Key Information

Tutor: Dr John Pinney
Course Level: Level 1
Course Credit: 1 credit
Prerequisites:
  No prior experience of programming is required.
Class Duration: 3 x 2 hour sessions
Format: 
Teams session with live teaching and hands-on practice

Machine learning is a broad topic, with a wide range of applications in scientific research. 

In this series of lectures, we will introduce the fundamental concepts of unsupervised and supervised learning, including the training, testing and evaluation of models for classification and regression.  We also explore the basic theory of neural networks and discuss their applications to deep learning.

 Examples will be provided using Orange data science environment.  No prior experience of programming is required.

Syllabus:

  • Unsupervised learning
    • Principal Component Analysis
    • Clustering
  • Supervised learning
    • Linear regression
    • Logistic regression
    • Decision trees
  • Evaluating performance
    • Cross-validation
    • ROC curves
  • Improving performance
    • Feature selection
    • Ensemble methods
  • Artificial neural networks
    • Multi-layer perceptron
    • Deep learning applications


Learning Outcomes:

After completing this workshop, you will be better able to:

  • Explain the difference between supervised and unsupervised learning.
  • Select a suitable machine learning method for a given application.
  • Prepare your own training and testing data sets.
  • Evaluate the performance of a machine learning experiment.


Dates & Booking Information

There are no further sessions taking place this academic year. Course dates for 2024-25 will be available to book from late September.

To book your place, please follow the booking process advertised on the main programme page