Master of Science in Artificial Intelligence and Business Analytics
Tuen Mun, Hong Kong
DURATION
1 up to 3 Years
LANGUAGES
English
PACE
Full time
APPLICATION DEADLINE
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EARLIEST START DATE
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TUITION FEES
HKD 190,000 *
STUDY FORMAT
On-Campus
* the tuition fees do not cover pre-entry courses
Scholarships
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Introduction
With the rapid development of artificial intelligence (AI) and big data techniques in recent years, there have been a huge number of innovative applications in various domains. AI and business analytics are an inter-disciplinary sub-field that integrates knowledge and skills from both critical and out-of-the-box thinking to process business datasets through the use of AI techniques.
The Master of Science in Artificial Intelligence and Business Analytics (MScAIBA) emphasizes a balanced coverage of subjects in AI and business analytics, as well as focuses on business data analytics by using AI techniques to solve practical business problems.
Aim
The programme is designed to educate students about the fundamental principles and practical applications of AI and business analytics techniques, especially in the domain of business, so that they can effectively apply AI tools and techniques when problem-solving, as well as analyse business problems by using data analytic skills and AI techniques when decision making.
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Admissions
Scholarships and Funding
Curriculum
Core Courses (Six courses)
- CDS504: Business Data Analytics
- CDS521: Foundation of Artificial Intelligence
- CDS522: Business Data Management
- CDS523: Principle of Data Analytics and Programming
- CDS524: Machine Learning for Business
- CDS525: Practical Application of Deep Learning
Elective Courses* (Any four)
- CDS505: Mobile Technology and Applications in eBusiness
- CDS510: Social Media for eBusiness
- CDS511: Project Management with Software
- CDS515: Business Decision Making with Software
- CDS526: Artificial Intelligence-based Optimisation
- CDS527: Big Data Analytics
- CDS528: Blockchain
- CDS529: Project for Artificial Intelligence and Business Analytics
- CDS530: Healthcare Analytics
- CDS531: Marketing Analytics and Intelligence
- SCI501: Location Intelligence
* The offering of elective courses is subject to sufficient demand and faculty availability.
Pre-entry Course
Applicants with no or limited background in computer science or statistics will be required to complete two pre-entry courses below:
- Introduction to Computing
- Statistics
Program Outcome
Special Features
- It provides students with knowledge that spans the core disciplines of Artificial Intelligence (AI) and business analytics and integrates various disciplines to allow students to better understand all aspects of AI and business analytics and how they are used in the real world.
- It takes into consideration more practical business applications and frontier technologies by combining AI and business analytics with blockchain, marketing, healthcare, geographical information systems, and optimisation. Thereby enhancing the competitiveness of graduates in the job market.
- It serves a wide range of professionals, decision and policymakers who need to process and analyse big data. It is also ideal for healthcare and public utility sector practitioners who understand the importance of AI and business analytics in enhancing the quality of society and the effectiveness of operations.
- It develops students’ analytical and critical thinking, as well as their problem-solving skills, which enables graduates to pursue careers as business analysts, data analysts, data scientists, and AI consultants/experts across various industries.
Program Tuition Fee
Career Opportunities
To graduate, students must complete six core subjects and four electives for a total of 30 credits. The core courses allow students to establish a strong foundation in AI and business analytics. A diversified choice of elective subjects is offered to cater for students' interests, abilities and career plans while students may learn more advanced and/or practical knowledge across various domains.