SafeTune uses GNN-based structural anomaly detection and semantic prompt classification to filter poisoned data in LLM fine-tuning for RTL generation, enhancing robustness against hardware Trojan insertion without altering the base model.
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SafeTune: Mitigating Data Poisoning in LLM Fine-Tuning for RTL Code Generation
SafeTune uses GNN-based structural anomaly detection and semantic prompt classification to filter poisoned data in LLM fine-tuning for RTL generation, enhancing robustness against hardware Trojan insertion without altering the base model.