ICCK

Rajab Ssemwogerere

University of Electronic Science and Technology of China

Section 01

Academic Profile

I am highly motivated to engage in advanced research and innovation across computer-aided diagnosis, computer vision, artificial intelligence, pattern recognition, and large language models. I strive to build a strong professional network with leading researchers & practitioners in these interdisciplinary fields. Through collaboration, I aim to contribute to the development of state-of-the-art techniques and impactful applications that push the boundaries of computer science & medical imaging.

Section 02

Editorial Roles

This user currently does not serve as an editor for any ICCK journals.

Section 03

ICCK Publications

Open Access | Review Article | 17 June 2026
A Comprehensive Survey on Robustness and Privacy in Federated Learning Meets Large Language Model at Edge
Journal of Reliable and Secure Computing | Volume 2, Issue 2: 111-155, 2026 | DOI: 10.62762/JRSC.2026.942513
Abstract
Large Language Models (LLMs) have revolutionized natural language processing, yet their deployment is hindered by data, computation, and privacy constraints. Federated Learning (FL) offers a promising solution by enabling collaborative, privacy-preserving training across distributed devices, while the push for low-latency on-device intelligence further drives LLM integration into FL and edge settings—posing new challenges in heterogeneity and resource limits. This survey comprehensively reviews the integration of LLMs with federated learning, termed FLM, and its deployment at the edge, with particular emphasis on the robustness, privacy, and trustworthiness challenges that emerge across th... More >

Graphical Abstract
A Comprehensive Survey on Robustness and Privacy in Federated Learning Meets Large Language Model at Edge