Empowering AI, Paving the Way for Value: How Crypto Positions Itself in the Infrastructure Battle Before 2027?

marsbitPublished on 2025-12-25Last updated on 2025-12-25

Abstract

The article discusses the contrasting empowerment approaches of Crypto and AI. Crypto offers "defensive" empowerment through decentralized financial sovereignty, enabling asset control without traditional intermediaries. While valuable, its growth has shifted from regulatory arbitrage to slower, regulated adoption, lagging behind AI's pace. AI provides "offensive" empowerment via exponential productivity gains, driven by scaling laws, compute expansion, and agent applications. Its growth is predictable and rapid. The author argues Crypto must integrate with AI to avoid becoming a niche speculative market. By positioning as AI’s value-layer infrastructure—through protocols like x402, AI Agent payments, and on-chain AI economies—Crypto can tap into AI’s scaling demand for transactions and automation. The window for this integration is before 2027, the anticipated timeline for AGI emergence. Success depends on leveraging AI’s growth rather than clinging to purely human-centric narratives.

Actually, both Crypto and AI are engaged in the act of "empowering" humans, but the methods and depths of empowerment are entirely different. Think about it:

1) Crypto empowerment emphasizes so-called "decentralized financial sovereignty," allowing people to control their assets and exchange value without relying on traditional centralized institutions like banks. This form of empowerment is "defensive" in nature—meaning it's fine without it, but better with it. This implies that by adhering to decentralized empowerment, the Crypto industry can never be disproven;

2) AI empowerment, on the other hand, focuses on "exponential amplification of productivity," enabling people to accomplish things that were previously impossible. This is why internet giants continue to make expansive capital investments, driving the growth of AI concept stocks. This form of empowerment is "offensive" in nature—meaning the growth of the AI industry already follows a trajectory similar to "Moore's Law," known as the Scaling Law;

This law tells us that AI capability growth is predictable, sustainable, and exponential. We can foresee the computing power arms race, algorithmic revolutions, and the large-scale adoption of Agent applications.

But Crypto is different. The growth logic of Crypto has shifted from regulatory arbitrage by capital to orderly penetration under regulatory approval. Therefore, in terms of "wild" growth, the growth speed of Crypto is indeed perceived as slower than that of AI.

It’s not that Crypto lacks value, but rather that its value realization speed cannot keep up with the pace at which AI is changing the world.

Therefore, Crypto must make a choice: either actively embrace AI and become the value layer infrastructure of the AI Economy, or gradually narrow its expectations and become "casino-ized," turning into a niche speculative financial market completely detached from "value."

Thus, directions like the x402 protocol, AI Agent payments, and on-chain AI economy are some of the narrative directions for Crypto actively embracing AI. Although this process will be slow, when AI generates massive payment demands and automated transaction needs, it will keep up with the scaled growth of the AI industry and subsequently enjoy the dividends of AI industry growth.

The time window is also clear. If 2027 is set as the timeline for the emergence of AGI, Crypto must complete a wave of protocol-layer positioning and layout before then.

Stop obsessing over "Crypto for human" and getting lost in these pirate party philosophies. Clinging to the lifeline of AI industry growth and managing to share a piece of the pie when the AI economy fully explodes would already be considered a success.

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Related Questions

QWhat is the fundamental difference between how Crypto and AI empower individuals, according to the article?

ACrypto empowers individuals through 'defensive' decentralization, granting financial sovereignty and the ability to conduct value exchange without traditional intermediaries. AI empowers through 'offensive' exponential amplification of productivity, enabling people to accomplish previously impossible tasks.

QWhat is the 'Scaling Law' mentioned in relation to AI's growth, and how does it contrast with Crypto's current growth trajectory?

AThe 'Scaling Law' is a predictable, sustainable, and exponential growth curve for AI, similar to Moore's Law, driven by compute arms races and algorithmic revolutions. In contrast, Crypto's growth has shifted from capital-driven arbitrage to regulated, orderly penetration, resulting in a perceived slower, less 'wild' growth rate compared to AI.

QWhat two potential futures does the article present for the Crypto industry?

AThe article states Crypto must either actively embrace AI to become the value layer infrastructure for the AI Economy, or it will gradually narrow its expectations into a 'casino-ized' niche speculative financial market, completely detached from 'value'.

QWhat are some of the specific directions mentioned for Crypto to integrate with and serve the AI economy?

ASpecific integration directions mentioned include the x402 protocol, AI Agent payments, and on-chain AI economies, which aim to handle the massive payment and automated transaction demands generated by AI.

QWhat is the critical time window the article identifies for Crypto to position itself, and why is that date significant?

AThe critical time window is before 2027. This date is significant as it is presented as the anticipated node for the emergence of AGI (Artificial General Intelligence), by which time Crypto must have completed its protocol-layer positioning and layout to benefit from the AI industry's growth.

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