Forensics and Security Research Group

Forensics and Security Research Group

Academic cybersecurity and digital forensics research group spanning University College Dublin and South East Technological University.

Research Focus

The Forensics and Security Research Group conducts research in digital forensics, cybersecurity, network investigation, artificial intelligence for forensic workflows, cloud and IoT forensics, and digital forensic education.

Founded in University College Dublin and now expanded through collaboration with South East Technological University, the group works with academic, law-enforcement, and industry partners on research that improves the reliability, scalability, and practical impact of digital investigations.

Digital Forensics Network Investigation AI for Forensics Cloud and IoT Evidence Forensic Readiness Education and Training

Latest

News

All News

Recent Output

Selected Publications

Full Publications List
2025
First-page preview of Fine-Tuning Large Language Models for Digital Forensics: Case Study and General Recommendations

Fine-Tuning Large Language Models for Digital Forensics: Case Study and General Recommendations

Gaƫtan Michelet; Hans Henseler; Harm van Beek; Mark Scanlon; Frank Breitinger

ACM Digital Threats: Research and Practice pp. 3748264

This paper proposes recommendations for fine-tuning large language models (LLMs) for digital forensics tasks, addressing the gap in existing research. A case study on chat summarization showcases the applicability of the recommendations, evaluating multiple fine-tuned models to assess their performance. The study shares lessons learned from the case study, providing insights into the fine-tuning process, computational power issues, data challenges, and evaluation methods.

Publication details

2025
First-page preview of Towards a standardized methodology and dataset for evaluating LLM-based digital forensic timeline analysis

Towards a standardized methodology and dataset for evaluating LLM-based digital forensic timeline analysis

Hudan Studiawan; Frank Breitinger; Mark Scanlon

Forensic Science International: Digital Investigation Vol. 54S pp. 301982

This paper proposes a standardized methodology for evaluating the performance of Large Language Models (LLMs) in digital forensic timeline analysis tasks, such as event summarization. The methodology includes a dataset, timeline generation, and ground truth development, and recommends the use of BLEU and ROUGE metrics for quantitative evaluation.

Publication details