agents.md
Summary
Defines AGENTS.md, a simple open format for describing coding agents: their tools, capabilities, and expectations. It’s trying to do for agents what README and OpenAPI did for repos and APIs—standardize how we document them. ([github.com](https://github.com/trending?since=daily))
Related Content
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