Academic Jobs Logo
National University of Singapore (NUS) Jobs

Research Assistant (IDS - Urban Intelligence Integration Framework for CityScan Phase 2)

Applications Close:

National University of Singapore (NUS)

Kent Ridge Campus

5 Star Employer Ranking
Is this job right for you? View Vital Job Information and Save Time

Research Assistant (IDS - Urban Intelligence Integration Framework for CityScan Phase 2)

Staff

2026-06-08

Location

Kent Ridge Campus

National University of Singapore (NUS)

Type

Staff / Administration

Required Qualifications

BSc/MSc Computer Science (AI/ML/Big Data)
Python programming
PyTorch/TensorFlow
Data engineering
Research paper reading
Git/CI/CD

Research Areas

Urban Intelligence Integration
Multi-Scale Data Processing
Temporal Relationship Intelligence
LLM-Powered Social Simulation
Agentic AI
Spatio-temporal Foundation Models
71% Job Post Completeness

Our Job Post Completeness indicates how much vital information has been provided for this job listing. Academic Jobs has done the heavy lifting for you and summarized all the important aspects of this job to save you time.

Apply Now

Research Assistant (IDS - Urban Intelligence Integration Framework for CityScan Phase 2)

Overview

We are looking to recruit a Research Assistant for the project “Urban Intelligence Integration Framework (UI²F) for CityScan Phase 2”, which will be hosted at the Institute of Data Science (IDS), National University of Singapore (NUS) and led by Prof Ng See Kiong. This project aims to advance urban analytics methodology through a novel urban intelligence integration framework.

Only shortlisted candidates will be notified. Please include links to your GitHub repositories showcasing your best project relevant to these topics in your CV/cover letters.

Job Description

Job Summary: The Research Assistant will support research and engineering activities for developing a novel urban intelligence integration framework with Foundational Multi-Scale Data Processing, Temporal Relationship Intelligence, and Intelligent LLM-Powered Social Simulation and Decision Support capabilities. You will help design, implement, and evaluate agentic AI approaches; build and maintain software prototypes and experimental testbeds; and assist with data, documentation, and stakeholder engagement. This role provides hands-on experience across AI research and practical deployment at IDS.

Responsibilities:

  • Design and write robust, readable, and reusable code components and applications to implement state-of-the-art research outcomes in machine learning, artificial intelligence, and big data.
  • Perform data engineering tasks including data cleansing and processing for analysis of real-world datasets.
  • Assists with the editing and preparation of manuscripts, reports and presentations.
  • Participate in presentations and demos for exhibiting work at appropriate events.

Requirements

  • Bachelors or Masters in Computer Science with a focus in AI, Machine Learning and Big Data.
  • Solid programming and application development skills (Python preferred) and experience with ML frameworks (e.g., PyTorch, TensorFlow) and modern development practices (Git, testing, CI/CD).
  • Ability to develop robust systems and prototypes with fast turn-around.
  • Possesses research background with ability to read and understand methodologies in research papers.
  • Fluent in English and good team-player.
  • Prior AI expertise with knowledge and interest in spatio-temporal foundation models and urban data analytics is preferred.

Tell them AcademicJobs.com sent you!

Apply Now

Frequently Asked Questions

🎓What qualifications are required for this Research Assistant role at NUS IDS?

Candidates need a Bachelor's or Master's in Computer Science with focus on AI, Machine Learning, and Big Data. Prior expertise in spatio-temporal foundation models and urban data analytics is preferred. Strong research background to read and understand methodologies in papers is essential. Check similar roles on our research assistant jobs page for more opportunities.

💻What key skills and tools are needed for the Urban Intelligence Integration Framework project?

Solid Python programming and experience with ML frameworks like PyTorch or TensorFlow are required. Proficiency in modern practices like Git, testing, CI/CD, data cleansing, and building robust prototypes is crucial. Interest in agentic AI and urban analytics preferred. Explore tips in our guide to excelling as a research assistant.

📝How to apply for this Research Assistant position in CityScan Phase 2?

Only shortlisted candidates will be notified. Include links to your GitHub repositories showcasing relevant projects in your CV/cover letter. Apply via NUS channels before the 2026-06-08 deadline. Visit research jobs for application best practices.

🔬What are the main responsibilities in this NUS IDS Research Assistant role?

Design and implement AI/ML code components, perform data engineering on real-world datasets, assist with manuscripts/reports/presentations, and participate in demos. Focus on Urban Intelligence Integration Framework with multi-scale processing and LLM-powered simulation. See research role success tips.

📍Where is the position located and what is the employment type?

Located at Kent Ridge Campus, NUS, Singapore. This is a Staff / Administration role in Laboratory and Research, providing hands-on AI research and deployment experience at IDS. No visa sponsorship mentioned. Browse administration jobs for similar positions.

🏙️What is the research focus of the CityScan Phase 2 project at NUS?

Led by Prof Ng See Kiong, the project advances urban analytics via a novel Urban Intelligence Integration Framework (UI²F) featuring foundational multi-scale data processing, temporal intelligence, and intelligent LLM-powered social simulation. Ideal for those interested in agentic AI and urban data.

No Job Listings Found

There are currently no jobs available.

Receive university job alerts

Get alerts from AcademicJobs.com as soon as new jobs are posted

View More