¹û¶³Ó°Ôº

XClose

¹û¶³Ó°Ôº Module Catalogue

Home
Menu

Applied Machine Learning (COMP0081)

Key information

Faculty
Faculty of Engineering Sciences
Teaching department
Computer Science
Credit value
15
Restrictions
Module delivery for UG Masters (FHEQ Level 7) available on MEng Computer Science; MEng Mathematical Computation. Module delivery for PGT (FHEQ Level 7) available on MSc Computational Statistics and Machine Learning; MSc Data Science and Machine Learning; MSc Machine Learning; MSc Data Science; MSc Scientific and Data Intensive Computing.
Timetable

Alternative credit options

There are no alternative credit options available for this module.

Description

Aims:

To give a detailed understanding of topics related to efficient implementation of large-scale machine learning with a focus on optimisation in both linear and non-linear machine learning models. Students will also gain experience in tackling real world problems through solving online machine learning challenges. A key aim is that students understand the challenges of optimisation and associated time and space complexities of various approaches.

Intended learning outcomes:

On successful completion of the module, a student will be able to:

  1. UnderstandÌýpractical issues arising in implementing machine learning in practice, including engineering challenges as well as the data ethics considerations.
  2. Become familiar with techniques used in practice to solve real world machine learning problems and will be able to apply these techniques.

Indicative content:

The following are indicative of the topics the module will typically cover:

  • Methods for solving Large Scale Linear Systems, including Conjugate Gradients.
  • Classical methods for Regression and Classification including linear and logistic regression.
  • Clustering Methods for Unsupervised Learning.
  • Fast Nearest Neighbours.
  • Matrix and Tensor Factorisation.
  • Visualisation methods including tSNE.
  • Ensembling, Gradient Boosting Machines.
  • Data Ethics; Fairness in Machine Learning.

Requisites:

To be eligible to select this module as an optional or elective, a student must: (1) be registered on a programme and year of study for which it is formally available; (2) have an understanding of and abilities with Linear Algebra, Multivariate Calculus and Probability at mathematics FHEQ Level 4 or above; (3) have familiarity with coding a high-level language in order to complete assessments (strongly recommend that students are skilled in Python); and (4) have taken Introduction to Machine Learning (COMP0088) or Supervised Learning (COMP0078) in Term 1.

Note that it is also recommended to have taken Graphical Models (COMP0080) or Probabilistic and Unsupervised Learning (COMP0086) in Term 1.

This module is not an introduction to machine learning.

Module deliveries for 2024/25 academic year

Intended teaching term: Term 2 ÌýÌýÌý Postgraduate (FHEQ Level 7)

Teaching and assessment

Mode of study
In person
Methods of assessment
100% Coursework
Mark scheme
Numeric Marks

Other information

Number of students on module in previous year
129
Module leader
Dr Matt Kusner
Who to contact for more information
cs.pgt-students@ucl.ac.uk

Intended teaching term: Term 2 ÌýÌýÌý Undergraduate (FHEQ Level 7)

Teaching and assessment

Mode of study
In person
Methods of assessment
100% Coursework
Mark scheme
Numeric Marks

Other information

Number of students on module in previous year
42
Module leader
Dr Matt Kusner
Who to contact for more information
cs.pgt-students@ucl.ac.uk

Last updated

This module description was last updated on 8th April 2024.

Ìý