University of Cambridge

09/24/2025 | Press release | Distributed by Public on 09/24/2025 04:48

New Encode Fellowships boost AI research at Cambridge

Cambridge scientists are using AI technology to boost research in a range of fields - from better understanding human intelligence, to describing turbulent flows, to freeing computer systems from the cloud - after securing new Fellowships launched to drive breakthrough discoveries.

The Encode: AI for Science Fellowships embed top AI talent in the UK's leading labs to tackle scientific challenges and accelerate the path to real-world solutions. Three Fellowships in the first cohort are being hosted at Cambridge.

Encode Fellow Jonathan Carter is using technology originally developed for astrophysics research to decipher how humans understand physics - for example, how the human brain performs intuitive physics calculations, like predicting where a thrown ball will land. Working with Hiranya Peiris, who holds the Cambridge Professorship of Astrophysics (1909), their approach uses interpretable variational encoders, a specialised neural network that can find compact, meaningful representations in complex data. This cross-disciplinary research could advance both our understanding of human intelligence and our ability to build AI systems that learn and generalise like humans do.

Shruti Mishra, another Encode Fellow, is developing an AI system that can discover clear, understandable equations describing how turbulent flows behave across different scales. This is a long-standing challenge in physics that affects everything from weather prediction to aerospace design. Guided by Miles Cranmer, Assistant Professor of Data Intensive Science at Cambridge, Shruti is combining machine learning with symbolic mathematics to automatically produce equations that scientists can interpret and trust, rather than 'black-box predictions', where the decision-making process is difficult to understand. Their work has the potential to enable more accurate climate predictions and improve industrial designs.

And Encode Fellow Martyna Stachaczyk is working with Rika Antonova, Associate Professor at Cambridge, to design a biologically inspired, on-device control architecture for real-time, local intelligence. This research could free intelligent systems from the cloud - which can be insecure and inaccessible where connectivity is limited - enabling robust, adaptive autonomy for prosthetics, robots, and environmental platforms even in resource-constrained or disconnected settings.

The Encode AI for Science Fellowship programme is run by Pillar VC, with funding from the Advanced Research + Invention Agency (ARIA) and the UK Government's Sovereign AI Unit.


The text in this work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License. Images, including our videos, are Copyright ©University of Cambridge and licensors/contributors as identified. All rights reserved. We make our image and video content available in a number of ways - on our main website under its Terms and conditions, and on a range of channels including social media that permit your use and sharing of our content under their respective Terms.

University of Cambridge published this content on September 24, 2025, and is solely responsible for the information contained herein. Distributed via Public Technologies (PUBT), unedited and unaltered, on September 24, 2025 at 10:48 UTC. If you believe the information included in the content is inaccurate or outdated and requires editing or removal, please contact us at [email protected]