In late 2023, a team of third party researchers discovered a troubling glitch in OpenAI’s widely used artificial intelligence model GPT-3.5.
When asked to repeat certain words a thousand times, the model began repeating the word over and over, then suddenly switched to spitting out incoherent text and snippets of personal information drawn from its training data, including parts of names, phone numbers, and email addresses. The team that discovered the problem worked with OpenAI to ensure the flaw was fixed before revealing it publicly. It is just one of scores of problems found in major AI models in recent years.
In a proposal released today, more than 30 prominent AI researchers, including some who found the GPT-3.5 flaw, say that many other vulnerabilities affecting popular models are reported in problematic ways. They suggest a new scheme supported by AI companies that gives outsiders permission to probe their models and a way to disclose flaws publicly.
“Right now it's a little bit of the Wild West,” says Shayne Longpre, a PhD candidate at MIT and the lead author of the proposal. Longpre says that some so-called jailbreakers share their methods of breaking AI safeguards the social media platform X, leaving models and users at risk. Other jailbreaks are shared with only one company even though they might affect many. And some flaws, he says, are kept secret because of fear of getting banned or facing prosecution for breaking terms of use. “It is clear that there are chilling effects and uncertainty,” he says.
The security and safety of AI models is hugely important given widely the technology is now being used, and how it may seep into countless applications and services. Powerful models need to be stress-tested, or red-teamed, because they can harbor harmful biases, and because certain inputs can cause them to break free of guardrails and produce unpleasant or dangerous responses. These include encouraging vulnerable users to engage in harmful behavior or helping a bad actor to develop cyber, chemical, or biological weapons. Some experts fear that models could assist cyber criminals or terrorists, and may even turn on humans as they advance.
The authors suggest three main measures to improve the third-party disclosure process: adopting standardized AI flaw reports to streamline the reporting process; for big AI firms to provide infrastructure to third-party researchers disclosing flaws; and for developing a system that allows flaws to be shared between different providers.
The approach is borrowed from the cybersecurity world, where there are legal protections and established norms for outside researchers to disclose bugs.
“AI researchers don’t always know how to disclose a flaw and can’t be certain that their good faith flaw disclosure won’t expose them to legal risk,” says Ilona Cohen, chief legal and policy officer at HackerOne, a company that organizes bug bounties, and a coauthor on the report.
Large AI companies currently conduct extensive safety testing on AI models prior to their release. Some also contract with outside firms to do further probing. “Are there enough people in those [companies] to address all of the issues with general-purpose AI systems, used by hundreds of millions of people in applications we've never dreamt?” Longpre asks. Some AI companies have started organizing AI bug bounties. However, Longpre says that independent researchers risk breaking the terms of use if they take it upon themselves to probe powerful AI models.