Machine Learning

Machine Learning

NPTEL-NOC IITM via YouTube Direct link

Introduction to the Machine Learning Course

1 of 37

1 of 37

Introduction to the Machine Learning Course

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Machine Learning

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

  1. 1 Introduction to the Machine Learning Course
  2. 2 Foundation of Artificial Intelligence and Machine Learning
  3. 3 Intelligent Autonomous Systems and Artificial Intelligence
  4. 4 Characterization of Learning Problems
  5. 5 Objects, Categories and Features
  6. 6 Feature related issues
  7. 7 Forms of Representation
  8. 8 Decision Trees
  9. 9 Bayes (ian) Belief Networks
  10. 10 Artificial Neural Networks
  11. 11 Genetic algorithm
  12. 12 Inductive Learning based on Symbolic Representations and Weak Theories
  13. 13 Generalization as Search - Part 01
  14. 14 Generalization as Search - Part 02
  15. 15 Decision Tree Learning Algorithms - Part 01
  16. 16 Decision Tree Learning Algorithms - Part 02
  17. 17 Instance Based Learning - Part 01
  18. 18 Instance Based Learning - Part 02
  19. 19 Machine Learning enabled by Prior Theories
  20. 20 Explanation Based Learning
  21. 21 Inductive Logic Programming
  22. 22 Reinforcement Learning - Part 01 Introduction
  23. 23 Reinforcement Learning - Part 02 Learning Algorithms
  24. 24 Reinforcement Learning - Part 03 Q - Learning
  25. 25 Fundamentals of Artificial Neural Networks - Part1
  26. 26 Fundamentals of Artificial Neural Networks - Part2
  27. 27 Perceptrons
  28. 28 Model of Neuron in an ANN
  29. 29 Learning in a Feed Forward Multiple Layer ANN - Backpropagation
  30. 30 Recurrent Neural Networks
  31. 31 Hebbian Learning and Associative Memory
  32. 32 Hopfield Networks and Boltzman Machines - Part 1
  33. 33 Hopfield Networks and Boltzman Machines - Part 2
  34. 34 Convolutional Neural Networks - Part 1
  35. 35 Convolutional Neural Networks - Part 2
  36. 36 Tools and Resources
  37. 37 Interdisciplinary Inspiration

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.