Analyzing Data with Microsoft Power BI (Dataquest)

Offered by Dataquest,
Analyzing Data with Microsoft Power BI (Dataquest)

Gain the skills that will help you analyze and visualize data using Microsoft Power BI. You’ll learn how to spot trends, share and present key insights to stakeholders, and help your organization make data-driven decisions. By the end, you'll be ready for the Microsoft Power BI Analyst certification (PL-300/DA-100).

In this path, developed in collaboration with Microsoft, you'll learn how to use Microsoft Power BI to analyze, clean, explore, and visualize data. By completing the path, you’ll earn a 50% discount on the exam! With this certification in hand, you’ll let existing or future employers know that you carry Microsoft’s stamp of approval when it comes to Power BI.

Best of all, you’ll learn by doing — you’ll write code and get feedback directly in the browser. You’ll apply your skills to several guided projects involving realistic business scenarios to build your portfolio and prepare for your next interview.

  • Get Started with Microsoft Data Analytics
  • Model Data in Power BI
  • Visualize data in Power BI
  • Data Analysis in Power BI
  • Manage Workspaces and Datasets in Power BI
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