At a Glance
- Tasks: Research few-step generative models and develop innovative AI solutions.
- Company: Join UCL's top-ranked Computer Science Department and the AI Hub in Generative Models.
- Benefits: Competitive salary, world-class facilities, and collaboration with leading experts.
- Other info: Exciting career growth opportunities and a commitment to diversity and inclusion.
- Why this job: Make a real impact in AI research and shape the future of technology.
- Qualifications: PhD in relevant field and strong programming skills required.
The predicted salary is between 39148 - 41833 £ per year.
About UCL & the AI Hub in Generative Models
UCL’s Department of Computer Science (CS) is a top‑ranked Computer Science Department in the UK. In the 2021 Research Excellence Framework (REF) evaluation, UCL Computer Science was ranked second in the UK for research power and first in England.
This fellowship is funded by the UKRI (EPSRC) AI Hub in Generative Models (grant number EP/Y /1). The hub is a UK‑wide research initiative dedicated to developing the next generation of Generative AI models. It seeks to transform science, industry, the economy, and society by uniting leading experts from academia and industry to collaborate on impactful, large‑scale projects that no single organisation can deliver on its own. There is an expectation to proactively engage and collaborate with other Hub members and partner institutions, engaging with central Hub activities, cross‑theme initiatives, and events.
Successful applicants will investigate few‑step generative models, including diffusion, consistency, flow‑based, and related probabilistic methods, with the aim of developing computationally efficient and theoretically grounded approaches that maintain high‑quality generation performance while reducing sampling cost. The work will involve developing stable training and inference methods, conducting probabilistic modelling research, and performing large‑scale computational experiments using standard machine learning frameworks and publicly available scientific datasets.
This post will be funded until 31st October 2028 in the first instance. Appointment at Grade 7 is dependent upon having been awarded a PhD; if this is not the case, initial appointment will be at Grade 6B (salary £39,148 – £41,833 per annum) with payment at Grade 7 being backdated to the date of final submission of the PhD Thesis.
About the role
This unique position is part of a strategic collaboration between University College London (UCL) and the University of Cambridge under the AI Hub in Generative Models. The successful candidate will benefit from the world‑class facilities and expertise at both institutions, working under the joint supervision of Professor José Miguel Hernandez Lobato and Professor David Barber. The position is hosted by the University of Cambridge and may require academic visits to the UCL Centre for Artificial Intelligence to support a co‑supervision model.
Key duties and responsibilities include:
- Working on deep learning, probabilistic modelling, transformer‑based models, diffusion models, flow matching or consistency models
- Publishing papers
- Co‑supervising PhD and master students
About you
Successful applicants will have, or be near to completing, a PhD in computer science, information engineering, statistics or a related area, with extensive research experience and a strong publication record. Excellent mathematical and programming skills are essential, with experience in two or more of Bayesian methods, deep learning, diffusion models, flow matching or transformer‑based models.
What we offer
As well as the exciting opportunities this role presents, we also offer great benefits.
Our commitment to Equality, Diversity and Inclusion
You can read more about our commitment to Equality, Diversity and Inclusion here.
Research Fellow in Few step Generative Modelling in London employer: UCL
UCL is an exceptional employer, offering a dynamic and collaborative work environment at the forefront of AI research. With access to world-class facilities and the opportunity to engage with leading experts from both UCL and the University of Cambridge, employees benefit from unparalleled professional growth and development. The commitment to equality, diversity, and inclusion further enhances the supportive culture, making it an ideal place for those seeking meaningful and impactful careers in computer science.
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We think this is how you could land Research Fellow in Few step Generative Modelling in London
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We think you need these skills to ace Research Fellow in Few step Generative Modelling in London
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