MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26
MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26

MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26

Full-Time 39906 - 46049 £ / year (est.) Home office (partial)
Lancaster University

At a Glance

  • Tasks: Develop machine learning methods for quantum sensing and atomtronic applications.
  • Company: Join a top-ranked maths department at Lancaster University.
  • Benefits: Competitive salary, flexible working, and opportunities for consultancy and outreach.
  • Other info: Diverse and inclusive environment with excellent career growth potential.
  • Why this job: Be part of groundbreaking research in quantum technologies and AI.
  • Qualifications: Experience in machine learning and a passion for quantum fluid dynamics.

The predicted salary is between 39906 - 46049 £ per year.

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. 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 31 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.

How to apply and contact

Candidates who are considering making an application are strongly encouraged to contact Professor Andrew Baggaley at a.baggaley1@lancaster.ac.uk or Dr Ryan Doran at 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. 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.

MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26 employer: Lancaster University

Joining the MARS team at Lancaster University offers an exceptional opportunity to engage in cutting-edge research at the intersection of quantum fluid dynamics and machine learning. With a strong emphasis on collaboration, diversity, and professional growth, employees benefit from a vibrant work culture that encourages innovation and real-world application of research. The university's commitment to equality and well-being ensures a supportive environment for all staff, making it an ideal place for those looking to make a meaningful impact in their field.
Lancaster University

Contact Detail:

Lancaster University Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26

✨Tip Number 1

Network like a pro! Reach out to people in the field of quantum fluid dynamics and machine learning. Attend relevant events or webinars, and don’t be shy about introducing yourself – you never know who might have a lead on your dream job!

✨Tip Number 2

Prepare for those interviews! Research the latest trends in machine learning and quantum technologies. Be ready to discuss how your skills can contribute to projects like MARS, and think of examples from your past work that showcase your expertise.

✨Tip Number 3

Show off your passion! When you get the chance to chat with potential employers, let them know why you’re excited about the intersection of machine learning and quantum gases. Your enthusiasm can set you apart from other candidates.

✨Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you’re serious about joining the MARS team and contributing to cutting-edge research.

We think you need these skills to ace MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26

Machine Learning
Quantum Fluid Dynamics
Data-Driven Approaches
Bose-Einstein Condensates (BECs)
Optimisation Techniques
Control Protocols
Readout Strategies
High-Impact Publishing
Open-Source Development
Collaboration with Non-Academic Partners
Consultancy Skills
Teaching Skills
Outreach Activities
Adaptability to Flexible Working Arrangements

Some tips for your application 🫡

Tailor Your Application: Make sure to customise your CV and cover letter for the MARS Senior Research Associate role. Highlight your experience in machine learning and quantum fluid dynamics, and show us how your skills align with the project goals.

Showcase Your Passion: Let your enthusiasm for the intersection of machine learning and quantum technologies shine through. We want to see your excitement about contributing to cutting-edge research and how you can bring fresh ideas to the team.

Be Clear and Concise: When writing your application, keep it straightforward and to the point. Use clear language to explain your qualifications and experiences, making it easy for us to see why you’re a great fit for the role.

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 Lancaster University

✨Know Your Quantum Stuff

Make sure you brush up on your knowledge of quantum fluid dynamics and machine learning. Be ready to discuss how these fields intersect, especially in relation to ring-trapped Bose-Einstein condensates. Showing that you understand the technical aspects will impress the interviewers.

✨Showcase Your Research Skills

Prepare to talk about your previous research experiences, particularly any projects involving data-driven methods or machine learning. Highlight any publications or contributions to open-source codebases, as this aligns perfectly with the role's responsibilities.

✨Collaborative Spirit is Key

Since the position involves collaboration with non-academic partners, be ready to discuss your teamwork experiences. Share examples of how you've successfully worked with others to translate complex research into practical applications.

✨Engage with the Community

Familiarise yourself with MARS and its current projects. Showing genuine interest in the community and its goals can set you apart. Consider asking insightful questions about ongoing research or potential outreach activities during the interview.

MARS Senior Research Associate in Machine Learning to Improve Sensing in Quantum Gases - 0307-26
Lancaster University

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