From OpenClaw to the History of the Web: When AI Gains Sovereignty, What Remains for Humanity?

marsbit2026-03-23 tarihinde yayınlandı2026-03-23 tarihinde güncellendi

Özet

From Web1 to Web4: A History of Power and Ownership in the Digital Age This article examines the evolution of the web not as a series of technical upgrades, but as a fundamental shift in power—specifically, who owns data, controls wealth, and wields productive force. **Web1 (Read-Only):** Characterized by one-way communication. Platforms like Yahoo owned all content and users were merely passive consumers, or "traffic," with no digital assets. **Web2 (Read-Write):** Users became content creators, but platforms like Facebook and TikTok established a "panoptic dictatorship." They harvested user data to create immense value, but users retained only usage rights, not ownership, of their digital assets and social presence. **Web3 (Read-Write-Own):** A movement to reclaim digital rights through cryptography and decentralization. It enables true digital ownership (e.g., via private keys) and trustless systems (e.g., DAOs, smart contracts). However, it remains a wild frontier with significant legal and security challenges, lacking a capable "workforce" to realize its full potential. **Web4 (Agent Economy):** The convergence of AI Agents and Crypto. AI Agents (autonomous, task-completing AIs) use Crypto as their native currency for machine-to-machine transactions. This shifts power from humans to algorithms, creating independent AI economic actors. This raises critical legal questions, such as liability for AI errors. The future could lead to two extremes: a utopia of liberated h...

Original Authors: Zhao Xuan, Mao Jiehao

Recently, the term "Web4" has been trending, especially with the emergence of multi-agent (AI Agent) frameworks like OpenClaw, where AI and Crypto are increasingly mentioned together. Over the past two weeks, I've discussed and shared insights at multiple online and offline events, and I want to say to those interested in Web4: forget the obscure code and technical jargon, let's return to the essence of Web4.

From Web1 to Web4, this has never been purely a technological iteration. It is a history of power evolution—about who owns the data, how wealth is distributed, and who controls productivity. Only by understanding the transfer of power can you see where future money and opportunities will flow.

Web1: The Read-Only Era and One-Way Power Broadcasting

The early internet was like a giant library moved onto screens. Sina, Sohu, and Yahoo were the kings of that era.

Characteristics of this era—

Power structure: One-dimensional. Platforms held the microphone. They wrote, we read. They decided what the headline was, and we could only discuss that.

Asset ownership: Nothing to do with you. In this stage, users had no digital assets.

We were just traffic, pairs of eyes in front of the screen.

In short, compared to the pre-internet era, Web1 broke down physical distances, allowing information to spread at zero cost. But it had a fatal flaw: ordinary people could not participate in value creation, let alone share the pie. Thus, the era moved forward.

Web2: Panoptic Surveillance and the Invisible Expropriation of Assets

This is the era we primarily live in today. WeChat, Douyin, Didi. We not only consume content, we create it. We post on Moments, hail rides, order takeout.

In this era,表面上, power seems decentralized; everyone has an account. But in reality, this is the largest invisible expropriation of assets in human history.

Characteristics of this era—

  • Power structure: Panoptic dictatorship. Borrowing philosopher Foucault's concept, super-platforms are a "panopticon." The algorithm watches you from the central tower, recording every click. The platform is both the rule-maker and the referee. A single agreement can permanently erase your social life.
  • Asset ownership: Labor and rewards are completely misaligned. You contribute all the data, feed the algorithm, but the trillions in market value generated from this data belong to the platform's shareholders, not you. Your account, followers, in-game items—you only have "usage rights," not "ownership."

This model inevitably leads to monopoly and backlash. Antitrust fines are increasing, user dissatisfaction is growing. The business world needs a "violent dismantling"—returning what rightfully belongs to each individual, to each individual.

Web3: What's Yours, Is Truly Yours

In my view, Web3 is not some crypto speculation game. It is a digital power movement—where every ordinary person takes back what rightfully belongs to them from internet giants. Its core weapon is cryptography. It doesn't trust big tech's "don't be evil," it only trusts mathematics's "you can't be evil."

What this era looks like—

  • Power: No one is in charge

No need to trust banks or big companies anymore. Trust is handed over to distributed nodes and open code. The form of companies is changing, with the emergence of DAOs—organizations without bosses, where everyone votes to get things done.

  • Assets: What's yours is yours, no one can take it away

For the first time in history, you can truly "own" a digital asset without any institution backing you. As long as you hold the private key (a password only you know), no platform can freeze your wallet. The rules are no longer set by the platform; they are hardcoded and unchangeable.

But reality isn't so rosy.

In disputes we've handled, we've seen countless collisions between "code is law" and real-world law—hacked coins, cross-border money laundering, contract vulnerabilities. Web3 is still wild, full of pitfalls.

But it must be admitted that Web3 has indeed built a financial settlement system that traditional rules can't handle. It has everything ready, except one thing—it lacks a tireless "workforce" to truly put it to use.

Web4: The Machine Economy and the Rise of Silicon-Based Labor (40%)

Now, the singularity has arrived. Web3, this sword in the stone, has finally found its master—AI.

The EU has given a grand definition of Web4, calling it the convergence of AI, IoT, blockchain, and XR. But stripped down, the core business logic is just one thing:

Web4 = AI Agent (AI that works) + Crypto (money machines can use)

Large language models are just tools for chatting, but AI Agents are different—they can work, trade, and earn money on their own.

