Student on masters in data science in Singapore

UNIVERSITY ACCREDITED

Masters (MSc) in

Data Science

Solve real-world problems with cutting-edge analytics, applied AI, and advanced machine learning across the full data science lifecycle.

Duration

12 - 18 Months

Credits

90 ECTS credits

Next Intake

8 September 2025

Fee

SGD 18,000, SkillsFuture Subsidy available*

Masters (MSc) in

Data Science

UNIVERSITY ACCREDITED

Solve real-world problems with cutting-edge analytics, applied AI, and advanced machine learning across the full data science lifecycle.

Duration

12 - 18 Months

Credits

90 ECTS credits

Fee

SGD 18,000, SkillsFuture Subsidy available*

Next Intake

8 September 2025
Student on masters in data science in Singapore

UNIVERSITY ACCREDITED

Masters (MSc) in

Data Science

Solve real-world problems with cutting-edge analytics, applied AI, and advanced machine learning across the full data science lifecycle.

Duration

12 - 18 Months

Credits

90 ECTS credits

Next Intake

8 September 2025

Fee

SGD 18,000, SkillsFuture Subsidy available*
Student on masters in data science in Singapore

UNIVERSITY ACCREDITED

Masters (MSc) in

Data Science

Solve real-world problems with cutting-edge analytics, applied AI, and advanced machine learning across the full data science lifecycle.

Duration

12 - 18 Months

Credits

90 ECTS credits

Next Intake

June 2025

Fee

SGD 18,000, SkillsFuture Subsidy available*

Master Data Science. Transform Your Career in Just 18 Months.

Master Data Science. Transform Your Career in Just 18 Months.

Gain in-demand skills in programming, data management, and applied analytics with the MSc in Data Science Singapore — a part-time, hybrid programme designed for working professionals and career-switchers.

Learn through live workshops, coding labs, and industry case studies, and apply your skills in a capstone Applied Data Science Project tackling real-world business challenges.

Delivered in Singapore with Training Vision Institute, this 18-month SkillsFuture-funded course costs S$18,000 before subsidies. Eligible Singaporeans/PRs can enjoy nett fees as low as S$7,200 after SkillsFuture funding.

Why this programme

  • Stackable pathway — Earn your Professional Certificate in Data Analytics (CPDA) in 5 modules, then progress to the Professional Certificate in Data Science (CPDS) and MSc.

  • Flexible entry — No degree needed if you have relevant experience, or qualify after strong performance in your first 2 modules.

  • Global outcomes — Join a worldwide network of data science graduates now in top companies.

This MSc is equivalent to 90 ECTS credits — the standard European framework for postgraduate degrees, where 1 ECTS equals 25–30 hours of learning.

Limited seats. Classes start October — enquire today.

Gain in-demand skills in programming, data management, and applied analytics with the MSc in Data Science Singapore — a part-time, hybrid programme designed for working professionals and career-switchers.

Learn through live workshops, coding labs, and industry case studies, and apply your skills in a capstone Applied Data Science Project tackling real-world business challenges.

Delivered in Singapore with Training Vision Institute, this 18-month SkillsFuture-funded course costs S$18,000 before subsidies. Eligible Singaporeans/PRs can enjoy nett fees as low as S$7,200 after SkillsFuture funding.

Why this programme

  • Stackable pathway — Earn your Professional Certificate in Data Analytics (CPDA) in 5 modules, then progress to the Professional Certificate in Data Science (CPDS) and MSc.

  • Flexible entry — No degree needed if you have relevant experience, or qualify after strong performance in your first 2 modules.

  • Global outcomes — Join a worldwide network of data science graduates now in top companies.

This MSc is equivalent to 90 ECTS credits — the standard European framework for postgraduate degrees, where 1 ECTS equals 25–30 hours of learning.

Limited seats. Classes start October — enquire today.

Entry Requirements

*Eligible Singaporeans can enjoy SkillsFuture subsidies regardless of entry route.* We welcome applicants from diverse academic and professional backgrounds. Choose the entry route that fits you best:

Academic Entry Route

Professional Experience Route

Academic Entry Route

Ideal for candidates with a strong foundation in numerate or analytical fields such as Mathematics, Statistics, Computer Science, Engineering, Physics, Sciences, Economics, or quantitative Business Studies.

