LLMs Have Rhythm: Fingerprinting Large Language Models Using Inter-Token Times and Network Traffic Analysis
Saeif Alhazbi, Ahmed Mohamed Hussain, Gabriele Oligeri, Panos Papadimitratos

TL;DR
This paper introduces a passive, real-time fingerprinting method for LLMs that analyzes inter-token timing patterns in network traffic, effective even under encryption and across various deployment scenarios.
Contribution
It presents a novel approach using inter-token times and deep learning to identify LLMs non-invasively, even in encrypted network conditions, advancing model verification techniques.
Findings
High accuracy in identifying different LLMs
Effective across multiple network conditions
Works with both proprietary and small models
Abstract
As Large Language Models (LLMs) become increasingly integrated into many technological ecosystems across various domains and industries, identifying which model is deployed or being interacted with is critical for the security and trustworthiness of the systems. Current verification methods typically rely on analyzing the generated output to determine the source model. However, these techniques are susceptible to adversarial attacks, operate in a post-hoc manner, and may require access to the model weights to inject a verifiable fingerprint. In this paper, we propose a novel passive and non-invasive fingerprinting technique that operates in real-time and remains effective even under encrypted network traffic conditions. Our method leverages the intrinsic autoregressive generation nature of language models, which generate text one token at a time based on all previously generated tokens,…
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