Research Fellow in Machine Cognition in London

Research Fellow in Machine Cognition in London

London Full-Time 45103 - 51246 £ / year (est.) No working from home possible
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At a Glance

  • Tasks: Conduct groundbreaking research on machine cognition and language models.
  • Company: Join UCL, a top-ranked university known for its research excellence.
  • Benefits: Competitive salary, dedicated resources for research, and international visa sponsorship.
  • Other info: Dynamic research environment with opportunities for travel and professional growth.
  • Why this job: Make a real impact in AI and cognitive science while working with leading experts.
  • Qualifications: PhD or equivalent experience in relevant fields and strong Python skills.

The predicted salary is between 45103 - 51246 £ per year.

An opportunity has arisen for a Research Fellow in Machine Cognition in UCL Linguistics, within the Division of Psychology and Language Sciences and Faculty of Brain Sciences. UCL is ranked eighth in the QS World University Rankings; the Division is ranked fifth globally for psychology in QS 2026, and UCL is first in the UK for research power in psychology, psychiatry and neuroscience in REF 2021.

The postholder will join Mario Giulianelli's research group, which studies information processing in human and artificial systems. A core part of the group's work also concerns the evaluation, interpretability and cognitive modelling of language models. The group is part of the UCL ELLIS Unit and has links to the UCL AI Centre and UCL Computer Science.

About the role

The postholder will carry out original research on machine cognition, focusing on how language model agents and related artificial neural network systems represent beliefs and goals. The project will investigate whether such systems represent uncertainty over environment states and preferences over possible states, and whether these representations can be reliably extracted, evaluated and manipulated. The role combines interpretability methods, behavioural evaluation, probabilistic modelling and ideas from cognitive science, neuroscience and theories of learning. The broader aim is to develop methods that support high‑confidence claims about the goals pursued and beliefs held by artificial agents. Dedicated resources are available for travel, equipment, compute and API access.

Contract and Salary

This is a 24‑month contract with a target start‑date of 1st October 2026. The salary range for this post is £45,103–£51,246 per annum (inclusive of London Allowance). 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, inclusive of London Allowance) with payment at Grade 7 being backdated to the date of final submission of the PhD thesis. To be considered eligible for this post, applicants must have formally submitted their PhD thesis and must either have successfully completed their viva examination or have an agreed viva date scheduled within 3 months of the post’s commencement date. This role meets the eligibility requirements for a skilled worker certificate of sponsorship or a global talent visa under UK Visas and Immigration legislation. Therefore, UCL welcomes applications from international applicants who require a visa.

About you

We seek a candidate with a PhD, or equivalent experience, in computational linguistics, artificial intelligence, cognitive science, neuroscience, computer science, psychology or a related field. They should have strong Python skills, experience with transformer language models, knowledge of interpretability methods and experience with probabilistic or computational modelling. Experience with language model evaluation, cognitive modelling, reinforcement learning, goal‑directed behaviour, learning theory or large‑scale GPU/cluster workflows would be advantageous.

Further Details

The advert will close on 26 July 2026 at 23:59 GMT. In the event we get a high number of applications, we may close the advert early before the published closing date. Early application submission is recommended.

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Contact Details:

UCL Recruitment Team

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We think you need these skills to ace Research Fellow in Machine Cognition in London

Python
Transformer Language Models
Interpretability Methods
Probabilistic Modelling
Computational Modelling
Language Model Evaluation
Cognitive Modelling

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