Loading...

Course Description

Data is the foundation for informed decision making and process improvement with Six Sigma. In this course, you will be introduced to the essential statistical methodologies for Six Sigma Black Belt certification. To build a strong analytical foundation, you will explore core statistical techniques, such as sampling methods, data collection, probability, and distribution analysis. You will then assess measurement systems using tools like gauge repeatability and reproducibility along with other measurement system analysis techniques. Finally, you will apply these skills toward hypothesis testing, correlation, regression, and multivariate analysis, empowering you with skills to analyze and interpret complex datasets. By the end of this course, you will be positioned to select appropriate data collection methods, evaluate their effectiveness, and use statistical tools to address real-world challenges.

This course requires you to complete various statistical calculations using Microsoft Excel or another tool, language, or software of your choice.

Faculty Author

Linda K. Nozick

Benefits to the Learner

  • Master core statistical methodologies that apply to Six Sigma
  • Apply techniques to analyze and interpret complex datasets

Target Audience

  • Engineers
  • Project managers
  • Business leaders
  • Operations and production managers
  • Product managers
  • Business analysts
  • Consultants
  • Professionals working toward a Six Sigma certification

Applies Towards the Following Certificates

Loading...
Enroll Now - Select a section to enroll in
Type
2 week
Dates
Apr 23, 2025 to May 06, 2025
Total Number of Hours
20.0
Course Fee(s)
Regular Price $999.00
Type
2 week
Dates
Jun 04, 2025 to Jun 17, 2025
Total Number of Hours
20.0
Course Fee(s)
Regular Price $999.00
Type
2 week
Dates
Aug 27, 2025 to Sep 09, 2025
Total Number of Hours
20.0
Course Fee(s)
Regular Price $999.00
Type
2 week
Dates
Nov 19, 2025 to Dec 02, 2025
Total Number of Hours
20.0
Course Fee(s)
Regular Price $999.00
Required fields are indicated by .