| Qualification Type: | PhD |
|---|---|
| Location: | Guildford |
| Funding for: | UK Students |
| Funding amount: | Fully funded studentship opportunity covering home university fees, additional research training, travel funds & UKRI standard rate (£21,805 for 2026/27 academic year). Funding is available for 3.5 years |
| Hours: | Full Time |
| Placed On: | 27th March 2026 |
|---|---|
| Closes: | 19th April 2026 |
About the Project
As federated learning systems become increasingly embedded in high‑stakes domains where data cannot be directly shared, such as healthcare and finance, the ability to selectively remove the influence of specific data from trained models becomes critical. Yet, despite the EU’s General Data Protection Regulation (GDPR) enshrining a “right to be forgotten”, current federated learning practice offers no robust, scalable, or provable mechanism to guarantee this right once a model has been trained.
The distributed nature of federated settings introduces unique challenges for unlearning: the central server never directly accesses raw data, information encoded in aggregated models can persist across participants, and retraining from scratch is often computationally infeasible at scale.
In this project, you will develop the next generation of federated machine unlearning algorithms—methods that can efficiently deliver genuine, verifiable, and robust erasure without sacrificing model performance or participant privacy.
Several of the most active research frontiers in this field include:
The project sits at the intersection of privacy-preserving machine learning, distributed systems, and trustworthy AI, with implications for regulatory compliance and real-world deployment of federated systems.
Supervisors: Dr Pedro Porto Buarque de Gusmao and Dr Frank Guerin
Entry requirements
Open to candidates who pay UK/home rate fees. See UKCISA for further information.
Starting in October 2026. Later start dates may be possible, please contact Dr Pedro Porto Buarque de Gusmao once the deadline passes.
You will need to meet the minimum entry requirements for our PhD programme.
We are looking for a motivated and intellectually curious researcher with:
Experience in any of the following is desirable but not required: federated learning, differential privacy, adversarial robustness, distributed systems, or LLM fine-tuning.
How to apply
Applications should be submitted via the Computer Science PhD programme page.
In place of a research proposal, you should upload a document stating the title of the project that you wish to apply for and the name of the relevant supervisor.
Funding
Fully funded studentship opportunity covering home university fees, additional research training, travel funds and UKRI standard rate (£21,805 for 2026/27 academic year). Funding is available for 3.5 years.
Application deadline: 19 April 2026
Enquiries: Contact Dr Pedro Porto Buarque de Gusmao
Ref: PGR-2526-074
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