Evolution of Efficient and Robust AutoML Systems

Evolution of Efficient and Robust AutoML Systems

Open Data Science via YouTube Direct link

Regularization Cocktails: Evaluation on 40 datasets

25 of 25

25 of 25

Regularization Cocktails: Evaluation on 40 datasets

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Evolution of Efficient and Robust AutoML Systems

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Traditional Machine Learning and AutoML Traditional Ml practice
  3. 3 Focus of This Talk: Progression of Our Ready-To-Use AutoML Systems
  4. 4 Decades of Work On Predecessors of AutoML European projects
  5. 5 Auto-WEKA
  6. 6 Practical Improvement 1: Intermittent Results Retrieval
  7. 7 Practical Improvement 2: Reduced Search Space
  8. 8 Multi-Fidelity Optimization: General Overview
  9. 9 Multi-Fidelity Optimization: Methods
  10. 10 Multi-Fidelity Optimization: Results
  11. 11 Portfolio Construction: Why Without Meta Features?
  12. 12 Portfolio Construction: Problem Definition
  13. 13 Portfolio Construction: Method
  14. 14 Portfolio Construction: Theory
  15. 15 Portfolio Construction: Empirical Results
  16. 16 Automated policy selection problem Problem. There is no single
  17. 17 Automated policy selection method
  18. 18 Automated policy selection: results
  19. 19 Putting it all together: Auto-sklearn 2.0
  20. 20 Auto-PyTorch: Multi-Fidelity Optimization
  21. 21 Auto-PyTorch: Portfolio Construction w/o Meta-Features
  22. 22 Auto-PyTorch: Comparison Against Previous AutoML Frameworks
  23. 23 Auto-PyTorch: Evaluation on Image Data
  24. 24 Regularization Cocktails for SOTA Deep Learning on Tabular Data Combination of 13 different regularizers
  25. 25 Regularization Cocktails: Evaluation on 40 datasets

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.