Course Details
LU 1: Generative AI Theory
- T1: Probability theory and statistics (e.g., latent variables, probabilistic modelling)
- T2: Deep learning theory and algorithms (e.g., GANs, VAEs, Transformers)
- T3: Machine learning libraries (e.g., TensorFlow, PyTorch, Keras)
- T4: Implement generative models based on existing architectures
- T5: Analyse problem statements and requirements to select and implement appropriate generative models
LU 2: Generative AI Data Preparation
- T1: Common dataset formats and evaluation methodologies for generative tasks
- T2: Data pre-processing, de-duplication and cleaning techniques (including understanding of training data requirements for AI models, common data quality issues)
- T3: Embeddings and tokenisation
- T4: Preprocess and prepare data for generative training (e.g., clean and format datasets, use libraries (e.g., Pandas, NumPy) for data manipulation, split data into training, validation and test sets)
LU 3: Generative AI Model Training
- T1: Optimisation techniques for training neural networks
- T2: Parallel cluster training and inference
- T3: Loss functions and evaluation metrics for generative tasks
- T4: Train generative models on benchmark datasets
LU 4: Generative AI Model Fine Tuning
- T1: Fine-tuning techniques (e.g., supervised fine-tuning, parameter-efficient fine-tuning, perform inference)
- T2: Identify limitations and propose initial improvements to models
Course Info
Promotion Code
Your will get 10% discount voucher for 2nd course onwards if you write us a Google review.
Minimum Entry Requirement
Knowledge and Skills
- Able to operate using computer functions
- Minimum 3 GCE ‘O’ Levels Passes including English or WPL Level 5 (Average of Reading, Listening, Speaking & Writing Scores)
Attitude
- Positive Learning Attitude
- Enthusiastic Learner
Experience
- Minimum of 1 year of working experience.
Target Age Group: 18-65 years old
Minimum Software/Hardware Requirement
Software:
TBD
Hardware: Window or Mac Laptops
Job Roles
- AI Developer
- Machine Learning Engineer
- Data Scientist
- Deep Learning Specialist
- AI Research Assistant
- Software Engineer (AI)
- AI Solutions Architect
- NLP Engineer
- AI Systems Integrator
- Data Engineer
- Computer Vision Engineer
- Model Validation Analyst
- AI Innovation Specialist
- AI Product Developer
- Python Developer (AI Focus)
- Data Analyst (AI Track)
- AI Technical Consultant
- Applied Scientist (Generative AI)
- AI Deployment Specialist
- Research Engineer
Trainers
Dr. Alfred Ang: Dr. Alfred Ang is a distinguished expert in AI, digital transformation, and workforce development with over 20 years of experience in industry and adult education. As Chief Instructional Designer, Chief Technology Officer, and Chief Information Officer of Tertiary Infotech Pte Ltd, he has spearheaded the design and deployment of more than 500 WSQ- and IBF-accredited courses, aligning with national and international industry standards. His extensive technical portfolio spans generative and agentic AI, cloud computing, cybersecurity, blockchain, and robotics. With a PhD from the National University of Singapore and advanced certifications including PMP®, CSM®, AWS AI Engineer, Microsoft Azure Data Scientist, and SCS Certified Senior AI Ethics Professional, Dr. Ang combines academic depth with practical expertise to deliver impactful AI solutions
In addition to his leadership role, Dr. Ang has driven numerous industrial and in-house projects focused on real-world AI deployment, such as multimodal AI platforms, LLM-powered robotics, AI-driven automation workflows, and curriculum-generation systems powered by agentic AI. He has also consulted on workplace learning projects, guiding companies in adopting AI-powered business solutions while ensuring scalability, transparency, and measurable impact. As a mentor to university and polytechnic interns, he has cultivated the next generation of AI professionals, preparing them for careers in cybersecurity, robotics, and intelligent automation. Passionate about lifelong learning and practical innovation, Dr. Ang brings a unique perspective to optimizing generative AI for real-world deployments, integrating technical mastery with ethical and sustainable strategies








