OverProtocol 的 L1 主网上线,9 月活动、生态应用更新和空投正在路上

深潮Publicado a 2024-09-04Actualizado a 2024-09-04

OverProtocol 专注于节点优化技术,致力于构建一个全面的生态系统,以降低普通用户的参与门槛。

作者:OverProtocol

编译:深潮TechFlow

OverProtocol 于 9 月 4 日成功开启其 Layer 1 区块链主网。该项目旨在打造一个用户友好的平台,让任何人无需专业知识即可轻松参与新的 P2P 金融系统。核心开发团队 Superblock 已筹集 800 万美元,专注于节点优化技术,并致力于构建一个全面的生态系统,以降低普通用户的参与门槛。

为庆祝这一里程碑,OverProtocol 将与加密行业的领军企业 GSR 和 Jambo 合作,于 9 月 5 日举办名为“HangOver”的活动。HangOver 有望成为韩国顶级加密货币盛会 KBW 2024 中最吸引人的边会之一。

在主网上线前,OverProtocol 进行了两次测试网试验,吸引了超过 70 万用户通过 OverWallet 应用参与 Palm Staking,实现移动客户端质押。此外,超过 4 万用户在个人电脑上运行轻量级节点客户端 OverNode,通过 Home Staking 成为区块链网络的验证者。

在主网激活后,OverProtocol 的两个关键生态应用 OverFlex 和 OverScape 将于 9 月底进行更新。OverFlex 是一个结合了 OverWallet 和现实资产(RWA)市场的超级应用,预计将成为 OverProtocol 愿景的核心。OverScape 是 OverNode 的全新品牌,象征着一个与金融融合的新 P2P 互联网时代的开端,类似于当年 Netscape 浏览器革新了个人的互联网访问。

此外,9 月底更新后将进行一次大规模空投。OverProtocol 的创始人 Ben (Jae-Yun) Kim 表示,这次空投将奖励过去一年中为生态系统贡献力量的社区成员。空投结束后,将举办各种社区活动,旨在创造一个人人都能在日常生活中体验和享受的区块链环境。

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