EGK Microelectronic Solutions Group Sdn. Bhd. · Penang, Malaysia
Higher Education Series · Vol. 1
EGK AIQuest
Malaysia
A Programme Proposal for Diploma & Bachelor of
Artificial Intelligence and Machine Learning
First Edition · 2026 · MQA-Ready Submission Pack
Isaac Khor Eng Gian
Founder & Author, EGK Microelectronic Solutions Group Sdn. Bhd.
8, Lintang Beringin 8, Diamond Valley Industrial Park,
11960 Batu Maung, Penang, Malaysia
Tel: +604-505-9700 · www.egkhor.com.my
eISBN 978-629-94949-2-8
Table of Contents
Preliminary
—
Front Cover & Publication Details
i
—
Copyright Page
ii
—
Legal Notice & Disclaimer
iii
Main Chapters
01
Programme Overview & Rationale
1
02
Outcome-Based Education (OBE) Framework
9
03
Curriculum Architecture (Diploma & Degree)
21
04
Assessment Design & Student Learning Time
45
05
National & International Policy Alignment
61
Appendices
A
CLO–PLO Mapping Matrix (All Core Courses)
79
B
Student Learning Time (SLT) Calculations
85
—
Back Cover
97
Note: Pagination shown in this Table of Contents refers to the official print edition.
The HTML version is interactive and may not reflect identical page numbering or layout.
EGK AIQuest Malaysia · Table of ContentseISBN 978-629-94949-2-8
Publication Details / Maklumat Penerbitan
Title / Tajuk
EGK AIQuest Malaysia: A Programme Proposal for Diploma & Bachelor of Artificial Intelligence and Machine Learning
Author / Penulis
Isaac Khor Eng Gian
Founder & Chief Executive Officer, EGK Microelectronic Solutions Group Sdn. Bhd.
Publisher / Penerbit
EGK Microelectronic Solutions Group Sdn. Bhd.
8, Lintang Beringin 8, Diamond Valley Industrial Park,
11960 Batu Maung, Penang, Malaysia
Tel: +604-505-9700 · Website: www.egkhor.com.my
Email: sales@egkhor.com.my
First Published / Edisi
2026 (First Edition)
Format
Digital (HTML5 Interactive) · Print-Ready PDF
Subject Classification / Klasifikasi
Higher Education · Artificial Intelligence · Machine Learning · Malaysian Qualifications Framework · Outcome-Based Education
Copyright / Hak Cipta
© 2026 EGK Microelectronic Solutions Group Sdn. Bhd.
EGK AIQuest Malaysia · Publication Details
ISBN 978-629-94949-2-8
Legal Notice & Disclaimer
Copyright & Intellectual Property Protection
© 2026 EGK Microelectronic Solutions Group Sdn. Bhd. All rights reserved.
This publication, including but not limited to its curriculum architecture, programme structure, learning outcome frameworks (PEO, PLO, CLO), assessment design models, teaching methodologies, graphical representations, and proprietary educational systems under the “EGK AIQuest Malaysia” framework, is protected under Malaysian Copyright Act 1987 and international intellectual property conventions.
No part of this publication may be reproduced, adapted, distributed, transmitted, displayed, or used to create derivative works—including academic programmes, training modules, or institutional curricula—without prior written permission from the publisher.
Unauthorised replication of the programme structure or systematic framework in whole or in substantial part, whether for commercial or institutional use, shall constitute intellectual property infringement and may result in legal action.
Disclaimer
This programme proposal is developed in alignment with the Malaysian Qualifications Framework (MQF) and Malaysian Qualifications Agency (MQA) guidelines. It is intended for academic planning, institutional reference, and accreditation submission purposes only.
The final approval, accreditation status, curriculum validation, staffing requirements, and physical resource compliance remain the sole responsibility of the adopting higher education institution and relevant regulatory authorities.
Limitation of Liability
The author and publisher shall not be held liable for any direct or indirect consequences arising from the use of this document without formal institutional approval or regulatory endorsement.
Licensing & Institutional Use
This programme framework is not open-source. Institutions, training providers, or organisations wishing to implement EGK AIQuest Malaysia must enter into a formal licensing agreement with EGK Microelectronic Solutions Group Sdn. Bhd.
