Home Postdoc Abroad Postdoctoral Assistant in Machine Learning, University of Oxford, UK

Postdoctoral Assistant in Machine Learning, University of Oxford, UK

Postdoctoral Position in UK United Kingdom

Postdoctoral Assistant in Machine Learning: The Torr Vision Group at the Department of Engineering Science in central Oxford is seeking a full-time Postdoctoral Research Assistant supported by Professor Philip Torr’s Schmidt Science AI2050 fellowship for a two-year term. This position involves foundational research aimed at enhancing artificial intelligence capabilities in social sciences.

Postdoctoral Research Assistant in Machine Learning

Designation:

Postdoctoral Research Assistant

Table:

FieldDetails
LocationCentral Oxford
Research AreaMachine Learning, AI, Social Sciences
Pay ScaleResearch Grade 7
Salary (£)£39,424 – £47,779 per annum
Contact Emailphilip.torr@eng.ox.ac.uk
Contact PersonProfessor Philip Torr
Vacancy ID184269

Research Area:

  • Foundational research on large-scale models and agentic architectures for social-science reasoning and planning.
  • Causal reasoning methods over heterogeneous historical and social data, including texts, maps, images, and archaeological records.
  • Building infrastructure and benchmarking for large-scale social-science simulation.

Eligibility/Qualification:

  • PhD (or nearing completion) in Computer Science, AI, Security, or a related field.
  • Demonstrable expertise in foundation models, large language models, multimodal modeling, or agentic/multi-agent systems.
  • Strong knowledge of causal discovery methods and/or agent-based modeling for social sciences is essential.
  • Excellent communication skills.

Job Description:

The postholder will contribute to multiple strands of research designed to lay a foundation for AI-enabled social science and historical analysis. Responsibilities include:

  • Engaging in foundational research on AI technologies.
  • Analyzing and simulating social-science data.
  • Developing open, reproducible tools and datasets for community use.

How to Apply:

Candidates must submit an online application, including a covering letter/supporting statement that describes their research interests and how they align with this position, a CV, and details of two referees. Applications should be submitted via the official portal by the deadline.

Last Date to Apply:

Midday on February 9, 2026.


For further inquiries, please contact Professor Philip Torr via email.

Link

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