Graduate Certificate of Artificial Intelligence

2020 Deakin University Handbook

Note: You are seeing the 2020 view of this course information. These details may no longer be current. [Go to the current version]
Year

2020 course information

Award granted Graduate Certificate of Artificial Intelligence
Course Map

Discounted short course - Trimester 2 2020 course map

For course advice please contact a Student Adviser

Campus

Cloud (online)

Duration

This course must be completed by the end of Trimester 3 2020

Deakin course codeS536C
Approval status

This course is approved by the University under the Higher Education Standards Framework.

Australian Qualifications Framework (AQF) recognition

The award conferred upon completion is recognised in the Australian Qualifications Framework at Level 8.

New course commencing Trimester 2 2020

INTERNATIONAL STUDENTS – Please note that due to Australian Government regulations, student visas to enter Australia cannot be issued to students who enrol in Deakin’s Cloud Campus.

2020 is the final intake into this course version.

Students should contact a student advisor for course and enrolment information.

Further course structure information can be found in the Handbook archive.

Course sub-headings

Course overview

Artificial intelligence is driving digital disruption, with new technology helping redefine many industries. Many companies are looking to take advantage of recent advances in artificial intelligence, which is creating a large demand for skilled professionals.

Deakin’s suite of courses in Applied Artificial Intelligence will equip you with specialist knowledge and skills necessary to design and develop advanced solutions using artificial intelligence. The Graduate Certificate of Applied Artificial Intelligence provides IT professionals with foundational knowledge of artificial intelligence.

This course gives you the essential skills and knowledge to engage with artificial intelligence across a range of industries and prepares you for further studies in artificial intelligence.

You will gain hands-on experience in the use and development of artificial intelligence and its mathematical foundation. Our world-leading research in artificial intelligence feed directly into our classrooms, meaning that you’ll be learning at the cutting edge of industry expectations and capabilities.

As a graduate you will be familiar with the underpinnings of artificial intelligence and machine learning.

Units in the course may include assessment hurdle requirements.

Indicative student workload

You can expect to participate in a range of teaching activities each week, with units requiring on average 150 hours of study per credit point. This could include classes, seminars, practicals, studios and online interaction. You can refer to the individual unit details in the course structure for more information. In additional to scheduled activities, you will need to study and complete assessment tasks in your own time.

Career opportunities

Graduates of the Graduate Certificate of Applied Artificial Intelligence will be able to engage effectively with specialists in the area of artificial intelligence.

Participation requirements

Elective units may be selected that include compulsory placements, work-based training, community-based learning and collaborative research training arrangements.

Mandatory student checks

Any unit which contains work-integrated learning, a community placement or interaction with the community may require a police check, working with children check or other check. Refer to the relevant unit guide.

Pathways

Upon completion of the Graduate Certificate of Artificial Intelligence you could use the credit points you’ve earned to enter into further study, including:

Master of Applied Artificial Intelligence

Master of Applied Artificial Intelligence (Professional)

Fees and charges

Fees and charges vary depending on your course, your fee category and the year you started. To find out about the fees and charges that apply to you, visit the Current students fees website.

Course Learning Outcomes

Deakin Graduate Learning Outcomes

Course Learning Outcomes

Discipline-specific knowledge and capabilities

Develop a broad knowledge of the technologies of artificial intelligence.

Communication

Prepare a range of technical and user-oriented documentation using adequate structure, terminology.

Digital literacy

Identify, select and use a range of digital technologies and tools to generate, manage and share digital resources associated with advanced artificial intelligence concepts and solutions.

Critical thinking

In assessing complex artificial intelligence scenarios, critically evaluate arguments, hypothesis, systems and proposals to identify basic statements.

In assessing complex artificial intelligence scenarios, locate ambiguity and vagueness in arguments, requirements, and proposals to determine if ideas are reasonable, and identify information that may be contradictory, omitted, or not collected.

In assessing complex artificial intelligence scenarios, apply judgement in evaluating ideas, associated reasoning, and available evidence to arrive at conclusions that are valid.

Problem solving

Apply technical skills, knowledge and techniques to identify and define complex problems utilising advanced artificial intelligence.

Apply expert, specialised technical skills and knowledge in modelling methods and processes to understand problems, handle abstraction and design novel artificial intelligence solutions.

Approved by Faculty Board 27 June 2019

Course rules

To complete the Graduate Certificate of Artificial Intelligence, students must attain 4 credit points (part-time over 1 year) as detailed below.

The course comprises a total of 4 credit points, which must include the following:

  • 3 credit points of core units
  • 1 credit point Level 7 SIT elective unit (excluding SIT771, SIT772, SIT773 and SIT774)
  • completion of STP050 Academic Integrity (0-credit point compulsory unit)

Students are required to meet the University's academic progress and conduct requirements. Click here for more information.

Course structure

Core

STP050Academic Integrity (0 credit point unit)

SIT720Machine Learning

SIT787Mathematics for Artificial Intelligence

SIT719Security and Privacy Issues in Analytics

Plus one level 7 SIT elective unit

Work experience

You will have an opportunity to undertake a discipline-specific internship placement as part of your course. deakin.edu.au/sebe/wil.

Further information

Student Central can help you with course planning, choosing the right units and explaining course rules and requirements.