由Axelar、J.P.Morgan Onyx、Provence&Apollo支持的“Project Guardian”:撑起5.5万亿美元资管业务的下一代概念证明(PoC)

Odaily星球日报2023-11-15 tarihinde yayınlandı2023-11-15 tarihinde güncellendi

Özet

使可互操作区块链上的交易结算流程更标准化。

由跨链基础设施协议 Axelar 联合摩根大通 OnyxProvenance 和 Apollo 推出的这一概念验证(Proof-of-Concept,PoC),展示了一种新的解决方案:投资经理可以使用他们选择的区块链上的代币化基金,在多个互连的链上购买和再配置代币化资产的头寸,来形成投资组合。

Axelar 作为连接 50 多条区块链的可互操作跨链基础设施,现已成为 CeFi 和 DeFi 世界的桥梁,它与摩根大通和 Apolloon 的 Onyx 合作,成功地进行了一项实验,展示了如何使用智能合约来大规模管理客户投资组合。在概念证明中,区块链技术被用于执行交易,并实现代币化金融资产(RWA)的自动化投资组合管理。

自 2022 年主网发布以来,Axelar(AXL)通过其连接 53 条链的跨链协议,形成安全、可编程的网络,并使用混合系统实现了链下系统与链上网络集成,桥接了超过 60 亿美元的资产。

概念验证的最具创新性的部分之一是,投资经理通过用另一只 Apollo 私募股权基金取代一只 Apollo 私人股本基金来改变投资模型,使用再平衡模块自动重新配置遵循策略的 100 个投资组合,包括下单和结算环节,发挥了区块链特有的可组合性和自动化特性,同时大大减少了人为错误。

这项概念验证的合作是新加坡金融管理局“Project Guardian”的一部分,旨在使可互操作区块链上的交易结算流程更标准化。

Onyx Digital Assets 负责人 Tyrone Lobban 表示:“我们认为,使用智能合约、代币化资产和程序化链接模型,可以自动快速地重新配置投资组合,无论这些投资组合是否包含传统资产、另类资产,还是使用多个分类账……现在有很多关于跨链 RWA 如何加剧流动性和体验碎片化的讨论。因此,我们开始探索如何使用跨 EVM 和非 EVM 链的互操作性方案来解决这个问题。”

摩根大通的 Onyx 利用 Axelar 跨链技术实现与 Provenance Blockchain Zone 提供的私有、经由许可的区块链的互操作性,支持包括 Apollo 基金在内的资产代币化。Provenance 在链上锁定了 90 亿美元的 RWA 资产价值。

Axelar Inc. 首席执行官 Sergey Gorbunov 表示:“利用 Axelar,J.P. Morgan 的 Onyx 能够在投资组合管理中引入可组合性和可编程性,通过在 100 个投资组合中实现模块化重新平衡自动化。这是区块链互操作性的一个强有力的例子。”

本周在新加坡金融科技节上发布的一份报告对 POC 进行了全面描述。

欲了解更多信息,请访问 www.axelar.network 或加入 Axelar Discord

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