Computer ScienceProceedings of the 33rd USENIX Security Symposium
An LLM-Assisted Easy-to-Trigger Backdoor Attack on Code Completion Models: Injecting Disguised Vulnerabilities against Strong Detection
S. Yan, S. Wang, et al.
Large Language Models now power smarter code completion—but what if they can be turned against us? CODEBREAKER introduces an LLM-assisted backdoor attack that stealthily transforms malicious payloads so poisoned fine-tuning data and generated code can evade strong detectors. This research was conducted by Shenao Yan, Shen Wang, Yue Duan, Hanbin Hong, Kiho Lee, Doowon Kim, and Yuan Hong.
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