Polymarket加密货币投注者在巴黎奥运会上举办宴会

币界网Опубліковано о 2024-07-30Востаннє оновлено о 2024-07-30

币界网报道:

随着一场盛大的开幕式,2024年巴黎奥运会正在进行中,数百万美元的加密货币赌注已经押在了广受欢迎的Polymarket上。

以至于这个去中心化的加密货币驱动平台现在有了“奥运会”类别。已经投入了120万美元用于预测哪个国家将赢得最多奖牌。

之后,投注者将投入110万美元,确定哪个国家将赢得最多的金牌。美国是最受欢迎的国家,有168711美元的资金投向了该国。

个人体育项目有多种投注方式,例如男子和女子篮球金牌获得者,结果分别为35.5万美元和10.1万美元。足球和几场游泳比赛紧随其后。

到目前为止,除了美国游泳运动员凯蒂·莱德基和西班牙网球运动员拉斐尔·纳达尔外,该网站上出现的个人运动员并不多。赌徒可以对每个人赢得的金牌数量下注。

最近,Polymarket的受欢迎程度激增。世界各地的人们都可以押注从政治和体育到知名人士在电视上的言论。该平台运行在两个主要的区块链上:以太坊和Polygon。

随着用户越来越多地押注美国总统大选的结果,本月的交易量飙升。

事实上,11月的选举已经成为一个热门话题,在平台上对候选人的押注甚至滑入了奥运会类别。它解释说:“这个市场取决于乔·拜登或唐纳德·特朗普是否会更快地走上楼梯登机,这是基于美国东部时间7月25日下午12:30之后每次登机的下一个视频记录。”。

截至今天,“楼梯奥运会”已投入约5500美元。好像事情再也不会变得更奇怪了。

由Ryan Ozawa编辑。

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