CQUniversity Unit Profile
COIT12213 Applied Artificial Intelligence
Applied Artificial Intelligence
All details in this unit profile for COIT12213 have been officially approved by CQUniversity and represent a learning partnership between the University and you (our student).
The information will not be changed unless absolutely necessary and any change will be clearly indicated by an approved correction included in the profile.
General Information

Overview

Artificial Intelligence (AI) involves developing systems that are autonomous and intelligent. This unit introduces you to contemporary and emerging AI technologies to address problems such as medical diagnosis, manufacturing optimisation and transport scheduling. You will investigate the application of AI technologies in areas such as computer vision, machine learning and deep learning. Fundamental AI concepts will be considered, including artificial neural networks and model validation techniques. You will develop AI systems using industry tools and learn to develop a business case for an AI system.

Details

Career Level: Undergraduate
Unit Level: Level 2
Credit Points: 6
Student Contribution Band: 8
Fraction of Full-Time Student Load: 0.125

Pre-requisites or Co-requisites

Pre-requisite: COIT11222 Programming Fundamentals

Important note: Students enrolled in a subsequent unit who failed their pre-requisite unit, should drop the subsequent unit before the census date or within 10 working days of Fail grade notification. Students who do not drop the unit in this timeframe cannot later drop the unit without academic and financial liability. See details in the Assessment Policy and Procedure (Higher Education Coursework).

Offerings For Term 2 - 2024

Brisbane
Cairns
Melbourne
Online
Rockhampton
Sydney

Attendance Requirements

All on-campus students are expected to attend scheduled classes - in some units, these classes are identified as a mandatory (pass/fail) component and attendance is compulsory. International students, on a student visa, must maintain a full time study load and meet both attendance and academic progress requirements in each study period (satisfactory attendance for International students is defined as maintaining at least an 80% attendance record).

Class and Assessment Overview

Recommended Student Time Commitment

Each 6-credit Undergraduate unit at CQUniversity requires an overall time commitment of an average of 12.5 hours of study per week, making a total of 150 hours for the unit.

Class Timetable

Bundaberg, Cairns, Emerald, Gladstone, Mackay, Rockhampton, Townsville
Adelaide, Brisbane, Melbourne, Perth, Sydney

Assessment Overview

1. Online Quiz(zes)
Weighting: 35%
2. Group Work
Weighting: 30%
3. Written Assessment
Weighting: 35%

Assessment Grading

This is a graded unit: your overall grade will be calculated from the marks or grades for each assessment task, based on the relative weightings shown in the table above. You must obtain an overall mark for the unit of at least 50%, or an overall grade of 'pass' in order to pass the unit. If any 'pass/fail' tasks are shown in the table above they must also be completed successfully ('pass' grade). You must also meet any minimum mark requirements specified for a particular assessment task, as detailed in the 'assessment task' section (note that in some instances, the minimum mark for a task may be greater than 50%). Consult the University's Grades and Results Policy for more details of interim results and final grades.

Previous Student Feedback

Feedback, Recommendations and Responses

Every unit is reviewed for enhancement each year. At the most recent review, the following staff and student feedback items were identified and recommendations were made.

Feedback from Teaching Team

Feedback

Students feel overloaded with many new theoretical and practical concepts each week, making it difficult for some students to grasp key AI concepts.

Recommendation

Increase practical materials on important AI topics, such as image analysis, face recognition and deep learning models, while reducing some of the theory on less important topics.

Feedback from Head of Postgraduate ICT courses

Feedback

The Moodle site can be streamlined to make it more user-friendly and consistent to adhere with CQURenew guidelines.

Recommendation

Streamline the Moodle site to make it more consistent to adhere with CQURenew guidelines.

Unit Learning Outcomes
On successful completion of this unit, you will be able to:
  1. Select Artificial Intelligence (AI) techniques to solve authentic problems including social innovation challenges
  2. Apply industry tools to solve AI problems
  3. Critique business cases for AI systems against social and ethical frameworks.

