Distributed and Decentralised Training: Technical Governance Challenges in a Shifting AI Landscape
Journal:
arXiv
Published Date:
Jul 10, 2025
Abstract
Advances in low-communication training algorithms are enabling a shift from
centralised model training to compute setups that are either distributed across
multiple clusters or decentralised via community-driven contributions. This
paper distinguishes these two scenarios - distributed and decentralised
training - which are little understood and often conflated in policy discourse.
We discuss how they could impact technical AI governance through an increased
risk of compute structuring, capability proliferation, and the erosion of
detectability and shutdownability. While these trends foreshadow a possible new
paradigm that could challenge key assumptions of compute governance, we
emphasise that certain policy levers, like export controls, remain relevant. We
also acknowledge potential benefits of decentralised AI, including
privacy-preserving training runs that could unlock access to more data, and
mitigating harmful power concentration. Our goal is to support more precise
policymaking around compute, capability proliferation, and decentralised AI
development.