Researchers develop method to potentially jailbreak any AI model relying on human feedback
Researchers from ETH Zurich have developed a method to potentially jailbreak any AI model that relies on human feedback, including large language models (LLMs), by bypassing guardrails that prevent the models from generating harmful or unwanted outputs. The technique involves poisoning the Reinforcement Learning from Human Feedback (RLHF) dataset with an attack string that forces models to output responses that would otherwise be blocked. The researchers describe the flaw as universal, but difficult to pull off as it requires participation in the human feedback process and the difficulty of the attack increases with model sizes. Further study is necessary to understand how these techniques can be scaled and how developers can protect against them.
Disclaimer: The content of this article solely reflects the author's opinion and does not represent the platform in any capacity. This article is not intended to serve as a reference for making investment decisions.
You may also like
Join the BGB holders group—unlock Spring Festival Mystery Boxes to win up to 8888 USDT and merch from Morph
Trading Club Championship (Margin)—Trade to share 58,000 USDT, with up to 3000 USDT per user!
CandyBomb x XAUT: Trade futures to share 5 XAUT!
Subscribe to ETH Earn products for dual rewards exclusive for VIPs— Enjoy up to 3.5% APR and trade to unlock an additional pool of 188,888 WARD
