Key Takeaways
- Raoul Pal of Real Vision described the U.S.-China AI rivalry as “unlike any rivalry in history” in a post on May 18.
- At Consensus 2026 in Miami, Pal introduced the notion of Universal Basic Equity, highlighting the challenges posed by AI automation to knowledge-based work.
- A recent report indicates that while the U.S. excels in computational power, China leads in key AI domains, especially in operational efficiency and deployment.
Pal Warns the AI Race Has No Clear Winner
Raoul Pal, a former hedge fund manager at Goldman Sachs and co-founder of the financial media platform Real Vision, has characterized the intensifying U.S.-China competition in artificial intelligence (AI) in stark terms, asserting:
“The U.S.-China AI race is a race no one can win and no one can afford to lose. Every great power competition in history was for territory, resources, or weapons. This one is the first that is for none of them. It is a race for the substrate of intelligence itself.”
His remarks emerge as the AI contest between these two economic giants reaches a pivotal moment, characterized by divergent strategic approaches.
While the U.S. maintains a clear advantage in technological innovation—particularly in computational scale, model efficacy, and development of large language models (LLMs)—China is embracing a strategy focused on efficiency, open-source proliferation, and the seamless integration of AI into real-world applications.
An analysis from May 2026 posited that China is excelling in crucial aspects of this race that Western analysts have historically underestimated, including extensive domestic AI deployment, integration within manufacturing, and the capability to develop competitive models requiring significantly less computational power than that demanded by U.S. frontier laboratories.
Rather than seeking a singular breakthrough in Artificial General Intelligence (AGI), China has diversified its efforts across multiple ongoing competitions, whether in model efficiency, the speed of AI adoption, or in implementing AI-driven industrial systems.
Why Crypto Ownership and Universal Equity Matter
For Pal, the stakes transcend technological advancement into the realm of economic architecture. During his address at Consensus 2026 in Miami, Pal proposed ‘Universal Basic Equity,’ a concept that allows citizens to hold ownership shares in AI systems as a structural remedy to the job displacement anticipated from AI’s sweeping automation of knowledge-based tasks.
This proposal aligns with Pal’s enduring belief that crypto-centric ownership frameworks may prove more adept than traditional governments in equitably distributing the economic benefits derived from AI in the long term.
The broader geopolitical context also holds significant implications for cryptocurrency markets, especially since U.S.-China technological tensions have previously shaped export controls, chip availability, and regulatory frameworks for digital assets operational in both markets.

A contribution from the Brookings Institution pointed to the multi-dimensional nature of this competition (encompassing computation, models, adoption, integration, and deployment), suggesting that assessments focused solely on one aspect of “who is winning” lack completeness.
Pal’s perspective adds a philosophical layer to this landscape: the implications may differ fundamentally from any prior geopolitical contest, as historical rivalries over land, energy, or weaponry revolved around finite resources.
In contrast, the domain of intelligence and its generative systems may not conform to analogous constraints. If Pal’s assertions hold true, the ramifications of this rivalry could represent a paradigm shift from all preceding contests.
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