Skip to content

kryptc/smai-lecture-notes

Repository files navigation

smai-lecture-notes

Here, you will find all the lecture notes for the Statistical Methods in Artificial Intelligence (SMAI) course offered at IIIT, Hyderabad.

Mathematical Foundations of ML

  • L1: Introduction, nearest neighbour
  • L2: Training and Testing
  • L3: Loss Function, Linear Algebra, SVD
  • L4: Overfitting, Probabilistic View
  • L5:
  • L6: Gaussian Distributions

Linear Models of Classification

  • L7: Linear Regression
  • L8: Princiapl Component Analysis (PCA)
  • L9: Gradient Descent
  • L10: Gradient Descent Optimizations
  • L11: Linear Perceptron
  • L12: Logistic Regression
  • L13: Multi class classification

Non-linear models of Classification

  • L14: Support Vector Machines (SVM)
  • L15: Non-linear SVM and Kernels
  • L16: Kernelization
  • L17: Neural Networks
  • L18: Backpropagation
  • L19: Backpropagation-II