Introduction and Course Resources
  • Section 1: Introduction
Supervised Machine Learning
  • Section 2: Supervised Machine Learning
Unsupervised Machine Learning
  • Section 3: Unsupervised Machine Learning
Reinforcement Learning
  • Section 4: Reinforcement Learning
Demo of Python Codes
  • Section 5.0: Demo of Python Codes
  • Section 5.1: Demo of LInear Regression in Google Colab
  • Section 5.2: Demo of Binary Classification in Google Colab
  • Section 5.3: Demo of Multi-class Classification in Google Colab
  • Section 5.4: Demo of MNIST Digits Classification in Google Colab
  • Section 5.5: Demo of K Means Clustering in Google Colab
  • Section 5.6: Demo of PCA in Google Colab
  • Section 5.7: Demo of K Bandit in Google Colab
  • Section 5.8: Demo of Maze Strategy in Google Colab
  • Section 5.9: Running Codes on a Local Machine using Anaconda Platform
Concluding Remarks and Useful Resources
  • Section 6: Concluding Remarks and Useful Resources
Optional
  • Bonus Lecture (Optional)