The Australian Computer Society (ACS) recognises the Skills Framework for the Information Age (SFIA). SFIA provides a consistent definition of ICT skills. SFIA is adopted by organisations, governments, and individuals in many countries and is increasingly used when developing job descriptions and role profiles.

ACS members can use the tool MySFIA to build a skills profile at https://www.acs.org.au/professionalrecognition/mysfia-b2c.html.

The Australian Computer Society (ACS) recognises the Skills Framework for the Information Age (SFIA). SFIA is adopted by organisations, governments and individuals in many countries and provides a widely used and consistent definition of ICT skills. SFIA is increasingly being used when developing job descriptions and role profiles. ACS members can use the tool MySFIA to build a skills profile.

This unit contributes to the following workplace skills as defined by SFIA 7 (the SFIA code is included)

  • Analytics (INAN)
  • Systems design (DESN)
  • Data modelling and design (DTAN)
  • Programming/Software Development (PROG)

Alignment of Learning Outcomes, Assessment and Graduate Attributes
N/A Level
Introductory Level
Intermediate Level
Graduate Level
Professional Level
Advanced Level

Alignment of Assessment Tasks to Learning Outcomes

Assessment Tasks Learning Outcomes
1 2 3
1 - Online Quiz(zes) - 35%
2 - Group Work - 30%
3 - Written Assessment - 35%

Alignment of Graduate Attributes to Learning Outcomes

Graduate Attributes Learning Outcomes
1 2 3
1 - Communication
2 - Problem Solving
3 - Critical Thinking
4 - Information Literacy
5 - Team Work
6 - Information Technology Competence
7 - Cross Cultural Competence
8 - Ethical practice
9 - Social Innovation
10 - Aboriginal and Torres Strait Islander Cultures

Alignment of Assessment Tasks to Graduate Attributes

Assessment Tasks Graduate Attributes
1 2 3 4 5 6 7 8 9 10
1 - Online Quiz(zes) - 35%
2 - Group Work - 30%
3 - Written Assessment - 35%
Textbooks and Resources

Textbooks

Prescribed

Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow

Third Edition (18 October 2022)
Authors: Aurelien Geron
O Reilley
ISBN: 9781449369897

IT Resources

You will need access to the following IT resources:
  • CQUniversity Student Email
  • Internet
  • Unit Website (Moodle)
  • Google Colab
Referencing Style

All submissions for this unit must use the referencing style: Harvard (author-date)

For further information, see the Assessment Tasks.

Teaching Contacts
Anwaar Ul-Haq Unit Coordinator
a.anwaarulhaq@cqu.edu.au
Schedule
Week 1 Begin Date: 08 Jul 2024

Module/Topic

Introduction to Artificial Intelligence, History and Applications

 

Chapter

Chapter 1

Events and Submissions/Topic

Tutorial: A review of Python for AI Applications

Week 2 Begin Date: 15 Jul 2024

Module/Topic

Machine Learning, Model and Tools

Chapter

Chapter 1

Events and Submissions/Topic

Lab : AWS Cloud Academy -Machine Learning

Week 3 Begin Date: 22 Jul 2024

Module/Topic

Predictive Models: How to Predict

Chapter

Events and Submissions/Topic

Regression-Hands-on Lab Activity

Week 4 Begin Date: 29 Jul 2024

Module/Topic

Introduction to Neural Nets

Chapter

Events and Submissions/Topic

Perceptron-Hands-on Lab Activity

Week 5 Begin Date: 05 Aug 2024

Module/Topic

Recognition with Computer Vision-CNN

Chapter

Events and Submissions/Topic

CNN-Hands-on Lab Activity

Assessment 1 Due: 09/08/2024 05:00 pm


Knowledge Check quizzes, Due: Week 5 Friday (9 Aug 2024) 5:00 pm AEST
Vacation Week Begin Date: 12 Aug 2024

