Advancing Autonomous Incident Response: Leveraging LLMs and Cyber Threat Intelligence
Amine Tellache, Abdelaziz Amara Korba, Amdjed Mokhtari, Horea Moldovan, Yacine Ghamri-Doudane

TL;DR
This paper presents a novel framework using Large Language Models and dynamic cyber threat intelligence retrieval to automate and improve incident response, reducing workload and response time.
Contribution
It introduces a hybrid retrieval mechanism combined with LLM-powered response generation for enhanced, context-aware cybersecurity incident mitigation.
Findings
Improved accuracy and contextualization of incident responses.
Reduced analyst workload and response latency.
Validated effectiveness on real-world and simulated alerts.
Abstract
Effective incident response (IR) is critical for mitigating cyber threats, yet security teams are overwhelmed by alert fatigue, high false-positive rates, and the vast volume of unstructured Cyber Threat Intelligence (CTI) documents. While CTI holds immense potential for enriching security operations, its extensive and fragmented nature makes manual analysis time-consuming and resource-intensive. To bridge this gap, we introduce a novel Retrieval-Augmented Generation (RAG)-based framework that leverages Large Language Models (LLMs) to automate and enhance IR by integrating dynamically retrieved CTI. Our approach introduces a hybrid retrieval mechanism that combines NLP-based similarity searches within a CTI vector database with standardized queries to external CTI platforms, facilitating context-aware enrichment of security alerts. The augmented intelligence is then leveraged by an…
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