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MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases

School of Mathematical Sciences
Location:  Bailrigg, Lancaster, UK
Salary:   £39,906 to £46,049 (Full-Time/Indefinite with End Date)
Closing Date:   Sunday 17 May 2026
Interview Date:   Wednesday 03 June 2026
Reference:  0307-26

MARS: Mathematics for AI in Real-world Systems is seeking a highly motivated and creative Senior Research Associate to work at the intersection of quantum fluid dynamics and machine learning. You will lead research on the following project:

Machine Learning to Improve Sensing in Quantum Gases

This project will investigate how machine learning can be used to design, control, and interpret ultracold-atom devices in ring-trapped Bose–Einstein condensates (BECs). Ring traps support persistent currents, vortices, and coherent matter-wave dynamics, making them promising platforms for quantum sensing and atomtronics. We will combine modern data-driven approaches emerging in the machine learning literature with established physical models to optimise trap parameters, control protocols, and readout strategies for acceleration and rotational sensors. The project will sit at the intersection of quantum fluid dynamics and machine learning to help build robust, high-performance quantum technologies.

Key responsibilities

  • Develop and implement data-driven machine learning methods to design, control, and interpret ring-trapped Bose-Einstein condensate systems for optimised quantum sensing and/or atomtronic applications.
  • Publish findings  in high-impact journals and top-tier machine learning conferences.
  • Contribute to an open-source codebase to ensure reproducibility and utility for the wider scientific community. 
  • Collaborate with non-academic partners to translate the research into real-world application.  

You will work within a vibrant community of quantum modellers and machine learning academics, centred in MARS. There is additional scope to 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 Andrew Baggaley a.baggaley1@lancaster.ac.uk or Dr Ryan Doran r.doran@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.  

Please note: unless specified otherwise in the advert, all advertised roles are UK based.

Find out what it's like to work at Lancaster University, including information on our wide range of employee benefits, support networks and our policies and facilities for a family-friendly workplace.

The University recognises and celebrates good employment practice undertaken to address all inequality in higher education whilst promoting the importance and wellbeing for all our colleagues. 

We warmly welcome applicants from all sections of the community regardless of their age, religion, gender identity or expression, race, disability or sexual orientation, and are committed to promoting diversity, and equality of opportunity. 


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