“加密货币差价合约现在非常受欢迎:”Match Prime Liquidity的首席执行官

币界网Опубліковано о 2024-07-23Востаннє оновлено о 2024-07-23

币界网报道:

Match Prime Liquidity首席执行官Andreas Kapsos在2024年iFX EXPO国际博览会上与Finance Magnates交谈时表示:“有一些新资产正在发挥作用。”他补充说:“加密货币差价合约和ESG也是其中之一。”

“加密货币的差价合约现在非常受欢迎。对于流动性提供商来说,这是他们需要掌握的东西。当他们渗透到新市场时,会对这些产品提出新的要求。”

尽管经纪商通常不会分享加密货币差价合约的数据,但Finance Magnates早些时候独家报道称,Axi去年3月处理了167亿美元的加密货币差价交易量。1月份的数字为76亿美元,2月份为104亿美元。

“有备份总是好的”

在过去的四年里,Kapsos一直领导着Match Prime流动性。他是一位经验丰富的行业高管,曾与BrightFX Capital和CAPEX.com等公司合作。在iFX EXPO International上,他还参加了关于流动性提供商未来的小组讨论。

他指出,经纪商需要一个或多个流动性提供者,他说:“我总是建议客户拥有多个。归根结底,我们希望客户得到最好的,所以对客户来说最好的是拥有多个流动资金提供者。”

“然而,这取决于客户的生命周期,”Kapsos说,并补充道,“但我肯定会建议有时拥有两个或三个以上的客户。原因很明显:当你的业务中有一些非常重要的东西,比如流动性,如果你的一个流动性提供者出了问题,有一个备份总是好的。”

“此外,增加一个也很重要,因为你可以比较服务,”他补充道。“你有这种影响力;你可以比较价格,然后你就可以为自己买到最好的产品。”

Match Prime总部位于塞浦路斯,与其姊妹品牌Match Trade Technologies并肩运营。今年早些时候,这两家公司在同一家母公司的领导下,在迪拜开设了一个新的联合办事处,以更好地与中东和北非地区不断增长的客户群互动并为其提供支持。

“人工智能帮助我们知道需求在哪里”

在扩张的同时,即使是像Match Prime这样的流动性提供商也感受到了人工智能在其运营中的渗透。尽管对于流动性提供者来说,人工智能的使用可能非常不同,但不容忽视。

Kapsos在谈到流动性提供商对人工智能的使用时说:“我们只是使用了其中的一小部分。我们如何使用它显然是从质量方面。它帮助我们识别事物、分析事物,并通过正确的方式分析从各地检索的数据。我想说,它再次帮助我们进行预测分析。使用人工智能,我们可以在需要时以最佳方式提供流动性。”

“此外,人工智能帮助我们知道需求在哪里,何时出现,以及如何出现。因此,尽管这是一个开始,但我们已经在使用人工智能并将其应用于我们的业务中。”

“进入壁垒很高”

Kapsos强调了流动性的下一个趋势,他说:“我确实看到了整合。”

“你经常看到合并。为了经营一个非常好的流动性业务,你需要让很多组件同时正常工作。所以我相信很多人会犯错误,他们甚至无法满足和改进这些组件,这样他们才能生存下去。”

“然而,如果新来者以正确的方式来,他们总是有市场的……但是,由于标准很高,进入门槛也很高。现在人们知道他们想要什么。交易员和经纪人变得更加老练。因此,进入这个市场是一个挑战。”

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