In response to the escalating cyber-attacks in the modern IT and IoT
landscape, we developed CYGENT, a conversational agent framework powered by
GPT-3.5 turbo model, designed to aid system administrators in ensuring optimal
performance and uninterrupted resource availability. This study focuses on
fine-tuning GPT-3 models for cybersecurity tasks, including conversational AI
and generative AI tailored specifically for cybersecurity operations. CYGENT
assists users by providing cybersecurity information, analyzing and summarizing
uploaded log files, detecting specific events, and delivering essential
instructions. The conversational agent was developed based on the GPT-3.5 turbo
model. We fine-tuned and validated summarizer models (GPT3) using manually
generated data points. Using this approach, we achieved a BERTscore of over
97%, indicating GPT-3's enhanced capability in summarizing log files into
human-readable formats and providing necessary information to users.
Furthermore, we conducted a comparative analysis of GPT-3 models with other
Large Language Models (LLMs), including CodeT5-small, CodeT5-base, and
CodeT5-base-multi-sum, with the objective of analyzing log analysis techniques.
Our analysis consistently demonstrated that Davinci (GPT-3) model outperformed
all other LLMs, showcasing higher performance. These findings are crucial for
improving human comprehension of logs, particularly in light of the increasing
numbers of IoT devices. Additionally, our research suggests that the
CodeT5-base-multi-sum model exhibits comparable performance to Davinci to some
extent in summarizing logs, indicating its potential as an offline model for
this task.Comment: 7 pages, 9 figure