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Research Fellow (Machine Learning) 1

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National University of Singapore (NUS)

Kent Ridge Campus

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Research Fellow (Machine Learning) 1

Research Fellow

2026-06-08

Location

Kent Ridge Campus

National University of Singapore

Type

Full-time Research Staff

Start Date

2026-04-06

Required Qualifications

PhD in Computer Science, Data Science, Engineering, Physics
Python & PyTorch expertise
Multi-GPU/distributed training
Geospatial/sensor data handling
Strong communication skills

Research Areas

Hybrid Physics-AI Methods
Weather Forecasting
Multimodal AI Spatiotemporal Prediction
Geospatial Computational Modelling
Uncertainty Quantification
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Research Fellow (Machine Learning) 1

Research Fellow (Machine Learning) 1

University-Level Unit: College of Design and Engineering

Faculty/Department-Level Unit: Mechanical Engineering

Employee Category: Research Staff

Location: Kent Ridge Campus

Posting Start Date: 06/04/2026

Job Description

We are recruiting full-time Research Fellows to develop hybrid physics-AI methods for weather applications

Available data include:

  • Numerical weather prediction (NWP) model outputs
  • Weather satellite imagery
  • Radar observations
  • Lightning detection networks
  • Surface sensor observations (e.g., rainfall and wind)

The successful candidates will:

  • Develop and benchmark multimodal AI / foundation-model approaches for spatiotemporal forecasting.
  • Build reproducible AI training and evaluation pipelines, as well as uncertainty quantification strategies.
  • Work at the intersection of physics and AI, with an emphasis on geospatial computational modelling.
  • Collaborate with domain experts and (where relevant) operational stakeholders.
  • Drive scientific breakthroughs and contribute to publications and cross-institutional collaborations

Qualifications

Required / strongly preferred

  • PhD in Computer Science, Data Science, Engineering, Physics, or related.
  • Strong Python and PyTorch; experience with multi-GPU/distributed training and performance optimization.
  • Experience with real-world geospatial/sensor data (quality control, cleaning, visualization).
  • Strong communication and collaboration skills.

Highly desirable

  • Deep learning expertise: generative models, physics-aware learning, uncertainty modelling.
  • Dense spatiotemporal prediction (e.g., video prediction, precipitation nowcasting).
  • Atmospheric science / tropical meteorology background (a plus, not required).

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Frequently Asked Questions

🎓What qualifications are required for this Machine Learning Research Fellow role?

The position requires a PhD in Computer Science, Data Science, Engineering, Physics, or related fields. Strong proficiency in Python and PyTorch, including multi-GPU and distributed training, plus hands-on experience with geospatial and sensor data (quality control, cleaning, visualization) is essential. Excellent communication and collaboration skills are also mandatory. Learn more about research jobs and postdoc opportunities.

🔬What are the key responsibilities in this weather applications Research Fellow position?

You will develop and benchmark multimodal AI and foundation models for spatiotemporal forecasting using data like NWP outputs, satellite imagery, radar, lightning networks, and surface sensors. Tasks include building reproducible AI pipelines, uncertainty quantification, working at the physics-AI intersection, collaborating with experts, and contributing to publications. Explore postdoctoral research success tips.

🚀What desirable skills boost my chances for this NUS Machine Learning role?

Highly desirable: Expertise in deep learning (generative models, physics-aware learning, uncertainty modelling), dense spatiotemporal prediction (e.g., video prediction, precipitation nowcasting), and background in atmospheric science or tropical meteorology (preferred but not required). Check research assistant jobs for similar roles.

📝How do I apply for this Research Fellow position at Kent Ridge Campus?

Applications are open from 2026-04-06 until 2026-06-08. Click the Apply now link in the original posting. Prepare your CV highlighting PyTorch projects and geospatial data experience. Visit free resume template and cover letter template for academic applications.

🌩️What data sources will I work with in this hybrid physics-AI weather project?

Available data includes Numerical Weather Prediction (NWP) outputs, weather satellite imagery, radar observations, lightning detection networks, and surface sensor observations (e.g., rainfall, wind). Focus on multimodal AI for forecasting. Related advice in research assistant excellence.

Is prior experience in atmospheric science necessary for this NUS role?

No, a background in atmospheric science or tropical meteorology is highly desirable but not required. Core needs are AI/ML skills and geospatial data handling. Domain experts will collaborate. See research jobs for interdisciplinary opportunities.

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