Finetuning Large Language Models for Security Log Detections
Offered By: Security BSides San Francisco via YouTube
Course Description
Overview
Explore the innovative application of finetuning Large Language Models (LLMs) for security log detections in this 25-minute conference talk from BSidesSF 2024. Delve into the limitations of traditional security log detection methods that rely on pre-defined signatures, and discover how LLMs can be leveraged to create more sophisticated and generalizable detection systems. Learn the process of finetuning popular open-source LLMs for specific security log detection use cases, potentially revolutionizing the approach to identifying and mitigating security threats. Gain insights from speaker Wilson Tang on how this cutting-edge technique can enhance cybersecurity practices and improve the accuracy of threat detection in log data.
Syllabus
BSidesSF 2024 - Finetuning Large Language Models (LLMs) for Security Log Detections (Wilson Tang)
Taught by
Security BSides San Francisco
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