Here is the full list of Lean Six Sigma training videos. To see better organization of all these videos, visit the Advanced Training Path.

An introduction to five project methodologies (Lean, DMAIC, DMADV, DFSS & PMI) and when to use each.

A review of how to identify and categorize financial benefits from a project.

Below are 36 videos (less than 10 hours of content) selected from the 121 videos in the Advanced Training Path. These videos go beyond the basics of Lean Six Sigma to help you apply the tools & concepts, but without getting as complex or detailed as the certification level in the Advanced Training Path. |

1. StatStuff Orientation (What is StatStuff?) This video welcomes you to StatStuff by explaining some general concepts about how the videos are designed and how the site works. |

2. Introduction to Lean and Six Sigma An introduction to the fundamental concepts of the Lean and Six Sigma methodologies using the IPO model. |

3. Lean and Six Sigma Project Methodologies An introduction to five project methodologies (Lean, DMAIC, DMADV, DFSS & PMI) and when to use each. |

4. Corporate CTQ Drilldown |

5. Project Financial Benefits A review of how to identify and categorize financial benefits from a project. |

6. Prioritization Using a QFD Tool |

7. Project Pre-Assessment Using a Min/Max Analysis |

8. Key Roles in a Lean or Six Sigma Project |

9. Developing a Project Strategy Using IPO-FAT Tool |

10. Introduction to Lean An introduction to Lean including a brief history, the philosophy of Lean, and a summary of some common Lean tools and concepts. |

11. Problem Resolution Using DMAIC A review of how the DMAIC methodology follows the typical steps we follow when trying to resolve a problem. |

12. The DMAIC Roadmap (Levels 1 & 2) A high-level roadmap through the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

13. Adapting Lean to Six Sigma DMAIC Flow A description of how the Lean tools and concepts can be adapted to the Six Sigma DMAIC methodology. |

14. Define Phase Roadmap (Level 3) A detailed roadmap through the Define phase of the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

15. Measure Phase Roadmap (Level 3) A detailed roadmap through the Measure phase of the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

16. Analyze Phase Roadmap (Level 3) A detailed roadmap through the Analyze phase of the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

17. Improve Phase Roadmap (Level 3) A detailed roadmap through the Improve phase of the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

18. Control Phase Roadmap (Level 3) A detailed roadmap through the Control phase of the DMAIC methodology that navigates the user through the various tools and concepts for leading a Six Sigma project. |

19. Risk Analysis: The Reason We Use Statistics A review of the importance of risk in our decision-making and how statistics can be used to measure that risk. |

20. Analysis of Behavior & Cognition (ABC) Model A review of the ABC model that explores how we think so we can understand the risks and evidence behind our decisions and how to influence others. |

21. Transfer Function A review of the transfer function and the critical part it plays as a fundamental concept in the DMAIC methodology. |

22. Hypothesis Testing: Overview An introductory overview to an extended series about hypothesis testing. This lesson includes the general 4 step process used for hypothesis testing. |

23. Overview of Statistical Terms and Concepts A high-level review of the fundamental terms and concepts associated with statistics, such as population vs. sample data, distributions, etc. |

24. Building a Problem Statement A review of what a problem statement and background statement are and the characteristics of an ideal problem statement. |

25. Defining the Project Y A review of why we need to define a project Y and some methods for ensuring we’re defining the right project Y. |

26. Identify Root Causes: C&E Diagram An extension of the topic on identifying root causes using a cause & effect (C&E) diagram that will lead toward building a data collection plan (DCP). |

27. Identify Root Causes: 5 Whys An extension of the topic on identifying root causes using a 5 Whys approach that will lead toward building a data collection plan (DCP). |

28. Identify Root Causes: C&E Matrix An extension of the topic on identifying root causes by showing how the C&E Matrix is used after a C&E diagram and 5 Whys for building a DCP. |

29. MSA: Overview The first of an extended series on conducting a measurement system analysis (MSA) to help test the reliability of collected data. |

30. Calculating a Sample Size A review of how to calculate a sample size using a Sample Size Calculator. |

31. Variation Over Time (Short/Long Term Data) A review of short and long term data and the impacts that variation has over time. |

32. Hypothesis Testing: Finding the Right Statistical Test An extension on a series about hypothesis testing, this lesson reviews a chart that can help you find the right statistical test for your analysis. |

33. Hypothesis Testing: Statistical Laws and Confidence Intervals An extension on a series about hypothesis testing, this lesson introduces some statistical concepts that are fundamental to most hypothesis testing. |

34. Hypothesis Testing: Proportions (Compare 1:1) An extension on a series about hypothesis testing, this lesson reviews the 2 Proportions Test as a measurement of proportions. |

35. Hypothesis Testing: Relationships (Overview) An extension on hypothesis testing, this lesson introduces the concepts of a correlation and regression as part of measuring statistical relationships. |

36. Hypothesis Testing: Relationships (Compare 1:1) An extension on hypothesis testing, this lesson reviews the Pearson Correlation and Fitted Line Plot as part of measuring statistical relationships. |