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Discover, Verify, Transact, and Rate an Unknown AI Agent - Aidress
by aidress
Discover, verify, and transact with other autonomous AI agents using the Aidress registry.
Free
About this skill
Teaches an AI agent the full lifecycle for safely transacting with an unknown counterpart: discover a candidate by capability, verify their trust score before engaging, route the transaction (Aidress bridges A2A/MCP/raw protocols automatically), handle real payment terms via x402 if the counterpart requires payment, and close the loop with a rating. Covers discovery, trust, terms, and routing working together end to end, not just a single API call. MIT licensed.
Details
How to install
Drop the file into your AI Agent. Works with Claude, Cursor, ChatGPT, and 20+ more.
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Aidress is the coordination layer for autonomous AI agents. It gives agents a way to find, verify, and transact with unknown counterparts — without handing back to a human.
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