[100% Free] Machine Learning 101 : Introduction to Machine Learning
Introductory Machine Learning course covering theory, algorithms and applications.
What you'll learn
- The Learning Problem
- Learning from Data
- Is Learning Feasible?
- The Linear Model
- Error and Noise
- Training versus Testing
- Theory of Generalization
- The VC Dimension
- Bias-Variance Tradeoff
- Neural Networks
- Overfitting
- Regularization
- Validation
- Support Vector Machines
- Kernel Methods
- Radial Basis Functions
- Three Learning Principles
- Epilogue
- What is learning?
- Can a machine learn?
- Identify basic theoretical principles, algorithms, and applications of Machine Learning
- Elaborate on the connections between theory and practice in Machine Learning
- Master the mathematical and heuristic aspects of Machine Learning and their applications to real world situations
This course includes
- 25.5 hours on-demand video
- 12 articles
- 39 downloadable resources
- Full lifetime access
- Access on mobile and TV
- Assignments
- Certificate of Completion
Aucun commentaire