The end of the free AI era: Why ‘compute’ is the geopolitical currency of 2026
If one word will define AI in 2026, it is compute: the capacity to train models, run them, and generate results. For the past few years, that capacity has felt inexpensive, almost abundant. Since the launch of ChatGPT, users and developers have grown accustomed to increasingly powerful AI at little cost, and often for free.
That era is ending. Even when users pay $20 to $200 a month, those fees cover only a fraction of the actual cost. As models become more complex, the compute required to train and serve them continues to rise. Companies are already responding by raising prices, shifting toward ads, enterprise contracts, and stricter usage caps, even on premium subscriptions.
Compute is now becoming a geopolitical issue.
The U.S. is home not only to leading AI labs, but also to Nvidia, the dominant supplier of advanced AI chips. This gives the White House significant leverage over who can access high-end compute. Export controls are rapidly becoming a central instrument of technology policy.
Kazakhstan has already encountered this reality. As Zhaslan Madiyev, minister of artificial intelligence and digital development, noted last year, the government spent 12 months negotiating with the U.S. to secure chips for its national supercomputer. Washington’s concern was that advanced chips could be re-exported rather than used for Kazakhstan’s domestic AI efforts.
Those negotiations eventually led to the launch of the Alem.Cloud supercomputer in late 2025. But acquiring hardware solved only part of the problem. A centralized supercomputer has fixed capacity: at peak times, demand can exceed supply; during quieter periods, expensive chips sit idle.
Kazakhstan’s response was to pursue a partnership between Alem.Cloud and Cocoon, a decentralized AI network launched by Pavel Durov. The effectiveness of this arrangement has yet to be proven in practice, but in theory, such partnerships could help governments offset infrastructure costs by monetizing unused capacity.
Looking ahead, closer collaboration between the public sector and decentralized networks is likely. One of the primary concerns for governments today is data localization: ensuring that sensitive data remains within national borders. Some decentralized networks, such as Ambient, are already developing mechanisms to restrict computation to domestic infrastructure while preserving the benefits of decentralization — flexibility, resilience and competitive pricing.