Synopsis
Topics
- Introduction to R and RStudio
- R operations and programming
- Data management in R
- Principles of data storytelling and essential descriptive statistics
- Introduction to R for data visualisation
- The Grammar of Graphics and its components
- Data preprocessing and data management with tidyverse
- Reproducible workflow with RMarkdown
- APIs for data acquisition
- Visualising time series, numerical, categorical, and table data
- Visualising spatial data
- Storyboarding and best practices for data storytelling
Learning Outcome
- Assess the data requirements for data visualisation
- Compose data-rich visualisations based on the principles of Grammar of Graphics
- Critique data stories constructively
- Construct R programs for data visualisation
- Create RMarkdown documents as part of a reproducible workflow
- Design and implement a data visualisation workflow from data acquisition, data transformation, and then to data visualisation
- Demonstrate understanding of descriptive statistics in the context of data visualisation
Date and Duration
| Day | Date | Week | Time |
|---|---|---|---|
| Tuesday | 6 Jan 2026 | 0 | 07:00 pm - 10:00 pm |
| Tuesday | 13 Jan 2026 | 1 | 07:00 pm - 10:00 pm |
| Tuesday | 20 Jan 2026 | 2 | 07:00 pm - 10:00 pm |
| Tuesday | 27 Jan 2026 | 3 | 07:00 pm - 10:00 pm |
| Tuesday | 3 Feb 2026 | 4 | 07:00 pm - 10:00 pm |
| Tuesday | 10 Feb 2026 | 5 | 07:00 pm - 10:00 pm |
| Saturday | 21 Feb 2026 | 6 | 12:00 pm - 03:00 pm |
Target Audience
Executives interested analytics.
Relevance of Course to employment/upskilling/reskilling
ANL501 Data Visualisation and Storytelling supports employment, upskilling, and reskilling by training learners to turn data into clear visuals and compelling narratives for decision-making. These skills are widely demanded across analytics and business roles, strengthening professionals’ ability to communicate insights to diverse stakeholders and drive action in data-driven organisations.
Admissions pre-requisite
Refer to graduate CET admissions and also include Admission Eligibility Criteria for Graduate CET Modular Courses (Admission Eligibility Criteria for Graduate CET Modular Courses).
Schedule
| Time | Agenda | Deliverables |
|---|---|---|
| Session 0 | Pre-Lecture
| - |
| Session 1 | Introduction to R
| - |
| Session 2 | Data Management and Data Storytelling Principles
| - |
| Session 3 | Getting Started with ggplot2
| - |
| Session 4 | Visualising Distributions and Trends
| TMA Due: Before Session 5 |
| Session 5 | Enhancing Data Storytelling with Data Preprocessing, Comparison Plots, Labels and Annotations
| - |
| Session 6 | Visualisation Across Space: Chloropleth Maps and Spatial Plots, and Further Issues in Data Visualisation
| ECA Due: 2-weeks after Session 6 |
Assessments
Assignments, Online Test, Others, Written Exam, PARTICIPATION
Trainer info
A/P Nicholas Sim is Associate Professor and Director of the University Research Office at the Singapore University of Social Sciences (SUSS). He previously served as Head of Programme for the Graduate Programmes in Analytics and Visualisation in the SUSS School of Business. His research is in applied econometrics, with a focus on the development and application of methods for causal inference and measurement. His work examines questions in development economics and political economy with particular emphasis on policy-relevant empirical analysis, and draws on advanced econometric techniques including quasi-experimental designs and panel data methods to study institutional quality, governance, and socio-economic outcomes. Prior to joining SUSS, Dr Sim was a faculty member at the University of Adelaide’s School of Economics, where he chaired the PhD programme and served as Associate Dean in the Faculty of Professions. He holds a PhD in Economics from Boston College and a Bachelor’s degree from the National University of Singapore, where he graduated with First Class Honours and was awarded the Economic Society of Singapore Gold Medal.
Dr Ren Jing is a Senior Lecturer with the School of Business at the Singapore University of Social Sciences (SUSS). Her research spans interdisciplinary areas including artificial intelligence, recommendation systems, user-generated content analysis, and fintech. She teaches both theoretical and practical modules on AI across undergraduate and graduate programmes, covering domains such as Business Analytics, Finance, Analytics & Visualisation, and AI for Business. She holds a B.Sc. Eng. and M.Sc. Eng. from Hefei University of Technology with First Class Honours, and a Ph.D. in Information Systems and Data Science from Singapore Management University.
Course Completion requirements
Participants are required to achieve at least 75% attendance and pass any prescribed examinations/assessments or submit any course/project work (if any) under the course requirement.
- Participants are required to complete all surveys and feedbacks related to the course
- The course fees are reviewed annually and may be revised. The University reserves the right to adjust the course fees without prior notice.
- Singapore University of Social Sciences reserves the right to amend and/or revise the above schedule without prior notice
Course Fees, payment and refund policy
| International Participants | Singapore Citizens (below 40yrs), Permanent Residents | Singapore Citizens (40yrs and above) SkillsFuture Mid - Career Enhanced Subsidy1 | Enhanced Training Support for SMEs2 (Singaporean and PRs) | |
|---|---|---|---|---|
| Course Fees (A) | $3,168.00 | $2,640.00 | $2,640.00 | $2,640.00 |
| SSG Grant (70%) (B) | $1,848.00 | $1,848.00 | $1,848.00 | |
| Nett Course fees (A) - (B) = (C) | $3,168.00 | $792.00 | $792.00 | $792.00 |
| 9% GST on Nett course fees (D) | $285.12 | $71.28 | $71.28 | $71.28 |
| Total nett course fees payable including GST (C) + (D) | $3,453.12 | $863.28 | $863.28 | $863.28 |
| Less additional funding if eligible under various schemes (F) | $- | $- | $528.00 | $528.00 |
| Total nett course fees payable including GST, after additional funding form the various schemes (E) - (f) = (H) | $3,453.12 | $863.28 | $335.28 | $335.28 |
For the various payment mode, please refer here.
For the refund policy, please refer here.
For clarification, please contact the SUSS Academy via the following:
Telephone: +65 6248 0263
Email: [email protected]