The US-China tech rivalry spans four arenas: creating technology, applying it, installing infrastructure, and self-sufficiency. While the U.S. excels at creating foundational tech like AI frameworks and semiconductors, China is leading in its practical application (e.g., robotics), installing digital infrastructure globally, and achieving resource independence.
While the US pursues cutting-edge AGI, China is competing aggressively on cost at the application layer. By making LLM tokens and energy dramatically cheaper (e.g., $1.10 vs. $10+ per million tokens), China is fostering mass adoption and rapid commercialization. This strategy aims to win the practical, economic side of the AI race, even with less powerful models.
The US AI strategy is dominated by a race to build a foundational "god in a box" Artificial General Intelligence (AGI). In contrast, China's state-directed approach currently prioritizes practical, narrow AI applications in manufacturing, agriculture, and healthcare to drive immediate economic productivity.
China is pursuing a low-cost, open-source AI model, similar to Android's market strategy. This contrasts with the US's expensive, high-performance "iPhone" approach. This accessibility and cost-effectiveness could allow Chinese AI to dominate the global market, especially in developing nations.
A nation's advantage is its "intelligent capital stock": its total GPU compute power multiplied by the quality of its AI models. This explains the US restricting GPU sales to China, which counters by excelling in open-source models to close the gap.
While semiconductor access is a critical choke point, the long-term constraint on U.S. AI dominance is energy. Building massive data centers requires vast, stable power, but the U.S. faces supply chain issues for energy hardware and lacks a unified grid. China, in contrast, is strategically building out its energy infrastructure to support its AI ambitions.
While the US prioritizes large language models, China is heavily invested in embodied AI. Experts predict a "ChatGPT moment" for humanoid robots—when they can perform complex, unprogrammed tasks in new environments—will occur in China within three years, showcasing a divergent national AI development path.
China is compensating for its deficit in cutting-edge semiconductors by pursuing an asymmetric strategy. It focuses on massive 'superclusters' of less advanced domestic chips and creating hyper-efficient, open-source AI models. This approach prioritizes widespread, low-cost adoption over chasing the absolute peak of performance like the US.
While the West may lead in AI models, China's key strategic advantage is its ability to 'embody' AI in hardware. Decades of de-industrialization in the U.S. have left a gap, while China's manufacturing dominance allows it to integrate AI into cars, drones, and robots at a scale the West cannot currently match.
While the U.S. leads in closed, proprietary AI models like OpenAI's, Chinese companies now dominate the leaderboards for open-source models. Because they are cheaper and easier to deploy, these Chinese models are seeing rapid global uptake, challenging the U.S.'s perceived lead in AI through wider diffusion and application.
From 2001 onwards, while the U.S. was militarily and economically distracted by the War on Terror, China executed a long-term strategy. It focused on acquiring Western technology and building indigenous capabilities in AI, telecom, and robotics, effectively creating a rival global economic system.