Skip to main content
Home

Information for:

  • Alumni
  • Applicants
  • Current Students
  • Staff
  • Parents
  • Job Vacancies
  • Covid-19
  • Cymraeg
My country:

Main Menu

    • Study Options
      • Study Home
      • Why Study at Bangor?
      • Undergraduate Study
      • Postgraduate Taught Study
      • Postgraduate Research
      • Executive Education
      • Part-time Courses
      • January Start Courses
      • Degree Apprenticeships
      • Study Abroad
      • Work Experience
    • Study Advice
      • Apply
      • Already Applied?
      • Fees and Finances
      • Scholarships and Bursaries
      • Get Ready for University
      • Widening Access
    • Explore Bangor
      • Open Days and Visits
      • Virtual Student Experience
      • Magical Bangor

    Find a Course

    Order a Course Guide

    Open Days

    Clearing

    • Student Life
      • Student Life Home
      • Bangor and the Area
      • Social Life and Entertainment
      • Student Accommodation
      • Clubs and Societies
      • Sport
      • Virtual Student Experience
      • Videos and Vlogs
    • Your Experience at Bangor
      • Student Support
      • Skills and Employability
      • Study or Work Abroad
      • Fees and Finances

    Student Profiles

    Student Videos and Vlogs

    Welcome 2022

    • Choose Bangor
      • International Home
      • Why Bangor?
      • Location
      • Accommodation
      • Student Support
      • Contact Us
      • Bangor University's China website
    • Apply
      • Entry Requirements
      • Tuition Fees and Scholarships
      • How to Apply
      • Already Applied
      • Study Abroad
      • Exchanges
      • Worldwide Partners

    Country Specific Information

    Bangor University International College

    Find a Course

    Clearing 2023

    • Research
      • Research Home
      • About Our Research
      • Research in our Academic Schools
      • Research Institutes and Centres
      • Research Portal
      • Integrated Research and Impact Support (IRIS) Service
      • Energy
      • REF 2021
      • Research News
    • Postgraduate Research Opportunities
      • Postgraduate Research
      • Doctoral School
    • Events and Training Opportunities
      • Researcher Development
    • The University
      • About Us
      • Our Mission
      • Strategy 2030
      • Annual Report & Financial Statements
      • Our Location
      • Academic Schools and Colleges
      • Services and Facilities
      • Vice-Chancellor's Office
      • Working with Business
      • Working with the Community
      • Sustainability
      • Health and Wellbeing
      • Contact Us
    • Working for Us
      • Job Vacancies
    • University Management and Governance
      • Policies and Procedures
      • Slavery and Human Trafficking Statement
      • Management and Governance
    • University and the Community
      • Pontio
      • Sports Facilities
      • Conference Facilities
      • Places to Eat and Drink
      • Public Events
      • Widening Access
      • Services to Schools
    • Business Services
      • Business Services Home
    • Collaboration Hub
      • Collaboration Hub
    • Conferencing and Business Dining
      • Conferencing Facilities
      • Business Dining
    • Intellectual Property (IP) and Commercialisation
      • Intellectual Property (IP) and Commercialisation
    • News
      • Current News
      • Research News
      • Student News
    • Events
      • Events
    • Announcements
      • Flag Announcements
  • Open Days

    • Study Options
      • Study Home
      • Why Study at Bangor?
      • Undergraduate Study
      • Postgraduate Taught Study
      • Postgraduate Research
      • Executive Education
      • Part-time Courses
      • January Start Courses
      • Degree Apprenticeships
      • Study Abroad
      • Work Experience
    • Study Advice
      • Apply
      • Already Applied?
      • Fees and Finances
      • Scholarships and Bursaries
      • Get Ready for University
      • Widening Access
    • Explore Bangor
      • Open Days and Visits
      • Virtual Student Experience
      • Magical Bangor

    Find a Course

    Order a Course Guide

    Open Days

    Clearing

    • Student Life
      • Student Life Home
      • Bangor and the Area
      • Social Life and Entertainment
      • Student Accommodation
      • Clubs and Societies
      • Sport
      • Virtual Student Experience
      • Videos and Vlogs
    • Your Experience at Bangor
      • Student Support
      • Skills and Employability
      • Study or Work Abroad
      • Fees and Finances

    Student Profiles

    Student Videos and Vlogs

    Welcome 2022

    • Choose Bangor
      • International Home
      • Why Bangor?
      • Location
      • Accommodation
      • Student Support
      • Contact Us
      • Bangor University's China website
    • Apply
      • Entry Requirements
      • Tuition Fees and Scholarships
      • How to Apply
      • Already Applied
      • Study Abroad
      • Exchanges
      • Worldwide Partners