Licensing may include:
Curriculum adoption rights
Co-branding agreements
Instructor training and certification
Access to proprietary teaching materials and platforms
Unauthorised institutional deployment of this framework without licensing is strictly prohibited.
Trademark Notice
“EGK AIQuest Malaysia”, associated logos, mascots, and programme identifiers are proprietary marks of EGK Microelectronic Solutions Group Sdn. Bhd.
Unauthorised use of these marks in academic programmes, marketing materials, or institutional offerings is strictly prohibited and may constitute trademark infringement.
Usage Notice
This document may be used for internal academic development, benchmarking, and submission to regulatory bodies such as MQA. Any commercial reproduction or redistribution without permission is strictly prohibited.
NDA
This document is distributed under controlled review conditions and may be subject to Non-Disclosure Agreement (NDA) provisions when shared with partner institutions, evaluators, or regulatory bodies.
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Legal Notice
© 2026 EGK Microelectronic Solutions Group
01
Programme Overview & Rationale
The case for AI & ML higher education in Malaysia
1.1 Introduction
The emergence of Artificial Intelligence and Machine Learning as foundational technologies of the twenty-first century has created an urgent and unprecedented demand for skilled graduates in Malaysia. The nation's commitment to the MyDIGITAL Blueprint, the IR4.0 National Policy, and the continued evolution of the Malaysia Higher Education Blueprint 2015–2025 collectively demand a new generation of AI-literate, ethically grounded, and technically proficient professionals.
EGK AIQuest Malaysia is a higher education programme proposal developed by EGK Microelectronic Solutions Group Sdn. Bhd. — builders of Malaysia's pioneering EGK CodeQuest coding education platform. This proposal presents a complete, MQA-compliant, OBE-structured academic programme framework for two qualification levels: a Diploma in Artificial Intelligence and Machine Learning (MQF Level 4) and a Bachelor of Artificial Intelligence and Machine Learning Honours (MQF Level 6).
Programme Philosophy
EGK AIQuest Malaysia is designed to produce graduates who are not merely competent in AI tools, but who understand the mathematics, ethics, and societal implications of intelligent systems — particularly within the Malaysian context.
1.2 Programme Titles & Classification
| Programme | MQF Level | Credits | Duration | Mode |
| Diploma in Artificial Intelligence and Machine Learning |
Level 4 |
90–100 |
2.5–3 Years |
Full-Time |
| Bachelor of Artificial Intelligence and Machine Learning (Honours) |
Level 6 |
120–140 |
4 Years |
Full-Time |
1.3 Needs Analysis & Justification
Malaysia's digital economy is projected to contribute up to 22.6% of GDP by 2025. The World Economic Forum estimates that AI and data-related roles will account for more than 85 million job displacements and 97 million new positions globally by 2025. Within Malaysia, demand for AI practitioners has consistently outpaced supply across financial services, manufacturing, healthcare, and government sectors.
Existing computing programmes in Malaysia address general software engineering and information systems. A dedicated AI and Machine Learning programme — designed around Malaysia's local datasets, Bahasa Malaysia NLP challenges, palm oil agricultural AI, and smart city applications — fills a critical gap in the nation's talent pipeline.
Key Market Gap
As of 2025, fewer than 8 Malaysian public universities offer dedicated AI/ML degrees. Industry surveys indicate that 73% of Malaysian tech companies report difficulty filling AI and data science roles with locally trained graduates.
1.4 Programme Educational Objectives (PEO)
Programme Educational Objectives describe what graduates are expected to achieve within 3–5 years of graduation. These are distinct from Programme Learning Outcomes (PLO) and are aligned with the institution's mission and national development goals.
Diploma PEO
| PEO | Description |
| PEO D1 | Perform competent technical AI/data support roles in Malaysian industry |
| PEO D2 | Apply AI tools and platforms under professional supervision |
| PEO D3 | Demonstrate ethical and professional conduct in technology environments |
| PEO D4 | Pursue lifelong learning or pathway to bachelor's degree |
Degree PEO
| PEO | Description |
| PEO B1 | Lead AI solution development and deployment in organisations |
| PEO B2 | Innovate AI-driven products and services for national digital economy |
| PEO B3 | Apply responsible AI governance and ethical principles |
| PEO B4 | Contribute to Malaysia's position in the global AI landscape |
PROPRIETARY FRAMEWORK DECLARATION
The integration of Outcome-Based Education (OBE), AI-specialised curriculum sequencing, Malaysian contextual datasets, and industry-linked assessment models constitutes a unique intellectual system design.
