柴犬:自 2020 年以来每天在SHIB中1美元如今已增至2400 万美元

金色财经Published on 2024-07-10Last updated on 2024-07-10

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Shiba Inu (SHIB) 是市场上最成功的加密货币之一。该资产在 2021 年牛市期间呈现爆炸式增长,涨幅达数百万个百分点。早期投资者变成了千万富翁,在某些情况下甚至是亿万富翁。

如果你自 2020 年 8 月推出 SHIB 以来每天投资 1 美元,那么到现在为止你已经投入了 1,385 美元。在过去四年中,这笔投资增长了 1,784,369%(170 万个百分点),如今已达到 2470 万美元。

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如果您从 2020 年 8 月推出 Shiba Inu 开始,每天投资 1 美元,直到 2021 年 10 月达到 0.00008616 美元的历史高点,那么您将投入 453 美元。在这种情况下,您的投资组合价值将上涨 20,584,592%(2050 万个百分点),达到 9320 万美元。

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和柴犬一起还能成为百万富翁吗?

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SHIB 在 2021 年的出色表现使其赢得了“创造百万富翁的代币”的美誉。该资产的价格已从 2021 年的峰值下跌了 80% 以上,并且一直难以获得关注。

SHIB 价格上涨的一个障碍是其巨大的供应量。目前流通的 SHIB 代币约为 589 万亿。2020 年推出时,以太坊联合创始人 Vitalik Buterin 获得了该资产一半的供应量。Buterin 决定销毁他收到的 90% 代币,并将其余的代币捐赠给慈善机构。他的举动导致该资产的价格飙升。

如果 Shiba Inu 团队能够大幅减少代币的流通量,我们可能会看到另一场像 2021 年那样的反弹。据报道,该团队正在研究一种新的销毁机制,据传每年会销毁数万亿个代币。截至目前,我们尚未确认新的销毁机制或发布日期。

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