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Data Scientist/Software Engineer (AI and Computer Vision)

Moorfields Eye Hospital NHS Foundation Trust
City of London
1 week ago
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Overview

A Vacancy at Moorfields Eye Hospital NHS Foundation Trust. The NIHR Clinical Research Facility (CRF) at Moorfields Eye Hospital, London has recently been awarded funding from the National Institute for Health Research (NIHR) to optimise the delivery of world class research in ophthalmology and science associated with vision and sight. The Facility forms part of the Moorfields NIHR Biomedical Research Centre for Ophthalmology, a joint initiative between Moorfields Eye Hospital and University College London Institute of Ophthalmology and is one of three London based Academic Health Science centres which together form the University College London Partners. The CRF is dedicated to the delivery of high quality clinical research, including experimental medicine and translational research studies, pioneering new therapies for the treatment of a range of ophthalmic disorders. It offers a clinical environment in which patients and researchers are supported by a team of specialist research support staff including ophthalmic research nurses, administrators and technicians.

Part Time or Full time will be considered.

Previous Applicants need not apply.

To independently provide all ophthalmic imaging interpretation, analysis, and modelling for both commercial and research-grade high resolution ophthalmic instruments, including highly specialised areas such as developing algorithms, analytics, adaptive optics scanning light ophthalmoscopes, optical coherence tomography devices, and digital based photography of both anterior and posterior segments to a high standard.

Responsible for complex analysis and designing algorithms for specialized ophthalmic imaging techniques including but not limited to neuro or adaptive optics imaging.

Responsible for programming, designs and development of an appropriate research methodology in order to address the research objective; compile and analyse quantitative and qualitative data, prepares reports and presents results to summarise main findings and conclusions.

Responsible for interpretation of large amount of data in conjunction with the research team, putting acquired information into context with other clinical tests.

Responsible for the transfer of clinical and technical information to PHD students regarding retinal and neuro-imaging, adaptive optics and angiography.

Develop and maintain an understanding of a range of specialised imaging procedures requiring expertise underpinned by theoretical knowledge.

Undertake manual activities involving patients and equipment.

At Moorfields, we provide more than just an excellent career and great colleagues to work with. We also offer:

Benefits
  • Salary including High-Cost Area Supplement
  • Opportunity to join the NHS Pension Scheme
  • Free 24/7 independent counselling service
  • Learning and development opportunities
  • Easy and quick transport links
  • A range of attractive benefits and discounts
  • Access to Blue Light Card and other NHS Discount Schemes
  • Free Pilates classes
  • Full support and training to develop your skills
  • Flexible working friendly organisation
  • And so much more! To see the full range of benefits we offer please see our Moorfields benefits document.
Responsibilities
  • Develop a clear understanding of the data resources available from Moorfields’ clinical systems and work with the AI and Data Science team to design and implement machine learning tools capable of extracting clinically relevant features from ophthalmic imaging.
  • Contribute to the creation of web applications that enable deployment of clinical and imaging data analytics tools, supporting the wider ambition of a “learning healthcare system”.
  • Play an active role in the development, validation, and implementation of AI algorithms for ophthalmic image segmentation and analysis, ensuring these tools are robust and clinically meaningful.
  • Support the development of database management platforms for the Reading Centre to underpin effective data handling and accessibility.
  • Contribute to advancing AI-driven diagnostic and prognostic models for eye diseases to improve patient care and outcomes through innovative data science.
  • Interpret large amounts of data in conjunction with the research team, contextualising acquired information with other clinical tests.
  • Transfer clinical and technical information to PhD students regarding retinal and neuro-imaging, adaptive optics and angiography.
  • Develop and maintain an understanding of a range of specialised imaging procedures requiring theoretical knowledge.
  • Undertake manual activities involving patients and equipment.

This advert closes on Wednesday 15 Oct 2025


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