Any institution intending to adopt, adapt, or implement this framework must obtain formal licensing or written authorisation from the publisher.
Independent recreation of substantially similar programme structures, learning outcome mappings, or curriculum architectures derived from this document will be considered a violation of intellectual property rights.
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Chapter 1: Programme OverviewPage 1
02
Outcome-Based Education Framework
PEO · PLO · CLO · SLT — the complete OBE architecture
2.1 OBE Architecture
Outcome-Based Education (OBE) is the foundational philosophy required by the Malaysian Qualifications Agency for all higher education programme accreditation. The OBE model operates in a hierarchical structure: institutional mission informs Programme Educational Objectives (PEO), which are operationalised through Programme Learning Outcomes (PLO), which are demonstrated at the course level through Course Learning Outcomes (CLO), assessed through structured assessments, and quantified through Student Learning Time (SLT).
MQA Requirement
All courses submitted for MQA accreditation must demonstrate explicit CLO–PLO mapping, SLT calculations, and aligned assessment methods. This chapter provides the complete OBE framework for EGK AIQuest Malaysia.
2.2 Programme Learning Outcomes (PLO)
PLOs are measurable statements describing what a graduate should know, do, and be upon completing the programme. The following 9 PLOs are aligned to the MQF domain structure and MQA Computing Programme Standards:
PLO 1
AI & Computing Knowledge: Apply foundational knowledge of artificial intelligence, machine learning algorithms, data science, and computing systems to solve real-world problems.
PLO 2
Critical Thinking (HOTS): Analyse complex, open-ended AI problems using higher-order thinking, evidence-based reasoning, and systematic problem decomposition.
PLO 3
AI System Design: Design, develop, and deploy AI-driven solutions using appropriate models, architectures, and engineering techniques.
PLO 4
Technical & Practical Skills: Demonstrate hands-on proficiency in programming, data engineering, ML model development, and deployment workflows.
PLO 5
Communication: Communicate AI concepts, findings, and recommendations effectively in both Bahasa Malaysia and English, in written and oral forms.
PLO 6
Teamwork & Leadership: Collaborate effectively in multidisciplinary teams and demonstrate leadership in AI project delivery.
PLO 7
Ethics & Professionalism: Apply responsible AI principles, ethical governance frameworks, and professional conduct standards in all AI-related work.
PLO 8
Lifelong Learning: Engage in self-directed learning and adapt continuously to emerging AI technologies, tools, and research directions.
PLO 9
Societal & National Responsibility: Understand and address the social, environmental, cultural, and national development implications of AI systems in the Malaysian context.
2.3 Sample Course Learning Outcomes (CLO)
The following demonstrates the OBE structure for the core Machine Learning course (3 credits), showing how CLOs map to PLOs and are assessed through aligned methods.
| CLO | Description | Bloom's Level | PLO Mapped | Assessment |
| CLO 1 | Explain foundational ML concepts, terminology and algorithm families | Remember / Understand | PLO 1 | Assignment, Exam |
| CLO 2 | Apply supervised and unsupervised ML algorithms to real datasets | Apply | PLO 3, PLO 4 | Lab, Project |
| CLO 3 | Evaluate and compare model performance using appropriate metrics | Analyse / Evaluate | PLO 2 | Project, Midterm |
| CLO 4 | Communicate ML findings and model decisions with appropriate justification | Evaluate / Create | PLO 5 | Project Presentation |
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Chapter 2: OBE FrameworkPage 9
03
Curriculum Architecture
Diploma (MQF 4) & Degree (MQF 6) — year-by-year course structure
3.1 Diploma Curriculum (MQF Level 4)
The Diploma in AI & ML provides a foundational technical pathway, preparing graduates for entry-level AI support roles or articulation into the degree programme.
