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School of Engineering and Informatics (for staff and students)

Advanced Methods in Machine Learning (982G5)

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Advanced Methods in Machine Learning

Module 982G5

Module details for 2024/25.

15 credits

FHEQ Level 7 (Masters)

Module Outline

This module will develop your knowledge and understanding of recent machine learning technologies, how they can be applied to different tasks, their benefits, limitations, and open challenges. Key topics include:
• Deep generative models.
• Neural network architectures and inductive biases.
• Learning paradigms, including supervised, self-supervised and semi-supervised.
• Challenges related to the dataset distribution. These topics will be introduced in the context of common applications and tasks in areas such as computer vision and natural language processing, and you will learn how to develop and critique solutions to real-world problems.

Module learning outcomes

Comprehend and apply the key aspects of a range of recent machine learning techniques.

Work independently to propose and implement appropriate machine learning solutions for a specified problem and dataset, demonstrating critical awareness of potential challenges.

Communicate clearly using text and figures an implemented machine learning solution covering the core concepts, rationale for design decisions and critical evaluation.

Critique an implemented system demonstration a systematic approach to quantitative evaluation.

TypeTimingWeighting
Coursework100.00%
Coursework components. Weighted as shown below.
ReportA1 Week 1 100.00%
Timing

Submission deadlines may vary for different types of assignment/groups of students.

Weighting

Coursework components (if listed) total 100% of the overall coursework weighting value.

TermMethodDurationWeek pattern
Autumn SemesterLecture1 hour11111111111
Autumn SemesterSeminar1 hour11111111111
Autumn SemesterLaboratory1 hour11111111111

How to read the week pattern

The numbers indicate the weeks of the term and how many events take place each week.

Dr Peter Wijeratne

Assess convenor
/profiles/596509

Dr Ivor Simpson

Assess convenor
/profiles/504012

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School of Engineering and Informatics (for staff and students)

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