USC-FORTIS/AD-LLM
[ACL Findings 2025] A benchmark for anomaly detection using large language models. It supports zero-shot detection, data augmentation, and model selection, with scripts and data for GPT-4 and Llama experiments.
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8
Language
Python
License
MIT
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Last pushed
Oct 09, 2025
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