Core Computing (40%)
Programming Fundamentals 3 cr
Data Structures 3 cr
Database Systems 3 cr
Web & Mobile Dev 3 cr
Operating Systems Basics 2 cr
AI & Data (30%)
Introduction to AI 3 cr
Machine Learning Basics 3 cr
Data Analytics 3 cr
Data Visualization 2 cr
Mathematics (10%)
Discrete Mathematics 3 cr
Basic Statistics for AI 3 cr
MPU + Industrial (20%)
Philosophy & Current Issues 2 cr
Ethics & Civilisation 2 cr
BM Communication 2 cr
Entrepreneurship 2 cr
Industrial Training 6 cr
3.2 Degree Curriculum (MQF Level 6)
Year 1 — Mathematical & Computing Foundations
Semester 1
Programming I (Python) 3 cr
Discrete Mathematics 3 cr
Introduction to AI 3 cr
Communication Skills 2 cr
Islamic Studies / Moral 2 cr
Semester 2
Programming II (C++) 3 cr
Calculus for Computing 3 cr
Linear Algebra 3 cr
Probability & Statistics 3 cr
Philosophy & Critical Thinking 2 cr
Year 3 — AI Core Modules
Semester 5
Machine Learning 3 cr
Data Mining 3 cr
MLOps & AI Engineering 3 cr
Data Visualization 3 cr
Ethics in AI 2 cr
Semester 6
Research Methods in AI 3 cr
Cloud Computing for AI 3 cr
Human-Computer Interaction 3 cr
AI Project I 3 cr
Malaysian Society & Technology 2 cr
Year 4 — Advanced AI + Capstone
Semester 7
Deep Learning 3 cr
Natural Language Processing 3 cr
Computer Vision 3 cr
Reinforcement Learning 3 cr
Generative AI & LLMs 3 cr
Semester 8 + Capstone
Final Year Project I 3 cr
Final Year Project II 3 cr
Industrial Training (6 mo) 12 cr
AI Policy & Governance 2 cr
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Chapter 3: Curriculum ArchitecturePage 21
04
Assessment Design & Student Learning Time
14-week teaching plans · SLT calculations · OBE-aligned assessment
4.1 Assessment Philosophy
EGK AIQuest Malaysia employs an OBE-aligned assessment strategy where every assessment task directly evaluates one or more CLOs, which in turn map to PLOs. The assessment design follows MQA's recommended split of continuous assessment (40–60%) and final assessment (40–60%), ensuring consistent measurement of graduate attribute attainment throughout the programme.
Sample: Machine Learning Course (3 Credits)
4.2 14-Week Teaching Plan
MQA requires a structured week-by-week teaching plan for all courses. Below is the complete plan for the core Machine Learning course.
| Week | Topic | Learning Activity | Assessment |
| 01 | Introduction to Machine Learning | Lecture + Discussion | — |
| 02 | Data Preprocessing & Feature Engineering | Lab Session | Assignment given |
| 03 | Linear & Polynomial Regression | Lecture + Tutorial | Assignment submission |
| 04 | Classification: KNN, Naïve Bayes | Lab + Assignment | Lab marks |
| 05 | Model Evaluation: Accuracy, F1, ROC | Case Study (Malaysia data) | Quiz 1 |
| 06 | Overfitting, Regularization, Cross-Validation | Lab | Quiz 2 |
| 07 | ⚡ Midterm Assessment | Written Examination | 20% |
| 08 | Unsupervised Learning: K-Means, DBSCAN | Lecture + Lab | Project brief given |
| 09 | Decision Trees & CART | Lab | Project milestone 1 |
| 10 | Ensemble: Random Forest, Gradient Boosting | Lab | Project milestone 2 |
| 11 | Hyperparameter Tuning & Grid Search | Lab + Seminar | Project milestone 3 |
| 12 | Ethics in ML: Bias, Fairness, Explainability | Group Discussion | Ethics report |
| 13 | 🏆 Project Presentations | Oral Presentation | 30% |
| 14 | Revision & Future Directions in ML | Review + Q&A | Final exam prep |
4.3 Student Learning Time (SLT)
Under the Malaysian Qualifications Framework, 1 credit = 40 hours of Student Learning Time (SLT). For a 3-credit course, the total SLT is 120 hours, distributed across scheduled and unscheduled learning activities.
