you will learn about the key data preview features available through Power Query and how they can help you summarize the characteristics of your dataset. You’ll also understand how investigating your dataset in Power Query can assist in determining the data transformation steps you need to take.
Starta kapitel
3

Data Manipulation

The preparation and transformation of text data can also be carried out through Power Query. Through interactive exercises, you’ll learn about some of the most common text transformations, such as how to split and merge text columns, trim unwanted characters from any text data, and prefixes to any text data in your dataset.
Starta kapitel
4

Numerical transformations in Power Query

This chapter covers the most common numerical transformations you’ll use in Power Query. You’ll learn how to perform some more advanced Power Query transformations. This includes applying logarithmic and square root transformations on numerical columns, rounding numerical data, and extracting month and week names from date columns.
Starta kapitel
Data Preparation in Power BI
Kurs
slutförd

Tjäna ett prestationsbevis

Lägg till det här beviset i din LinkedIn-profil, ditt CV eller din meritförteckning
Dela det i sociala medier och i din medarbetarutvärdering
Registrera dig nu

Gå med 19 miljoner lärande och börja Data Preparation in Power BI idag!

Skapa ditt kostnadsfria konto

Fortsätt med GoogleVisa fler alternativ

eller


Genom att fortsätta godkänner du våra Användarvillkor, vår Integritetspolicy och att dina uppgifter lagras i USA.

Utveckla dina datakunskaper med DataCamp för mobilen

Gör framsteg när du är på språng med våra mobila kurser och dagliga 5-minuters kodningsutmaningar.