FTX同意与CFTC就破产达成127亿美元和解

币界网Published on 2024-07-16Last updated on 2024-07-16

币界网报道:

破产的加密货币公司FTX已与美国商品期货交易委员会(CFTC)达成和解,这意味着这个声名狼藉的品牌现在预计将支付127亿美元来解决诉讼。

破产法院的文件显示,这家于2022年11月破产的重组后的数字资产巨头将支付40亿美元的追缴费。

根据文件,在法院批准的情况下,还将支付87亿美元的归还费。

“因此,拟议的和解方案为CFTC允许的索赔规模提供了急需的确定性,并允许这些第11章案件迅速解决,从而能够迅速分配给债务人的其他债权人和客户,”法院文件写道。

FTX是一个主要的加密货币品牌,提供多种服务,但主要允许客户购买、出售和押注数字货币和代币的未来价格。

2022年11月,该公司很快破产,因为很明显它没有所说的资金。这主要是由于该公司背后的团队通过姊妹公司Alameda Research使用客户现金进行风险押注。

FTX联合创始人兼老板Sam Bankman Fried在公司倒闭后不久被捕。今年早些时候,他因欺诈和洗钱指控被判处25年监禁。

此后,包括FTX新管理层和破产专家在内的当局一直在试图追回交易所破产时消失的客户现金。

监管机构以欺诈民事诉讼打击了这家声名狼藉的数字资产巨头。CFTC就是这样一个监管机构,它在2022年12月首次指控这家加密货币公司挪用了客户资金。

由Ryan Ozawa编辑。

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