Week 1: 	Course philosophy and introduction to R  
Week 2: 	Linear algebra for data science 
                1. Algebraic view - vectors, matrices, product of matrix & vector, rank, null space, solution of over-determined set of equations and pseudo-inverse) 
                2. Geometric view - vectors, distance, projections, eigenvalue decomposition
Week 3: Statistics (descriptive statistics, notion of probability, distributions, mean, variance, covariance, covariance matrix, understanding univariate and multivariate normal distributions, introduction to hypothesis testing, confidence interval for estimates)  
Week 4:  Optimization
Week 5: 	1. Optimization
		2. Typology of data science problems and a solution framework
Week 6: 	1. Simple linear regression and verifying assumptions used in linear regression 
		2. Multivariate linear regression, model assessment, assessing importance of different variables, subset selection
Week 7: 	Classification using logistic regression
Week 8: 	Classification using kNN and k-means clustering
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