Data Analysis and Reporting in SAS Visual Analytics (Coursera)

Offered by SAS,
Data Analysis and Reporting in SAS Visual Analytics (Coursera)

In this course, you learn how to use SAS Visual Analytics on SAS Viya to modify data for analysis, perform data discovery and analysis, and create interactive reports.

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Course 2 of 5 in the SAS Visual Business Analytics Professional Certificate.

Course Syllabus

Week 1

  • Course Overview

In this module, you learn about the business scenario that you will follow for this course and where the files are located in SAS Viya for Learners.

  • Analyzing Data Using SAS Visual Analytics

In this module, you learn how to analyze data using SAS Visual Analytics.

Week 2
Designing Reports with SAS Visual Analytics
In this module, you learn how to design and create reports in SAS Visual Analytics.

Go to Class
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