National University of Singapore (NUS) Jobs

National University of Singapore (NUS)

Applications Close:

Kent Ridge Campus

5 Star Employer Ranking

"Research Fellow (Human Mobility & Behavioural Modeler)-Cities Foresight Lab(CFL), NUS Cities"

Academic Connect
Applications Close
Is this job right for you? View Vital Job Information and Save Time

Research Fellow (Human Mobility & Behavioural Modeler)-Cities Foresight Lab(CFL), NUS Cities

Research Fellow

2026-05-17

Location

Kent Ridge Campus, Singapore

National University of Singapore (NUS)

Type

Research Staff

Start Date

2026-03-10

Required Qualifications

PhD in Computational Social Science, Transportation Engineering, Data Science or related
Expertise in predictive modelling of human behaviour and mobility
Python proficiency (Pandas, Geopandas, Scikit-Learn, PyTorch/TensorFlow)
Experience with large-scale multi-modal datasets
Proven publications in reputable journals
Agent-based modelling (ABM) preferred

Research Areas

Human Mobility
Behavioural Modelling
Urban Planning
Public Health
Data Science
Spatiotemporal Analysis
79% 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.

Research Fellow (Human Mobility & Behavioural Modeler)-Cities Foresight Lab(CFL), NUS Cities

University-Level Unit: College of Design and Engineering

Faculty/Department-Level Unit: Architecture

Employee Category: Research Staff

Location: Kent Ridge Campus

Posting Start Date: 10/03/2026

Apply now

Job Description

  • Cities Foresight Lab (CFL) is a growing multi-disciplinary research group at NUS building deep S&T capabilities at the intersection of urban planning, policy and strategic insight.
  • The Community Assets and Activity Chain Modelling (CA-ACM) project is a research study commissioned by the Health Promotion Board to investigate how Singapore’s built environment shapes residents’ daily activities and lifestyle patterns. The project aims to identify features of the built environment that make active living intuitive and natural; develop composite indicators to measure and rank the attractiveness of different urban settings for various population groups; and uncover how these environmental features influence the type of physical activities people choose to engage in. The project brings together experts in urban studies, data science, public health, and social science research to surface evidence-based insights and design strategies that promote more active living.
  • We are seeking a highly motivated and talented Research Fellow to lead the design and implementation of data engineering infrastructure and large-scale modelling of the CA-ACM project.

Responsibilities

  • Develop the data infrastructure and modelling pipelines
  • Design and implement scalable ETL workflows to integrate large-scale spatiotemporal, behavioural, and health-related datasets.
  • Perform data fusion and feature engineering on diverse, multi-modal data sources (e.g., wearables, spatiotemporal, built environment data)
  • Design and implement advanced statistical and/or ML models to derive individual archetypes and surface latent patterns from large-scale multi-modal datasets (e.g., spatiotemporal mobility chain, wearables, geospatial, survey).
  • Design and implement sequence prediction and simulation models, including but not limited to Markov and/or Choice model variants.
  • Collaborate with a team of qualitative and quantitative researchers to achieve overall project goals; supervise and mentor Research Assistants
  • Contribute to research synthesis, writing publications and presenting findings at academic conferences, workshops, and stakeholder meetings.

Qualifications

  • A PhD in Quantitative fields such as Computational Social Science, Transportation Engineering, Computer Science/Data Science, or other related disciplines.
  • Demonstrable expertise in predictive modelling of human behaviour and mobility using advanced statistical and ML techniques. Experience with agent-based modelling (ABM) is preferred.
  • Proficiency in building data and modelling pipelines using Python (e.g., Pandas, Geopandas, Scikit-Learn, PyTorch/TensorFlow). Knowledge of other programming languages is a plus.
  • Experience working with large-scale multi-modal datasets.
  • Proven track record of research excellence, demonstrated through publications in reputable journals and conferences.
  • Experience working in interdisciplinary research teams and collaborating across diverse fields.
  • Excellent project management and organizational skills.
  • Strong communication skills, with the ability to convey complex ideas to both academic and non-academic audiences.
  • Ability to work independently and collaboratively in a

Tell them AcademicJobs.com sent you!

Apply Now

Frequently Asked Questions

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

Candidates need a PhD in Quantitative fields such as Computational Social Science, Transportation Engineering, Computer Science/Data Science, or related disciplines. Demonstrable expertise in predictive modelling of human behaviour and mobility using advanced statistical and ML techniques is essential. Agent-based modelling (ABM) experience is preferred. Learn more about thriving in research roles via our postdoctoral success guide. Proven publications and interdisciplinary collaboration are key.

💻What technical skills are needed for data infrastructure and modelling?

Proficiency in Python for building data and modelling pipelines (e.g., Pandas, Geopandas, Scikit-Learn, PyTorch/TensorFlow) is required. Experience with scalable ETL workflows, data fusion, feature engineering on multi-modal datasets (wearables, spatiotemporal, built environment), and models like Markov or Choice models is crucial. Explore research jobs for similar opportunities.

🔬What are the main responsibilities in the CA-ACM project?

Lead design and implementation of data engineering infrastructure and large-scale modelling. Develop ETL workflows, perform data fusion and feature engineering, implement statistical/ML models for archetypes and patterns, build sequence prediction models, collaborate with researchers, supervise RAs, and contribute to publications and presentations. Details align with research assistant roles in urban studies.

📝How to apply for this NUS Cities Foresight Lab position?

Applications open from 10/03/2026 with deadline 17/05/2026. Click 'Apply now' via the NUS portal. Prepare CV highlighting PhD, publications, and Python/ML skills. Tailor to interdisciplinary urban mobility research. Use our free resume template for academic CVs.

🤝What is the work environment and team collaboration like?

Join the multi-disciplinary Cities Foresight Lab (CFL) at NUS, collaborating with experts in urban studies, data science, public health, and social sciences on the CA-ACM project for Health Promotion Board. Supervise RAs, work at Kent Ridge Campus, with strong project management needed. Excellent communication for academic and stakeholder audiences. See research assistant excellence tips (adaptable to Singapore).

📊Is experience with specific datasets or tools preferred?

Yes, experience with large-scale multi-modal datasets like wearables, spatiotemporal mobility, geospatial, and survey data. ABM preferred. Proficiency in handling spatiotemporal, behavioural, health-related data. Check postdoc jobs for related data science roles in higher ed.

No Job Listings Found

There are currently no jobs available.

Express interest in working

Let know you're interested in opportunities

Express Interest

Receive university job alerts

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

Post a job vacancy

Are you a Recruiter or Employer? Post a new job opportunity today!

Post a Job
View More
 
Great
Trustpilot
TrustScore 4.2 | 21 reviews