Principles of Earned Autonomy: A Governance Framework for Autonomous Agents
Authors/Creators
Description
What this is. A proposed theory-level governance framework for how autonomous AI agents may earn and exercise authority.
The claimed contribution. Not the isolated claim that reasoning matters, nor the premise that self-narration is unreliable. The claimed contribution is the synthesis: two core problems (autonomous reasoning and earned autonomy), three architectural principles (Commander's Intent, Observable Autonomy, Convergence Is Silence), and one proposed measurable property (Autonomous Reasoning Fidelity, ARF) combined into a discipline of earned, observable, revocable authority.
Why it matters. The question is not only whether an agent can produce useful outputs, but on what evidence a human or institution should let it act more autonomously in a specific context.
Scope posture. This is presented as a step toward deployable governance for delegability, not as a complete solution to AI safety or autonomy.
Evidence status. Public conformance evidence lives in the released documents and the two separately published reference implementations they cite: the Principles of Earned Autonomy Skills Suite (developer-tooling domain, three-family silence-convergence run) and the LLM Harness Protocol (a transparent MITM proxy that writes a tamper-evident, hash-chained, append-only ledger of every LLM interaction across OpenAI, Anthropic, and Gemini APIs, demonstrating that the structural capture-author separation Principle 2 requires is buildable in current tooling).
Core argumentative line. Problem -> principles -> bounded reference evidence from two implementations.
Read in this order.
- README.md - overview and scope.
- PROBLEM.md - names the two problems and defines delegability as the connecting discipline.
- PRINCIPLES.md - states the three principles and the ARF operational definition.
- PROOF.md - conformance tests for each principle, plus bounded empirical evidence from the two reference implementations.
Background and corroboration. EMPIRICAL_EVIDENCE.md records formative case material from the framework's synthesis plus external corroboration for why the principles are structural; it is not part of the core evidentiary line.
Canonical source: GitHub repository. Companion implementations: Autonomous Development Skills Suite on Zenodo and the LLM Harness Protocol.
Files
ntholm86/principles-of-earned-autonomy-v2.3.0.zip
Files
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Additional details
Related works
- Is supplemented by
- Software: 10.5281/zenodo.19732827 (DOI)
Software
- Repository URL
- https://github.com/ntholm86/principles-of-earned-autonomy