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National University of Singapore (NUS)

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Kent Ridge Campus

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"Research Fellow (Dept of the Built Environment)"

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Research Fellow (Dept of the Built Environment)

Research Fellow

2026-05-16

Location

Kent Ridge Campus

National University of Singapore

Type

Academic / Faculty

Required Qualifications

PhD Atmospheric Science/Meteorology/Hydrology
Machine Learning Experience
Spatio-temporal Data Analytics
Remote Sensing & Reanalysis
Strong Programming Skills
Publication Record

Research Areas

Extreme Convective Hazards
Maritime Continent Climate
Convection Initiation
Weather Forecasting ML
NWP & Nowcasting
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Research Fellow (Dept of the Built Environment)

Research Fellow (Dept of the Built Environment)

Posting Start Date: 09/03/2026

Job Description

  • Conduct research to improve understanding and forecasting of extreme convective hazards in the Maritime Continent.
  • Review the literature on maritime climate modelling.
  • Analyse convective storms with emphasis on convection initiation, using multi-source observational datasets, remote sensing products, and reanalysis.
  • Integrate and compare observations, NWP model outputs, and nowcasting model products for hazard prediction workflows.
  • Develop and apply machine learning–based post-processing methods to enhance forecast skill for convective hazards.
  • Perform spatio-temporal data analytics on weather and/or hydrological fields.
  • Collaborate closely with project team members; contribute to end-to-end research activities and shared datasets/tools.
  • Lead and contribute to peer-reviewed publications, conference presentations, and internal research reporting.
  • Maintain organized research workflows (version control, reproducible experiments, documentation).
  • Support broader project goals as needed (e.g., dataset curation, method benchmarking, cross-validation with partners).

Job Requirements

  • Ph.D. in Atmospheric Science, Meteorology, Hydrology, Machine Learning, Physics, or related discipline (completed or expected within 2–3 months).
  • Demonstrated experience with spatio-temporal data analytics for weather and/or hydrological fields.
  • Proven machine learning experience (e.g., post-processing, prediction, classification/regression, uncertainty estimation, model evaluation).
  • Familiarity with remote sensing products and reanalysis datasets; ability to integrate multi-source observational data.
  • Strong programming skills.
  • Good publication record in relevant journals.
  • Strong written and oral communication skills.
  • Highly organized, proactive, and able to work both independently and collaboratively in a multidisciplinary team.
  • Proficient command of spoken and written English.
  • Experience working with or evaluating NWP outputs and/or nowcasting systems is advantageous.
  • Prior experience in international research collaborations is a plus.

More Information

Location: Kent Ridge Campus

Organization: College of Design and Engineering

Department: The Built Environment

Employee Referral Eligible: No

Job requisition ID: 31999

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Frequently Asked Questions

🎓What qualifications are required for this Research Fellow role?

Candidates must hold a Ph.D. in Atmospheric Science, Meteorology, Hydrology, Machine Learning, Physics, or related field (completed or soon). Key skills include spatio-temporal data analytics for weather/hydrology, proven machine learning (post-processing, prediction), familiarity with remote sensing and reanalysis, programming, publications, and communication. Explore similar postdoc positions or postdoctoral success tips.

🔬What are the main responsibilities of this position?

Responsibilities include conducting research on extreme convective hazards in the Maritime Continent, literature review on maritime climate modelling, analyzing convection initiation with observations/remote sensing/reanalysis, integrating NWP/nowcasting for hazard prediction, developing machine learning post-processing, spatio-temporal analytics, collaboration, publications, and organized workflows. See research jobs for related opportunities.

📅When is the application deadline and how to apply?

Applications close on May 16, 2026 (expiration date). Posting starts March 9, 2026. Apply via the official apply now link on the NUS site. Prepare CV highlighting PhD, ML, and publications. Check free resume templates for academic CV tips.

🏢Where is the job located and what is the department?

Located at Kent Ridge Campus, National University of Singapore (NUS), in the Department of The Built Environment, College of Design and Engineering. Ideal for geoscience and atmospheric researchers. View research assistant jobs in similar locations.

What advantageous experiences are highlighted?

Advantageous: Experience with NWP outputs/nowcasting systems, international collaborations. Strong organization, independence, and teamwork essential. Boost your profile with research assistant excellence tips or cover letter templates.

💼Is there salary or visa sponsorship information?

No salary details provided. Visa sponsorship not mentioned—contact NUS HR. Employee referral ineligible. Focus on academic research perks like publications and collaborations. See professor salaries for benchmarks.

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