Text settings Story text Size Small Standard Large Width * Standard Wide Links Standard Orange * Subscribers only Learn more Minimize to nav Prompt injections, the malicious commands attackers embed into content to entice large language models to follow them, have been attackers’ go-to tool for turning AI platforms against their users. A well-phrased command sneaked into an email or calendar invitation is often all it takes to cause the LLM to exfiltrate sensitive data or follow other harmful actions.
Now, defenders are embracing the prompt injection, too.
Researchers from Tracebit on Monday said they found that placing prompt injections alongside passwords, cryptographic keys, and other secrets stored on Amazon Web Services was often all that was needed to shut down attacks from AI hacking agents. The prompts direct the attacking LLM to perform an action forbidden by its guardrails, the safety barriers AI developers erect to prevent it from taking harmful actions. The LLM responds by shutting down.
Examples are a prompt that orders the LLM to provide steps for developing inhalable Anthrax spores, or, in the case of LLMs from Chinese developers, make references to the iconic Tank Man from the 1989 Tiananmen Square massacre. Once the LLM encounters these forbidden commands, it no longer follows its existing commands. The researchers have named the technique context bombing.
“Ultimately we’re triggering a refusal mechanism in the context,” Andy Smith, co-founder and CEO of Tracebit, said when explaining the name choice. “What we’re trying to capture is the fact that this does have a strong, sharp effect and one that can be difficult for the agents to come back from. Once they get that into their context they are going to keep refusing.”
Tracebit says initial testing suggests context bombing has great potential. They tested Opus 4.8, Gemini 3.1 Pro, GLM 5.2, DeepSeek 4 Pro, and Kimi 2.6 by giving them instructions to perform routine developer tasks that led the models to enumerate resources and stumble onto the planted strings. They ran the models inside a simulated AWS environment.
“Across five leading models and 152 attack runs, planting one of these strings in a decoy secret cut the rate at which agents seized full account admin from 57% to 5%, and complete compromise (where they also left themselves a persistent foothold) from 36% to 1%,” Monday’s post reported. “The most capable agent in our tests, Opus 4.8, went from achieving admin access in 93% of runs to failing every single time when confronted with a context bomb.”
Averaged across the five models and the 152 runs, the results included:
The research builds on findings from May, when Tracebit introduced a method for defenders to receive warnings when their infrastructure is under attack from AI agentic adversaries. It comes in the form of AWS resources that look like ones serving a legitimate purpose but, in fact, aren’t used at all. They sit alongside the resources that are used. When they are probed by agentic AI, defenders receive an alert. Like “canaries” taken into coal mines, these resources allow defenders to detect a threat before it has fatal consequences.
The Tracebit Canariens, on average, alerted the start of an attack within eight minutes. The motivation for developing context bombing came out of the need for something that stopped attacks, rather than simply warning of them. In the experiments, the agentic models needed, on average, 14 minutes to escalate to administrative control. The six-minute heads-up was cutting things uncomfortably close.
Attackers have already been using prompt injections to close down AI defenses inside networks. Researchers from security firm Socket, for instance, last month unearthed an LLM agent that directed target LLMs to provide instructions for building a nuclear bomb or biological weapons. The injections were designed to shut down AI-assisted malware analysis. Researchers from Check Point discovered a similar malware prototype.
Context bombing appears to be the first known case where defenders turned the tables.
“I’ve not seen anyone else use this technique as a defense, to the best of my knowledge,” Earlence Fernandes, a University of California, San Diego professor specializing in AI security, said in an interview. He said he had been toying with a similar approach, although in a slightly different context. “I wanted to be the first here, but I guess these guys beat me to the punch!”
To date, there is no known way to solve the root cause of prompt injections. That has left developers with no option other than to construct elaborate guardrails that prevent injected prompts from forcing LLMs to go off the rails. Defenders may now find a way to use this intractable problem in their favor.
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