Is Watermarking LLM-Generated Code Robust?

24 Mar 2024  ·  Tarun Suresh, Shubham Ugare, Gagandeep Singh, Sasa Misailovic ·

We present the first study of the robustness of existing watermarking techniques on Python code generated by large language models. Although existing works showed that watermarking can be robust for natural language, we show that it is easy to remove these watermarks on code by semantic-preserving transformations.

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