Feb. 15, 2024, 6 p.m. | Black Hat

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...In this work, we propose the first explainable LLM-based incident inspector. We combine a large-scale language embedding model with a frequent association algorithm to extract significant tokens, providing strong interpretability for incident similarity in feature space representation. Moreover, the contextual comprehension capabilities of the LLM ensure robustness against input variations. We demonstrate the practicality of our method in real-world incidents by applying it to our global visibility platform (200M+ events per day). The significant tokens generated by our model clearly …

algorithm capabilities extract feature incident inspector language large llm mining representation robustness scale similarity space tokens work

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