Quality Control and Improvement with MINITAB

Quality Control and Improvement with MINITAB

IIT Bombay July 2018 via YouTube Direct link

Course Introduction - Quality Control and Improvement with MINITAB.

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1 of 41

Course Introduction - Quality Control and Improvement with MINITAB.

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Quality Control and Improvement with MINITAB

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  1. 1 Course Introduction - Quality Control and Improvement with MINITAB.
  2. 2 Lecture 1: Introduction of Quality
  3. 3 Lecture 2: Voice of the Customer and Kano Model
  4. 4 Lecture 3: Quality Function Deployment
  5. 5 Lecture 4: Critical to Quality Characteristics
  6. 6 Lecture 5 : Data Visualization for Quality Control and Improvement
  7. 7 Lecture 6: Importance of Pareto Chart and Cause and Effect Diagram
  8. 8 Lecture 7: Design Failure Mode and Effect Analysis
  9. 9 Lecture 8: Introduction to Statistical Process Control
  10. 10 Lecture 9: X-bar and R Chart
  11. 11 Lecture 10: X-bar and S Chart
  12. 12 Lecture 11: Individual Moving Range Chart and Attribute Chart
  13. 13 Lecture 12: Attribute Control Charts and Process Capability
  14. 14 Lecture 13: Process Capability Index
  15. 15 Lecture 14: Process Performance and Sigma Level
  16. 16 Lecture 15: Process Capability for Attribute data
  17. 17 Lecture 16: Basic Statistics & Confidence Interval
  18. 18 Lecture 17: Hypothesis Testing
  19. 19 Lecture 18: One-sample t Test
  20. 20 Lecture 19: Two-sample t Test
  21. 21 Lecture 20: Paired t Test and ANOVA
  22. 22 Lecture 21: One-way ANOVA
  23. 23 Lecture 22: One-way ANOVA (Continued)
  24. 24 Lecture 23: ANCOVA and Nonparametric Test
  25. 25 Lecture 24: Linear Regression
  26. 26 Lecture 25: Linear Regression(Continued) and Multiple Regression
  27. 27 Lecture 26:Best Subset Regression, Multicollinearity
  28. 28 Lecture 27: Multicollinearity, Best Subset Regression, Multiple Regression...
  29. 29 Lecture 28: Design of Experiment, One-factor-at-a-time experiment
  30. 30 Lecture 29: Two-factor asymmetric Design, Symmetric Factorial Design, Two-way ANOVA
  31. 31 Lecture 30: Two-factor symmetric Design, Robust setting, Two-way ANOVA
  32. 32 Lecture 31: Measurement System Analysis
  33. 33 Lecture 32: Measurement System Analysis (Contd.)
  34. 34 Lecture 33: Measurement System Analysis (Contd.), Introduction to Factorial Experiments
  35. 35 Lecture 34: Factorial Experiments
  36. 36 Lecture 35: Factorial Experiments (Contd.)
  37. 37 Lecture 36: Factorial Experiments (Contd.)
  38. 38 Lecture 37: Blocking in Factorial Design.
  39. 39 Lecture 38: Multiple response Optimization & RSM
  40. 40 Lecture 39: Fractional Factorial Design
  41. 41 Lecture 40: Taguchi Method

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