Why is Crypto the Key Infrastructure for the Large-Scale Adoption of AI Agents?

深潮Опубликовано 2025-12-09Обновлено 2025-12-09

Введение

Why Crypto is Key Infrastructure for AI Agent Mass Adoption For AI Agents to become widely deployable autonomous software, they require two core capabilities: composability and verifiability. These are inherently lacking in traditional Web2 systems but are natively provided by cryptocurrency networks. AI's future lies not in isolated models but in agents that automatically call services, compose with other agents, write code, test, and execute decisions involving financial actions. This agent composability depends on verifiability—knowing another agent executed as promised. Web2 infrastructure (APIs and SaaS) fails here due to black-box operations, mutable data, unprovable results, centralized audits, and manual settlements. Cryptocurrency provides the missing verified base layer through: 1. Verifiable Execution: Smart contracts and ZK proofs enable transparent, provable on/off-chain actions. 2. Verifiable Identity: DIDs and signed agent code ensure trust and integrity. 3. Verifiable Value Transfer: Automated payments, revenue sharing, collateralization, and penalties enable direct fund management without intermediaries. As AI evolves from code generation to full-cycle automation (writing, testing, running, fixing), especially with real-world financial impact, crypto becomes essential. It enables automatic penalties for failures, rewards for contributions, multi-agent settlements, and trustless coordination—making AI economically viable beyond demos. In short: AI enables...

Written by: Blockchain Knight

For AI Agents to truly become "widely deployable autonomous software," the two most critical capabilities are: composability + verifiability.

These are precisely what traditional Web2 cannot provide, but cryptocurrency systems inherently possess.

1. AI needs composability, and composability must be built on verifiability

The future of AI Agents is not a single model, but rather: automatically calling other services; combining other Agents; automatically writing code; automatically testing; automatically executing decisions (including actions involving funds). This is called agent composability.

The problem arises: if one Agent calls another Agent, but you cannot verify whether the other party actually executed as expected, the entire automation ecosystem cannot form a closed loop.

Web2 infrastructure (API + SaaS) cannot provide this strong verifiability because: APIs are black boxes; data can be tampered with; execution results cannot be proven; permissions rely on centralized audits; funds cannot be settled automatically.

In other words: a Web2 Agent cannot fully trust another Web2 Agent. Therefore, automation stops at the "demo level."

2. Cryptocurrency provides the "verifiable base layer" that AI lacks

Crypto provides the underlying three major capabilities needed for AI's future ecosystem:

1 Verifiable execution

Smart contracts are transparent and provable. ZK proofs enable even complex off-chain execution to be verified. AI can confirm that "the other party indeed did what I requested."

2 Verifiable identity

Decentralized identity DID/Key, and the Agent code itself can be signed.

This solves: who did it, whether it is trustworthy, and whether it has been tampered with.

3 Verifiable value transfer

Smart contracts support: automatic deductions, automatic payments, profit-sharing for multi-party collaboration, collateral and penalties, and escrow mechanisms.

This enables AI to directly manage and allocate funds without relying on institutions. This is something Web2 cannot achieve.

3. AI programming requires "self-testability," and involving funds requires "automatic verifiability" even more

Anthropic's recent acquisition of Bun is a signal:

AI is evolving from "automatically writing code" to a complete cycle of "automatically write → automatically test → automatically run → automatically fix."

Once AI automatically runs code and that code directly impacts the real world—such as executing trades, managing budgets, paying API fees, and participating in economic activities—it must have cryptocurrency's verifiable fund security system.

Otherwise, AI is just a toy and cannot engage in the real economy.

Crypto enables AI to:

  • Automatically penalize "execution errors";

  • Automatically reward "good contributions";

  • Automatically settle accounts during multi-Agent collaboration;

  • Automatically settle without requiring human trust.

This is a necessity for the future AI Agent economy.

4. Summarized in one sentence

AI automates software; Crypto makes automation trustworthy. Without the verifiability provided by cryptocurrency, AI Agents cannot operate at scale in the real economy.

Связанные с этим вопросы

QWhy is verifiability crucial for the composability of AI Agents?

AVerifiability ensures that when one AI Agent calls another, it can confirm the other Agent executed as expected, which is essential for building a trustworthy and automated ecosystem. Without verifiability, composability cannot be reliably achieved, hindering large-scale deployment.

QHow does cryptocurrency provide the verifiable execution layer that AI Agents need?

ACryptocurrency enables verifiable execution through smart contracts and zero-knowledge proofs, ensuring transparency and provability. This allows AI Agents to trust that actions, such as service calls or transactions, are performed correctly without relying on central authorities.

QWhat are the three key capabilities that cryptocurrency offers to support AI Agent ecosystems?

ACryptocurrency provides three key capabilities: 1) Verifiable execution via smart contracts and ZK proofs, 2) Verifiable identity through decentralized systems like DID/Key, and 3) Verifiable value transfer, enabling automatic payments, settlements, and economic interactions without human intervention.

QWhy can't traditional Web2 infrastructure support large-scale AI Agent automation?

AWeb2 infrastructure relies on APIs and SaaS that are opaque, mutable, and lack provability. It cannot guarantee untampered data, verified execution results, or automated value transfer, making it impossible for AI Agents to fully trust each other or operate autonomously in economic contexts.

QHow does cryptocurrency enable AI's transition from 'automated coding' to a full cycle of writing, testing, running, and fixing?

ACryptocurrency provides a verifiable financial and execution layer that allows AI to autonomously manage funds, enforce penalties for errors, reward contributions, and facilitate multi-Agent settlements. This ensures safe and trustworthy automation in real-world economic activities, moving beyond mere code generation to full operational cycles.

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