Module/Topic

Session Break

Chapter

Events and Submissions/Topic

Week 6 Begin Date: 19 Aug 2024

Module/Topic

Object Detection and Tracking

Chapter

Events and Submissions/Topic

Lab Activity

Week 7 Begin Date: 26 Aug 2024

Module/Topic

Natural Language Processing

Chapter

Events and Submissions/Topic

Lab Activity

Week 8 Begin Date: 02 Sep 2024

Module/Topic

Generative AI (GANS)

Chapter

Events and Submissions/Topic

Lab Activity

Assessment 2 Due:06/09/2024 5:00 PM


AI Project Due: Week 8 Friday (6 Sept 2024) 5:00 pm AEST
Week 9 Begin Date: 09 Sep 2024

Module/Topic

Ethical, Responsible and Explainable AI 

Chapter

Events and Submissions/Topic

Tutorial Discussion

Week 10 Begin Date: 16 Sep 2024

Module/Topic

Robotics and Q-learning

Chapter

Events and Submissions/Topic

Lab Activity

Week 11 Begin Date: 23 Sep 2024

Module/Topic

AI on Cloud

Chapter

Events and Submissions/Topic

AWS Cloud Academy Machine Learning

Week 12 Begin Date: 30 Sep 2024

Module/Topic

Revision

Chapter

Events and Submissions/Topic

Revisions:

Assessment 3 Due: 04/10/2024 05:00 pm


AI Ethics Report Due: Week 12 Friday (4 Oct 2024) 5:00 pm AEST
Review/Exam Week Begin Date: 07 Oct 2024

Module/Topic

Exam Week

Chapter

Events and Submissions/Topic

Exam Week Begin Date: 14 Oct 2024

Module/Topic

Exam Week

Chapter

Events and Submissions/Topic

Assessment Tasks

1 Online Quiz(zes)

Assessment Title
Knowledge Check quizzes,

Task Description

As part of this assessment, students will be invited to enroll in the AWS Academy Machine Learning Foundations course. They may complete any three quizzes, such as the Module 2 Knowledge Check. Each module includes a knowledge check quiz. The scores of the completed quizzes will contribute 35% to the total assessment for this subject.


Number of Quizzes

1


Frequency of Quizzes

Other


Assessment Due Date

Week 5 Friday (9 Aug 2024) 5:00 pm AEST


Return Date to Students

Week 7 Monday (26 Aug 2024)

Scores will be made available.


Weighting
35%

Assessment Criteria

The AWS Academy Machine Learning Foundations course consists of eight modules. The first four modules are foundational, and students need to complete quizzes for any three of these modules. All students will be invited to enroll and should be able to complete the course online. Each quiz contains 10-15 multiple-choice questions, with no time restrictions on each quiz. The scores of the completed quizzes will contribute 35% to the total assessment for this subject.


Referencing Style

Submission
Online

Submission Instructions
Will be provided on Moodle.

Learning Outcomes Assessed
  • Select Artificial Intelligence (AI) techniques to solve authentic problems including social innovation challenges


Graduate Attributes
  • Problem Solving
  • Critical Thinking
  • Information Literacy
  • Information Technology Competence

2 Group Work

Assessment Title
AI Project

Task Description

Assignment 2 is a group project where students work together to write Python code for specific problem-solving tasks. They are required to choose and justify the use of AI tools & techniques for these tasks. Details, including the project description, data, and sources, are provided on the Moodle site. The unit coordinator assigns groups with a maximum size of three. Individual contributions are assessed, and while group members may receive similar marks based on participation, each student's unique contribution is considered.

This assessment will address the following unit learning outcomes: Apply industry tools to solve AI problems and critique business cases for AI systems against social and ethical frameworks.


