Principles of Machine Learning covers the fundamental concepts, methodology and practical tools necessary to understand, build and assess data-driven models to describe real-world systems and predict their behaviour. We will follow the standard machine learning taxonomy to organise problems and techniques into well-defined families (supervised and unsupervised learning) and subfamilies. We will pay particular attention to the methodology that we need to use to avoid and identify common pitfalls. State-of-the-art models and the latest developments on model deployment will be discussed.

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.