加密货币交易者在Memecoin上获得了超过16倍的利润,在九个月内增长了66000%以上:链上数据

币界网Publicado a 2024-07-19Actualizado a 2024-07-19

币界网报道:

一位加密货币交易员在唐纳德·特朗普启发的模因币上获得了超过16倍的利润,并赚了数百万美元,该模因币今年价值激增。

加密货币追踪机构Lookonchain指出,2023年11月和12月,一个疑似属于匿名交易员Gigantic Rebirth的钱包花费了价值540700美元的顶级稳定币USDT,以平均0.5美元的价格购买了108万MAGA(TRUMP)。

同一个钱包在周末将全部108万TRUMP存入BTSE交易所,获利约830万美元。

Lookonchain还指出,另一个标记为“GCR:Address 1”的钱包仍然持有价值723万美元的936279个TRUMP,利润超过650万美元。巨人重生也被称为GCR。

在撰写本文时,特朗普的交易价格为7.21美元,在过去24小时内下跌了9.5%以上。前总统特朗普在一次暗杀企图中幸存下来后,按市值排名第191位的加密资产在周末飙升。

模因币从10月中旬创下的历史低点0.01136美元上涨了63000%以上。

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