QRDO基金会与EQ LAB达成战略合作,共同推出Warden协议

Odaily星球日报2024-01-30 tarihinde yayınlandı2024-01-30 tarihinde güncellendi

Özet

以意图为中心、建立在Cosmos和Fusionchain技术基础上的模块化区块链。

QRDO基金会与EQ LAB达成战略合作,共同推出Warden协议

QRDO 基金会与 EQ LAB 宣布建立战略合作伙伴关系,共同推出 Warden 协议。

Warden 协议简介

Warden 协议是基于 Cosmos-SDK 的、以意图为中心、建立在 Cosmos 和 Fusionchain 技术基础上的模块化区块链,旨在加速 QRDO 生态系统的发展。

用户能够在不同的区块链上创建 Spaces 和钱包,并通过链上的意图来管理其活动。用户可以轻松创建复杂的多链交易,并通过 Warden 协议上链执行的复杂意图来保护跨链活动。

对于该领域的构建者来说,Warden 允许智能合约使用 Solidity 和 WebAssembly 在 Cosmos 上部署,并推动了密钥管理解决方案的模块化市场的发展,涵盖了从 HSM 解决方案到多方计算提供商等不同领域。

QRDO 基金会代表表示:

"Warden 协议推动了意图和互操作性的发展,与 EQ LAB 团队联手,使我们能够实现这样的愿景,并确保 QRDO 代币持有者看到一个真正去中心化的、开放的、以意图为中心的互操作性和密钥管理协议的实现。" 

Warden 协议已接入多个应用程序,包括EQ.finance(Cosmos 的流动性质押中心,支持现有的流动代币)、WARDD(一种与美元挂钩的去中心化稳定币,为 Warden 用户提供即时的美元流动性)、Marginly(可插拔的去中心化资金池协议,可在任何现货 DEX 上进行保证金交易)和 SpaceWard(类似于 SAFE 的钱包管理和治理平台)。

EQ LAB 将成为 Warden 协议的核心贡献者团队,并将带来 15 位开发人员。

EQ LAB 的创始人 Alex Melikhov 表示:

"我们很高兴能够作为核心贡献者帮助建立 Warden 协议。作为一个经验丰富的区块链开发者团队,我们看到了 Cosmos 生态系统的未来,我们期待看到现有的 QRDO 和 Q 代币持有者社区都能发挥出价值。"

WARD 代币

Warden 协议计划推出 WARD 代币,并将通过公平的发布机制进行分发,此次发布将不进行任何预挖或投资者分配。WARD 交易资格首先会分配给现有的 QRDO 持有者。为了向其他 Cosmos 链上的公益事业表示认可,TIA 和 ATOM stakers 以及其他配套协议和 Cosmos 链的构建者和用户也将有资格参与。更多详情将在近期公布。

Warden 协议的阿尔法测试网将在未来几周内上线,详细信息也将很快公布。

EQ LAB 是一家经验丰富的软件工程公司,专注于无权限应用程序和协议。他们是 Cosmos、Ethereum、Arbitrum、Polkadot 等区块链平台上项目的技术合作伙伴。QRDO 基金会的成立旨在加速开放托管、安全和互操作性协议的采用,并培育 QRDO 生态系统的价值。

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