Six Sigma LEAN Green Belt Training Course
The Six Sigma Lean Green Belt is a professional certification that combines the methodologies of Six Sigma and Lean. This hybrid approach focuses on improving process efficiency, reducing waste, and enhancing quality in organizational operations.
This instructor-led, live training (online or onsite) is aimed at intermediate-level professionals who wish to understand both Six Sigma and Lean principles in order to lead significant process improvement projects in their organizations.
By the end of this training, participants will be able to:
- Develop a comprehensive understanding of how Lean and Six Sigma methodologies can be integrated for process improvement.
- Gain in-depth knowledge and application skills in the Define, Measure, Analyze, Improve, and Control phases.
- Apply advanced statistical tools for data-driven decision-making and process analysis.
- Lead and manage Lean Six Sigma projects effectively.
Format of the Course
- Interactive lecture and discussion.
- Lots of exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.
Course Outline
Introduction
- Recap of Six Sigma fundamentals
- Overview of Lean principles and philosophy
- Synergy between Six Sigma and Lean
Advanced DMAIC and Lean Tools
- In-depth study of DMAIC process
- Lean tools for eliminating waste
- Value stream mapping and process flow analysis
- Kaizen and continuous improvement
Statistical Analysis and Data-Driven Decision Making
- Advanced statistical tools in Six Sigma
- Hypothesis testing and regression analysis
- Data collection and analysis techniques
- Introduction to Design of Experiments (DOE)
Process and Quality Improvement Strategies
- Process improvement using Lean Six Sigma
- Quality improvement techniques
- Risk management and mitigation
- Effective problem-solving strategies
Project Management and Leadership Skills
- Project management essentials for Green Belts
- Leadership and change management
- Team dynamics and management
- Communication skills for stakeholder engagement
Lean Six Sigma Project Execution
- Selecting and scoping Lean Six Sigma projects
- Project charter development
- Implementation strategies for Lean Six Sigma projects
- Monitoring and controlling project progress
Case Studies and Real-World Applications
- Analysis of successful Lean Six Sigma projects
- Common challenges and how to overcome them
- Best practices
Summary and Next Steps
Requirements
- Knowledge and experience in Six Sigma methodologies
- Familiarity with Lean concepts, tools, and techniques
Audience
- Managers
- Professionals with Yellow Belt certification
Need help picking the right course?
info@nobleprog.pt or +351 30 050 9666
Six Sigma LEAN Green Belt Training Course - Enquiry
Six Sigma LEAN Green Belt - Consultancy Enquiry
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Testimonials (5)
The variation with exercise and showing.
Ida Sjoberg - Swedish National Debt Office
Course - Econometrics: Eviews and Risk Simulator
Many examples and exercises related to the topic of the training.
Tomasz - Ministerstwo Zdrowia
Course - Advanced R Programming
the trainer had patience, and was eager to make sure we all understood the topics, the classes were fun to attend
Mamonyane Taoana - Road Safety Department
Course - Statistical Analysis using SPSS
Day 1 and Day 2 were really straight forward for me and really enjoyed that experience.
Mareca Sithole - Africa Health Research Institute
Course - R Fundamentals
The pace was just right and the relaxed atmosphere made candidates feel at ease to ask questions.
Rhian Hughes - Public Health Wales NHS Trust
Course - Introduction to Data Visualization with Tidyverse and R
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