MARS Senior Research Associate in Machine Learning for Infectious Disease Models, School of Mathematical Sciences, Lancaster University
MARS Senior Research Associate in Machine Learning for Infectious Disease Models
School of Mathematical Sciences
Location: Bailrigg, Lancaster, UK
Salary: £39,906 to £46,049 (Full-Time/Indefinite with End Date)
MARS: Mathematics for AI in Real-world Systems is seeking a highly motivated and creative Senior Research Associate to join our interdisciplinary team at the frontier of computational epidemiology and machine learning. This role focuses on developing next-generation frameworks to predict, understand, and mitigate the spread of infectious diseases.
You will lead research in one (or both) of the following cutting-edge areas:
- Generative Inference and Monte Carlo Optimisation: Developing new generative machine learning approaches, to improve the efficiency of high-dimensional Monte Carlo algorithms for stochastic epidemic models. Research directions may include discrete normalising flows, diffusion-based methods, online reinforcement learning methods, amortized inference. The aim is to solve one of the last remaining barriers to successful disease modelling at scale, delivering faster and more reliable inference, better-calibrated predictive uncertainty, and computational tools for large-scale mechanistic models.
- Probabilistic Modelling of Higher-Order Contact Structure: Developing novel machine learning and statistical methodology for latent relational structure in populations, including higher-order, group-based, and temporally evolving interactions. Directions may include probabilistic graph and hypergraph models, generative approaches to large-scale contact networks, learning from partial or aggregate observations, and principled uncertainty quantification. The goal is to build scalable methods for inference and intervention-aware analysis in complex epidemic systems, with applications to targeted intervention design in settings such as schools, workplaces, and hospitality.
Key responsibilities
- Develop and implement novel ML architectures and computationally intensive statistical methodology tailored to outbreak datasets.
- Collaborate with public health stakeholders and data providers to ensure models are grounded in real-world contact patterns.
- Publish findings in high-impact journals (e.g., Nature Communications, Lancet Digital Health) and top-tier ML conferences (NeurIPS, ICML, ICLR).
- Contribute to an open-source codebase to ensure reproducibility and utility for the wider scientific community.
You will work within a vibrant community of infectious disease modellers, centred in MARS, but collaborating with colleagues in Lancaster Medical School. There is additional scope to work within a wider collaboration with the University of St Andrews and Liverpool School of Tropical Medicine in Global Health, human, animal, and OneHealth epidemiology, as well as engage in consultancy, teaching, and outreach activities relevant to the research.
This is a full-time, fixed term position until 31st July 2029. Flexible working arrangements will be considered but you will be expected to be present on the Lancaster campus a minimum of two days a week.
Candidates who are considering making an application are strongly encouraged to contact Professor Chris Jewell c.jewell@lancaster.ac.uk or Dr Jess Bridgen j.bridgen@lancaster.ac.uk.
Why join MARS?
It is an exciting time to be part of MARS, which is based in one of the top-ranked maths departments in the UK. You’ll be part of a thriving and collegiate research group with a growing complement of academic staff, researchers and PhD students. MARS is a nationally distinctive group to join if you want to be part of the next generation of mathematicians tackling real-world problems and shaping the future of mathematics and AI.
Lancaster University promotes equality of opportunity and diversity within the workplace. For these positions, we welcome applications from all diversity groups but particularly from women who are currently underrepresented in the mathematical sciences.
- Type
- Postdoc
- Institution
- School of Mathematical Sciences, Lancaster University
- City
- Lancaster
- Country
- UK
- Closing date
- May 17th, 2026
- Posted on
- April 27th, 2026 09:26
- Last updated
- April 27th, 2026 09:26
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