WSQ , IBF, SkillsFuture, PEI Approved Training Provider

WSQ - Optimizing Generative AI for Real World Deployments

WSQ Optimizing Generative AI for Real World Deployments provides learners with practical knowledge to implement and optimise generative AI models using industry-standard deep learning architectures such as GANs, VAEs, and Transformers. Participants will learn how to match model architectures to real-world problem statements, evaluate their suitability, and execute implementations using tools like TensorFlow, PyTorch, and Keras. Emphasis is placed on understanding generative theory, probabilistic modelling, and performance-based decision-making for effective deployments.

The course also equips learners with advanced data preparation techniques, including data cleaning, tokenisation, and embedding strategies essential for structured model training. Participants will explore model training needs, apply performance benchmarks, and use fine-tuning strategies to improve model outcomes. Hands-on practice in preprocessing, training, and optimising generative models makes this course ideal for aspiring AI developers, machine learning engineers, and technical professionals aiming to deliver real-world AI solutions effectively and responsibly.

Learning Outcomes

By end of the course, learners should be able to:

  • LO1: Implement generative AI models using deep learning architectures matched to problem requirements and evaluate model suitability.
  • LO2: Preprocess generative datasets using embeddings and tokenisation to prepare clean, structured data for model training.
  • LO3: Identify model training needs and apply optimisation techniques using benchmarks and performance metrics.
  • LO4: Train and refine generative models by evaluating weaknesses and applying targeted fine-tuning strategies.

Course Brochure

TBD

Skills Framework

This course follows the guideline of ICT-BAS-0048-1.1: Generative AI Model Development and Fine Tuning under ICT Skills Framework

Certification

  • Certificate of Completion from Tertiary Infotech - Upon meeting at least 75% attendance and passing the assessment(s), participants will receive a Certificate of Completion from Tertiary Infotech.

  • OpenCerts from SkillsFuture Singapore - After passing the assessment(s) and achieving at least 75% attendance, participants will receive a OpenCert (aka Statement of Achievement) from SkillsFuture Singapore, certifying that they have achieved the Competency Standard(s) in the above Skills Framework.

WSQ Funding

WSQ funding is only applicable to Singaporeans and PR. Subject to eligibility, the funding support is subjected to funding caps.

Effective for courses starting from 1 Jan 2024
Full Fee GST Nett Fee after Funding (Incl. GST)
Baseline MCES / SME
$1100.00 $99.00 $649.00 $429.00

Baseline: Singaporean/PR age 21 and above
MCES(Mid-Career Enhanced Subsidy): S'porean age 40 & above

Upon registration, we will advise further on how to tap on the WSQ Training Subsidy.


You can pay the nett fee (after the WSQ training subsidy) by the following :

SkillsFuture Enterprise Credit (SFEC)

Eligible Singapore-registered companies can tap on $10000 SFEC to cover out-of-pocket expenses.Click here to submit SkillsFuture Enterprise Credit

SkillsFuture Credit (SFC)

Eligible Singapore Citizens can use their SFC to offset course fee payable after funding but the $4,000 Additional SFC (Mid-Career Support) cannot be used. Click here for SkillsFuture Credit submission

PSEA

Eligible Singapore Citizens can use their PSEA funds to offset course fee payable after funding.

To check for Post-Secondary Education Account (PSEA) eligibility for this course, Visit SkillsFuture (course code: TGS-2026061312)

  • Scroll down to “Keyword Tags” to verify for PSEA eligibility.
  • If there is “PSEA” under keyword tags, the course is eligible for PSEA.

Once you are eligible for PSEA, please download and fill up the PSEA Withdrawal Form and email to us. 

Course Code: TGS-2026061312

Fee

$1,100.00 (GST-exclusive)
$1,199.00 (GST-inclusive)

The course fee listed above is before subsidy/grant, if applicable. We will apply for the grant and send you the invoice with nett fee.

Course Date

Course Time

* Required Fields

    Duration

    2 months (Full Time)

      Assessment

      3 hours onine assessment after each module

        Class (No of teacher: student): 1:20

          Intake

          • 3 Nov 2025 to 29 Sep 2026
          • 4 May 2026 to 26 June 2026
          • 2 Jan 2026 to 2 Mar 2026
          • 2 Mar 2026 to 27Apr 2026

          Enrolment Requirement

          • Age: 21 years old and above
          • Language Proficiency: At least C6 for GCE "O" Level English
          • Academic: At least C6 for GCE "O" Level in any 3 subjects

          Graduation Requirement

          • Attendance: 75%
          • Assessment: Passed

          Post-Course Support

          • (TESTING) We provide free consultation related to the subject matter after the course.
          • Please email your queries to enquiry@tertiaryinfotech.com and we will forward your queries to the subject matter experts.

          Course Cancellation/Reschedule Policy

          • You can register your interest without upfront payment. There is no penalty for withdrawal of the course before the class commerce.
          • We reserve the right to cancel or re-schedule the course due to unforeseen circumstances. If the course is cancelled, we will refund 100% for any paid amount.
          • Note the venue of the training is subject to changes due to availability of the classroom

          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

          Write Your Own Review

          You're reviewing: WSQ - Optimizing Generative AI for Real World Deployments

          • Reload captcha