前高盛高管拉乌尔·帕尔表示,以太坊的顶级竞争对手可能会飙升600%以上

币界网Published on 2024-08-16Last updated on 2024-08-16

币界网报道:

前高盛高管拉乌尔·帕尔对以太坊(ETH)的大盘股竞争对手表示乐观。

在接受华尔街资深人士Anthony Scaramucci的采访时,Pal表示,到当前周期结束时,Solana(SOL)的价格可能会飙升至“可能超过1000美元”,这意味着从目前的水平至少上涨604%。

“我认为对我来说,最坏的情况是800美元,中等的情况是1200美元。爆炸顶部的大写金额为2500美元。”

在撰写本文时,Solana的交易价格为142美元。

关于Solana的市值是否会超过以太坊,Pal说,

“我不这么认为。我认为Solana发展迅速,并大大缩小了与以太坊的差距。”

在撰写本文时,以太坊的市值为3187亿美元,而Solana的市值为670.2亿美元。

这位宏观大师进一步表示,这两条区块链针对不同的细分市场进行了优化。

“不同的链用于不同的事情。以太坊更安全,可能是金融业选择的一种,无论是第二层还是其他什么,因为它非常安全,经过很好的战斗测试,非常受人尊敬,仍然具有创新性。

Solana似乎更适合零售应用和快速移动的应用…

…以太坊去中心化金融(DeFi)确实是一件大事,显然不可替代代币(NFT)非常大,但这也属于Solana。

因此,有价值的交易……如果银行要在彼此之间转移数百亿美元,以太坊可能是首选。

Solana……对于许多快速交易来说,这是正确的选择。”

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