Assessment Due Date

Week 8 Friday (6 Sept 2024) 5:00 pm AEST


Return Date to Students

Week 11 Monday (23 Sept 2024)


Weighting
30%

Assessment Criteria

A detailed rubric and marking criteria will be made available on Moodle as part of the comprehensive assessment description. This document will provide clear guidelines for the evaluation process, offering transparency on how assignments will be assessed and graded. Students are encouraged to refer to this resource for a thorough understanding of the expectations and criteria that will inform the assessment of their work


Referencing Style

Submission
Online Group

Submission Instructions
Submit online via Moodle link.

Learning Outcomes Assessed
  • Apply industry tools to solve AI problems
  • Critique business cases for AI systems against social and ethical frameworks.


Graduate Attributes
  • Communication
  • Problem Solving
  • Critical Thinking
  • Information Literacy
  • Team Work
  • Information Technology Competence
  • Cross Cultural Competence
  • Ethical practice
  • Social Innovation

3 Written Assessment

Assessment Title
AI Ethics Report

Task Description

Assignment 3 is an individual task where students develop a written artefact (document) on a business case specified by the unit coordinator. Students must apply the knowledge and skills acquired throughout the unit to prepare this document.  This assessment will address the following unit learning outcomes: select Artificial Intelligence (AI) techniques to solve authentic problems, including social innovation challenges.


Assessment Due Date

Week 12 Friday (4 Oct 2024) 5:00 pm AEST


Return Date to Students

Review/Exam Week Monday (7 Oct 2024)

Upon grade certification


Weighting
35%

Assessment Criteria

Assignment 3 is an individual task where students develop a written artifact (document) on a business case specified by the unit coordinator. The work will be evaluated based on the quality of learning from the subject content and the knowledge of international AI standards and frameworks for ethical AI in the provided business scenario. A detailed rubric will be provided on Moodle.


Referencing Style

Submission
Online

Submission Instructions
Submit via Moodle

Learning Outcomes Assessed
  • Select Artificial Intelligence (AI) techniques to solve authentic problems including social innovation challenges
  • Apply industry tools to solve AI problems
  • Critique business cases for AI systems against social and ethical frameworks.


Graduate Attributes
  • Communication
  • Problem Solving
  • Critical Thinking
  • Information Literacy
  • Information Technology Competence
  • Cross Cultural Competence
  • Ethical practice
  • Social Innovation

Academic Integrity Statement

As a CQUniversity student you are expected to act honestly in all aspects of your academic work.

Any assessable work undertaken or submitted for review or assessment must be your own work. Assessable work is any type of work you do to meet the assessment requirements in the unit, including draft work submitted for review and feedback and final work to be assessed.

When you use the ideas, words or data of others in your assessment, you must thoroughly and clearly acknowledge the source of this information by using the correct referencing style for your unit. Using others’ work without proper acknowledgement may be considered a form of intellectual dishonesty.

Participating honestly, respectfully, responsibly, and fairly in your university study ensures the CQUniversity qualification you earn will be valued as a true indication of your individual academic achievement and will continue to receive the respect and recognition it deserves.

As a student, you are responsible for reading and following CQUniversity’s policies, including the Student Academic Integrity Policy and Procedure. This policy sets out CQUniversity’s expectations of you to act with integrity, examples of academic integrity breaches to avoid, the processes used to address alleged breaches of academic integrity, and potential penalties.

What is a breach of academic integrity?

A breach of academic integrity includes but is not limited to plagiarism, self-plagiarism, collusion, cheating, contract cheating, and academic misconduct. The Student Academic Integrity Policy and Procedure defines what these terms mean and gives examples.

Why is academic integrity important?

A breach of academic integrity may result in one or more penalties, including suspension or even expulsion from the University. It can also have negative implications for student visas and future enrolment at CQUniversity or elsewhere. Students who engage in contract cheating also risk being blackmailed by contract cheating services.

Where can I get assistance?

For academic advice and guidance, the Academic Learning Centre (ALC) can support you in becoming confident in completing assessments with integrity and of high standard.

What can you do to act with integrity?