Research Fellow in Machine Learning for Hydroclimatology in Southampton
Research Fellow in Machine Learning for Hydroclimatology

Research Fellow in Machine Learning for Hydroclimatology in Southampton

Southampton Full-Time 36000 - 60000 £ / year (est.) No home office possible
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At a Glance

  • Tasks: Lead innovative ML projects to predict the global hydrological cycle and address climate challenges.
  • Company: Join the University of Southampton's Hydroclimatology Group, a leader in research and innovation.
  • Benefits: Enjoy a supportive environment with flexible working, family-friendly policies, and career development opportunities.
  • Why this job: Make a real-world impact on water resource management and climate resilience through cutting-edge research.
  • Qualifications: PhD or nearing completion in a quantitative field; expertise in advanced ML and programming required.
  • Other info: Be part of a diverse team committed to equality and inclusivity in research.

The predicted salary is between 36000 - 60000 £ per year.

We are seeking a highly motivated Research Fellow to join the Hydroclimatology Group at the University of Southampton, led by Professor Justin Sheffield. You will lead the development and application of innovative Machine Learning (ML) frameworks to understand and predict the global hydrological cycle. The role will require bridging the gap between process-based physical modeling and scalable deep learning. You will contribute to several high-impact projects addressing hydrological extremes and their feedbacks within climate and human systems. Your work will have real-world impact, providing decision support for water-energy-food-health problems and enhancing early warning systems for global hazard risks.

The role will consist of:

  • Methodological innovation: Develop cutting-edge ML models, including hybrid physics-informed approaches, to improve the estimation, monitoring and prediction of hydrological variables.
  • Big data integration: Process and fuse multi-terabyte datasets, including satellite products, in-situ observations, and climate model ensembles.
  • Process understanding: Develop and test hypotheses about the variability and interactions of hydrological processes across scales.
  • Collaborative research: Work alongside national and international stakeholders to translate methodological innovations into understanding and tools that improve water resource management, sustainable development of water-energy-food systems, hazard early warning, and reduction of health and environmental impacts.
  • Dissemination: Lead the preparation of high-impact manuscripts for peer-reviewed journals and present findings at international conferences.

Required qualifications and experience: To succeed, you will hold a PhD (or be close to completion) in Computer Science, Applied Mathematics/Statistics, Physics, Meteorology, Hydrology, or a related quantitative field. You will have technical expertise in one or more of the following:

  • Advanced ML: Expertise in Deep Learning architectures, particularly those suited for spatiotemporal data (e.g., CNNs, LSTMs, Transformers, or Graph Neural Networks).
  • Hybrid modeling: Experience with physics-informed machine learning or the integration of ML with data assimilation/multivariate statistics.
  • Software frameworks: Excellent programming skills in Python, R or similar, with experience in frameworks such as PyTorch, TensorFlow, JAX, etc.
  • HPC & Big Data: Proficiency in high-performance computing (HPC) environments and experience with geospatial libraries (e.g., Xarray, Dask).

Desired Experience:

  • Prior experience with quantifying and understanding climate variability and extremes (floods, droughts, heatwaves, …).
  • Knowledge of uncertainty quantification and probabilistic forecasting.
  • Familiarity with sectors such as water resources systems, disaster risk mapping, agriculture, water-dependent energy systems, or ecosystem services.

This position is based in the School of Geography and Environmental Science. You will join a supportive, world-class research group within a University committed to fostering a culture of equality, diversity and inclusion. The School is committed to providing equal opportunities for all and offers a range of family friendly policies, flexi-time and flexible working. We are a Disability Confident employer and the School holds a bronze Athena SWAN award.

Further Information

Term: Full-time fixed term until 28 June 2028 (with potential for extension subject to funding). We are committed to equality, diversity and inclusion and welcome applicants who support our mission of inclusivity. Apply by 11.59 pm GMT on the closing date. For assistance contact Recruitment on +44(0)2380 592750 or recruitment@soton.ac.uk quoting the job number.

Research Fellow in Machine Learning for Hydroclimatology in Southampton employer: University of South Hampton

The University of Southampton offers an exceptional work environment for the Research Fellow in Machine Learning for Hydroclimatology, fostering a culture of equality, diversity, and inclusion. With access to world-class resources and collaborative opportunities, employees can engage in impactful research that addresses critical global challenges. The university also provides flexible working arrangements and a supportive atmosphere, ensuring that staff can thrive both professionally and personally.
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Contact Detail:

University of South Hampton Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Research Fellow in Machine Learning for Hydroclimatology in Southampton

✨Tip Number 1

Network like a pro! Reach out to people in the Hydroclimatology field, especially those who are already working at the University of Southampton. A friendly chat can open doors and give you insights that could make your application stand out.

✨Tip Number 2

Show off your skills! Prepare a portfolio or a presentation that highlights your previous work with Machine Learning and hydrological data. This will not only demonstrate your expertise but also your passion for the role.

✨Tip Number 3

Practice makes perfect! Get ready for interviews by rehearsing answers to common questions about your experience with ML frameworks and big data integration. The more comfortable you are, the better you'll perform!

✨Tip Number 4

Apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you’re serious about joining our team and contributing to impactful research in Hydroclimatology.

We think you need these skills to ace Research Fellow in Machine Learning for Hydroclimatology in Southampton

Machine Learning
Deep Learning
Spatiotemporal Data Analysis
Hybrid Physics-Informed Modeling
Data Assimilation
Multivariate Statistics
Python Programming
R Programming
PyTorch
TensorFlow
JAX
High-Performance Computing (HPC)
Geospatial Libraries
Climate Variability Understanding
Uncertainty Quantification

Some tips for your application 🫡

Tailor Your Application: Make sure to customise your CV and cover letter to highlight your relevant experience in machine learning and hydroclimatology. We want to see how your skills align with the role, so don’t hold back on showcasing your expertise!

Showcase Your Projects: If you've worked on any projects related to hydrological processes or machine learning, be sure to mention them! We love seeing practical applications of your skills, especially if they relate to big data or innovative modelling techniques.

Be Clear and Concise: When writing your application, keep it straightforward and to the point. We appreciate clarity, so avoid jargon unless it's necessary. Make it easy for us to see why you’re a great fit for the team!

Apply Through Our Website: Don’t forget to submit your application through our official website! It’s the best way to ensure we receive all your details correctly and can process your application smoothly.

How to prepare for a job interview at University of South Hampton

✨Know Your ML Models Inside Out

Make sure you can discuss the latest advancements in machine learning, especially those relevant to spatiotemporal data. Be prepared to explain how you would apply deep learning architectures like CNNs or LSTMs to hydrological problems.

✨Showcase Your Big Data Skills

Be ready to talk about your experience with processing large datasets. Highlight any projects where you've integrated multi-terabyte datasets and how you tackled challenges in high-performance computing environments.

✨Demonstrate Collaborative Spirit

This role involves working with various stakeholders, so share examples of past collaborations. Discuss how you’ve translated complex methodologies into practical tools for water resource management or similar fields.

✨Prepare for Technical Questions

Expect technical questions related to hybrid modeling and uncertainty quantification. Brush up on your knowledge of physics-informed machine learning and be ready to discuss how you would approach these topics in your research.

Research Fellow in Machine Learning for Hydroclimatology in Southampton
University of South Hampton
Location: Southampton

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