加密货币如何帮助Telegram成为西方第一个“万物应用”

币界网2024-07-18 tarihinde yayınlandı2024-07-18 tarihinde güncellendi

币界网报道:

在几个月的时间里,基于Telegram、加密货币支持的迷你应用程序,如Notcoin和Hamster Kombat,已经席卷了世界。但一位开发与Telegram加密努力密切相关的区块链的开发人员表示,该消息应用程序可能很快就会支持优步、亚马逊和几乎任何其他应用程序的加密支持版本。

“这个迷你应用程序的结构和设计只是一个开始,”the Open Network(TON)的匿名核心开发人员、该网络风险工作室TONX的创始人Awesome Doge博士告诉Decrypt。

Telegram首选区块链的开发者认为,令人难以置信的简单的第一波Telegram迷你应用程序只展示了该技术全部潜力的一小部分。大多数现有的Telegram迷你应用程序允许用户通过代币空投赚取积分,然后兑换成真正的加密货币,只需反复按下按钮即可。

他说:“我们无法在第一阶段制作迷你应用程序的最终版本。”。“我们必须制作一款非常简单的游戏,比如Catizen或Notcoin。”

不过,在未来一年左右的时间里,Doge博士相信Telegram迷你应用程序将变得更加复杂。他说,这是由于几个因素造成的。首先,独立公司现在已经看到了通过迷你应用程序与Telegram 9亿多活跃用户群中的大部分进行互动的潜力,这些应用程序可以在消息服务的应用程序本身中访问。

例如,Hamster Kombat已经超过2.5亿用户,用Telegram首席执行官Pavel Durov的话说,这使其成为“世界上增长最快的数字服务”

此外,最近稳定币USDT与TON和Telegram的整合现在允许这些公司提供数字商品和服务,而不必担心与波动的加密货币价格打交道;TONX等工作室创建的工具现在可以帮助创建更复杂的迷你应用程序,以促进这些产品的提供。

据多格博士估计,这些发展可能很快会导致Telegram成为一款类似于中国微信的“全能应用”,提供食品配送、银行服务、乘车、网上购物等综合服务——所有这些都在一个屋檐下。

“微信已经做到了,”多格博士说。“我们看到亚洲市场对我们迄今为止创造的产品有着巨大的需求。”

埃隆·马斯克(Elon Musk)有野心将推特(又名X)变成同一种全平台。但随着其第一个著名的加密货币驱动的迷你应用程序已经吸引了数亿用户,Telegram可能会在成为西方世界对微信的回应方面走得更远。

通过将TON和该网络的原生加密货币Toncoin与Telegram集成,该应用程序已经克服了一个主要障碍:该应用程序的用户可以轻松地与在无数情况下有用的复杂金融软件进行交互。

正如Notcoin和Hamster Kombat等迷你应用程序的巨大成功所证明的那样,这些系统不仅可以处理大量用户负载——尽管偶尔会出现服务器故障——而且足够简单,可以广泛吸引日常Telegram用户。

随着USDT功能的增加和TON开发人员致力于增强更丰富、更复杂的迷你应用程序,Awesome Doge博士认为这项创新比以往任何时候都更接近其“最终版本”

在接下来的一年里,他预计Telegram迷你应用程序将开始向完全实现的阶段过渡。在这一点上,他认为最近将Telegram变成用按摩枪敲击数字仓鼠的疯狂热点的巨大势头可能会推动它成为全球数字经济的支点。

安德鲁·海沃德编辑

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