Subject description

Machine learning aims to develop computer systems that learn from example data to model and solve real-life problems. Students will develop the knowledge and skills required to analyse, design and implement machine learning systems applicable in big data analytics, social media data analysis, computer vision, neuroimage analysis, speech recognition, surveillance, … For more content click the Read More button below.

Enrolment rules

Pre-Requisite

Equivalence

INFO433 - Pattern Recognition
CSCI933 - Machine Learning Algorithms and Applications

Delivery

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Teaching staff

Subject coordinators

Engagement hours

Contact Hours:2 hour lecture

Learning outcomes

On successful completion of this subject, students will be able to:
1.
Describe and use data clustering and discrimininant functions in classification.
2.
Use Bayesian methods in pattern analysis and recognition.
3.
Use learning methods in pattern analysis and recognition.
4.
Design and implement simple application systems based on pattern analysis and recognition.

Assessment details

Individual Assignments

Group Assignment

Final Exam

Work integrated learning

Foundational WIL:This subject contains elements of "Foundational WIL". Students in this subject will observe, explore or reflect on possible career pathways or a work-related aspect of their discipline.

Textbook information

No prescribed textbooks for this subject.

Contact details

Faculty contact

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