Minimum requirements:

  • Bachelor’s degree with at least a 2:1 Honours (or international equivalent)

  • Other qualifications with strong quantitative/analytical skills will also be considered

  • English proficiency: IELTS 6.5 or equivalent (if applicable)

Graduation Certificate

Entry Requirements

*Eligible Singaporeans can enjoy SkillsFuture subsidies regardless of entry route.* We welcome applicants from diverse academic and professional backgrounds. Choose the entry route that fits you best:

Academic Entry Route

Professional Experience Route

Academic Entry Route

Ideal for candidates with a strong foundation in numerate or analytical fields such as Mathematics, Statistics, Computer Science, Engineering, Physics, Sciences, Economics, or quantitative Business Studies.

Minimum requirements:

  • Bachelor’s degree with at least a 2:1 Honours (or international equivalent)

  • Other qualifications with strong quantitative/analytical skills will also be considered

  • English proficiency: IELTS 6.5 or equivalent (if applicable)

Academic Entry Route to Masters in Data Science

Entry Requirements

*Eligible Singaporeans can enjoy SkillsFuture subsidies regardless of entry route.* We welcome applicants from diverse academic and professional backgrounds. Choose the entry route that fits you best:

Academic Entry Route

Professional Experience Route

Academic Entry Route

Ideal for candidates with a strong foundation in numerate or analytical fields such as Mathematics, Statistics, Computer Science, Engineering, Physics, Sciences, Economics, or quantitative Business Studies.

Minimum requirements:

  • Bachelor’s degree with at least a 2:1 Honours (or international equivalent)

  • Other qualifications with strong quantitative/analytical skills will also be considered

  • English proficiency: IELTS 6.5 or equivalent (if applicable)

Graduation Certificate

Entry Requirements

*Eligible Singaporeans can enjoy SkillsFuture subsidies regardless of entry route.* We welcome applicants from diverse academic and professional backgrounds. Choose the entry route that fits you best:

Academic Entry Route

Professional Experience Route

Academic Entry Route

Ideal for candidates with a strong foundation in numerate or analytical fields such as Mathematics, Statistics, Computer Science, Engineering, Physics, Sciences, Economics, or quantitative Business Studies.

Minimum requirements:

  • Bachelor’s degree with at least a 2:1 Honours (or international equivalent)

  • Other qualifications with strong quantitative/analytical skills will also be considered

  • English proficiency: IELTS 6.5 or equivalent (if applicable)

Academic Entry Route to Masters in Data Science

Course Module and Learning Outcomes

You are provided with highly structured and detailed course content, broken down into 11 distinct units covering core skills and knowledge. 

MODULE 1: (6 ECTS CREDITS)

Exploratory Data Analysis

Most industry analysis starts with exploratory data analysis and a thorough study of this will help you to perform data health checks and provide initial business insights. You will gain a sound understanding of Python and R programming, descriptive statistics, data management and data visualisation. You will also learn SQL for big data pre-processing and prepare data for big data analytics. The module serves as an essential foundation for advanced analytics taught later in the course.

MODULE 1: (6 ECTS CREDITS)

Exploratory Data Analysis

Most industry analysis starts with exploratory data analysis and a thorough study of this will help you to perform data health checks and provide initial business insights. You will gain a sound understanding of Python and R programming, descriptive statistics, data management and data visualisation. You will also learn SQL for big data pre-processing and prepare data for big data analytics. The module serves as an essential foundation for advanced analytics taught later in the course.

MODULE 1: (6 ECTS CREDITS)

Exploratory Data Analysis

Most industry analysis starts with exploratory data analysis and a thorough study of this will help you to perform data health checks and provide initial business insights. You will gain a sound understanding of Python and R programming, descriptive statistics, data management and data visualisation. You will also learn SQL for big data pre-processing and prepare data for big data analytics. The module serves as an essential foundation for advanced analytics taught later in the course.

Programming in Python, R and SQL

Data management

Measures of central tendency and variation

Data visualisation

MODULE 2: (6 ECTS CREDITS)

Statistical Inference

Statistical inference is the process of drawing inferences or conclusions from data using statistical techniques. This is at the core of data science, and a strong understanding of statistics from the beginning is the prime ingredient for a competent data scientist. In this module, you will cover sampling, statistical distribution, hypothesis testing, and variance analysis and use R code to carry out various statistical tests and draw inferences from their output. 

