ChatGPT agent System Card

OpenAI Blog
Jul 17, 2025 10:00
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Summary

OpenAI’s ChatGPT agent System Card introduces an agentic model that integrates research capabilities, browser automation, and code tools, all governed by the Preparedness Framework to ensure safety. This development marks a significant step toward more autonomous and capable AI agents, highlighting the importance of robust safeguards as AI systems become increasingly powerful and versatile.

ChatGPT agent System Card: OpenAI’s agentic model unites research, browser automation, and code tools with safeguards under the Preparedness Framework.

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