Luis Lozano Paredes (U Technology Sydney (UTS)) has posted “AI Governance in Motion: Aligning Form, Fit, and Context Amid Decentralization” on SSRN. Here is the abstract:
This paper argues that effective private AI governance in decentralized settings emerges when institutional form (rules/structure) is iteratively aligned with operational fit (what actually works) under shifting context (market, regulatory, ethical pressures). Using a comparative, qualitative multiple-case design, I analyze Prime Intellect (protocol/DAO), EleutherAI (open collective), and Hugging Face (platform-community hybrid) through Ostrom’s design principles, Alexander’s form-fit-context lens, and polycentric political economy. I identify three recurrent alignment strategies: (1) incentive-encoded protocol governance (Prime Intellect), (2) normative transparency and open science (EleutherAI), and (3) layered platform governance with community co-production (Hugging Face). Across cases, alignment succeeds when boundaries, participation, monitoring, and conflict resolution co-evolve with external pressures; it falters with risks of token-weighted oligarchy, volunteer fatigue, or scale-induced moderation burdens. The contribution is twofold: a portable alignment rubric for assessing private AI governance (form-fit-context) and evidence that polycentric, privately ordered institutions can complement-or sometimes substitute for-public regulation. I conclude by reframing AI as a hyperobject-like entity and discuss the implications for “governance with/in” AI infrastructures, rather than “of” AI from the outside.
