Research groups
Colleges
Jascha Achterberg
Career Development Research Fellow (St John's College)
My research
My research focuses on understanding how the brain's system-level architecture enables flexible cognition and how it can be translated into large-scale computing systems. This means I start by investigating how the brain is organized—which specialized submodules it contains, what circuit patterns these submodules use, and how its connections and topology allow different regions to communicate and coordinate. With this understanding of how the brain's distributed architecture produces sophisticated cognition, I can then replicate these principles in algorithms and computing circuits, to understand which specific features bring which specific functional benefits. The overall goal of this link between biological and artificial computing is to understand the general principles of intelligence in large-scale distributed computing systems. As a result, my work addresses both the need for more capable theoretical models that can capture the complexity of modern neuroscientific data and the opportunity to develop more efficient computing architectures by understanding how biological systems achieve intelligence at scale.
Short biography
Before joining St John’s College and the University of Oxford, I did my PhD at the University of Cambridge (MRC Cognition and Brain Sciences Unit and ironically also St John’s College). My work focused on the general principles underlying complex cognition in biological systems and artificial intelligence under the supervision of John Duncan and Matthew Botvinick, in collaboration with both Google DeepMind and Intel.
Key publication
Cook, J., Akarca, D., Costa, R. P., & Achterberg, J. (2025). Brain-Like Processing Pathways Form in Models With Heterogeneous Experts. arXiv preprint.
Mione, V., Achterberg, J., Kusunoki, M., Buckley, M. J., & Duncan, J. (2025). Neural dynamics of an extended frontal lobe network in goal-subgoal problem solving. bioRxiv, 2025-05.
Schmidgall, S., Ziaei, R., Achterberg, J., Kirsch, L., Hajiseyedrazi, S., & Eshraghian, J. (2024). Brain-inspired learning in artificial neural networks: a review. APL Machine Learning, 2(2).
Achterberg, J., Akarca, D., Strouse, D. J., Duncan, J., & Astle, D. E. (2023). Spatially embedded recurrent neural networks reveal widespread links between structural and functional neuroscience findings. Nature Machine Intelligence, 5(12), 1369-1381.
Achterberg, J., Akarca, D., Assem, M., Heimbach, M., Astle, D. E., & Duncan, J. (2023). Building artificial neural circuits for domain-general cognition: a primer on brain-inspired systems-level architecture. AAAI EDGeS.

