Advanced Diploma

In Artificial Intelligence and Machine Learning

About the Programme

As Singapore aim to triple AI workforce to 15,000 jobs by 2028, East Asia Institute of Management Advanced Diploma in Artificial Intelligence and Machine Learning (ADAIML) is a springboard to that wave. It is an advanced University Year 2 Programme designed to equip learners with specialized skills at the intersection of information technology and AI. This programme integrates theoretical knowledge with practical applications of AI technologies, preparing learners for the rapidly evolving landscape of intelligent systems as well as nurturing problem-solving abilities in them.

This programme provides students a pathway and admission into their desired undergraduate IT-related Bachelor’s degree programme in renowned and reputable universities in the UK, Australia and the USA.

Programme Highlight

Advanced AI concepts and delve into specialized areas to understand the complexities and applications of AI technologies

Hands-on experience in developing AI models, optimizing algorithms, and deploying AI solutions

Advanced technical skills in programming AI algorithms, data preprocessing, model evaluation, and optimization techniques

Responsible AI practices, ethical decision-making, and the societal impact of AI technologies

Industry-specific applications of AI and develop critical thinking skills to solve complex problems

Programme
Modules

This module provides an in-depth understanding of algorithm analysis, advanced data structures and sophisticated algorithm design techniques. Students will learn to optimize computational tasks through practical applications, project work, and theoretical studies. The course will prepare students to tackle complex problems with efficiency.

This module introduces learners to the concepts, techniques, and applications of data mining. The module will cover the entire data mining process, from data preparation and exploration to model building and evaluation. Learners will explore extracting valuable knowledge and gain insights from large datasets to solve real-world business problems. They will also gain practical experience using data mining tools and software.

This module introduces learners to methods and techniques for analysing problematic organisational situations. They will learn how to analyse business requirements, model systems, and design solutions that meet organizational needs. They will be exposed to both technical and organisational material to provide the knowledge and skills necessary to design and implement an operational system.

This module introduces learners to basic concept and fundamental principles of cloud computing and development platforms. They learn programming skills in cloud, design and develop cloud applications in various platforms. They are exposed to the technologies used in provisioning clouds, the application of cloud computing to solve problems, and the issues that must be considered when deploying cloud technologies in an organisation.

This module equips learners with the skills and knowledge to develop and deploy full-stack web applications.  It covers both front-end and back-end technologies, focusing on building dynamic and secure web applications Learners will gain proficiency in both front-end and back-end development, covering user interface (UI) design, web development frameworks, databases, server-side programming, and application deployment.

This module introduces learners to the fundamental concepts and tools used in data science. They will gain an understanding of the data science workflow, explore data collection, manipulation, analysis, and visualization techniques. Ethical considerations, policies, and legislations for data science will be introduced. The course will also equip learners with essential skills for data science applications.

This module introduces learners to introduce important concepts in machine learning and important algorithms and techniques in this field. They are exposed to data pre-processing, regression, classification, neural networks, tree learning, kernel methods, clustering, dimensionality reduction, ensemble methods, and large-scale ML. They learn how to design and implement machine learning and deep learning models for data analysis using Python.

This module introduces learners to the fundamental concepts and applications of Artificial Neural Networks (ANNs). They will gain theoretical knowledge of neural network architectures, learning algorithms, and optimization techniques. They will also develop practical skills in building and training neural networks for various tasks using popular deep learning libraries.

Course Details

Study Mode & Duration

Full-time 9 months (Face-to-face)

Part-time 9 months (Face-to-face)

Intakes

January

Programme Duration

Full-time:
05 January 2026 – 11 September 2026

Part-time:
05 January 2026 – 11 September 2026

April

Programme Duration

Full-time:
20 April 2026 – 18 December 2026 

Part-time:
20 April 2026 – 18 December 2026

May

Programme Duration

Full-time:
18 May 2026 – 29 January 2027

Part-time:
18 May 2026 – 29 January 2027

June

Programme Duration

Full-time:
15 June 2026 – 12 March 2027

Part-time:
15 June 2026 – 12 March 2027

July

Programme Duration

Full-time:
13 July 2026 – 09 April 2027

Part-time:
13 July 2026 – 09 April 2027

August

Programme Duration

Full-time:
17 August 2026 – 07 May 2027

Part-time:
17 August 2026 – 07 May 2027

September

Programme Duration

Full-time:
28 September 2026 – 02 July 2027

Part-time:
28 September 2026 – 02 July 2027

October

Programme Duration

Full-time:
26 October 2026 – 30 July 2027

Part-time:
26 October 2026 – 30 July 2027

November

Programme Duration

Full-time:
23 November 2026 – 27 August 2027 

Part-time:
23 November 2026 – 27 August 2027 

Average Teacher-Student Ratio

1:80 (Classroom-based lecture)*
1:40 (Workgroup session)

*Classification based on Classrooms A01 and A02, which can be combined to accommodate up to 80 students. 

Registration

1 month prior to intake date

Assessment

Each module is assessed by academic work comprising written assignments, case study reports, essays, examination as determined by the subject profile. The assessment criterion varies from module to module and level to level.

Graduation Requirement

• Must pass all modules.
• Must achieve an overall attendance of 90% (International Student) and 75% (Local Student).

Entry requirement

International Students / Local students
Age:
Minimum 17 years (at the time of application)
 

Academic Minimum Entry Requirement

  • EAIM Diploma in relevant field of study, or

  • Polytechnic Diploma in relevant field, or

  • BTEC Level 5 Higher National Diploma in relevant field of study, or

  • An equivalent academic qualification from a recognized higher learning institution will be considered on a case-by-case basis, subjected to final approval by the university

Mature Candidates: Applicants must be at least 30 years of age with 8 years of working experience

 
English Language Minimum Entry Requirement
  • Minimum EAIM Certificate in Business English – Advanced (Grade C),  or
  • IELTS 5.5, or
  • O-Level C6 English or equivalent, or
  • Minimum score of 85 in Duolingo English Test, or
  • Other equivalent English qualifications
 

Application Procedure
Interested applicants can contact us through any of the following methods:

  • Email: enquiries@eaim.edu.sg
  • Call: (65) 6252 5500

Course Fees

International Students
Course Fee
S$12,852.41
Administration Fee
S$1,199.00
Application Fee
S$588.60
Total Course Fee
S$14,640.01
Local Students (Full-time)
Course Fee
S$7,632.51
Administration Fee
S$654.00
Application Fee
S$163.50
Total Course Fee
S$8,450.01
Local Students (Part-time)
Course Fee
S$7,262.67
Administration Fee
S$654.00
Application Fee
S$163.50
Total Course Fee
S$8,080.17
  • The Application Fee is a one-time payment and is non-refundable.
  • The Adminstration Fee includes STP fee (for International students only), FPS Insurance, medical insurance, etc.
  • Prices are effective from 23 January 2026. 
  • All prices are inclusive of prevailing Goods & Services Tax (GST) of 9%.
  • Start of class is subjected to minimum class size of 10 achieved.
  • Other miscellaneous fees may apply. Click here to view a sample of EAIM standard PEI-Student Contract and Miscellaneous Fees.

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