Was Sie vorher wissen sollten
bevor Sie beginnen

Beginnt 5 June 2026 09:51

Endet 5 June 2026

00 Tage
00 Stunden
00 Minuten
00 Sekunden
course image

AutoML의 현재와 미래 - 산업 현장에서의 실제 활용 사례

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.
SK AI SUMMIT 2024 via YouTube

SK AI SUMMIT 2024

6076 Kurse


21 minutes

Optionales Upgrade verfügbar

Not Specified

Lernen Sie in Ihrem eigenen Tempo

Free Video

Optionales Upgrade verfügbar

Übersicht

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.

Lehrplan

  • Course Introduction
  • Overview of AutoML
    Course Objectives and Outcomes
    Relevance of AutoML in Industry
  • Evolution of AutoML
  • Historical Perspective on AutoML
    Key Developments and Milestones
    Transition from Concept to Practical Tool
  • Core Concepts of AutoML
  • Automated Data Preprocessing
    Model Selection and Hyperparameter Tuning
    Feature Engineering and Selection
  • Current Industrial Applications of AutoML
  • Case Study Analysis: SK Group's AutoML Implementation
    AutoML for Predictive Analytics in Manufacturing
    Enhancing Customer Personalization and Insights
  • Tools and Frameworks for AutoML
  • Overview of Leading AutoML Tools (e.g., H2O.ai, Google AutoML, TPOT)
    Comparison and Suitability for Different Use Cases
  • Benefits and Limitations of AutoML
  • Efficiency and Scalability Improvements
    Challenges in AutoML, Including Bias and Interpretability
  • Future of AutoML
  • Emerging Trends and Innovations
    Potential Impact on Various Industries
    AutoML and Human-Machine Collaboration
  • Real-World Challenges and Considerations
  • Data Quality and Availability Issues
    Integration with Existing Systems
    Ethical and Regulatory Concerns
  • Hands-On Workshop
  • Implementing an AutoML Solution
    Interpreting AutoML Results
  • Conclusion and Key Takeaways
  • Summary of Learning
    Discussion on the Future Path of AutoML
  • Additional Resources and Further Reading
  • Recommended Articles and Papers
    Links to AutoML Tools and Platforms

Fachgebiete

Data Science