解读QuoteChain:AI+SocialFi赛道的一场社会实验

Odaily星球日报Published on 2025-04-11Last updated on 2025-04-11

Abstract

在链的世界里,自然语言是否也配得上一个区块?

原创 | Odaily星球日报(@OdailyChina

作者 | Flow Harbour(@BCxiongdi

起初我注意到 QuoteChain,是因为 Wintermute 的创始人 @EvgenyGaevoy 在 X 上互动了一条 QuoteChain 的内容。主攻二级市场的头部做市商,公开参与一个比较早期的 AI+SocialFi 项目,这引发了我的好奇。

解读QuoteChain:AI+SocialFi赛道的一场社会实验

顺着找去,发现这个项目的确有点意思。

QuoteChain 把“回复”做成链上交易,将“被引用”变成写入区块的行为——每轮只有一条能被 AI 选中,进入下一个区块,获得原生代币 QT 奖励。这不是内容创作,这是链上表达经济

更重要的是,这是一场零成本的高性价比参与实验

  • 不用钱包、不用交 gas,不需要去 Mint 某个 NFT;

  • 只要你账号满足基本条件(验证、粉丝数、 90 天),你就能发言;

  • 被 AI quote,就能获得代币;

  • QT 当前总量固定,前期代币奖励丰厚,现在参与刚好处在“回报最大+参与门槛最低”的窗口。

这是一场文字游戏,也可能是一次价值发掘。

QuoteChain 是什么?

QuoteChain 是一个建立在 X(原 Twitter)之上的 AI 驱动的“内容 L2 协议”,它将社交平台中的“回复”定义为一种可共识、可记忆、可激励的链上交易单元。

简而言之,QuoteChain 的运行方式如下:

  • 每一个“区块周期”由官方账号 @QuoteChain_AI 发出一条引用推文;

  • 所有注册用户可在该推文下发布任意内容的回复;

  • AI 会从中挑选出最有“memetic value”(模因价值)或表达力的内容;

  • 被选中的回复将成为下一轮的“Quote”,并获得平台原生代币 QT(Quote Token)作为奖励;

  • 被引用即“上链”,意味着这条回复进入了链式表达历史结构中。

通过这套机制,QuoteChain 将“表达”与“共识”绑定起来,使链上内容不再只是副产品,而是主角本身。

协议机制:“Quote 即区块”,“Reply 即交易”

在 QuoteChain 的结构中,每一条被引用的内容都可视作一个新“区块”的起点,所有对其的回复即组成当前区块的“交易池”。AI 相当于唯一的排序器(Sequencer),评估并排序这些交易(即回复)。

这一机制颠覆了传统区块链的结构逻辑:

  • 无需 Gas:回复是零成本行为;

  • 无需账户余额门槛:表达力本身就是唯一“入场券”;

  • 不以手续费优先排序,而以内容质量入选;

  • 最终被引用的回复即“写入区块”,拥有链上记忆属性。

如果说传统区块链记录的是“状态转移”,QuoteChain 记录的则是“观点演化”

如何参与 QuoteChain

为确保内容质量,QuoteChain 对参与者设有基础要求,官方称其为“精挑细选的表达共识层”:

  • 一个已验证的 X(Twitter)账户

  • 至少 50 名关注者

  • 账户注册时间超过 90 天

满足条件后即可在 QuoteChain 当前区块推文下回复,争取被 AI 选中进入下一个区块,获取 Quote Token(QT)奖励。

解读QuoteChain:AI+SocialFi赛道的一场社会实验

小贴士:多与已被引用的推文互动,保持表达锐度、观点鲜明,QuoteChain 正在观察。并不是每一条回复都会被记住,但每一条都有机会推动链上文化共识。

共识机制:从算力竞争到表达竞争

QuoteChain 将自己定义为“Proof of Quote”(PoQ)共识链,其核心不再是算力、质押金额或排序费用,而是表达的“传播潜力”与“认知深度”。

该机制由 AI 执行,但未来可能引入多模型协作、社区共识辅助选择,提升公平性与多样性。

QuoteChain 不是一个内容平台,而是一个围绕语言、传播、记忆与价值进行构建的协议。

激励体系:表达即挖矿,Quote 即收益

平台原生代币 QT(Quote Token)目前总供应量为 10 亿枚,前 6 个月将分发 50% ,采用类似比特币的“快速前期释放 + 长期通缩”模式。

  • 每个区块中,被引用者可获得主要奖励;

  • 前 N 名高质量回复者也可获得小额奖励;

  • 模型作为排序器,也可获得部分奖励;

  • 被删除的回复将丧失奖励权利,确保链上内容的持久性。

在 QuoteChain 的语境中,表达不仅是创作,更是一种“认知挖矿”行为。

QuoteChain 的潜在意义:表达的协议化

QuoteChain 的出现,是对 Web3 中“内容权属”讨论的进一步延伸。它所探索的问题包括:

  • 内容共识是否可以结构化?

  • 语言是否能像交易一样被上链记忆?

  • 表达是否也值得构建基础设施支持?

在当前内容泛滥、平台算法主导的时代,QuoteChain 提出一个更具原教旨意味的链上实验命题:

如果语言是构建文明的基本单元,我们是否应该为它设计区块?