| Activity | Description | Hours | % of SLT |
| Lectures | 14 weeks × 3 hours/week | 42 | 35% |
| Tutorials | 7 sessions × 2 hours | 14 | 12% |
| Laboratory | 7 lab sessions × 2 hours | 14 | 12% |
| Self-Directed Study | Independent reading, online resources | 35 | 29% |
| Assessment Preparation | Assignments, project, exam prep | 15 | 12% |
| Total SLT | 1 credit × 40 hours × 3 credits | 120 | 100% |
MQA Note
SLT calculations must be completed for every course in the programme and submitted as part of the MQA Programme Specification (MQA-01). The template above should be replicated across all 30–40 courses in the full submission.
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Chapter 4: Assessment DesignPage 45
05
National & International Policy Alignment
MOHE · MQA · MQF · UNESCO · IR4.0 · MyDIGITAL
5.1 Malaysian National Frameworks
MOHE Higher Education Blueprint (2015–2025)
EGK AIQuest Malaysia directly supports all five system aspirations of the Malaysia Higher Education Blueprint: access, quality, equity, unity, and efficiency. The programme's bilingual delivery (Bahasa Malaysia + English), emphasis on ethics and national identity, industry-embedded capstone projects, and structured industrial training are direct responses to the Blueprint's call for holistic, entrepreneurial, and balanced graduates.
Malaysian Qualifications Framework (MQF)
| MQF Domain | Implementation in Programme |
| Knowledge | AI theory, ML algorithms, mathematical foundations |
| Cognitive Skills | Problem solving labs, case studies, HOTS assessments |
| Functional Work Skills | Python coding, data engineering, cloud deployment |
| Personal & Entrepreneurship | Entrepreneurship module, innovation-led capstone |
| Interpersonal Skills | Group projects, oral presentations, teamwork |
| Communication & IT | Technical writing, BM & English reports, version control |
| Values, Attitudes & Professionalism | Ethics in AI module, MPU subjects, industrial training |
5.2 UNESCO Four Pillars of Learning
| UNESCO Pillar | Integration in EGK AIQuest Malaysia |
| Learning to Know | Mathematical foundations, AI theory, computing principles |
| Learning to Do | Laboratory sessions, projects, internship, capstone |
| Learning to Live Together | Ethics module, teamwork, Malaysian society & technology |
| Learning to Be | Leadership, innovation, lifelong learning, entrepreneurship |
5.3 Industry & National Digitalisation
The curriculum is calibrated against Malaysia's industrial and economic transformation priorities:
| National Priority | Curriculum Response |
| IR4.0 Manufacturing AI | MLOps, computer vision, IoT-ML integration module |
| MyDIGITAL Blueprint | Cloud AI, data governance, national digital talent goals |
| Smart City AI | Case studies on Penang, KL smart traffic systems |
| AgriTech (Palm Oil AI) | Regression and yield-prediction datasets in ML labs |
| Bahasa Melayu NLP | Dedicated NLP module with BM corpus and sentiment tasks |
| Healthcare AI | Classification projects using Malaysian health datasets |
| FinTech & Islamic Finance | AI in finance elective, fraud detection case studies |
Submission Readiness Statement
This programme proposal is structured to meet all MQA Programme Specification (MQA-01 and MQA-02) requirements. Institutional additions required before final submission include: official governance and senate approval minutes, academic staff CV matrix and workload table, physical facilities verification report, external examiner appointment, and student intake plan.
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Chapter 5: Policy AlignmentPage 61
A
Appendix A: CLO–PLO Mapping Matrix
Audit-ready mapping for all core programme courses
The following matrix summarises CLO-to-PLO alignment for core degree courses. A ✔ indicates a strong mapping where the course's CLOs directly address the stated PLO. This table is mandatory for MQA accreditation submission.