    Country Specific Information

    Bangor University International College

    Find a Course

    Clearing 2023

    • Research
      • Research Home
      • About Our Research
      • Research in our Academic Schools
      • Research Institutes and Centres
      • Research Portal
      • Integrated Research and Impact Support (IRIS) Service
      • Energy
      • REF 2021
      • Research News
    • Postgraduate Research Opportunities
      • Postgraduate Research
      • Doctoral School
    • Events and Training Opportunities
      • Researcher Development
    • The University
      • About Us
      • Our Mission
      • Strategy 2030
      • Annual Report & Financial Statements
      • Our Location
      • Academic Schools and Colleges
      • Services and Facilities
      • Vice-Chancellor's Office
      • Working with Business
      • Working with the Community
      • Sustainability
      • Health and Wellbeing
      • Contact Us
    • Working for Us
      • Job Vacancies
    • University Management and Governance
      • Policies and Procedures
      • Slavery and Human Trafficking Statement
      • Management and Governance
    • University and the Community
      • Pontio
      • Sports Facilities
      • Conference Facilities
      • Places to Eat and Drink
      • Public Events
      • Widening Access
      • Services to Schools
    • Business Services
      • Business Services Home
    • Collaboration Hub
      • Collaboration Hub
    • Conferencing and Business Dining
      • Conferencing Facilities
      • Business Dining
    • Intellectual Property (IP) and Commercialisation
      • Intellectual Property (IP) and Commercialisation
    • News
      • Current News
      • Research News
      • Student News
    • Events
      • Events
    • Announcements
      • Flag Announcements
  • Open Days

Information for:

  • Alumni
  • Applicants
  • Current Students
  • Staff
  • Parents
  • Job Vacancies
  • Covid-19
My country:

Search

Close

Breadcrumb

  • Cymraeg

Share this page:
  • Twitter
  • Facebook
  • LinkedIn

Apply Now

Find out how to apply

Postgraduate Tuition Fees

View our full tuition fees information

Register your interest in PG study

Register now

Module ICE-3701:
Principles Machine Learning

Dysgu Peirianyddol 2024-25
ICE-3701
2024-25
Ysgol Cyfrifiadureg a Pheirianneg
Module - Semester 1
20 credits
Module Organiser: Mosab Bazargani
Overview

Machine learning lies at the crossroads of statistics and computer science, permeating diverse sectors including science, high-tech, retail, finance, transportation, and more. At its core, machine learning strives to craft data-powered models for comprehending and foreseeing real-world system behaviors, fueling the heightened demand for machine learning expertise.

This module serves as an introduction to the fundamentals of machine learning. Guided by a practical approach (and less on the mathematical details), you will delve into key concepts, methodologies, and tools essential for crafting and assessing machine learning solutions. By engaging in hands-on experiences, you will gain a robust grasp of the intricacies of machine learning. Equipped with this foundation, you'll be empowered to independently advance your machine learning prowess, all the while adeptly scrutinising forthcoming developments in the expansive realm of data science.

Indicative content includes: - Explain and apply the fundamental notions and principles of machine learning. - Detail and apply various classification models. - Detail and apply clustering algorithms to data sets. - Explain dimensionality reduction, its approaches and methods. - Introduction to neural network models and their training procedures.

Assessment Strategy

  • Threshold: Equivalent to 50%. Uses key areas of theory or knowledge to meet the Learning Outcomes of the module. Is able to formulate an appropriate solution to accurately solve tasks and questions. Can identify individual aspects, but lacks an awareness of links between them and the wider contexts. Outputs can be understood, but lack structure and/or coherence.

  • Good: Equivalent to the range 60%-69%. Is able to analyse a task or problem to decide which aspects of theory and knowledge to apply. Solutions are of a workable quality, demonstrating understanding of underlying principles. Major themes can be linked appropriately but may not be able to extend this to individual aspects. Outputs are readily understood, with an appropriate structure but may lack sophistication.

  • Excellent: Equivalent to the range 70%+. Assemble critically evaluated, relevant areas of knowledge and theory to construct professional-level solutions to tasks and questions presented. Is able to cross-link themes and aspects to draw considered conclusions. Presents outputs in a cohesive, accurate, and efficient manner.

Learning Outcomes

  • Apply the machine learning taxonomy to formulate meaningful questions and identify appropriate techniques to address them.

  • Apply the methodology needed to build and evaluate machine learning solutions.

  • Detail and apply clustering algorithms to data sets.

  • Detail and apply various classification models.

  • Explain and apply the basic notions and principles of machine learning.

  • Explain dimensionality reduction, its approaches and methods.

  • Summarise neural network models and their training procedures.

Assessment method

Coursework

Assessment type

Summative

Description

A collection of small problems based on the first half of the module. Hand-crafted solutions and short Python code solutions are expected.

Weighting

20%

Due date

15/11/2022

Assessment method

Coursework

Assessment type

Summative

Description

A collection of small problems based on the second half of the module. Hand-crafted solutions and short Python code solutions are expected.

Weighting

20%

Due date

16/12/2022

Assessment method

Exam (Centrally Scheduled)

Assessment type

Summative

Description

This is a 2-hour rubric-based exam with four sections, each dedicated to a specific subject or topic. It consists of problems to be solved by hand, similar to those covered in lectures, exercises, and labs.

Weighting

60%

Home

Study

  • Postgraduate Taught Study
Home

Follow Us

  • Twitter
  • Facebook
  • Instagram
  • Youtube
  • LinkedIn

Bangor University

Bangor, Gwynedd, LL57 2DG, UK

+44 (0)1248 351151

Contact Us

Visit Us

Maps & Directions

Policy

  • Legal Compliance
  • Modern Slavery Act 2015 Statement
  • Accessibility Statement
  • Privacy and Cookies
  • Welsh Language Policy
Map

Bangor University is a Registered Charity: No. 1141565

© 2020 Bangor University