Research Associate: Efficient Computer Vision & Edge AI

Research Associate: Efficient Computer Vision & Edge AI

Full-Time 30000 - 40000 £ / year (est.) No working from home possible
Queen Mary University of London

At a Glance

  • Tasks: Conduct independent research in computer vision and efficient machine learning.
  • Company: Join Queen Mary University of London's innovative School of Electronic Engineering and Computer Science.
  • Benefits: Gain valuable experience, publish your work, and contribute to cutting-edge research.
  • Other info: Opportunity to work until December 2026 with potential for career advancement.
  • Why this job: Make a real impact in the field of AI and enhance your research skills.
  • Qualifications: Relevant degree required; PhD near completion preferred for postdoctoral level.

The predicted salary is between 30000 - 40000 £ per year.

Queen Mary University of London’s School of Electronic Engineering and Computer Science invites applications for a Research Assistant or Postdoctoral Research Associate to work on computer vision and efficient machine learning until 31 December 2026.

The role involves independent research, system development, performance evaluations, and publishing results in high‑impact venues. Applicants should have a relevant degree; PhD near completion is desirable for PDRA level.

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Research Associate: Efficient Computer Vision & Edge AI employer: Queen Mary University of London

Queen Mary University of London is an exceptional employer, offering a vibrant work culture that fosters collaboration and innovation within the Business Development team. Employees benefit from competitive salaries, flexible working arrangements, and ample opportunities for professional growth, making it an ideal place for those seeking meaningful and rewarding careers in a supportive academic environment.

Queen Mary University of London

Contact Details:

Queen Mary University of London Recruitment Team

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