📊 Full opportunity report: The gigawatt gap. Why China is structurally positioned for AI power and the US is engineering around its grid. on ThorstenMeyerAI.com — validation score, market gap, and execution plan.
TL;DR
China’s AI infrastructure benefits from centralized planning and massive renewable energy buildout, enabling it to substitute power for chip performance. The US leads in chip tech but faces constraints at the power layer, creating a structural gap that could influence future AI dominance.
China’s AI infrastructure is uniquely positioned to scale at gigawatt levels, thanks to centralized planning and extensive renewable energy projects, contrasting with the US’s fragmented grid and regulatory constraints. This structural difference could influence the global AI power balance.
Recent studies indicate that AI data centers now require 100 megawatts to start and up to 2 gigawatts at full capacity, with China deploying over 430 gigawatts of wind and solar in 2025 alone, vastly outpacing US renewable additions. Chinese chips, such as Huawei’s Ascend 910C, perform at roughly 60% of US NVIDIA H100 chips, but system-level capacity is enhanced by China’s ability to transmit large amounts of power over an extensive ultra-high-voltage (UHV) grid spanning over 40,000 kilometers. This infrastructure allows China to substitute raw power for chip performance, effectively closing the system-level gap despite chip-level performance differences. In contrast, the US relies on behind-the-meter deals, off-grid turbines, and regulatory arbitrage to build its power capacity, which faces delays and constraints. The core difference lies in China’s centralized, top-down approach enabled by government planning, versus the US’s fragmented, multi-layered governance structure, which hampers large-scale infrastructure expansion.
The gigawatt gap.
Why China is structurally
positioned for AI power
and the US is engineering
around its grid.
power capacity end 2025
5-year average wait
45 projects · 340 GW capacity
vs. H100 · compensated by watts
interconnection queue
installed capacity
built by end-2024
on-site generation
DY 2024-25 → 2026-27
solar additions 2025
generation capacity
installed base
of capacity
add ratio
2025 alone
capacity end 2025
installed capacity
of capacity
Low watts
grid + transmission capacity
More watts
chip performance / FP precision
The US has perf-per-watt advantage. China has watts-without-bound advantage. These are asymmetric substitutes — not the same axis. When the perf-per-watt side is bounded by grid capacity and the watts-without-bound side is bounded by chip performance, the binding constraint differs.Thorsten Meyer · The Gigawatt Gap · Energy & Infrastructure 01
Implications of the Power Infrastructure Divide
This structural divergence could determine which country maintains or gains AI dominance in the coming years. China’s ability to deploy large-scale, renewable-powered AI data centers may allow it to bypass the US’s grid and regulatory limitations, potentially enabling faster, more scalable AI deployment. The US’s constraints at the power layer could become a ceiling on its AI growth unless policy reforms or technological efficiencies close the gap. This shift underscores a fundamental change in how AI infrastructure is built and scaled, emphasizing the importance of state-led energy and transmission strategies over chip performance alone.

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Background on US and Chinese AI Infrastructure Strategies
Historically, the US has led in AI chip performance, infrastructure, and applications, but recent developments show a shift in the physical layer—the delivery of electrons to silicon. US AI data centers have grown from megawatt to gigawatt scale, but face bottlenecks due to grid permitting, siting, and transmission constraints. Meanwhile, China has pursued a centralized approach, investing heavily in renewable energy and ultra-high-voltage transmission networks, enabling it to transmit large amounts of power across vast distances. Chinese chips lag behind US counterparts in raw performance but are deployed across a system optimized for power throughput rather than chip efficiency. The Chinese strategy leverages the constitutional advantage of centralized planning, contrasting with the US’s federal fragmentation, which complicates large-scale infrastructure projects.
“The US has won every layer of AI infrastructure except the layer that physically delivers electrons. China’s centralized planning and renewable buildout are enabling it to close the system-level gap by substituting power for chip performance.”
— Thorsten Meyer

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Unclear Impact of Efficiency Gains and Policy Changes
It remains uncertain whether US efforts to improve chip and system efficiency will close the power gap or if the structural constraints will persist. The potential for policy reforms to streamline grid permitting and transmission is still developing, and the long-term effects of China’s renewable and transmission strategy on global AI leadership are not yet fully understood.

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Future Developments in US and Chinese AI Infrastructure
Over the next 24 months, both countries will likely continue expanding their respective infrastructure. The US may pursue statutory reforms, technological efficiencies, or both to overcome grid constraints. China will probably deepen its renewable buildout and transmission capacity, further solidifying its system-level advantage. Monitoring policy changes, technological innovations, and deployment scales will be key to understanding which country gains the upper hand in AI infrastructure.
gigawatt scale renewable energy systems
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Key Questions
Why does China’s centralized energy infrastructure matter for AI?
It allows China to transmit large amounts of power over vast distances, enabling gigawatt-scale AI data centers that bypass some of the regulatory and transmission constraints faced by the US.
Will US efficiency improvements close the gigawatt power gap?
It is uncertain. While efficiency gains could help, the structural constraints at the grid and permitting level may limit the US’s ability to scale power capacity as rapidly as China.
How does chip performance compare between China and the US?
Chinese chips like Huawei’s Ascend 910C perform at about 60% of US NVIDIA H100 inference performance, but system-level throughput benefits from China’s extensive renewable-powered transmission infrastructure.
Could policy reforms change the US infrastructure constraints?
Potentially, but current permitting and regulatory processes are slow, and it is unclear whether reforms will be enacted or sufficient to close the power capacity gap.
What does this mean for the global AI race?
The country that effectively scales its physical power infrastructure may gain a significant advantage in deploying AI at the largest scale, regardless of chip performance. China’s approach could reshape the competitive landscape.
Source: ThorstenMeyerAI.com