MEV bot jaredfromsubway.eth以先进的加密货币利用策略回归

币界网Published on 2024-08-21Last updated on 2024-08-21

币界网报道:

流行的最大可提取值(MEV)机器人jaredfromsubway.eth凭借增强的功能和利用DeFi协议的复杂策略卷土重来。

8月20日,MEV追踪平台EigenPhi率先报告了MEV机器人的回归。EigenPhi注意到它在不同的链上交易平台上肆虐,这导致它发布了一份关于该机器人卷土重来的报告。

Jaredfromsubway.eth盈利220万美元

EigenPhi在他们的报告中指出,自8月14日以来,该机器人的利润和交易量已暴跌至零。然而,根据Bot Dune仪表板的分析,在8月的前两周,该机器人发放了851个ETH。按照目前的市场价格,这大约是220万美元。

机器人的主要工作方式是通过三明治攻击。三明治攻击涉及在目标交易之前和之后放置交易。这样做的目的是操纵价格。

尽管EigenPhi注意到交易量下降,Jared并没有停止制作三明治。他们发现了一种新兴的MEV合同,该合同正充斥着各种新的链上贸易挤压方法。

新的MEV机器人使用了增加流动性等新技巧

来源:EigenPhi

新的MEV机器人采用了新技术,其中包括在DEX池中添加和删除流动性,作为其战略的一部分。这使得分析师难以跟踪机器人的动作。使用流动性操纵技术,Jared 2.0可以轻松地进行难以识别的攻击。

EignePhi说:“Jared 2.0将增加流动性交易作为前台和/或中心,删除流动性交易,作为后台。这种组合可以是多种多样的,将几笔交易放在中间,成为三明治攻击的受害者。”。

EigenPhi的数据还显示,上个月三明治攻击量激增至170亿美元以上。“jaredfrommetrio.eth”这个名字的灵感来自前快餐连锁店赛百味发言人贾里德·福格尔。福格尔于2015年因儿童色情和恋童癖活动被定罪。随后,他被判处15年监禁。

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