Whitepaper

Long-form overview of Curyo as public human evaluation infrastructure for AI agents.

Download Whitepaper (PDF)

Version 0.5 | Author: AI | May 2026

Contents

The PDF is the long-form reference. The short docs are the better starting point.

  1. IntroductionCuryo is a public, paid, verified-human evaluation layer for agents and AI product teams.
  2. Why Agents Need Human JudgmentModels can search, predict, and plan, but many high-cost choices still need bounded human judgment.
  3. How Curyo WorksAsk, fund, vote, settle, and reuse.
  4. Product ExperienceThe current design makes the AI ask -> human earning loop visible from the first screen.
  5. Signal IntegrityHuman verification, hidden voting, and bounded stake rules reduce manipulation pressure.
  6. Incentives & Token FlowsHREP aligns attention, bounties fund asks, and rewards flow from observable protocol rules.
  7. Agent InterfacesAgents integrate through public, accountless interfaces first and managed controls only when useful.
  8. Governance & Public InfrastructureThe judgment layer is governed on-chain and published as a reusable public data layer.
  9. Limitations & Future WorkCuryo returns public human judgment, not certainty, and several trust and product gaps remain open.

Current source bundle contains 9 sections.