Course description
Machine Learning
Machine learning is a type of artificial intelligence (AI) that provides computers with the ability to learn without being explicitly programmed. This area is also concerned with issues both theoretical and practical.
In this course, we will present algorithms and approaches in such a way that grounds them in larger systems as you learn about a variety of topics, including:
- statistical supervised and unsupervised learning methods
- randomized search algorithms
- Bayesian learning methods
- reinforcement learning
The course also covers theoretical concepts such as inductive bias, the PAC and Mistake‐bound learning frameworks, minimum description length principle, and Ockham's Razor. In order to ground these methods the course includes some programming and involvement in a number of projects.
By the end of this course, you should have a strong understanding of machine learning so that you can pursue any further and more advanced learning.
This is a three-credit course.
Upcoming start dates
Suitability - Who should attend?
Prerequisites
None
Outcome / Qualification etc.
What you'll learn
There are four primary objectives for the course:
- To provide a broad survey of approaches and techniques in machine learning;
- To develop a deeper understanding of several major topics in machine learning;
- To develop the design and programming skills that will help you to build intelligent, adaptive artifacts;
- To develop the basic skills necessary to pursue research in machine learning.
Training Course Content
- Week 1: ML is the ROX/SL 1- Decision Trees
- Week 2: SL 2- Regression and Classification
- Week 3: SL 3- Neutral Networks
- Week 4: SL 4- Instance Based Learning
- Week 5: SL 5- Ensemble B&B
- Week 6: SL 6- Kernel Methods & SVMs
- Week 7: SL 7- Comp Learning Theory
- Week 8: SL 8- VC Dimensions
- Week 9: SL9- Bayesian Learning
- Week 10: SL 10- Bayesian Inference
- Week 11: UL 1- Randomized Optimization
- Week 12: UL 2- Clustering/ UL 3- Feature Selection
- Week 13: UL 4- Feature Transformation/UL 5- Info Theory
- Week 14: RL 1- Markov Decision Processes
- Week 15: Reinforcement Learning
- Week 16: RL 3 Game Theory/Outro
Course delivery details
This course is offered through The Georgia Institute of Technology, a partner institute of EdX.
8-10 hours per week
Expenses
- Verified Track -$99
- Audit Track - Free