Principles of statistical inference

Parametric tests

Non-parametric tests

Analysis of variance (ANOVA)

MODULE 3: (6 ECTS CREDITS)

Fundamentals of Predictive Modelling

Solutions to many business problems are related to successfully predicting future outcomes. This module introduces predictive modelling and provides a foundation for more advanced methods and machine learning. You’ll gain an understanding of the general approach to predictive modelling and then build simple and multiple linear regression models in Python and R and apply these in a range of contexts.

Predictive modelling principles

Linear regression models

Model validation

Python and R packages for predictive modelling

MODULE 4: (6 ECTS CREDITS)

Advanced Predictive Modelling

In this module, you are introduced to model development for categorical dependent variables. Binary dependent variables are encountered in many domains such as risk management, marketing, and clinical research, and this module covers detailed model building processes. Multinomial and ordinal logistic regression are also covered.

Logistic regression models

Survival analysis

Cox regression

Poisson regression

MODULE 5: (6 ECTS CREDITS)

Time Series Analysis

In this module, time series forecasting methods are introduced and explored. You will analyze and forecast macroeconomic variables such as GDP and inflation, as well as look at complex financial models using ARCH and GARCH, ARIMA, time series regression, exponential smoothing, and other models. 

Time series concepts

Assessing stationarity

ARIMA, ARCH, GARCH modelling

Panel Data Regression

MODULE 6: (6 ECTS CREDITS)

Unsupervised Multivariate Methods

Data reduction is a key process in data science, and you will learn to apply data reduction methods such as principal component analysis, factor analysis, and multidimensional scaling. You will also learn to segment and analyze large data sets using clustering methods, another key analytical technique that brings out rich business insight if carried out skillfully.

Principal Component Analysis

Factor Analysis

Multidimensional Scaling

Cluster Analysis

MODULE 7: (6 ECTS CREDITS)

Machine Learning 1

Machine learning algorithms are new generation algorithms used in conjunction with classical predictive modelling methods. In this Machine Learning 1 module, you will understand applications of the support vector machine, K-nearest neighbours, and naive bayes algorithms for classification and regression problems using case studies from a range of industries and sectors.

Naive Bayes Method

Support Vector Machine Algorithm

K-nearest neighbours

MODULE 8: (6 ECTS CREDITS)

Machine Learning 2

The Machine Learning 2 module continues developing your machine learning knowledge, and you will cover decision tree, random forest, and neural network algorithms for regression and classification, again drawing on case studies from real-world data. You will have the opportunity to compare the performance of machine learning algorithms against classical statistical models and learn to assess which are most appropriate for specific scenarios.

Decision Tree

Random Forest

Association Rules

Neural Networks

MODULE 9: (6 ECTS CREDITS)

Text Mining and Natural Language Processing

This module looks at analyzing unstructured data such as that found in social media, newspaper articles, videos, and more. In particular, you will look at methods for text mining and natural language processing using R and Python code to produce graphical representations of unstructured data and carry out sentiment analysis.

Structured vs unstructured data

Text mining in R and Python

Sentiment analysis using R and Python

MODULE 10: (6 ECTS CREDITS)

Data Science in Practice

The Data Science in Practice module provides you with an opportunity to apply your knowledge through project work. You will select a project from a specific domain and appropriately apply exploratory data analysis, statistical methods, and select appropriate advanced modelling techniques. This module also develops your scientific communication skills through the preparation of project reports and presentations.

The Data Science in Practice module provides you with an opportunity to apply your knowledge through project work. You will select a project from a specific domain and appropriately apply exploratory data analysis, statistical methods, and select appropriate advanced modelling techniques. This module also develops your scientific communication skills through the preparation of project reports and presentations.

Presentation and communication skills

Synthesis of data science knowledge

Application to real world data and scenarios

MODULE 11: (30 ECTS CREDITS)

Applied Data Science Practicum

This Postgraduate Major Project completes the MSc Data Science and students choose a problem from a particular business or social domain. They have the option of working on a real-world problem from their own organisation and work with a mentor in conjunction with their course supervisor.

