德克萨斯州区块链委员会支持特德·克鲁兹连任参议员

币界网Publicado a 2024-08-12Actualizado a 2024-08-13

币界网报道:

参议员Ted Cruz刚刚获得德克萨斯州区块链委员会对其参议院连任的赞许。德克萨斯州区块链委员会主席Lee₿ratcher在X上宣布:

“我们很自豪能够支持参议员特德·克鲁兹!”

这是在Cruz在核心科学Denton比特币采矿数据中心与150多人交谈之后发生的。

Cruz对比特币的支持并不是什么新鲜事,但随着时间的推移,它肯定会变得越来越强大。Cruz曾经对整个事情持怀疑态度,现在他已经成为比特币和整个加密社区的主要倡导者。

他已经成为参议院中最响亮的声音之一,反对他所认为的政府越权。对于Cruz来说,比特币是一种让老大哥远离钱包的方式。

起初,他心存疑虑,尤其是当涉及到加密货币如何被用于阴暗的事情时。但随着时间的推移,一些东西为他点击。

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在2024年矿业中断活动的炉边谈话中,Cruz对比特币充满热情,称其为一种金融自由。

克鲁兹甚至将美国的反比特币态度与专制政权的压迫性金融政策进行了比较,称比特币的去中心化性质是我们与政府全面控制之间的唯一障碍。

这位参议员还对央行数字货币(CBDC)采取了强硬立场。他提出了一项立法,将阻止美联储创建CBDC,他认为CBDC是加强政府监控的门户。

对于克鲁兹来说,政府对金融交易拥有更多控制权的想法是一场噩梦,他声称他正在尽一切努力阻止这种情况。

克鲁兹还一直在谈论德克萨斯州是比特币挖矿的理想之地,他没有错。得克萨斯州拥有充足的能源,克鲁兹认为这是一个巨大的优势。

他指出,比特币挖矿实际上可以通过消耗多余的能源来帮助稳定该州的能源网络,否则这些能源将被浪费。这是一个相当大的问题,尤其是在一个最近出现了一些重大能源问题的州。

Cruz一直在推动制定政策,使德克萨斯州对加密货币行业更具吸引力,他认为该州的创业精神与加密货币的去中心化性质完美匹配。

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