Postdoctoral Researcher in Computational Neuroanatomy and Artificial Intelligence

RFCSR
Oxford
1 week ago
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Postdoctoral Researcher in Computational Neuroanatomy and Artificial Intelligence


Organization Name – University of Oxford
Location – Oxford, England, UK

General Description – including all available relevant information of this position
This postdoctoral opportunity invites an enthusiastic early‑career researcher to contribute to cutting‑edge work at the intersection of computational neuroanatomy and artificial intelligence. The successful candidate will play a leading role in developing advanced computational methods that enable alignment and comparative analysis of cortical organisation across species using integrative data modalities. This role is designed for someone passionate about tackling complex questions in brain structure, evolution, and AI‑driven analysis, within a collaborative research environment at one of the world’s foremost research universities. The position supports high‑impact research outputs and fosters intellectual growth in interdisciplinary science and AI methodologies.

Eligibility Criteria
Applicants should hold (or be close to completing) a PhD/DPhil in computational neuroscience, neuroanatomy, artificial intelligence, computer science, biomedical engineering, or a closely related discipline. Strong potential for independent research and contributions to the core objectives of comparative neuroanatomy and computational modelling is expected.

Require expertise, skills
Candidates should demonstrate sophisticated computational skills and methodological experience in areas relevant to neuroanatomy and AI. This likely includes expertise in computational modelling, data integration across diverse biological datasets, machine learning or deep learning approaches, and quantitative analysis techniques. A strong record of research excellence and evidence of collaborative scientific work will position applicants for success in this role.

Salary details
The salary range for this role is approximately £39,424 to £47,779 per annum (Grade 7, UK academic pay scale).

Application Deadline
The closing date for applications is Friday 27 March 2026.


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