>But when people think of decentralized training, they don’t first think of gigantic datacenters, owned by the same company, training models across large distances. Instead, they imagine thousands of small datacenters, or individual consumers, pooling their spare compute over the internet to orchestrate a training run larger than any single actor could manage alone. Many companies are pursuing this vision: Pluralis Research, Prime Intellect and Nous Research have already successfully decentrally trained models at scale. But in practice, training decentrally over the internet has lagged far behind more centralized training. Even their largest models (Pluralis’ 8B Protocol Model, Prime Intellect’s INTELLECT-1, and Nous’ Consilience 40B) have been trained with 1,000x less compute than today’s frontier models (such as xAI’s Grok 4). https://epoch.ai/gradient-updates/how-far-can-decentralized-...
I think it's fundamentally not useful as long as there are other open source model releases. E.g. suppose you make SotA model at a particular size via decentralized training. Amazing. In a month Qwen/Deepseek/etc release a new model which is better. So why would you use the "decentralized one"?
Models have limited shelf live while things are improving rapidly, and decentralized training is just more wasteful.
However, things might change if we get to what Karpathy calls "cognitive core" - a stable model backbone which can be extended via skills/adapters/etc. Development of extensions to the core can be a lot more decentralized.
But for now these decentralized training attempts function largely as a deterrent to anti-open-source collusion