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CS552K: DATA MINING WITH DEEP LEARNING (2025-2026)

Last modified: 20 Jun 2025 15:13


Course Overview

This course aims to make students familiar with basic data mining and visualisation techniques and software tools. Students will learn how to analyse complex datasets by applying data pre-processing, exploration, clustering and classification, time series analysis, and many other techniques. This course will also cover text mining and qualitative modelling. Through this course students will be able to analyse real-world datasets in various domains and discover novel patterns from them. This course is particularly suitable for those who are interested in working as data analysts or data scientists in the future.



Course Details

Study Type Postgraduate Level 5
Term Second Term Credit Points 15 credits (7.5 ECTS credits)
Campus Aberdeen Sustained Study No
Co-ordinators
  • Dr Arabella Sinclair

What courses & programmes must have been taken before this course?

  • Any Postgraduate Programme (Studied)

What other courses must be taken with this course?

None.

What courses cannot be taken with this course?

None.

Are there a limited number of places available?

No

Course Description

• Data Mining: basic statistics, advanced data analysis techniques such as trend detectors, pattern detectors, qualitative models, basic data mining techniques such as classification and clustering.
• Visualisation: information visualisation (basic concepts, advanced techniques such as treemaps); supporting user variation (abilities, knowledge, preferences)
• Applications to real world problems: for example, medical decision support, supporting analysis of genome data.


Details, including assessments, may be subject to change until 31 August 2025 for 1st Term courses and 19 December 2025 for 2nd Term courses.

Summative Assessments

Project and Implementation of Software/Program

Assessment Type Summative Weighting 50
Assessment Weeks Feedback Weeks

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Feedback

Word Count: 2400 (approx.)

Learning Outcomes
Knowledge LevelThinking SkillOutcome
ConceptualAnalyseAbility to identify appropriate goals for extracting information from different data sets, and to link data mining techniques to goals, applying this in practice.
FactualApplyUnderstanding of different types of data, and ability to prepare data sets for analysis using appropriate tools.
ProceduralCreateAbility to select, use, adapt and create appropriate tools, including computational tools, for data analysis and visualisation.
ProceduralEvaluateUnderstanding of key models that support data mining, and ability to use appropriate models in practice.
ReflectionAnalyseUnderstanding of principles and techniques for visualisation and communication of data, and ability to apply these.

Project and Implementation of Software/Program

Assessment Type Summative Weighting 50
Assessment Weeks Feedback Weeks

Look up Week Numbers

Feedback

Word Count: 2400 (approx.)

Learning Outcomes
Knowledge LevelThinking SkillOutcome
ConceptualAnalyseAbility to identify appropriate goals for extracting information from different data sets, and to link data mining techniques to goals, applying this in practice.
FactualApplyUnderstanding of different types of data, and ability to prepare data sets for analysis using appropriate tools.
ProceduralCreateAbility to select, use, adapt and create appropriate tools, including computational tools, for data analysis and visualisation.
ProceduralEvaluateUnderstanding of key models that support data mining, and ability to use appropriate models in practice.
ReflectionAnalyseUnderstanding of principles and techniques for visualisation and communication of data, and ability to apply these.

Formative Assessment

There are no assessments for this course.

Resit Assessments

Resubmission of failed elements (pass marks carried forward)

Assessment Type Summative Weighting
Assessment Weeks Feedback Weeks

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Feedback
Learning Outcomes
Knowledge LevelThinking SkillOutcome
Sorry, we don't have this information available just now. Please check the course guide on MyAberdeen or with the Course Coordinator

Course Learning Outcomes

Knowledge LevelThinking SkillOutcome
ReflectionAnalyseUnderstanding of principles and techniques for visualisation and communication of data, and ability to apply these.
ProceduralCreateAbility to select, use, adapt and create appropriate tools, including computational tools, for data analysis and visualisation.
FactualApplyUnderstanding of different types of data, and ability to prepare data sets for analysis using appropriate tools.
ConceptualAnalyseAbility to identify appropriate goals for extracting information from different data sets, and to link data mining techniques to goals, applying this in practice.
ProceduralEvaluateUnderstanding of key models that support data mining, and ability to use appropriate models in practice.

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