Quantlytica:将运用 AI 技术,成为 DeFi 流动性提供聚合入口

链捕手Published on 2024-08-29Last updated on 2024-08-29

作者:Quantlytica

 

虽然市场预期 ETF 的批准将推动 Web3 的大规模采用(Mass Adoption),然而现实与预期却大相径庭。尽管行业的前景是光明的,但目前市场真正接纳的速度仍然很慢,许多普通用户在参与 DeFi 项目时,发现其要么交互过程繁琐耗时,要么面临着较大的资金风险。无论是从交易、投资还是其他角度来看,参与 DeFi 项目往往需要耗费大量的时间和精力,且无法保证最低的收益回报率。 

这就是 Quantlytica 想要解决的问题。在得到 Polygon Labs、Web3Port Foundation、DWF Ventures 等行业领导者的支持下,Quantlytica 旨在通过打破现有流动性障碍来彻底改变用户参与 DeFi 项目的门槛。 Quantlytica 致力于让去中心化金融普及到每一位用户,将其从一个高门槛的投资转变为一个开放的实用平台,无论用户的专业水平或背景如何,他们都可以参与其中。通过与 AI 技术的结合,Quantlytica 将成为领先的流动性提供聚合入口,为 DeFi 领域带来更好的包容性和更高的效率。

不止步于投资: Quantlytica, 您的全方位流动性门户入口

当用户参与 DeFi 项目时,通常会着重关注投资机会。这种关注源自于 Yearn Finance 等项目的突出地位和影响,它因其自动化的流动性挖矿而闻名,Solv Protocol 专注于去中心化金融工具,Bitsgap 等交易平台则因其为经验丰富的专业交易员量身定制的高级交易机器人而出名。 然而,Quantlytica 提供的服务远不止这些成熟平台所提供的服务。虽然我们也有跟对冲基金和交易团队合作,提供一系列自动化投资策略,但我们的关注点从来不仅限于流动性挖矿和交易。我们意识到参与 DeFi 项目的用户有着各种各样的需求,我们致力于满足他们的所有需求。例如,我们通过 Quantlytica 的积分捕获系统, 为那些希望通过一个简单高效的交互操作, 就能一次性获取多个协议的积分和潜在空投机会的用户提供服务。与此同时,Quantlytica 还提供曾经专属于机构的专业量化交易策略,现在均通过我们的平台向所有用户开放。

Quantlytica 不仅优化了收益,还简化了跨链流动性管理的各种细节——无论是找到最具成本效益的跨链方式,还是自动化将部分投资组合提现到指定地址的过程等。这也是我们一直所说的:流动性自动化。

简而言之,Quantlytica 不仅仅是一个财富管理工具;它还是一个完善的加密领域的流动性门户,为用户提供量身定制的解决方案,以满足当今 DeFi 参与者的多样化需求。

通过人工智能技术赋能无忧的 DeFi 之旅

参与 DeFi 项目通常会存在内部风险,尤其是协议智能合约中的漏洞可能会被黑客利用,导致经济损失。除此之外,DeFi 参与者还面临着项目团队的欺诈行为以及金融和加密市场的系统性风险。因此 Quantlytica 采取了一种全面的方法来降低这些风险,通过对所有 DeFi 项目的收益率、流动性风险和安全性进行横向比较, 全方位的保护用户资产。为了实现这一目标,我们与多个数据源合作,进行完善的风险分析。对于智能合约的技术风险,我们与 GoPlus 合作,解决 dApp 安全性、钓鱼网站、恶意签名和交易安全性等问题。为了防止欺诈行为,我们还与 Root Data 合作,监控公众舆论和社交媒体中的警示信号;而对于金融风险,我们利用 Glassnode、Coinglass 和 Chainlink 的数据。多维度完善用户体验, 保护用户资产.

在传统金融中,风险管理低效且耗费大量人力,这往往导致风险管理的行动迟缓。Quantlytica 通过利用链上数据和由 LSTM 驱动的 AI 分析彻底改变了这一过程。这使我们能够实时对潜在风险进行可视化并及时发现、定位风险,从而能够快速采取行动,包括在必要时停止用户参与 DeFi 协议,以确保持续保护用户的资金安全。 接下来 Quantlytica 将通过自建的聊天机器人 QuantGPT 将 AI 推向前沿。QuantGPT 不仅仅是一个聊天机器人,它还是用户的个人 AI 经理,根据用户的偏好来引导其浏览 Quantlytica 生态下的项目。无论是市场分析、策略选择,还是动态调整流动性,QuantGPT 都能帮助用户轻松优化 Quantlytica 的每个方面。

即将升级 - Fund SDK:弥合协议与用户之间的差距

在 Quantlytica 中,我们认识到建设者越多,DeFi 的可能性和机会就越多。新协议的推出急需流动性的注入,用户也在不断寻找新的潜在投资机会。而 Quantlytica 即将推出的重大升级 Fund SDK,旨在通过与现有工作流程的无缝集成,以及为策略创建、测试和部署全流程提供强大平台来满足这些需求。

这对用户来说意味着什么?Quantlytica 已将所有智能合约和 DeFi 协议模块化集成为一个无代码工具箱,使用户可以像搭积木一般根据自身需求轻松将各组件组合搭建起来。同时在 QuantGPT 的支持帮助下,用户可以获得量身定制的推荐,并利用 AI 驱动的数据分析进行回测和模拟,为用户决定是否参与提供帮助。 这种方法促进了多样化的 DeFi参与,消除了用户对安全性和效率的担忧,并满足了协议对建设者和流动性的需求。通过消除专业知识的壁垒,现在参与 DeFi 项目对任何人来说都更加方便可行。

关于 Quantlytica 

Quantlytica 总部位于芬兰,是一个多链 AI 驱动的流动性分配协议。Quantlytica 利用机器学习和统计模型,对所有 DeFi 项目的回报、流动性风险和安全性进行横向比较,并根据不同用户的需求提供多种自动化策略。Quantlytica 的 Fund SDK 工具包进一步降低了协议与用户之间的交互门槛,使 DeFi 参与变得更加快速、简单和人人可及。简而言之,Quantlytica 是您的流动性门户,助力寻找和构建最佳流动性策略的过程变得更加顺畅。

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