This module will introduce learners to some of the most widely-used techniques in supervised machine learning and unsupervised. The module will cover various topics in supervised and unsupervised machine learning, including linear regression, polynomial regression, classification with logistic regression and clustering. The module will cover both theoretical and practical aspects of machine learning, such as theoretical concepts behind linear and nonlinear regression problems and the practical implementation of logistic regression in Python. At the end of the module, learners will be able to formalise a machine learning task, choose the appropriate numerical method, implement the algorithm in Python and assess the method┐s performance.

Sorry, there are no lists here yet. You could try:

  • Clicking My Lists from the menu. Your course enrolled lists are stored here.
  • Searching for the list using the form below:

Lists linked to Principles of Machine Learning

There are currently no lists linked to this Module.