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Artificial Intelligence - How Machines Learn

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Artificial Intelligence - How Machines Learn

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Artificial Intelligence - How Machines Learn

  1. 1. Artificial Intelligence How Machines Learn To Understand and Recreate The World Dr. Michael Platzer
  2. 2. Example: Progress in Image Classification - 1’300’000 images - 1’000 categories
  3. 3. The 3 Drivers of AI BIG DATA BIG COMPUTE DEEP LEARNING
  4. 4. systems that know based on rules systems that learn based on data PARADIGM SHIFT
  5. 5. How do these Machines Learn?
  6. 6. How do these Humans Learn?
  7. 7. 1) we learn by Observation
  8. 8. 2) we learn by Exploration
  9. 9. 3) we learn by Being Taught
  10. 10. Learning by Being Taught → Supervised Learning Learning by Observation → Unsupervised learning Learning by Exploration → Reinforcement Learning
  11. 11. Supervised Learning Learning by Being Taught dog dog cat cat cat catdog dog dog cat
  12. 12. Supervised Learning Learning by Being Taught
  13. 13. Alaskan Malamute Siberian Husky Supervised Learning Learning by Being Taught
  14. 14. Unsupervised Learning Learning by Observation
  15. 15. Unsupervised Learning Learning by Observation
  16. 16. Unsupervised Learning Learning by Observation
  17. 17. Unsupervised Learning Learning by Observation Sushi - Japan + Germany =
  18. 18. Unsupervised Learning Learning by Observation Sushi - Japan + Germany =
  19. 19. Unsupervised Learning Learning by Observation
  20. 20. Reinforcement Learning Learning by Exploration
  21. 21. Reinforcement Learning Learning by Exploration
  22. 22. So, How do these machines learn?
  23. 23. y = f(x, w) single layer layout two layer layout multi layer architectures
  24. 24. cat: 82% dog: 18% This is a Cat! This is a Cat! This is a Cat! This is a Cat! y = f(x, w)
  25. 25. Generative AI
  26. 26. Synthetic Shakespeare Synthetic Linux Source Code Generative AI for Synthetic Text → no a-priori assumptions → no feature engineering
  27. 27. highly realistic & representative synthetic data for testing, development, innovation & collaboration Generative AI for Synthetic Customer Data
  28. 28. Michael Platzer michael.platzer@mostly.ai LinkedIn.com/in/mplatzer

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