Evolution of Efficient and Robust AutoML Systems

Evolution of Efficient and Robust AutoML Systems

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Multi-Fidelity Optimization: Methods

9 of 25

9 of 25

Multi-Fidelity Optimization: Methods

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Evolution of Efficient and Robust AutoML Systems

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  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

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