Students are required to solve a research problem that involves carrying out exploratory data analysis, hypothesis testing, research design and usie a range of classical and/or modern machine learning modelling methods to predict outcomes and provide actionable insights and recommendations. In doing so they will apply technical capabilities together with research skills and critical thinking. A key part of the project is to communicate the output of the student’s research to both technical and non-technical audiences through written, verbal and visual means.

Critical and creative thinking

Application of technical expertise

Scientific communication

What our Students and Graduates Say

"As an Electrical Engineer, I aim to analyze data across various fields and plan to register for a master's degree. The recorded lectures and after-work class timings are convenient for me."

Mthulisi Mike Dube

Electrical Engineer, Solar PV Management Services, South Africa

What our Students and Graduates Say

"As an Electrical Engineer, I aim to analyze data across various fields and plan to register for a master's degree. The recorded lectures and after-work class timings are convenient for me."

Mthulisi Mike Dube

Electrical Engineer, Solar PV Management Services, South Africa

What our Students and Graduates Say

"As an Electrical Engineer, I aim to analyze data across various fields and plan to register for a master's degree. The recorded lectures and after-work class timings are convenient for me."

Mthulisi Mike Dube

Electrical Engineer, Solar PV Management Services, South Africa

What our Students and Graduates Say

"As an Electrical Engineer, I aim to analyze data across various fields and plan to register for a master's degree. The recorded lectures and after-work class timings are convenient for me."

Mthulisi Mike Dube

Electrical Engineer, Solar PV Management Services, South Africa

Course Delivery — Flexible, Interactive, and Built for Working Professionals in Singapore

Course Delivery — Flexible, Interactive, and Built for Working Professionals in Singapore

Our Masters in Data Science Singapore uses a cohort-based, part-time hybrid model so you gain practical skills, a strong peer network, and the confidence to excel in data-driven roles.
Learn through live, instructor-led sessions, self-paced content, and hands-on projects designed for real-world impact — all while balancing work, family, and study.

Our Masters in Data Science Singapore uses a cohort-based, part-time hybrid model so you gain practical skills, a strong peer network, and the confidence to excel in data-driven roles.
Learn through live, instructor-led sessions, self-paced content, and hands-on projects designed for real-world impact — all while balancing work, family, and study.

Why Our Delivery Works

Cohort-based learning — Build lasting connections, collaborate on projects, and progress alongside peers from diverse industries.

  • Flexible schedules — Mix live classes with on-demand content so you can learn anytime, anywhere.

  • One-to-one tutorials — Personalised support to tackle challenging topics and meet your learning goals.

  • Real-world group projects — Work on authentic case studies to strengthen problem-solving and teamwork skills.

  • Live concept classes — Apply advanced coding and modelling techniques to real industry scenarios.

  • Daily live support — Get quick answers from instructors and peers to stay on track.

  • Comprehensive learning platform — Revisit recorded sessions, download course materials, and access resources 24/7.

Flexible Schedules and Engaging Learning

Flexibility and comprehensive support

Structured schedules

interactive, hands-on learning experiences

Cohort based online data science course

Key Features

Flexible Schedules

Balance live, instructor-led sessions with self-paced content for an adaptable learning experience.

One-to-One Tutorials

Receive individualized guidance to address specific learning objectives or areas of interest.

Group Projects

Collaborate on authentic case studies, enhancing teamwork, problem-solving skills, and applied knowledge.

Live Concept Classes

Live Concept Classes

Take part in live Concept Classes to develop advanced skills and strengthen your understanding through practical coding and modeling exercises based on real-world scenarios.

Discord Channel

Personalized Learning &
Daily Live Support

Stay connected with peers and instructors through real-time updates, feedback, and collaborative tools.

Comprehensive Learning Platform

Access recorded live sessions, structured course materials, and supplementary resources at any time.

Internationally Accredited

Our Accreditation

The Data Science Institute is an accredited member of Woolf University, a recognized higher education institution in the European Union. All diploma and degree programs adhere to rigorous European Standards and Guidelines, ensuring international academic excellence and credibility.

ECTS – The Benchmark of Excellence

Our curricula are accredited through the European Credit Transfer and Accumulation System (ECTS), a recognized international standard and the world’s largest academic accreditation system. ECTS certification ensures widespread acceptance, facilitating both mobility and career development.

