Course Information

  • Sessions 4 days
  • Duration 32 hrs
  • Level Advanced
  • Assessment 2 hrs

Venue

12 Woodlands Square #07-85/86/87 Woods Square Tower 1, Singapore 737715. 5 mins walk from Woodlands (NS9) MRT station.

The venue is disabled-friendly.

Skills Framework

TSC Title
: Generative AI Model Development and Fine Tuning
TSC Code
ICT-INT-0048-1.1

Learning Outcomes

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

  • LO1: Apply transformation methods to ingest and prepare synthetic data using cloud-based model tools.
  • LO2: Develop optimized data pipelines for feature engineering using various optimization strategies.
  • LO3: Fine-tune pre-trained multi-modal models using advanced loss metrics and training strategies.
  • LO4: Analyse ML solutions for bias, explainability, and alignment with performance benchmarks.
Download Course Brochure

Certification

  • Certificate of Completion from Tertiary Courses - Upon meeting at least 75% attendance and passing the assessment(s), participants will receive a Certificate of Completion from Tertiary Courses.
  • 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 - Generative AI Model Development and Fine Tuning

Course Code: TGS-2025059025
  • WSQ
  • SkillsFuture Credit
  • PSEA
  • UTAP
  • SFEC
  • Absentee Payroll
  • MCES

What's This Course About

In the era of advanced artificial intelligence, the ability to develop and fine-tune Generative AI (GenAI) models is critical for building high-performance, domain-specific solutions. This course, Generative AI Model Development and Fine Tuning, equips learners with the practical skills and technical knowledge to design, optimize, and evaluate modern AI models using cloud-based tools and frameworks.

Learners will begin by exploring techniques for data ingestion and transformation, including the use of synthetic data to enhance model performance and address data limitations. The course then focuses on building efficient data pipelines and feature engineering workflows, applying optimization strategies to improve model training and scalability.

Participants will gain hands-on experience in fine-tuning pre-trained multi-modal models, leveraging advanced training approaches, loss functions, and parameter optimization techniques to adapt models for specific use cases. Emphasis is placed on improving model accuracy, efficiency, and robustness in real-world deployment scenarios.

In addition, the course addresses critical considerations in modern AI development, including bias detection, explainability, and alignment with performance benchmarks. Learners will evaluate AI solutions to ensure they are reliable, ethical, and aligned with organizational and regulatory expectations.

By the end of the course, learners will be able to design end-to-end GenAI workflows—from data preparation to model fine-tuning and evaluation—enabling them to develop scalable, responsible, and high-performing AI solutions for a wide range of applications.

This course is suitable for data professionals, AI practitioners, and developers seeking to deepen their expertise in Generative AI model development, optimization, and fine-tuning techniques.

Bonus: Free Practice Exams

Get exam-ready on our Practice Exam Portal — train in realistic Practice Mode and timed Exam Mode, then retake them as many times as you like before the real exam.

Start Practising →

WSQ Funding

Full Fee $2,000.00 Before GST
GST $180.00 9% of fee
Baseline Nett $1,180.00 SG/PR age 21+ · 50% funded
MCES / SME Nett $780.00 SG age 40+ · 70% funded
WSQ Funding
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

UTAP

Eligible NTUC members can apply for 50% of the unfunded fee from UTAP, capped up to $250/year and for members aged 40 and above, capped up to $500/year. Click here to submit UTAP

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-2025059025)
  • 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 FeeBefore Funding

$2,000.00 (GST-exclusive)
$2,180.00 (GST-inclusive)

Course Date

* Required Fields

Additional Note

Please bring your own laptop for hands-on training. If you don't have laptop, we can provide spare laptop for training use.

Post-Course Support

  • 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.

Cancellation & Reschedule Policy

  • You can register your interest without upfront payment. There is no penalty for withdrawal of the course before the class commences.
  • 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

Course Details

What You'll Learn

LU1: Data Engineering

T1: Create data repositories for machine learning (K2)

T2: Identify and implement data ingestion solutions (K5, A2)

T3: Identify and implement data transformation techniques (A3)

LU2: Exploratory Data Analysis

T1: Clean, sanitize, and prepare data for modelling (K6, A5)

T2: Perform feature engineering to enhance model performance (K8)

T3: Analyze and visualize data for machine learning insights (K7)

LU3: Modelling

T1: Frame business problems as machine learning problems (K4)

T2: Select appropriate models for different machine learning tasks (A1)

T3: Train and validate machine learning models (K3)

T4: Perform hyperparameter tuning and optimization (A4)

T5: Evaluate model performance using appropriate metrics (K1)

Assessment

  • Written Exam
  • Practical Exam

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:

