2025/26 Taught Postgraduate Programme Catalogue

MSc Artificial Intelligence (online) (For students entering from May 2026 onwards)

Programme overview

Programme code
MSC-AIR-OD
UCAS code
Duration
24 Months
Method of Attendance
Part Time
Programme manager
Abdulrahman Altahhan
Contact address
a.altahhan@leeds.ac.uk
Total credits
180
School/Unit responsible for the parenting of students and programme
Digital Education Service, Cross-Institutional Faculty
Examination board through which the programme will be considered
Digital Education Service, Cross-Institutional Faculty
Relevant QAA Subject Benchmark Groups
QAA – Computing (https://www.qaa.ac.uk/docs/qaa/sbs/sbs-computing-22.pdf)

QAA – Masters degrees (https://www.qaa.ac.uk/docs/qaa/quality-code/master's-degree-characteristics-statement.pdf)

Entry requirements

  • Standard entry will require an honours degree equivalent to a UK first/upper second class, demonstrating aptitude for programming and quantitative reasoning in any mathematical / highly numerate undergraduate degree. Graduates with first degrees from most quantitative subject areas would be eligible, for example: mathematics, computer science, statistics, engineering (any), physics / physical sciences, space science, econometrics, quantitative research methods etc.
  • Graduates who hold an honours degree equivalent to a UK lower second class from a mathematics based discipline (see examples above) may also be eligible providing they can demonstrate relevant professional experience, a minimum of 3 years in related professional environment.
  • Graduates who hold an honours degree equivalent to a UK first/upper second class from non-mathematics-based disciplines may also be eligible providing they can demonstrate relevant professional experience, a minimum of 3 years in a related professional environment.
  • For students whose first language is not English, an English language qualification at a suitable level: IELTS 6.5 or equivalent with no lower than 6.5 in each category.

Programme specification

This online programme provides a rigorous and contemporary education in the principles, methods, and practice of modern artificial intelligence. It develops the knowledge, skills, and critical perspective required to design, implement, and evaluate intelligent systems that learn from data, adapt through experience, and interact effectively with their environment.

Students begin by building strong foundations in programming, mathematics, and ethical reasoning, gaining the analytical fluency and computational confidence required to engage deeply with AI technologies. These foundations support progression into classical and modern machine learning, where students study how models represent structure, uncertainty, and pattern in data. The curriculum advances toward deep learning, exploring how neural architectures underpin current progress in vision, language, and generative modelling, before extending to reinforcement learning and agentic AI that enable adaptive, goal-directed behaviour. It is expected that students will complete all modules within each carousel before progressing to the next carousel.

A distinctive feature of the programme is its focus on AI as an integrated design discipline that links theory, computation, and responsible practice. Students learn to operationalise models through MLOps workflows, bridge multiple data modalities, and critically evaluate issues of alignment, fairness, and accountability in real-world deployment.

Graduates emerge with the conceptual understanding, technical capability, and reflective awareness required to contribute to the next generation of AI research and applications across domains such as engineering, health, finance, and the sciences, or to continue toward doctoral study in artificial intelligence and machine learning.

Year 1

(online) (For students entering from May 2026 onwards)

[Learning Outcomes, Transferable (Key) Skills, Assessment]
View Timetable

Compulsory Modules

Candidates will study the following compulsory modules

CodeTitleCreditsSemesterPass for Progression
OCOM5100MProgramming for Data Science151 Mar to 30 Apr, 1 Sep to 31 Oct
OCOM5104MEthics of Artificial Intelligence151 May to 30 Jun (2mth)(adv yr), 1 May to 30 June, 1 Nov to 31 Dec (2mth)(adv yr)
OCOM5105MMathematical Foundations of Artificial Intelligence151 Jan to 28 Feb, 1 Jan to 28 Feb (adv year), 1 Jul to 31 Aug
OCOM5206MMachine Learning15 
OCOM5207MNeural Networks & Deep Learning15 
OCOM5208MMachine Learning Operations15 

Year 2

(online) (For students entering from May 2026 onwards)

[Learning Outcomes, Transferable (Key) Skills, Assessment]
View Timetable

Compulsory Modules

Candidates will study the following compulsory modules

CodeTitleCreditsSemesterPass for Progression
OCOM5250MDeep Learning for Computer Vision15 
OCOM5251MDeep Learning for Natural Language Processing15 
OCOM5252MReinforcement Learning and Modern learning Paradigms15 
OCOM5300MArtificial Intelligence Project451 Jan to 30 Jun, 1 Jul to 31 Dec, 1 Mar to 31 Aug, 1 May to 31 Oct, 1 Nov to 30 Apr, 1 Sep to 28 FebPFP

Last updated: 06/02/2026 13:00:11

Errors, omissions, failed links etc should be notified to the Catalogue Team