Why It Matters

Qualifications are internationally portable

Recognized by employers, institutions, and government agencies

Opens pathways for further academic progression and supports career development

Frequently Asked Questions

Frequently Asked Questions

Frequently Asked Questions




1. What career opportunities are available after the MSc in Data Science (Singapore)?

1. What career opportunities are available after the MSc in Data Science (Singapore)?

1. What career opportunities are available after the MSc in Data Science (Singapore)?

1. What career opportunities are available after the MSc in Data Science (Singapore)?

2. Is the MSc in Data Science (Singapore) suitable for professionals already working in data-related roles?

2. Is the MSc in Data Science (Singapore) suitable for professionals already working in data-related roles?

2. Is the MSc in Data Science (Singapore) suitable for professionals already working in data-related roles?

2. Is the MSc in Data Science (Singapore) suitable for professionals already working in data-related roles?

3. How is the MSc in Data Science (Singapore) structured and delivered?

3. How is the MSc in Data Science (Singapore) structured and delivered?

3. How is the MSc in Data Science (Singapore) structured and delivered?

3. How is the MSc in Data Science (Singapore) structured and delivered?

4. What is ECTS, and why is it beneficial for students in Singapore?

4. What is ECTS, and why is it beneficial for students in Singapore?

4. What is ECTS, and why is it beneficial for students in Singapore?

4. What is ECTS, and why is it beneficial for students in Singapore?

5. What if I already have a Postgraduate Diploma in Data Science?

5. What if I already have a Postgraduate Diploma in Data Science?

5. What if I already have a Postgraduate Diploma in Data Science?

5. What if I already have a Postgraduate Diploma in Data Science?

6. What kinds of assessments or projects can I expect in the MSc in Data Science (Singapore)?

6. What kinds of assessments or projects can I expect in the MSc in Data Science (Singapore)?

6. What kinds of assessments or projects can I expect in the MSc in Data Science (Singapore)?

6. What kinds of assessments or projects can I expect in the MSc in Data Science (Singapore)?

7. Is the MSc in Data Science (Singapore) accredited or recognised?

7. Is the MSc in Data Science (Singapore) accredited or recognised?

7. Is the MSc in Data Science (Singapore) accredited or recognised?

7. Is the MSc in Data Science (Singapore) accredited or recognised?

8. Can the ECTS credits from this MSc in Data Science (Singapore) be applied to further study or research?

8. Can the ECTS credits from this MSc in Data Science (Singapore) be applied to further study or research?

8. Can the ECTS credits from this MSc in Data Science (Singapore) be applied to further study or research?

8. Can the ECTS credits from this MSc in Data Science (Singapore) be applied to further study or research?

9. Can I apply if I don’t meet the 2.1 requirement?

9. Can I apply if I don’t meet the 2.1 requirement?

9. Can I apply if I don’t meet the 2.1 requirement?

9. Can I apply if I don’t meet the 2.1 requirement?

10. What about English language proficiency?

10. What about English language proficiency?

10. What about English language proficiency?

10. What about English language proficiency?

11. How do I apply for the MSc in Data Science (Singapore)?

11. How do I apply for the MSc in Data Science (Singapore)?

11. How do I apply for the MSc in Data Science (Singapore)?

11. How do I apply for the MSc in Data Science (Singapore)?

12. How much does the MSc in Data Science (Singapore) cost, and do I get professional certifications?

12. How much does the MSc in Data Science (Singapore) cost, and do I get professional certifications?

12. How much does the MSc in Data Science (Singapore) cost, and do I get professional certifications?

12. How much does the MSc in Data Science (Singapore) cost, and do I get professional certifications?

Where can I find more information or get assistance with the MSc in Data Science (Singapore)?

Where can I find more information or get assistance with the MSc in Data Science (Singapore)?

Where can I find more information or get assistance with the MSc in Data Science (Singapore)?

Where can I find more information or get assistance with the MSc in Data Science (Singapore)?

Enquire Now

To apply for the Postgraduate Diploma in Data Science, please complete the form.

Enquire Now

To apply for the Postgraduate Diploma in Data Science, please complete the form.

Enquire Now

To apply for the Postgraduate Diploma in Data Science, please complete the form.

Enquire Now

To apply for the Postgraduate Diploma in Data Science, please complete the form.