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COIT20277 - Introduction to Artificial Intelligence

General Information

Unit Synopsis

Artificial Intelligence (AI) is transforming the way we interact with technology, enabling machines to think, learn, and adapt in ways that mimic human intelligence. From intelligent chatbots to autonomous robotics, AI is becoming an essential part of our everyday lives and has the potential to transform entire industries. This unit introduces the core concepts of AI, starting with foundational principles and real-world applications. You will explore key machine learning approaches, including both supervised and unsupervised learning, and examine advanced topics such as reinforcement learning, classical and heuristic search strategies, and deep learning, with a focus on convolutional and recurrent neural networks for tasks like image classification and natural language processing. Additionally, you will examine ethical AI practices, addressing the societal impact of AI and the importance of ensuring fairness, transparency, and accountability in AI systems. The unit also covers cutting-edge trends like cloud-based AI and AI at the edge, which are shaping the future of AI deployment. Through programming and problem-based assessments, you will gain both theoretical knowledge and practical skills in modern AI technologies.

Details

Level Postgraduate
Unit Level 9
Credit Points 6
Student Contribution Band SCA Band 2
Fraction of Full-Time Student Load 0.125
Pre-requisites or Co-requisites

Pre-requisite: COIT20245 Introduction to Programming

 

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).

Class Timetable View Unit Timetable
Residential School No Residential School

Unit Availabilities from Term 1 - 2025

Term 1 - 2025 Profile
Brisbane
Melbourne
Online
Sydney
Term 2 - 2025 Profile
Brisbane
Melbourne
Online
Sydney
Term 1 - 2026 Profile
Brisbane
Melbourne
Online
Sydney
Term 2 - 2026 Profile
Brisbane
Melbourne
Online
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).

Assessment Overview

Recommended Student Time Commitment

Each 6-credit Postgraduate 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.

Assessment Tasks

Assessment Task Weighting
1. Practical Assessment 30%
2. Written Assessment 25%
3. Project (applied) 45%

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

Past Exams

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Previous Feedback

Term 1 - 2023 : The overall satisfaction for students in the last offering of this course was 75.00% (`Agree` and `Strongly Agree` responses), based on a 42.11% response rate.

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.

Source: Student feedback
Feedback
Link contents to real-world applications.
Recommendation
Initiate a content update to include materials that will cover real-world case studies and examples of artificial intelligence.
Action Taken
The assessment item covers real-world problems and solves them using a number of artificial intelligence techniques. All the problems relate to industry and looking for solutions, so students get a good understanding of how the learning will be used in the industry.
Source: Analysis by Unit Coordinator
Feedback
Need to focus more on applications of AI rather than theory. Based on the current industry trend consider using Python programming language instead of JAVA.
Recommendation
A unit update will be initiated to cover the basics of AI in the first 2/3 lectures then focus on the AI applications for data analysis, like healthcare, cybersecurity, etc, using Python based coding.
Action Taken
To address the feedback, we have laid out a plan that will be carried out in the coming term.
Source: Student Feedback
Feedback
Some students find it difficult to understand Particle Swarm Optimisation (PSO) and genetic programming.
Recommendation
A use case with sample coding will be helpful.
Action Taken
In Progress
Source: Unit Coordinator Reflection
Feedback
Python is a more appropriate industry-standard programming language to prepare industry-ready graduates in AI.
Recommendation
Introduce Python and Cloud Technology to Solve AI Problems as per unit update plan.
Action Taken
In Progress
Unit learning Outcomes

On successful completion of this unit, you will be able to:

  1. Explain key AI principles, including machine learning, deep learning, classical and heuristic search, and differentiate between supervised, unsupervised, and reinforcement learning paradigms.
  2. Implement machine learning models to solve real-world problems such as image classification and natural language processing in a modern programming language.
  3. Evaluate the role of emerging technologies, such as cloud-based AI and AI at the edge, in improving the efficiency and performance of AI applications.
  4. Examine responsible AI practices and ethical challenges in AI development, focusing on ethical standards and societal impact.

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 9 (the SFIA code is included):

  • Data analytics (DAAN)
  • Data science (DATS)
  • Data engineering (DENG)
  • Machine Learning (MLNG)
  • Programming/Software Development (PROG)

Alignment of Assessment Tasks to Learning Outcomes
Assessment Tasks Learning Outcomes
1 2 3 4
1 - Practical Assessment
2 - Written Assessment
3 - Project (applied)
Alignment of Graduate Attributes to Learning Outcomes
Professional Level
Advanced Level
Graduate Attributes Learning Outcomes
1 2 3 4
1 - Knowledge
2 - Communication
3 - Cognitive, technical and creative skills
5 - Self-management
Alignment of Assessment Tasks to Graduate Attributes
Professional Level
Advanced Level
Assessment Tasks Graduate Attributes
1 2 3 4 5 6 7 8