Shiba Inu领导Trolls Dogecoin即将到来的游戏

币界网Опубліковано о 2024-08-10Востаннє оновлено о 2024-08-10

币界网报道:

Shiba Inu生态系统神秘的领导者草间弥生(Shytoshi Kusama)对狗狗币正在开发游戏的消息发表了评论。

令人兴奋的是,流行的加密钱包My Doge的首席执行官兼联合创始人Jordan Jefferson最近宣布,狗狗币正在为进入游戏行业做准备。

杰斐逊在最近的一条推文中说:“狗狗币游戏即将到来。”。

这位著名的软件工程师附上了一段似乎是游戏片段的短视频。在视频中,三只狗向一个战士般的狗雕像鞠躬。

Shiba Inu铅反应

正如预期的那样,这一消息引发了加密货币爱好者对游戏发布的反应。然而,Shiba Inu生态系统的领导者对即将到来的项目采取了微妙的态度,他说:“**在Shiba Eternity笑**。”

这一评论表明,虽然狗狗币刚刚开始开发游戏,但Shiba Inu在其名为Shiba Eternity的游戏项目上取得了重大进展。此外,这表明Shiba Inu在游戏领域的努力远远领先于狗狗币。

Shiba Inu游戏进展

值得一提的是,Shiba Inu于2022年10月正式进入游戏行业。当时,生态系统团队推出了Shiba Eternity的移动版本,该版本得到了广泛采用。

自首次亮相以来,该团队对游戏进行了重大改进,包括将其迁移到Shibarium。Shiba Eternity的区块链版本目前正在进行内测,预计很快就会公开。

在成功测试并修复所有故障后,游戏将在Shibarium主网上发布,允许玩家通过游戏获得奖励。

无休止的竞争

与此同时,由于项目之间的竞争,草间弥生对狗狗币即将推出的游戏的挑衅反应可能不会让加密货币爱好者感到惊讶。投资者使用不同的指标对这些项目进行了比较,从效用到市场主导地位。

狗狗币于2013年12月推出,是最大的表情币,市值为151.5亿美元。相反,2020年8月推出的Shiba Inu目前是第二大模因币,估值82.6亿美元。

草间弥生对狗狗币即将推出的游戏的评论清楚地表明,这两个项目的竞争不太可能很快结束。

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