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Practical Deployment of LLMs for Network Traffic Classification
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本文提出一种混合架构,利用GPT-2和ModernBERT等LLM后端,提升动态、情境感知的流量分类系统,优化加密流量分析,解决传统方法局限性。

EXECUTIVE SUMMARY

The integration of Generative AI and Large Language Models (LLMs) into network security and operational management presents transformative opportunities for enhancing application identification and traffic classification. Traditional methods that rely on literal matching and regex-based software flows face limitations in handling complex network tasks, particularly in deep packet inspection (DPI) and encrypted traffic analysis. This research proposes a hybrid architecture that leverages multiple LLM backends, such as GPT-2 and ModernBERT, to facilitate dynamic, context-aware, and adaptive traffic classification systems. While earlier works like TrafficGPT demonstrated the potential of LLMs in encrypted traffic classification, our research advances these capabilities by integrating batch processing and optimized edge inference techniques—directly addressing the scalability and performance constraints of prior approaches. We conducted comprehensive evaluations, including workload characterization and hardware-specific optimizations on Intel® Xeon® processors and Intel® Arc™ A770 Graphics. These efforts establish a practical foundation for deploying LLM-based systems at scale, extending the frontier of traditional network security.

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相关标签

生成AI 大型语言模型 网络安全 流量分类 加密流量分析
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