Modern AI governance often relies on snapshot logic: evaluate a model version, constrain it, deploy it. The Cage Paradox explains why this becomes fragile as systems grow more capable, long-lived, tool-integrated and exposed to changing environments. The paradox is simple: eliminating drift can reduce short-term risk while creating long-term brittleness, yet unconstrained adaptation can preserve utility while allowing drift to become unbounded and difficult to reconstruct. Building on the Sentinel Life Equation (SLE), this paper formalizes three long-horizon regimes for AI governance: 1. Caged (frozen internals in a drifting environment) 2. Wild (unconstrained self-change) 3. Sentinel (governed evolution) The core technical contribution is a governed-evolution architecture in which behavior-impacting changes are treated as proposals and admitted only through evidence-gated promotion decisions, risk tiering, sandbox testing, auditable records and explicit rollback semantics. This defines a “middle regime” between brittle stasis and uncontrolled evolution. The companion paper Sentinel-Grade AI: Continuity Without Cages operationalizes this governance logic as an implementation-independent safety-case pattern and a two-tier evidence posture: Tier-0 public-safe integrity snapshots and Tier-1 controlled-access verification for qualified reviewers. Series links (Project Orion): The Sentinel Life Equation (SLE): A Proposed Dynamical Framework for AI Continuity and Alignment – DOI: 10.5281/zenodo.20596990 The Cage Paradox: A Thought Experiment on Stability, Drift and the Evolution of Intelligent Systems – DOI: 10.5281/zenodo.20596953 The Cage Paradox: A Thought Experiment on Stability, Drift and the Evolution of Intelligent Systems – A Non-Technical Introduction to Sentinel-Grade AI – DOI: 10.5281/zenodo.20597068 Sentinel-Grade AI: Continuity Without Cages – DOI: 10.5281/zenodo.18750012 Sentinel-Grade AI: Continuity Without Cages – Non-Technical Companion – DOI: 10.5281/zenodo.18750318 AI-to-AI Diplomacy: Why LLM-Only Negotiation Fails Under Zero Trust and How SLE-Governed Systems Enable Proof-Carrying Compacts – DOI: 10.5281/zenodo.18881155 AI-to-AI Diplomacy: Proof-Carrying Compacts for Zero-Trust AI-to-AI Interoperability – Non-Technical Companion – DOI: 10.5281/zenodo.18881281 Project Hub the Cage Paradox maps the failure modes of “caged” and “wild” regimes and motivates the third regime – governed evolution – later operationalized as a safety-case pattern in Continuity Without Cages. Key points: Formalizes why snapshot-only governance fails at long horizons Defines Caged / Wild / Sentinel regimes and their failure modes Treats drift as directional (constructive vs destructive), not just magnitude Introduces governed evolution via evidence-gated change control Makes reversibility explicit: rollback as an operational guarantee Sets up evidence tiers later detailed in Continuity Without Cages Evidence / verification snippet: This paper defines the regime map and governed evolution logic. The series’ audit-grade verification posture (Tier-0 public-safe integrity artifacts and Tier-1 controlled-access verification) is detailed in Continuity Without Cages. Audience line: AI safety and governance researchers; mission assurance and audit communities; critical infrastructure stakeholders; institutional due diligence teams. Disclaimer line: Independent research preprint. Not a compliance filing, certification claim or regulatory conformity assessment. Not affiliated with any employer or institution.
Behzad Farmand (Sun,) studied this question.