The_Math_of_Intelligence
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Code for each week's short video of Siraj Raval Course "Math of Intelligence"
The_Math_of_Intelligence
This is the Syllabus for Siraj Raval's new course "The Math of Intelligence"
Each week has a short video (released on Friday) and an associated longer video (released on Wednesday). So each weeks short video is in bold and the longer video is underneath.
Week 1 - First order optimization - derivative, partial derivative, convexity
SVM Classification with gradient descent
Week 2 - Second order optimization - Jacobian, hessian, laplacian
Newtons method for logistic regression
Week 3 - Vectors - Vector spaces, vector norms, matrices
L1 - L2 Regularization
Week 4 - Matrix operations - Dot product, matrix inverse, projections
Self Organizing Map (SOM) - Neural Network
Week 5 - Dimensionality Reduction - matrix decomposition, eigenvectors, eigenvalues
Principal Component Analysis - PCA
Week 6 - Probability terms - Random variables,Expectations,Variance
Naïve Bayes Classifier for text corpus
Week 7 - Parameter estimation - expectation maximization, bayes vs frequentist, maximum likelihood estimation
Bayesian Hyperparameter Optimization w/ Sklearn
Week 8 - Types of Probability - joint, conditional, bayes rule, chain rule
Latent Dirichlet Allocation - LDA on text dataset
Week 9 - T-SNE
DeepQLearning - Gym
Week 10 - Sampling -MCMC, Gibbs, Slice
Quantum Computing w/ QISKIT