Giovanni Dettori
Designing and engineering a Q&A LLM for network packet representation.
Rel. Luca Vassio, Marco Mellia, Matteo Boffa. Politecnico di Torino, Master of science program in Ict For Smart Societies, 2024
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Abstract
As internet traffic continues to grow exponentially, the ability to accurately classify and analyze it becomes increasingly important for ensuring network performance, security, and reliability. Traditional traffic classification methods often rely on static rules which are becoming less effective for the increasing complexity of network environments, the dynamicity of protocols, and the growth of encrypted traffic. This necessitates the development of more sophisticated techniques that can accurately represent and classify internet packets based on their intrinsic characteristics that derive both from the header and payload. The primary challenge lies in creating a representation of each packet that summarizes its significant features while being computationally efficient and scalable.
Nowadays, to address this problem advanced machine learning algorithms and deep learning models are leveraged for their ability to learn complex patterns and relationships within the data
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