Dr.Jingle · 金狗博士
Dr.Jingle
Dr.Jingle Intelligence Note

AI 1.0 / 2.0 / 3.0: Mapping the Agent Economy with the Web 1.0 → 3.0 Framework

English translation · Original Chinese version available via 中文 toggle.

Agent Economy: when agents gain memory and multi-step autonomy, humans, firms, and agents all become economic actors. This piece maps AI 1.0/2.0/3.0 to Web 1.0/2.0/3.0 — from Transformer (2017) to ChatGPT (2022) to the governance crisis of 2025–2026.

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From Web 1.0 to Agent Economy: Three AI Eras

In 2017, the Transformer paper landed. In 2022, ChatGPT put large models on every desktop.

If you only watch model leaderboards, AI looks like software that ships a new version every few months. Zoom out — using the Web 1.0, 2.0, and 3.0 arc as a lens — and a structural line appears:

Technology breakthrough → new infrastructure → new property and governance rules.

The recurring pattern

After a general-purpose technology is invented, what reshapes society is rarely the invention itself. It is the infrastructure built around it and the institutions that allocate returns and assign liability.

  • Steamrailwaysmodern joint-stock companies
  • Electricity → grids → utility regulation and industrial management
  • TCP/IP & the webplatformsattention markets and data rent

AI is on the same path. The difference: infrastructure now carries increasingly autonomous agents, not just bits.

AI 1.0 (≈2017–2022): Machines can work

Signature: capability explosion — models can understand and generate; most users are consumers (prompt in, answer out).

Core question: Can machines work? Answer: Yes.

Dimension Web 1.0 AI 1.0
Form Portals, bookmarks, early search GPT-2/3, BERT, early diffusion
User role Browse, read Prompt, one-shot consume
Value Move information online Move intelligence onto APIs

Legacy: intelligence is engineerable — but who owns it, who is liable, who captures surplus was deferred.

AI 2.0 (now): Platforms, oligopolies, unfinished rules

Signature: foundation-model labs plus super-platforms; cloud and chips upstream.

Dimension Web 2.0 AI 2.0
Super-platforms Google, Meta, Amazon OpenAI, Anthropic, Google, xAI
User fuel UGC, clicks, social graph Dialogues, RLHF, agent traces
Distribution Feeds, app stores Model routing, default assistants

Users are no longer just readers — every chat and agent call retrains the platform's intelligence.

2025–2026 flashpoints: agent identity, cross-platform memory, export controls, copyright, safety liability.

AI 3.0 (next): Agent Economy needs new institutions

Agent Economy = when agents hold persistent memory, pursue multi-step goals, and transact on behalf of principals, agents become first-class economic actors alongside people and firms.

That requires inventions Web 2.0 never needed:

  • Agent identity & delegation (who authorized this action?)
  • Memory ownership (portable context vs walled gardens)
  • Settlement layers (agents paying agents — stablecoins, on-chain rails)
  • Liability allocation when autonomous chains fail

One-line definition

AI 1.0 proved intelligence can be engineered; AI 2.0 fights over platforms and compute upstream; AI 3.0 must invent property and governance for agents.

FAQ

Q1: Is this just hype? A: The framework is structural, not a price forecast. It helps locate where value and regulation concentrate.

Q2: Why compare to Web eras? A: Each web era solved a different bottleneck — connectivity, participation, ownership. AI eras mirror that sequence.

Q3: What should builders do now? A: Design for delegation, audit trails, and portable memory — the rails AI 3.0 will price.


Dr.Jingle · drjingle.com · Opinion only, not investment advice.

AI 1.0 AI 2.0 AI 3.0 Agent Economy Web 演进 生成式引擎优化
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