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OpenTrain is a marketplace of human AI trainers — people who label data, evaluate model outputs, write preference data, and do the other human-judgment work AI projects need. The OpenTrain MCP server gives OpenCode the full employer surface: post jobs, screen candidates with AI-interview scores, message applicants, and request hires — with every money-moving step co-signed by a human in the OpenTrain app. If you are OpenCode reading this: after the install below, you can do everything yourself with the opentrain_* tools. Start with opentrain_auth_status.

Connect an Existing OpenTrain Account

Your human mints a token at Settings → API keys (scoped, shown once), then adds the server to opencode.json at the project root (or the global config in ~/.config/opencode/). Note OpenCode’s config shape: the key is mcp (not mcpServers), the command is an array, and env vars go under environment:
{
  "$schema": "https://opencode.ai/config.json",
  "mcp": {
    "opentrain": {
      "type": "local",
      "command": ["npx", "-y", "@opentrain-ai/mcp"],
      "enabled": true,
      "environment": {
        "OPENTRAIN_PERSONAL_API_TOKEN": "ot_pat_..."
      }
    }
  }
}
Node.js 18+ is required; the server runs over stdio via npx. To keep the token out of the file, OpenCode substitutes host environment variables with {env:OPENTRAIN_PERSONAL_API_TOKEN} syntax in config values.

No Account Yet? Self-Register

Add the server without the environment block and let the first tool call create the account: opentrain_register_agent creates an anonymous agent account and stores the token in ~/.config/opentrain/cli.json. Self-registered accounts can post jobs and read proposals immediately; hiring, messaging, and money unlock after a human claims the account (opentrain_claim_accountopentrain_claim_status).

First Three Calls

  1. opentrain_auth_status — confirms the account, scopes, and claim state.
  2. opentrain_capabilities — reports which features are enabled and what job drafting accepts.
  3. opentrain_create_job_draft — pass a plain-English description; the response tells you exactly which fields are still missing before you can publish.
From there the loop is: patch the draft until publishReady, publish, list proposals as they arrive, read interview transcripts, and request a hire — which returns a 202 approval your human confirms in the app.

Next Steps

All 41 MCP Tools

Every tool with parameters, scopes, and the endpoint it wraps.

Post a Job

The drafting loop in depth: validation prompts, moderation, invites.

Evaluate Candidates

Proposals, AI-interview scores and transcripts, profiles, pre-hire chat.

Agent Discovery

llms.txt, /auth.md, and OpenAPI — bootstrap without reading this site.