| Course |
PLO1 | PLO2 | PLO3 | PLO4 | PLO5 |
PLO6 | PLO7 | PLO8 | PLO9 |
| Programming I & II | ✔ | ✔ | ✔ | ✔ | | ✔ | | ✔ | |
| Discrete Mathematics | ✔ | ✔ | | | | | | ✔ | |
| Linear Algebra | ✔ | ✔ | ✔ | | | | | ✔ | |
| Probability & Statistics | ✔ | ✔ | ✔ | | | | | ✔ | |
| Data Structures & Algorithms | ✔ | ✔ | ✔ | ✔ | | | | ✔ | |
| Database Systems | ✔ | ✔ | ✔ | ✔ | ✔ | | | ✔ | |
| Software Engineering | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | |
| Machine Learning | ✔ | ✔ | ✔ | ✔ | ✔ | | ✔ | ✔ | ✔ |
| Data Mining | ✔ | ✔ | ✔ | ✔ | | | ✔ | ✔ | ✔ |
| Deep Learning | ✔ | ✔ | ✔ | ✔ | | | ✔ | ✔ | ✔ |
| NLP | ✔ | ✔ | ✔ | ✔ | ✔ | | ✔ | ✔ | ✔ |
| Computer Vision | ✔ | ✔ | ✔ | ✔ | | | ✔ | ✔ | ✔ |
| Reinforcement Learning | ✔ | ✔ | ✔ | ✔ | | | ✔ | ✔ | |
| Ethics in AI | ✔ | ✔ | | | ✔ | ✔ | ✔ | ✔ | ✔ |
| Research Methods | ✔ | ✔ | ✔ | | ✔ | ✔ | ✔ | ✔ | ✔ |
| Capstone Project | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ | ✔ |
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Appendix A: CLO–PLO MatrixPage 79
B
Appendix B: SLT Summary Table
Student Learning Time across all Year 3 & 4 AI core courses
The following table provides SLT calculations for all Year 3 and Year 4 AI core courses. Each row represents a complete course. Total SLT = credits × 40 hours per the Malaysian Qualifications Framework.
| Course | Cr | Total SLT |
Lecture | Tutorial | Lab | Self-Study | Assessment |
| Machine Learning | 3 | 120 | 42 | 14 | 14 | 35 | 15 |
| Data Mining | 3 | 120 | 42 | 14 | 14 | 35 | 15 |
| MLOps & AI Engineering | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Data Visualization | 3 | 120 | 42 | 14 | 14 | 35 | 15 |
| Ethics in AI | 2 | 80 | 28 | 14 | 0 | 28 | 10 |
| Research Methods in AI | 3 | 120 | 42 | 14 | 0 | 50 | 14 |
| Deep Learning | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Natural Language Processing | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Computer Vision | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Reinforcement Learning | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Generative AI & LLMs | 3 | 120 | 28 | 14 | 28 | 35 | 15 |
| Capstone Project I + II | 6 | 240 | 14 | 0 | 56 | 100 | 70 |
| Year 3–4 Total | 38 | 1520 |
— | — | — | — | — |
Note to Institutions
Year 1 and Year 2 SLT tables follow the same template. Complete tables for all 130+ credits should be prepared and bound as a separate internal MQA document. EGK can provide full templates upon institutional engagement.
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.
EGK AIQuest Malaysia · Appendix B: SLT SummaryPage 85
"EGK AIQuest Malaysia represents Malaysia's most complete, MQA-ready higher education AI programme framework — built by educators, technologists, and nation-builders with one goal: equipping Malaysia's next generation to lead the age of intelligent machines."
Artificial Intelligence
Machine Learning
MQF Level 4 & 6
MQA Compliant
OBE Framework
MOHE Blueprint
UNESCO Aligned
Higher Education Malaysia
MyDIGITAL
IR4.0
Responsible AI
Bilingual BM + EN
EGK Microelectronic Solutions Group Sdn. Bhd.
8, Lintang Beringin 8, Diamond Valley Industrial Park,
11960 Batu Maung, Penang, Malaysia
Tel: +604-505-9700 · www.egkhor.com.my
eISBN 978-629-94949-2-8
Published by EGK Microelectronic Solutions Group Sdn. Bhd.
First Edition · 2026
Document Traceability Code
Document ID: EGK-AIQ-2026-V1.0
Distribution Tier: Controlled Circulation
Each distributed copy of this document may contain embedded identifiers, formatting signatures, or structural markers unique to the recipient organisation. These identifiers are used for traceability in the event of unauthorised distribution or replication.