Kyle Swanson: [email protected]
Telegram: https://t.me/ml_sdu_mit
Feedback form: https://goo.gl/forms/MJSSAMGp5Oc4Dcoc2
Welcome to IntroML! This four week class will give you a brief, hands-on introduction to some of the most important topics in machine learning. There will be 11 classes in total, with each class consisting of a lecture on a topic followed by a hands-on lab where we will implement some of the machine learning algorithms discussed in lecture. Lecture and lab materials for each day will be released at the beginning of lecture. See below for a list of topics.
- Monday: Introduction to Machine Learning
- Tuesday: Linear Classifiers and the Perceptron Algorithm
- Wednesday: Maximum Margin Classifiers and Support Vector Machines
- Monday: Non-Linear Classifiers and Kernels
- Tuesday: Ensembles and the Random Forest Algorithm
- Wednesday: Recommender Systems
- Monday: Neural Networks I
- Tueday: Neural Networks II
- Wednesday: Convolutional Neural Networks and Recurrent Neural Networks
- Monday: Unsupervised Learning
- Tuesday: Reinforcement Learning
Material for this course has been adapted from the class 6.036: Introduction to Machine Learning, taught at MIT by Regina Barzilay, Tommi Jaakkola, and Suvrit Sra in the spring of 2016.