3500美元买一个二维码?QRcoin的链上拍卖狂想

Odaily星球日报2025-06-11 tarihinde yayınlandı2025-06-11 tarihinde güncellendi

Özet

一个永不更改的二维码,凭什么让广告主加价?

原文作者:KarenZ,Foresight News

当注意力成为稀缺资源,一个以二维码为核心的 Base 链上注意力机器正夺得社区关注。QRcoin,一个通过每日举行拍卖为竞拍获胜者推广链接的项目,正在被社区视作针对小而美项目的广告位招租产品,以及 Alpha 发现引擎。

与此同时,QRcoin 代币 QR 自 5 月份以来涨逾 13 倍,目前市值达到 430 万美元。Base 官方也曾表示,QRcoin 是「游戏、行为艺术与链上注意力机器」的融合体。

QRcoin 是什么?

QRcoin 本质上是一个基于 Base 每日注意力拍卖平台,也已在 Farcaster 上线 Mini App。QRcoin 运作逻辑较为简单:

每天,平台网站上会开放一场拍卖(用 USDC 竞拍),而拍卖「标的」则是当日二维码指向权(二维码永不更改),即,竞拍成功的赢家可以决定当天平台的二维码指向网站 —— 无论是个人社交媒体账号、推特帖子、博客,还是项目官网、代币页面、公益网站,都能通过这个「流量入口」获得曝光。若竞拍被超越,资金将立即退回,无需担心损失。

QRcoin 会在 X、Farcaster 等社交媒体上公布每日竞拍获胜者,直接为目标网站导流。考虑到该二维码永不更改,随着在线上和线下社区的持续传播,竞拍获胜者指向链接有望获得指数级增长的流量。这意味着,每一次拍卖的成功,都在为二维码的传播「添砖加瓦」,让未来的曝光量随着传播范围的扩大而不断叠加。

QRcoin.fun 还推出了「发现即赚取」(Discover-to-Earn)的机制。用户只需访问 qrcoin.fun 网站,查看当天的拍卖胜出项目,然后返回页面即可领取少量的 QR 代币。这一机制鼓励用户每天探索新的链上项目,同时通过参与获得奖励。用户还可以通过在 X 平台上分享领取截图和以太坊地址,赢取额外的 QR 奖励。

QRcoin 开发者为@ 0 FJAKE,在推特上比较活跃,也曾发布过 Base Colors NFT 系列(RGB 色彩系统中 16777216 种颜色的 1/1 系列)。

数据透视:QRcoin 最新中标价格已达到 3500 美元

截止目前为止,QRcoin 已举行 96 次拍卖,最新一次中标价格达到 3500 美元,创下历史新高,总拍卖中标金额为总拍卖中标金额接近 4.4 万美元。从下图可以很明显的观察到,最近拍卖热度明显提升。

3500美元买一个二维码?QRcoin的链上拍卖狂想

来源:QRcoin

历往中标者有 5 次中标的 Noice(点赞奖励项目), 3 次中标的 Clip.fun(类似于 Reddit,但可以通过发帖和评论获得奖励),甚至 ZORA 官网,也有推特主页和帖子宣传、Farcaster 帖子、代币页面宣传。

3500美元买一个二维码?QRcoin的链上拍卖狂想

QR 代币

QRcoin 开发者 jake 于 2 月 6 日通过 Clanker 在 Farcaster 上发行 QR 代币。QRcoin 官方曾表示,QR 没有团队分配,没有内部人员,没有 VC。

在 QR 代币发布后 22 天内,代币市值在大部分时间内保持在 4 万美元下方,在昨日(6 月 10 日)涨至历史新高(约 600 万美元),目前回落至 450 万美元左右。

关于代币效应,QRcoin 会将每日拍卖收入的一部分来购买 QR,将 QR 的价值通过拍卖机制与广告位的需求紧密相关,形成代币与生态的正向循环。不过,目前暂不清楚 QRcoin 每日购买的代币数量。除此之外,前面所述的 Discover-to-Earn 机制可以在一定程度上增强平台访问量,鼓励用户探索中标者链接。

小结

相比传统的广告平台,QRcoin.fun 的链上拍卖模式完全去中心化,公开透明。竞拍者可以直接将流量导向自己的项目或宣传内容。此外,用户无需投资即可通过简单的互动获得代币,这种低成本的参与方式或将吸引大量新用户加入生态。

QRcoin 永不改变的 QR 码,正如同一个「流量锚点」,随着时间的推移,可能呈现复利式增长。但若之后竞拍获胜者无法获得足够的流量回报(如转化率低),长期竞拍热情可能下降。如何平衡短期流量曝光与长期价值沉淀,成为真正成为连接用户与优质项目的价值纽带,将是 QRcoin 持续进化的关键。

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