Publisher
source

Prof A Anjum

1 year ago

GTA Funded - Federated Architectures for Secure Large Language Models University of Leicester in United Kingdom

Degree Level

PhD

Field of study

Computer Science

Funding

Fully Funded

Deadline

Expired

Country flag

Country

United Kingdom

University

University of Leicester

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Where to contact

Official Email

Keywords

Computer Science
Psychology
Artificial Intelligence
Cybersecurity
Auditing
Blockchain Technology
Federated Learning
Counseling Psychology
Knowledge Representation
Modular Design
Applied Ethics
Data Compression
Transformer Technology
Privacy-preserving Techniques
Verification And Validation
Consensus
Large Language Models

About this position

Highlights

Pioneers a three-tiered architecture integrating blockchain's traceability, federated learning's privacy preservation, and LLMs' generative power to resolve the "impossible triangle" of data privacy, model consistency, and regulatory compliance in distributed AI.

Introduces a dynamic knowledge-injection protocol that hardcodes domain expertise (e.g., medical guidelines) into LLMs via real-time knowledge graph alignment, reducing factual hallucinations in pilot tests.

Develops a lightweight blockchain consensus engine achieving high TPS through sharding and gradient compression, enabling efficient distributed training of models while maintaining full audit trails.

Project

This proposal tackles critical challenges in developing trustworthy AI systems by integrating blockchain, federated learning, and large language models (LLMs) into a unified architecture. While LLMs like ChatGPT and DeepSeek demonstrate transformative potential, centralised AI systems face unresolved issues: data silos impede cross-institutional collaboration, privacy risks conflict with regulations (e.g., EU AI Act), and LLMs’ factual inaccuracies undermine high-stakes applications. Current approaches fail to systematically unify blockchain’s auditability, federated learning’s privacy preservation, and LLMs’ generative capabilities.

The project introduces a three-tiered architecture addressing these limitations:

1. Data Layer : A zero-knowledge-proof framework for federated learning ensures data authenticity while preventing raw data exposure, countering adversarial attacks via cryptographic verification.

2. Model Layer : A knowledge-injection protocol dynamically aligns LLM outputs with domain-specific knowledge bases (e.g., medical codes, legal statutes), significantly enhancing output reliability.

3. System Layer : An optimised blockchain consensus mechanism combines sharding and compression techniques to support efficient distributed training of large-scale models while maintaining auditability.

Key innovations include a collusion-resistant data verification method, a neuro-symbolic architecture integrating knowledge graphs with transformers, and a storage-efficient blockchain scheme. Validated through healthcare and financial case studies, the framework streamlines secure data sharing and provides auditable decision trails for regulatory compliance.

Anticipated outcomes encompass open-source tools for trustworthy AI deployment, high-impact publications, and contributions to AI ethics standardisation. By harmonising technological capabilities with ethical requirements, this work establishes a scalable blueprint for AI systems demanding both innovation and accountability, particularly in sensitive domains like medical diagnostics and financial analytics. The architecture’s modular design ensures adaptability across sectors while addressing the core challenges of privacy, accuracy, and transparency in next-generation AI applications.

Enquiries to project supervisor Dr Xiao Chen uk

General enquiries:

Please carefully read the information on our web page before applying

How to Apply https://le.ac.uk/study/research-degrees/funded-opportunities/computer-science-gta

There are 3 GTA studentships available. You can only apply for one project

Funding details

Fully Funded

How to apply

Enquiries to project supervisor Dr Xiao Chen [email protected]

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