/ML101

Material used for the TSS-2018 bootcamp on Machine Learning

Primary LanguageJupyter Notebook

ML101

Material Used for the TSS-2018 sessions on Machine Learning

Course Content

Session 1 – Intro, Types of ML, Overview of the basics of Statistics. Pre-processing, Linear Regression and Gradient Descent, Cross Validation

Session 2 – Classification, Logistic Regression, Decision Trees, Random Forest Classification

Session 3 – Neural Networks, Softmax classifier

Session 4 – Regularisation, Bias vs Variance, Principal Component Analysis

Session 5 - Support Vector Machines, Unsupervised Learning, K-means Algorithms, Conclusion