Hardware: Window or Mac Laptops

Job Roles

Job Roles

  • Machine Learning Engineer
  • Data Scientist
  • AWS ML Specialist
  • AI Engineer
  • Data Engineer
  • Cloud Machine Learning Architect
  • ML Operations Engineer
  • AI/ML Consultant
  • Applied Scientist
  • Deep Learning Engineer
  • Business Intelligence Developer
  • Cloud Solutions Architect
  • Data Analyst
  • DevOps Engineer (ML-focused)
  • Technical Product Manager (AI/ML)
  • AI Research Engineer
  • Software Engineer (ML Integration)
  • Big Data Specialist
  • IT Systems Engineer (AI Tools)
  • Automation Engineer (AI/ML)

Trainers

Trainers

Amin Mahetar is a cloud and DevOps engineer with over 15 years of experience in IT infrastructure, automation, and cloud solutions across AWS and Microsoft Azure environments. A Microsoft Certified Trainer (MCT) and Azure Administrator Associate, he has implemented and managed enterprise-scale cloud deployments across industries including finance, logistics, and manufacturing. His areas of expertise include virtualization, networking, identity management, and automation using PowerShell and Azure CLI. Known for his structured and hands-on training style, Amin has guided numerous professionals in achieving their Azure certifications and advancing their cloud careers.

Mohan Pothula is an accomplished Enterprise Architect with over 20 years of experience leading data strategy, AI adoption, and cloud modernization initiatives for global financial institutions and enterprises. He has designed large-scale AWS-based architectures for DBS Bank, SPH, and Mediacorp, integrating data platforms with microservices and big data analytics frameworks. His expertise covers enterprise data architecture, real-time analytics, cloud migration, and the implementation of CI/CD pipelines for scalable AI-driven systems. Mohan’s deep understanding of both business and technology domains enables him to align organizational strategy with cloud-native and machine learning capabilities.
In this AWS Certified Machine Learning Specialty Training course, Mohan provides a strategic and hands-on perspective on developing and deploying ML solutions at scale. He emphasizes architecting AI pipelines using AWS services such as SageMaker, Glue, Redshift, and Lambda—ensuring they meet enterprise-level performance, scalability, and compliance requirements. His sessions help learners master the intersection of data engineering and AI deployment within secure AWS infrastructures.

CY Quah is an ACLP-certified trainer and data science professional with extensive experience in Python, NLP, and machine learning. He has led AI training programs for SAP, Temasek Polytechnic, and IMDA under the SGUnited Mid-Career Pathways initiative, and has delivered corporate workshops on text analytics, recommender systems, and chatbot development. His expertise includes applying NLP tools such as NLTK, spaCy, and Gensim for sentiment analysis, topic modeling, and text classification.
Agus Salim is an experienced IT solutions and cybersecurity professional with a strong foundation in cloud infrastructure and project management. With over a decade of experience in systems integration, software development, and IT security across both enterprise and consulting environments, he brings a practical understanding of secure system design and deployment. His credentials include PMP, CompTIA Security+, CEH, and AWS Certified Cloud Practitioner, reflecting his balanced expertise in governance, risk management, and cloud operations. Agus has worked with leading organizations such as Citi and Check Point Software Technologies, providing hands-on technical and security support across multi-cloud platforms.

Dr. Alfred Ang is a distinguished AI and digital transformation leader with over 20 years of experience in advanced computing, machine learning, and workforce development. As Chief Instructional Designer, Chief Technology Officer, and Chief Information Officer of Tertiary Infotech Pte Ltd, he has developed more than 500 WSQ- and IBF-accredited courses, bridging technical depth with industry-aligned training. He holds a PhD from the National University of Singapore, Master’s degrees from NTU, and an MBA from U21 Global, complemented by certifications including AWS Certified Machine Learning – Specialty, AWS AI Practitioner, AWS SysOps Administrator, and Microsoft Certified Azure AI Engineer. His expertise spans deep learning, NLP, computer vision, and cloud-based ML pipelines, reinforced by industrial projects such as robotic vision systems, agentic AI workflows, and multimodal AI platforms
As an ACLP- and DACE-certified curriculum developer, Dr. Ang has trained thousands of professionals in data science, AI, and cloud technologies, delivering courses for financial institutions, corporates, and government agencies. His teaching emphasizes hands-on, applied learning using AWS SageMaker, ML pipelines, and deployment strategies that prepare learners for the AWS Machine Learning Specialty certification. In addition to technical mastery, he integrates responsible AI and ethical considerations into his pedagogy, ensuring learners build scalable and trustworthy ML solutions. With his proven record of innovation, mentorship of interns from NUS, SIT, and NYP, and leadership in both industry and education, Dr. Ang is ideally positioned to guide participants in mastering AWS machine learning tools and certifications for real-world applications

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