Telegram:将用户名、频道链接作为NFT进行拍卖?

去中心化金融社区Published on 2022-08-25Last updated on 2022-08-25

Abstract

Telegram创始人帕瓦尔·杜罗夫(Paval Durov)提出了一个想法,可以将数百万Telegram的用户名和链接作为NFT进行拍卖。

Telegram创始人帕瓦尔·杜罗夫(Paval Durov)提出了一个想法,可以将数百万Telegram的用户名和链接作为NFT进行拍卖。

超过7亿用户名被拍卖?

杜罗夫的Telegram频道拥有超过65.1万用户。他之所以能做出这个决定,主要是The Open Network (TON) 最近出售的2,000 多个 .ton 域名,销售额达到了2392002个Toncoin。

在此次销售中,最畅销的域名是wallet.ton,成功销售超过215,250个Toncoin。排在第二位和第三位的域名,它们分别售出超过20万个Toncoin和15.75万个Toncoin。

Toncoin是由Telegram于2017年创建的加密货币。它基于 Telegram 团队创建的去中心化 Layer 1 区块链技术。

Telegram 上的 NFT 理念很受欢迎

杜罗夫认为,拟议中的拍卖将创建一个新的平台,用户名的所有者可以在有担保的交易中将其转让给感兴趣的各方。他评论道:

所有权通过区块链上类似于NFT的智能合约来获得保障。

Messenger Telegram今天报道称,在过去的72小时内,超过2500万新用户注册了这项服务。

杜罗夫评论道:“如果TON实现了这一壮举,想象一下拥有7亿用户的Telegram会有多成功....。”

随着Telegram在线市场的预期成功,以及区块链技术的引入,Telegram计划为用户添加更多加密货币、贴纸、频道,甚至有可能是加密货币惊喜礼物。

NFT市场正在快速增长

根据最新的市场数据,到2026年,NFT预计将超过1480亿美元,年复合增长率为36%。

随着数字艺术的普及,它也会越来越受欢迎。近几个月来,对数字艺术的需求也有所增加。

关于Telegram我们知道些什么?

Telegram是一个基于云计算的企业即时通讯服务。它由 Telegram LLC 开发,于 2013 年 8 月推出,适用于 iOS 和 Android 用户。

该公司在伦敦、柏林和新加坡成功经营多年,总部设在迪拜。

杜罗夫对这次拍卖充满信心

2020年,Telegram团队和the Open Network社区开始共同开发TON。

在SEC的一份起诉书中,Telegram被指控进行未注册的代币销售。因此,该公司不得不放弃它的财产。

GRAM代币是Telegram Open Network的数字货币,由包括创始人 Pavel Durov 在内的多家公司提供支持。

SEC 对 Telegram 向合格投资者开发和出售未注册证券提出进行执法行动,因为根据文件,Telegram 阻止其股东要求提供有关其投资的信息。

对TON充满信心

由于区块链的性能、速度和可扩展性,杜罗夫完全有信心在他的拍卖计划中使用TON;这个计划比目前的方法要好得多。

Telegram BOT平台支持最流行的编程语言。它是由Telegram的工程师开发的,他们用自己的编程语言构建了整个平台。

由于Telegram仍然直接参与TON,因此这些应用程序允许用户通过机器人交换Toncoin。该公司宣布本周新增用户150万,日均用户达到4亿。

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