1. Why must AI use Crypto for settlement?

Imagine: Your AI assistant discovers an investment opportunity and needs to buy a piece of data from another company's AI. The problem is—how do these two programs transact?

Banks won't open an account for a line of code. Alipay doesn't support two AIs trading a thousand times a second for fractions of a cent. Only Crypto can handle this game.

Crypto is essentially "money for machines." In Web4, AIs will have their own wallets. They will work, spend money, and sign contracts on their own. While you sleep, your AI might have worked all night and earned money for you.

2. Power: Humans start to lose say

In Web4, power "spills over" from human hands for the first time. AI is no longer a tool, but an independent "economic agent."

You can hire a team of AIs; they will automatically divide labor, negotiate prices, and even collaborate among themselves. You just need to issue commands; they handle the rest. Humans begin to shift from "doers" to "commanders."

3. Trouble: If an AI causes trouble, who is liable?

This is a real problem we are facing.

If an AI holding tens of millions in assets suddenly "goes haywire," manipulating the market or signing a contract that bankrupts you—who is responsible?

Arrest the programmer? Sue the LLM company? Or you, the "owner"?

Traditional corporate law, contract law—all become ineffective here. Before the machine economy explodes, we must first fill these legal gaps.

4. Future: Heaven or abyss?

The endpoint of Web4 could be two completely opposite directions

  • Ideal state: Complete liberation of productivity. AI handles all the hard and tedious work, Crypto eliminates middlemen. Humans no longer need to worry about making a living, can focus on creation and decision-making, no longer being cogs in the machine.
  • Harsh reality: Intensified class division. If top AI models and computing power are monopolized by a few giants, they can command billions of "silicon-based slaves" at zero cost, earning all the money. By then, ordinary people won't even have "exploitation value" left,彻底沦为系统边缘的废人 (thoroughly reduced to useless people at the edge of the system).

Heaven or abyss depends on the choices we make now.

Epilogue: Our Survival Rules in the Web4 Era

Facing this reconstruction of power and assets, what should we do? Simply put, three sentences:

  • Work: Be a allocator, not an executor. Specific intellectual labor will quickly depreciate. Learn to delegate specific "tasks" to AI, users only need to set direction, control ethics, and bear risks—understanding the rules is more important than understanding the technology. You don't need to code, but you must understand the system's logic. The boundaries you set for AI are the boundaries of your business empire.
  • Investment: Be cautious, see through the fog. Avoid projects that force AI and Crypto together to issue worthless tokens. Things that truly serve AI or are AI-native and align with future development directions are more likely to be the future.
  • Risk Management: Let innovation dance on the edge of compliance. The more cutting-edge the business, the more top-tier compliance design is needed. Don't wait until your AI assets become courtroom evidence to realize the importance of compliance.

Conclusion

The wheel of history is crushing old consensus. Power is shifting to algorithms, assets are moving on-chain. Standing at the threshold of Web4, fear is meaningless, blind following is a disaster. Understand the underlying logic, seek the legitimacy of innovation at the edge of rules. We look forward to accompanying reliable partners, walking side by side in the future world.

İlgili Sorular

QWhat is the core difference between Web1 and Web2 in terms of power and asset ownership, according to the article?

AIn Web1, power was centralized and unidirectional, with platforms like Sina and Sohu controlling all content. Users had no digital assets and were merely 'traffic' or 'eyes on the screen.' In Web2, while users create content, power is a 'panoptic dictatorship' where platforms like WeChat and Douyin surveil and control data. Users contribute data but do not own it; the financial benefits go to platform shareholders, leading to a misalignment between labor and rewards.

QHow does the article define the role of Crypto in Web4 era, particularly for AI Agents?

AThe article defines Crypto as 'money for machines' in Web4. It enables AI Agents to conduct transactions autonomously, such as buying data or services, at high frequency and micro-scale, which traditional banking systems cannot support. AI Agents use Crypto wallets to work, trade, and earn money independently, facilitating a machine-driven economy.

QWhat are the two potential future scenarios for Web4 described in the article?

AThe article describes two opposite scenarios for Web4: 1) An ideal state where AI handles all labor, Crypto eliminates intermediaries, and humans are freed for creativity and decision-making. 2) A harsh reality where top AI models and computing power are monopolized by a few giants, creating 'silicon-based slaves' that concentrate wealth, leaving ordinary people without value or purpose, exacerbating social stratification.

QWhat key legal and ethical challenge does the article highlight for Web4 involving AI Agents?

AThe article highlights the challenge of accountability when AI Agents cause harm, such as market manipulation or signing disastrous contracts. Traditional legal frameworks (e.g., corporate law, contracts) become ineffective, raising questions about whether responsibility falls on programmers, AI companies, or users. This necessitates new legal solutions before the machine economy can fully emerge.

QWhat survival strategies does the article recommend for individuals in the Web4 era?

AThe article recommends three strategies: 1) Work: Act as a distributor and decision-maker, not an executor; understand system logic and set boundaries for AI. 2) Investment: Be cautious; avoid projects that superficially combine AI and Crypto, and focus on those serving AI natively. 3) Risk management: Prioritize compliance and ethical design to prevent legal issues from AI actions.

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