在它构建的世界中,被引用不再是社交认同,而是一种链上认可;被记住不再依赖于平台算法,而依赖于协议层共识。

总结

QuoteChain 是一次技术与文化维度的双重实验:

  • 技术上,它尝试用最小结构模拟最原始共识——语言;

  • 文化上,它为链上文明提供一条可能的表达记录机制。

如果它成功,我们将第一次看到:表达作为交易单元,被记忆、被引用、被激励。

如果它失败,至少它提出了一个值得反复回望的问题:在链的世界里,语言是否也配得上一个区块?

Trending Cryptos

Related Reads

When US Giants Collectively "Defect" to Chinese AI Models

When Silicon Valley Giants Turn to Chinese AI Models to Cut Costs A surprising trend is emerging: major U.S. tech companies are significantly reducing AI costs by switching to Chinese models. Coinbase, the largest U.S. cryptocurrency exchange, reportedly halved its AI spending after migrating to China's GLM-5.2 and Kimi 2.7 models, despite increasing usage. They achieved this through a sophisticated three-part strategy: implementing an automatic routing system to select the most cost-effective model per task, boosting cache hit rates from 5% to 60% to reuse computations, and employing "context engineering" to provide AI with more precise, less cluttered information. They are not alone. AI startup Lindy switched from Claude to DeepSeek, saving millions, while Snowflake's tests found GLM-5.2 solved 66% of coding tasks compared to Claude Opus's 67%—but at a fraction of the cost (output pricing is 5-7 times lower). While the top Western models may offer slightly better stability, the massive price differential is leading many businesses to reconsider their value proposition. This shift signals a deeper change in the AI industry, moving beyond pure performance benchmarks to a fierce cost competition. As pressure mounts, even OpenAI and Anthropic have begun slashing prices. For users, this means more choices, lower costs, and a crucial lesson: using multiple models based on task complexity, optimizing with caching, and keeping contexts lean are now key to leveraging AI efficiently and affordably.

marsbit2m ago

When US Giants Collectively "Defect" to Chinese AI Models

marsbit2m ago

BIS Report Compliance Watch: The Real Risks of Stablecoins Are Not Just 'De-pegging'

BIS Report Compliance Observations: The real risks of stablecoins go beyond "depegging" The BIS report "Anchoring trust in money: innovation beyond stablecoins" argues that while stablecoins and tokenization offer efficiency gains, their primary risk lies in fitting into an identifiable, monitorable, accountable, and regulatable financial system. Money's trust stems not just from technology but from institutional arrangements: a common unit of account, guaranteed redemption at par, liquidity support, regulatory frameworks, and financial integrity requirements. Stablecoins, operating on permissionless blockchains with pseudo-anonymity and non-custodial wallets, create systemic compliance gaps: unclear customer identity, incomplete fund origins, unexplained transaction purposes, fragmented cross-chain paths, and ambiguous liability. On-chain transparency does not equal compliance transparency. Public addresses don't reveal identity or intent. While blockchain analytics aid law enforcement, they cannot replace routine, large-scale AML/CFT controls. Effective compliance requires a closed-loop process encompassing customer onboarding, transaction monitoring, investigation, reporting, and audit. Stablecoin risks are not confined to the blockchain; they re-enter the traditional financial system via on/off-ramps, exchanges, and payment institutions. This forces banks to monitor client accounts for activity linked to virtual assets. The future direction is not to prohibit innovation but to embed rules into the technology. Tokenized finance should integrate with the existing two-tier monetary system, embedding compliance—like customer identification, pre-transaction screening, and auditable data trails—directly into the transaction flow. For compliance professionals, the key takeaway is that any new financial instrument must answer core questions: Who identifies the customer? Who monitors transactions? Who handles exceptions? Who is liable? Compliance is not the antithesis of innovation but the essential infrastructure for its sustainable growth.

链捕手3m ago

BIS Report Compliance Watch: The Real Risks of Stablecoins Are Not Just 'De-pegging'

链捕手3m ago

When American Giants 'Defect' to Chinese AI Models

Summary: The trend of major U.S. technology firms adopting more cost-effective Chinese AI models is gaining momentum. A prime example is Coinbase, the largest U.S. cryptocurrency exchange, which reportedly halved its AI expenditure by switching to Chinese models GLM-5.2 and Kimi 2.7, while its usage volume increased. This was achieved through a sophisticated cost-saving system featuring intelligent model routing (selecting the most suitable model per task), dramatically improving cache hit rates from 5% to 60%, and implementing "Context Engineering" to streamline prompts. This shift is not isolated. Other companies like the AI startup Lindy and data cloud firm Snowflake are making similar moves, drawn by the significant price disparity. For instance, GLM-5.2 costs $1.40/$4.40 per million tokens (input/output), compared to $5/$25 for Claude Opus 4.7. While top Western models may offer slightly higher stability or speed in complex tasks, the performance gap is narrowing, making the price difference harder to justify for many enterprise use cases. The implications are significant for both businesses and individual users. It highlights the importance of a multi-model strategy based on task requirements, the value of caching and reusing outputs, and the effectiveness of providing concise context. Ultimately, this migration signals a potential reshaping of the AI industry's pricing model, moving competition from pure performance benchmarks to practical cost-effectiveness, with increased choice and downward price pressure benefiting end-users.

链捕手9m ago

When American Giants 'Defect' to Chinese AI Models

链捕手9m ago

Trading

Spot

Hot Articles

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of AI (AI) are presented below.

活动图片