At a Glance
- Tasks: Lead AI-driven projects for early lung disease detection using video and audio data.
- Company: Join Manchester Metropolitan University, a top 200 young university with a vibrant research community.
- Benefits: Flexible working arrangements, professional development, and a diverse, inclusive culture.
- Other info: Collaborate with leading institutions and contribute to groundbreaking research.
- Why this job: Make a real-world impact in healthcare while advancing your research career.
- Qualifications: PhD in Computer Science or related field with expertise in machine learning and data analysis.
The predicted salary is between 36000 - 60000 £ per year.
Manchester Metropolitan University is one of the UK's most ambitious and modern universities, with a history dating back to 1824. Ranked among the top 200 young universities globally, 90% of our research impact is world-leading or internationally excellent (REF 2021). Based in the heart of Manchester, we benefit from strong links to the region's growing digital and healthcare innovation sectors.
The Department of Computing and Mathematics, within the Faculty of Science and Engineering, is a dynamic and research-active community comprising over 80 academic staff and 2,000 students. The department has an established track record in securing competitive research funding, with a diverse portfolio of projects supported by UKRI research councils, charitable foundations, the EU, and Innovate UK. It maintains close collaborations with the NHS, government bodies, and industry—particularly within the region's flourishing digital sector. Our core research strengths include Artificial Intelligence and Data Science, Machine Intelligence, Human-Centred Computing, Cybersecurity, and Mathematical Modelling, underpinned by a strong culture of interdisciplinary collaboration and a commitment to delivering global impact.
We are seeking an ambitious and highly motivated Research Fellow in Computer Vision to contribute to an EPSRC-funded project, LungSight, focused on visual and acoustic screening for early detection of lung diseases. Based in the Department of Computing and Mathematics, you will lead the design and development of AI-driven models applied to video and audio datasets, contributing to the creation of a low-cost, non-invasive screening tool for early diagnosis of chronic lung disease. LungSight's goal is to make respiratory screening accessible, affordable, and proactive—helping clinicians diagnose earlier and empowering patients to take control of their lung health.
You will work closely with an interdisciplinary team from six institutions: Professor Moi Hoon Yap (Manchester Metropolitan University), Dr Ning Ma (University of Sheffield), Professor Anna Barney (University of Southampton), Professor Bibek Gooptu (University of Leicester), Professor Akhilesh Jha (University of Cambridge), and Dr Oliver Price (University of Leeds). The project is also delivered in partnership with Asthma + Lung UK, Yorkshire Ambulance Service NHS Trust, South Yorkshire Digital Health Hub, Yorkshire & Humber Secure Data Environment, Foundation for Genomics and Population Health, Nvidia, NIHR Cambridge Biomedical Research Centre, Aberystwyth University, and ELAROS.
This is a unique opportunity to develop advanced AI methodologies to a real-world clinical challenge and to collaborate closely with computer vision, acoustic processing, and clinical expertise, and people living with lung disease.
Key Responsibilities- Lead the design and implementation of visual cues detection on video datasets (face and gesture), context-aware multimodal analysis, machine learning/self-supervised learning for automatically detecting subtle movement.
- Contribute to the development of a multiple data source integration (visual and acoustics) for early detection of lung diseases.
- Develop and optimise scalable data processing pipelines, including GPU acceleration, cloud computing, and distributed architectures, to enable efficient analysis of large-scale video datasets.
- Collaborate with clinical and academic collaborators, external partners, to ensure scientific rigour, clinical relevance, and impactful interdisciplinary outcomes.
- Produce and disseminate high-quality research outputs, including peer-reviewed publications, conference presentations, and engagement with stakeholders; contribute to the preparation of research funding proposals.
- Engage in scholarly development and network-building, supporting your own academic career progression while enhancing the University's research culture and collaborative profile.
- Keep relevant stakeholders updated on progress, and be responsible for exploring their needs and acting on feedback, in order to ensure that research delivers against their requirements.
- PhD in Computer Science/Computer Vision/AI or a closely related field.
- Extensive research experience in machine learning, deep learning, and self-supervised learning, with a strong track record of applying these techniques to video datasets, in healthcare or other challenges.
- Demonstrable expertise in processing and analysing large-scale, multimodal datasets (e.g. video, acoustics, clinical records) for predictive modelling and decision support.
- Proficiency in programming languages such as Python (and/or Java, C/C++), with hands-on experience using deep learning frameworks (e.g. PyTorch, TensorFlow) and relevant libraries.
- Practical experience in scalable data processing, including the use of parallel computing, cloud platforms, and distributed systems for efficient, high-volume data analysis.
- A strong publication record in high-impact peer-reviewed journals and international conferences, evidencing independent and original research contributions.
- Proven ability to work within interdisciplinary research teams, including collaborations with clinical or healthcare professionals.
- Excellent written and verbal communication skills, including experience in presenting complex research findings to academic and non-academic audiences.
- Knowledge of face and gesture analysis, multimodal integration, or subtle/micro-movement analysis. Experience with context-aware multimodal deep learning.
- Experience with research funding, including contributing to or leading successful grant applications.
- Experience in supervising or mentoring postgraduate students or junior researchers.
If you would like to apply, please take the time to consider the essential criteria in the job description and provide us with a CV that demonstrates your suitability for the role.
For an informal discussion regarding the requirements of the roles, please contact Professor Moi Hoon Yap (M.Yap@mmu.ac.uk) for details.
Manchester Metropolitan University fosters an inclusive culture of belonging that promotes equity and celebrates diversity. We value a diverse workforce for the innovation and diversity of thought it brings and welcome applications from all local and international communities, including Black, Asian, and Minority Ethnic backgrounds, disabled people, and LGBTQ+ individuals.
We support a range of flexible working arrangements, including hybrid and tailored schedules, which can be discussed with your line manager. If you require reasonable adjustments during the recruitment process or in your role, please let us know so we can provide appropriate support.
Our commitment to inclusivity includes mentoring programmes, accessibility resources, and professional development opportunities to empower and support underrepresented groups. Manchester Met is a Disability Confident Leader and, under this scheme, aims to offer an interview to disabled people who apply for the role and meet the essential criteria as listed in the attached Job Description for that vacancy.
Graduate Research Fellow in Manchester employer: The Manchester Metropolitan University
Manchester Metropolitan University is an exceptional employer, offering a vibrant and inclusive work culture that fosters innovation and collaboration. With strong ties to the digital and healthcare sectors, employees benefit from unique opportunities for professional growth and interdisciplinary research, particularly in cutting-edge areas like AI and healthcare. The university's commitment to diversity and flexible working arrangements ensures a supportive environment where all staff can thrive and contribute to impactful research.
Contact Details:
The Manchester Metropolitan University Recruitment Team
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