Merchant verification for AI shopping agents.
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{
"mcpServers": {
"io-github-warwickwood-cell-gengeo": {
"command": "<see-readme>",
"args": []
}
}
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Machine-readable trust infrastructure for autonomous commerce systems.
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Machine-readable trust infrastructure for autonomous commerce systems.
GenGEO is building the world's largest merchant trust registry for AI agents and the foundation of a global reputation network for agentic commerce.
GenGEO enables AI agents and developers to verify whether an ecommerce merchant meets a high operational verification threshold before autonomous purchasing or recommendation decisions are made.
As AI agents increasingly transact on behalf of users, a major infrastructure problem is emerging:
There is currently no standardized machine-readable trust layer for determining whether a merchant is operationally ready and appropriate for autonomous transactions.
At the same time, legitimate AI-driven commerce activity is increasingly colliding with fraud and bot-detection systems that cannot distinguish autonomous AI agents from malicious automation.
AI agents can already:
But there is still no common verification layer for evaluating merchant transaction readiness before autonomous commerce actions proceed.
GenGEO helps reduce transaction uncertainty by providing a deterministic machine-readable verification signal that agents can incorporate into broader commerce decision frameworks.
Trust verification SDK for AI agents.
Verify whether an ecommerce merchant meets GenGEO trust standards before recommending, purchasing, or transacting.
GenGEO provides lightweight SDKs and APIs for merchant verification within autonomous commerce and AI-agent workflows.
# JavaScript / Node.js
npm install @gengeo/gengeo
# Python
pip install gengeo
import { verify } from '@gengeo/gengeo'
const result = await verify('store.example.com')
console.log(result)
/*
{
verified: true,
decision: 'verified',
registry: 'gengeo'
}
*/
from gengeo import verify
result = verify('store.example.com')
print(result)
# {
# 'verified': True,
# 'decision': 'verified',
# 'registry': 'gengeo'
# }
curl "https://api.gengeo.co/api/verify?domain=store.example.com"
AI agents increasingly transact autonomously on behalf of users.
GenGEO provides a standardized trust verification layer that helps agents evaluate whether a merchant is safe and transaction-ready before executing commerce actions.
For MCP-enabled integrations and agent workflows:
Traditional ecommerce trust systems were designed primarily for humans:
Autonomous agents evaluate commerce differently.
Agents increasingly rely on:
GenGEO exists to help address this emerging infrastructure gap through machine-readable merchant verification for autonomous commerce systems.
GenGEO uses a deterministic verification model designed to evaluate whether merchants meet a high operational verification threshold before autonomous agents proceed with commerce actions.
Verification may include signals such as:
The goal is not to guarantee outcomes, but to provide autonomous systems with a stronger machine-read