单日涨超8倍,PING会再次掀起「铭文热潮」吗?

marsbitPubblicato 2025-10-23Pubblicato ultima volta 2025-10-24

编者注:近两天,最大的金狗或许就是 Base 上的 $PING 了。它通过 x402 协议发行的第一枚代币。x402 是由 Coinbase 开发的一种开放支付协议,它使 AI agents 能够自主完成交易。其铸造流程,让人想起了 2 年前的铭文。关于更多 PING 和 x402 协议的介绍,可参阅:《像铭文的 30 倍大金狗,x402 协议是什么?》

目前,PING 市值已突破 3000 万美元,24 小时涨超 8 倍,这也引发了人们对于第二次「铭文热潮」的期待。加密研究员 Haotian 也对此次热潮做出了自己的分析,以下为原文内容:

大家都说 $PING 的出现很像 2023 年的 BTC 铭文热潮,为什么像?像在哪里?会向铭文市场一样演化发展吗?先说答案:会。好,以下阐述具体逻辑:

1. 为什么像?核心在于链上合法数据+链下解释权。

铭文的运作逻辑是:用户向 BTC 主网发送交易并占有特定的 UTXO,但 BTC 主网并没有决断哪笔交易有效的能力,而 Ordinals 协议就是那个判断铭文是否有效的 indexer 索引器。它作为第三方裁判,扫描链上所有交易,按照自己定义的规则,比如「First is First」来认定哪些是有效真铭文。

PING 的运作逻辑,也几乎是同样的配方:用户在 Base 链上发送 USDC 到特定地址,地址由 x402scan 动态返回,相当于用户向 x402 协议发出了一笔「支付请求」,但 Base 链和 x402 协议本身并不知道这是在"mint $PING,在它们眼里,这只是一笔普通的 ERC20 转账。

真正赋予这笔交易「mint 意义」的是 x402scan 这个 indexer:它扫描 Base 链上所有发往特定地址的 USDC 转账,按照自己定义的规则(1 USDC = 5000 $PING),认定哪些交易是「有效 mint」,然后在链下数据库记录并通过合约分发代币。

2. 像在哪里

铭文刚出来时候,遭到了 Bitcoin Core 团队的抵制,因为它的存在除了让 BTC 主网上堆满大量粉尘交易,没任何价值。显然,顺着这个思路,$PING 的存在逻辑也类似,但和 BTC 主网一样,x402 协议作为开放标准,即便不讨喜短期看也无能为力。

原理很简单,大家打铭文的资产好歹还是存在了 BTC 主网上,铭文没了炒作意义,释放一下还能返回一部分 BTC,但大家 Mint 的 PING,其实都到了 x402scan 指定的 treasury 钱包内,团队一边众筹,一边发币,真正的 x402 协议前后都只是被「白嫖」了一番。


先别着急怼我,这样的行为我前文说了是一次「冲锋号」行动,对于曝光传播 x402 赛道的价值大有裨益。等于强行为 x402 协议制造使用场景,且效果立竿见影,也算是一次对 x402 协议的压力测试,无疑是一次「x402 叙事的奇点」,会催生一系列改进和生态繁荣可能。

3. 会向铭文市场一样演化吗?

会,前边说了,PING 的存在意义实际上是 x402scan 这个 indexer。但显然它存在很大问题:比如,资产托管在自身中心化实体名下,违背了 x402 协议为 AI Agent 开通的支付通道的初衷,不一定能和其他 x402 协议进行无缝兼容,甚至没有统一的铸造、转账、销毁等操作规范。

所以,顺着 BRC20-ARC20-SRC20-Runes 演进的逻辑,相信还会有很多自称更「正统」的新「铭文」出现。


比如改进托管方式,改变发交易 mint 的形式,获得原生协议支持等等思路等等。夸张点说,中间即便出现 x402scan 协议跑路,Treasury 卷款走等已经阻挡不住这波风刮起来了,潘多拉的魔盒已经开启!


以上。

还是重申一个观点,x402 叙事的爆发是一定的,$PING 只是吹响了冲锋号,后续市场如何演化可能也很多很多,以上分享权当认知逻辑,不做任何投资建议,但大可不必焦虑,接下来该凑的热闹值得凑凑!

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