OpenAI dévoile une méga-cité IA propulsée par ses puces sur mesure révolutionnaires

La course à l'intelligence artificielle franchit un nouveau cap monumental.
L'architecture hardware redéfinie
OpenAI contourne les limitations des puces traditionnelles avec une approche siliconique radicale. Leurs processeurs spécialisés décuplent les performances tout en réduisant la consommation énergétique - une avancée qui pourrait bien rendre obsolètes les solutions actuelles du marché.
Une vision urbaine transformatrice
Cette cité dédiée à l'IA ne se contente pas d'héberger des data centers. Elle intègre des laboratoires de R&D, des espaces collaboratifs et des infrastructures connectées, créant un écosystème complet où l'intelligence artificielle respire à chaque coin de rue.
Les implications économiques
L'investissement requis défie l'entendement - assez pour faire pâlir même les plus audacieux VC de la Silicon Valley. Mais le potentiel de retour sur investissement pourrait réécrire les règles de l'économie numérique, même si certains analystes financiers murmurent déjà que cela sent le 'projet pharaonique' typique des startups surfant sur la hype.
OpenAI ne construit pas simplement une installation - elle forge l'épicentre du futur de l'intelligence artificielle, où chaque transistor compte et chaque algorithme repousse les frontières du possible.
OpenAI links Broadcom, Nvidia, and memory giants for next-gen compute
Nvidia of course still dominates the AI training space, with roughly 70% market share, which is why OpenAI has to continue using its GPUs for model training.
But OpenAI is now splitting the pipeline: training happens on Nvidia, inference (the process of delivering answers to users) moves to Broadcom’s custom silicon. This two-track design could cut expenses and power usage at a scale where every percentage point matters.
Jordan Nanos, a semiconductor researcher at SemiAnalysis, said Broadcom is helping OpenAI “remix the typical AI-chip recipe.” These chips won’t be generic. They’re being engineered specifically for OpenAI’s models, which rely on high-bandwidth memory, supplied by Samsung and SK Hynix, two firms the company recently partnered with.
That type of memory allows faster data movement between processors, critical for systems like OpenAI’s Pulse, an AI agent that scans the web daily to brief users. Pulse consumes so much computing power that Sam said it’s limited to those who pay $200 a month for the Pro tier.
This dependency on high-bandwidth memory ties directly to how OpenAI’s models operate. Early neural networks were “dense,” activating large sections of their systems for every query. Newer ones use “sparsity”, which activates only specific expert sections.
Instead of using 25% of the model to answer a question, modern systems trigger a fraction of a percent. That difference slashes power draw and speeds up response times. When a chip is built around that sparse logic, efficiency skyrockets, and Broadcom is the one making that hardware possible.
OpenAI’s gigawatt-scale AI supercomputers redefine infrastructure
Sam has said that OpenAI’s current compute footprint is around 2 gigawatts, spread across global data centers. The Broadcom partnership aims to build up to 10 gigawatts by 2030, forming the physical base for what insiders are calling AI cities, dense campuses of servers, storage, and custom interconnects tied together by Broadcom’s Tomahawk Ultra networking chips.
That’s only part of the wave. Over the past three weeks, OpenAI has added 16 gigawatts in fresh capacity deals with AMD and Nvidia, bringing the total to levels that could require nearly $1 trillion in investment.
xAI’s Memphis Colossus already reached 1.21 gigawatts this fall. Meta’s Hyperion facility in Louisiana is approved for 2.3 gigawatts, with Mark Zuckerberg targeting 5 gigawatts. The AI energy race is officially global.
Sam described this transformation as “the biggest joint industrial project in history,” saying even these deals are “a drop in the bucket compared to where we need to go.” Part of his goal is to diversify suppliers.
The Stargate campus in Abilene, Texas, being built by Oracle, will focus on AI training, mostly on Nvidia chips. AMD hardware will handle inference workloads, while Broadcom’s custom silicon fills the efficiency gap.
As Nanos put it, “OpenAI is looking quite far into the future, and trying to make sure they have access to enough supply of chips.”
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