What You Need to Know Before
You Start
Starts 7 June 2025 01:49
Ends 7 June 2025
00
days
00
hours
00
minutes
00
seconds
21 minutes
Optional upgrade avallable
Not Specified
Progress at your own speed
Free Video
Optional upgrade avallable
Overview
Discover how AutoML technology evolved from a buzzword to an essential industrial tool, exploring its current applications and future challenges at SK Group through real-world implementation cases.
Syllabus
- Course Introduction
- Evolution of AutoML
- Core Concepts of AutoML
- Current Industrial Applications of AutoML
- Tools and Frameworks for AutoML
- Benefits and Limitations of AutoML
- Future of AutoML
- Real-World Challenges and Considerations
- Hands-On Workshop
- Conclusion and Key Takeaways
- Additional Resources and Further Reading
Overview of AutoML
Course Objectives and Outcomes
Relevance of AutoML in Industry
Historical Perspective on AutoML
Key Developments and Milestones
Transition from Concept to Practical Tool
Automated Data Preprocessing
Model Selection and Hyperparameter Tuning
Feature Engineering and Selection
Case Study Analysis: SK Group's AutoML Implementation
AutoML for Predictive Analytics in Manufacturing
Enhancing Customer Personalization and Insights
Overview of Leading AutoML Tools (e.g., H2O.ai, Google AutoML, TPOT)
Comparison and Suitability for Different Use Cases
Efficiency and Scalability Improvements
Challenges in AutoML, Including Bias and Interpretability
Emerging Trends and Innovations
Potential Impact on Various Industries
AutoML and Human-Machine Collaboration
Data Quality and Availability Issues
Integration with Existing Systems
Ethical and Regulatory Concerns
Implementing an AutoML Solution
Interpreting AutoML Results
Summary of Learning
Discussion on the Future Path of AutoML
Recommended Articles and Papers
Links to AutoML Tools and Platforms
Subjects
Data Science