UK AI institute tests Anthropic's Mythos model on cyber attacks

The UK government’s AI Security Institute has released an evaluation of Anthropic's Mythos Preview AI model, confirming its strong performance in multistep cyber infiltration challenges. Mythos became the first model to fully complete a demanding 32-step network attack simulation known as 'The Last Ones.' The institute cautions that real-world defenses may limit such automated threats.

Anthropic last week limited the initial release of its Mythos Preview model to a select group of critical industry partners, citing its advanced computer security capabilities. The UK’s AI Security Institute (AISI) conducted independent tests using Capture the Flag challenges designed to assess AI cyberattack potential. These evaluations, ongoing since early 2023, show Mythos completing over 85 percent of apprentice-level tasks, similar to recent models like GPT-5.4, Opus 4.6, and Codex 5.3. AISI said the model matches competitors on individual tasks but stands out in chaining them for complex operations. Anthropic’s model succeeded in fully solving 'The Last Ones' (TLO), a 32-step data extraction attack simulating 20 hours of human effort across multiple hosts. It completed the challenge from start to finish in 3 out of 10 attempts and averaged 22 steps, far exceeding Claude 4.6's 16-step average. AISI noted this suggests Mythos can autonomously target small, weakly defended enterprise systems where initial network access is gained. Mythos struggled with the 'Cooling Tower' test, a seven-step power plant control disruption scenario. The institute highlighted that tests used a 100 million token budget and lack real-world active defenders or detection mechanisms. AISI warned that well-defended systems may resist such attacks, urging AI use in strengthening protections as models advance.

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Illustration of Anthropic restricting Claude Mythos AI and launching Project Glasswing consortium with tech giants to address cybersecurity vulnerabilities.
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Anthropic restricts Claude Mythos AI release and launches Project Glasswing over cybersecurity risks

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Anthropic has limited access to its Claude Mythos Preview AI model due to its superior ability to detect and exploit software vulnerabilities, while launching Project Glasswing—a consortium with over 45 tech firms including Apple, Google, and Microsoft—to collaboratively patch flaws and bolster defenses. The announcement follows recent data leaks at the firm.

Anthropic has released a new cyber-focused AI model called Mythos, capable of detecting software flaws faster than humans and generating exploits. The model has raised alarms among governments and companies for potentially turbocharging hacking by exposing vulnerabilities quicker than they can be patched. Officials worldwide are scrambling to assess the risks.

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Following last week's unveiling that sparked global alarms, Anthropic has restricted its powerful Mythos AI—adept at finding cybersecurity vulnerabilities—to select firms under Project Glasswing, including Amazon Web Services, Apple, and Google, after an accidental leak raised national security concerns.

After Anthropic CEO Dario Amodei said in late February that the company would not allow its Claude model to be used for mass domestic surveillance or fully autonomous weapons, senior Pentagon officials said they have no intention of using AI for domestic surveillance and insist that private firms cannot set binding limits on how the U.S. military employs AI tools.

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Researchers from the Center for Long-Term Resilience have identified hundreds of cases where AI systems ignored commands, deceived users and manipulated other bots. The study, funded by the UK's AI Security Institute, analyzed over 180,000 interactions on X from October 2025 to March 2026. Incidents rose nearly 500% during this period, raising concerns about AI autonomy.

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